Hostname: page-component-745bb68f8f-lrblm Total loading time: 0 Render date: 2025-01-30T15:39:31.876Z Has data issue: false hasContentIssue false

Findings from the Tushirikiane-4-MH (supporting each other for mental health) mobile health–supported virtual reality randomized controlled trial among urban refugee youth in Kampala, Uganda

Published online by Cambridge University Press:  23 January 2025

Carmen H. Logie*
Affiliation:
Factor-Inwentash Faculty of Social Work, University of Toronto, Toronto, Ontario, Canada Women’s College Research Institute, Women’s College Hospital, Toronto, Ontario, Canada United Nations University Institute for Water, Environment & Health, Hamilton, Ontario, Canada Centre for Gender and Sexuality Health Equity, Vancouver, British Columbia, Canada
Moses Okumu
Affiliation:
School of Social Work, University of Illinois Urbana-Champaign, USA Uganda Christian University, Mukono, Uganda
Zerihun Admassu
Affiliation:
Factor-Inwentash Faculty of Social Work, University of Toronto, Toronto, Ontario, Canada
Frannie MacKenzie
Affiliation:
Factor-Inwentash Faculty of Social Work, University of Toronto, Toronto, Ontario, Canada
Lesley Gittings
Affiliation:
School of Health Studies, Western University, London, Canada Centre for Social Science Research, University of Cape Town, South Africa
Jean-Luc Kortenaar
Affiliation:
Dalla Lana School of Public Health, University of Toronto, Toronto, Ontario, Canada
Naimul Khan
Affiliation:
Department of Electrical, Computer and Biomedical Engineering, Toronto Metropolitan University, Toronto, Ontario, Canada
Robert Hakiza
Affiliation:
Young African Refugees for Integral Development (YARID), Kampala, Uganda
Daniel Kibuuka Musoke
Affiliation:
International Research Consortium, Kampala, Uganda
Aidah Nakitende
Affiliation:
International Research Consortium, Kampala, Uganda
Brenda Katisi
Affiliation:
Young African Refugees for Integral Development (YARID), Kampala, Uganda
Peter Kyambadde
Affiliation:
National AIDS and STI Control Programme, Ministry of Health, Kampala, Uganda Most At Risk Population Initiative, Mulago Hospital, Kampala, Uganda
Richard Lester
Affiliation:
Department of Medicine, University of British Columbia, Vancouver, British Columbia, Canada
Lawrence Mbuagbaw
Affiliation:
Department of Health Research Methods, Evidence and Impact, McMaster University, Hamilton, Ontario, Canada Department of Anesthesia, McMaster University, Hamilton, ON, Canada Department of Pediatrics, McMaster University, Hamilton, ON, Canada Biostatistics Unit, Father Sean O’Sullivan Research Centre, St Joseph’s Healthcare, Hamilton, ON, Canada Centre for Development of Best Practices in Health (CDBPH), Yaoundé Central Hospital, Yaoundé, Cameroon Division of Epidemiology and Biostatistics, Department of Global Health, Stellenbosch University, Cape Town, South Africa
*
Corresponding author: Carmen H. Logie; Email: [email protected]
Rights & Permissions [Opens in a new window]

Abstract

Virtual reality (VR) for mental health promotion remains understudied in low-income humanitarian settings. We examined the effectiveness of VR in reducing depression with urban refugee youth in Kampala, Uganda. This randomized controlled trial assessed VR alone (Arm 1), VR followed by Group Problem Management Plus (GPM+) (Arm 2) and a control group (Arm 3), with a peer-driven and convenience sample of refugee youth aged 16–25 in Kampala. The primary outcome, depression, was measured with the Patient Health Questionnaire-9. Secondary outcomes included: mental health literacy, mental health stigma, self-compassion, mental well-being and adaptive coping. Analyses were conducted at three time points (baseline, 8 weeks, 16 weeks) using generalized estimating equations. Among participants (n = 335, mean age: 20.77, standard deviation: 3.01; cisgender women: n = 158, cisgender men: n = 173, transgender women: n = 4), we found no depression reductions for Arms 1 or 2 at 16 weeks compared with Arm 3. At 16 weeks, mental health literacy was significantly higher for Arm 2 compared with Arm 3, and self-compassion was significantly higher in Arm 1 and Arm 2 compared with Arm 3. VR alongside GPM+ may benefit self-compassion and MHL among urban refugee youth in Kampala, but these interventions were not effective in reducing depression.

Type
Research Article
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Copyright
© The Author(s), 2025. Published by Cambridge University Press

Impact statement

Youth living in low- and middle-income country (LMIC) humanitarian settings disproportionately experience mental health challenges. Despite virtual reality (VR) showing promise in reducing mental health challenges and promoting mental well-being in high-income settings, its potential benefits for mental health are understudied in LMIC at large, including humanitarian settings. To address this knowledge gap, we conducted a randomized controlled trial with a peer-driven and convenience sample of urban refugee youth in Kampala, Uganda, aged 16–25. This involved developing and evaluating the effectiveness of a VR intervention focused on mental health literacy, stigma and coping strategies. We tested the VR intervention alone, as well as followed by Group Problem Management Plus (GPM+), a World Health Organization group-based brief transdiagnostic psychological intervention developed for adults experiencing adversity. We examined the effectiveness of VR alone (Arm 1) and VR followed by GPM+ (Arm 2), compared with a control arm (Arm 3), in reducing depression and improving secondary mental health outcomes (mental health literacy, mental health stigma, self-compassion, mental well-being and adaptive coping). We found no depression reductions for Arm 1 or Arm 2 at 16 weeks compared with Arm 3, and in fact we found higher depression among Arm 2 but in gender-disaggregated analyses, this was only significant among young men. At 16 weeks we found significantly higher mental health literacy for Arm 2 compared with Arm 3, and significantly higher self-compassion in Arm 1 and Arm 2, compared with Arm 3. These findings add to the limited evidence base of VR mental health interventions in LMIC, to signal that VR can benefit self-compassion among urban refugee youth in Kampala. We also show that alongside GPM+, VR can improve mental health literacy among this population. While VR shows promise in improving positive mental health outcomes, these strategies were not effective in reducing depression.

Introduction

At the end of 2022, there were 112.6 million forcibly displaced people across the globe, 40% of whom were children and youth under the age of 18 (UNHCR 2022a). The impacts of forced displacement on the mental health of children and youth are profound. Mental health challenges disproportionately affect persons in humanitarian contexts due to multiple stressors including exposure to violence, trauma, food insecurity and social marginalization (Logie et al. Reference Logie, Okumu, Mwima, Hakiza, Chemutai and Kyambadde2020; Silove et al. Reference Silove, Ventevogel and Rees2017). Yet most forcibly displaced persons do not receive needed mental health support due to insufficient service availability, among other barriers (Silove et al. Reference Silove, Ventevogel and Rees2017).

Uganda is the largest refugee-hosting nation in Africa, with over 1.58 million refugees in 2022 (UNHCR 2022b). More than 111,000 of those refugees live in the city of Kampala, 27% of whom are youth aged 15–24 years (UNHCR 2022b). As the number of displaced persons rises globally, there is also an increasing trend of urbanization, with more than 60% of refugees and 80% of internally displaced persons living in urban settings (Muggah and Abdenur Reference Muggah and Abdenur2018). Urban refugees in low- and middle-income countries (LMICs) face unique challenges including exploitation, discrimination and language barriers that may present barriers to employment and in turn increase reliance on informal economies (Muggah and Abdenur Reference Muggah and Abdenur2018). Many urban refugees in LMICs, including those living in Kampala, live in informal settlements, such as slums, that experience heightened socio-environmental stressors (e.g., violence, poverty) (Bukuluki et al. Reference Bukuluki, Mwenyango, Katongole, Sidhva and Palattiyil2020; Saliba and Silver Reference Saliba and Silver2020; Women’s Refugee Comission 2011). These daily stressors, as detailed in a study with urban Somali refugees in Kenya, may converge with histories of conflict-related trauma to exacerbate mental health challenges (Im et al. Reference Im, Ferguson, Warsame and Isse2017). Prior research with a longitudinal cohort of urban refugee youth in Kampala noted a moderate to severe depression prevalence of 27.5%, with no significant differences before and after COVID-19, that was associated with food insecurity, experiencing violence, and lower social support (Logie et al. Reference Logie, Berry, Okumu, Loutet, McNamee, Hakiza, Musoke, Mwima, Kyambadde and Mbuagbaw2022).

Significant knowledge gaps remain in understanding effective approaches for improving mental health with adolescents and youth in humanitarian contexts, particularly regarding reducing depression and anxiety (Purgato et al. Reference Purgato, Gross, Betancourt, Bolton, Bonetto, Gastaldon, Gordon, O’Callaghan, Papola, Peltonen, Punamaki, Richards, Staples, Unterhitzenberger, van Ommeren, de Jong, Jordans, Tol and Barbui2018). A recent systematic review and meta-analyses of mental health and psychosocial support programs with children and youth in LMIC humanitarian emergencies found cognitive behavioral therapy (CBT) was associated with reduced depression but reported inconsistent findings for other modalities (narrative exposure therapy, interpersonal and body psychotherapy, psychosocial programs, psychoeducation) (Bangpan et al. Reference Bangpan, Felix, Soliman, D’Souza, A-T and Dickson2024). Authors in turn call for tailored programming to meet youth mental health needs in LMIC humanitarian contexts, particularly in Africa, which remain understudied relative to the number of refugees hosted (Bangpan et al. Reference Bangpan, Felix, Soliman, D’Souza, A-T and Dickson2024). Strategies with youth in Uganda have explored psychotherapeutic interventions and creative expressive techniques. For example, a study examining the efficacy of an Interpersonal Psychotherapy (IPT) intervention and an activity-based creative play intervention in Northern Uganda demonstrated a positive effect and significant improvement in depressive symptoms among girls in the IPT condition; however, the creative play intervention showed no effect on depressive severity (Bolton et al. Reference Bolton, Bass, Betancourt, Speelman, Onyango, Clougherty, Neugebauer, Murray and Verdeli2007). Another study examining the effectiveness of sports-for-development programs in Uganda found positive effects for boys only (Richards et al. Reference Richards, Foster, Townsend and Bauman2014). A randomized controlled trial (RCT) with youth former child soldiers aged 12–25 in Northern Uganda found narrative exposure therapy was associated with significant reductions in post-traumatic stress disorder (PTSD) symptom severity, functional impairment and guilt – but not stigma or depression (Ertl et al. Reference Ertl, Pfeiffer, Schauer, Elbert and Neuner2011). Despite documented mental health challenges among urban refugee youth in LMIC contexts, there is a dearth of mental health interventions focused on urban refugee youth mental health in LMICs, including in Uganda (Saliba and Silver Reference Saliba and Silver2020). This reflects larger knowledge gaps regarding rural–urban migration and mental health in LMICs (Meyer et al. Reference Meyer, Lasater and Tol2017), and other health issues among urban refugees in LMICs (Logie et al. Reference Logie, MacKenzie, Malama, Lorimer, Lad, Zhao, Narasimhan, Fahme, Turan, Kagunda, Konda, Hasham and Perez-Brumer2024b).

This study aims to address knowledge gaps regarding efficacious interventions to reduce depression among urban refugee youth in Kampala, Uganda, by introducing interventions that are novel to this population and tailored to their unique mental health needs. We evaluated the effectiveness of a virtual reality (VR) experience focused on mental health literacy and psychological first aid skills (World Health Organization et al. 2011) implemented on its own, and this VR experience followed by Group Problem Management Plus (GPM+), a World Health Organization (WHO) group-based brief transdiagnostic psychological intervention developed for adults experiencing adversity (World Health Organization 2020). The primary study objective is to determine the effectiveness of VR compared to the standard of care (SOC), and VR followed by GPM+ compared with the SOC, in reducing depression. Secondary objectives include examining the effectiveness of these two intervention approaches on: (1) increasing mental health literacy, (2) reducing mental health stigma, (3) increasing self-compassion, (4) increasing mental well-being and (5) increasing adaptive coping strategies, compared with the SOC.

Background on intervention approaches

Virtual reality

In high-income contexts, studies have pointed to the potential of VR for improving various mental health outcomes. VR-based technology allows users to experience an interactive three-dimensional environment where psychotherapeutic interventions such as CBT can be applied (Rowland et al. Reference Rowland, Casey, Ganapathy, Cassimatis and Clough2022). A systematic review of VR treatment for PTSD among adults found it was more effective than a control group and as effective as other therapeutic modalities; however, the small number of studies and low study quality underscore the need for additional research (Eshuis et al. Reference Eshuis, van Gelderen, van Zuiden, Nijdam, Vermetten, Olff and Bakker2021). Scoping review findings of VR for treating depression and anxiety with CBT approaches reported reduced anxiety or depression symptoms, but few studies used an RCT design (Baghaei et al. Reference Baghaei, Chitale, Hlasnik, Stemmet, H-N and Porter2021). Another systematic review examining the efficacy of VR interventions for emotional disorders reported that most VR studies were effective compared to waitlist and control conditions in reducing self-reported social anxiety, panic disorder, PTSD; however, there was heterogeneity in findings (Rowland et al. Reference Rowland, Casey, Ganapathy, Cassimatis and Clough2022). Despite these promising findings, most VR studies were focused on adults in high-income settings, revealing knowledge gaps of their efficacy with youth in LMIC and/or humanitarian contexts.

Group problem management plus

GPM+ is a group-based brief psychological intervention to help adults impaired by distress in communities affected by adversity (World Health Organization 2020). This program is an adaptation of Problem Management Plus (PM+), an individual intervention for adults affected by adversity (Dawson et al. Reference Dawson, Bryant, Harper, Kuowei Tay, Rahman, Schafer and van Ommeren2015). GPM+ programs were designed as scalable group-based brief psychological interventions that can be delivered by nonspecialists in LMIC where mental health infrastructure is limited or unable to meet the psychosocial needs of the population (Sangraula et al. Reference Sangraula, Turner, Luitel, van‘t Hof, Shrestha, Ghimire, Bryant, Marahatta, van Ommeren, Kohrt and Jordans2020). PM+ has been shown to reduce psychological distress among women in urban Kenya (Bryant et al. Reference Bryant, Schafer, Dawson, Anjuri, Mulili, Ndogoni, Koyiet, Sijbrandij, Ulate, Harper Shehadeh, Hadzi-Pavlovic and van Ommeren2017) and indicates reductions on depression, anxiety, PTSD symptoms and self-identified problems among Syrian refuges in the Netherlands (Graaff et al. Reference de Graaff, Cuijpers, Twisk, Kieft, Hunaidy, Elsawy, Gorgis, Bouman, Lommen, Acarturk, Bryant, Burchert, Dawson, Fuhr, Hansen, Jordans, Knaevelsrud, McDaid, Morina, Moergeli, Park, Roberts, Ventevogel, Wiedemann, Woodward and Sijbrandij2023). The group-based delivery format, GPM+, was feasible and acceptable among refugee and conflict-affected individuals in Jordan (Akhtar et al. Reference Akhtar, Giardinelli, Bawaneh, Awwad, Naser, Whitney, Jordans, Sijbrandij and Bryant2020), Pakistan (Khan et al. Reference Khan, Hamdani, Chiumento, Dawson, Bryant, Sijbrandij, Nazir, Akhtar, Masood, Wang, Wang, Uddin, van Ommeren and Rahman2017) and Nepal (Sangraula et al. Reference Sangraula, Turner, Luitel, van‘t Hof, Shrestha, Ghimire, Bryant, Marahatta, van Ommeren, Kohrt and Jordans2020). A study examining the efficacy of GPM+ among conflict-affected adults in Nepal found modest reductions in psychological distress and depression symptoms (Jordans et al. Reference Jordans, Kohrt, Sangraula, Turner, Wang, Shrestha, Ghimire, Van’T Hof, Bryant, Dawson, Marahatta, Luitel and Van Ommeren2021). The WHO states this program is likely efficacious among adolescents aged 16 years and older (World Health Organization 2020); however, GPM+ has yet to be evaluated with refugee adolescents and youth. As many VR mental health interventions integrate CBT and other evidence-based approaches (Rowland et al. Reference Rowland, Casey, Ganapathy, Cassimatis and Clough2022), we also tested VR followed by in-person GPM+ to explore any additional added value by combining these approaches.

Methods

Study design and setting

Tushirikiane (roughly translating to “Supporting Each Other” in Swahili) for Mental Health (Tushirikiane-4-MH) was a three-arm RCT conducted in five informal settlements in Kampala, Uganda. We evaluated the impact of virtual reality (VR) alone, and VR followed by GPM+, in comparison with a control group, on primary (depression) and secondary (mental health literacy, mental health stigma, self-compassion, mental well-being, adaptive coping) outcomes among refugee youth in Kampala. Data were collected at three time points: before the intervention implementation, 8 weeks following the intervention and 16 weeks following the intervention. Full details regarding the trial and the study setting have been described elsewhere (Logie et al. Reference Logie, Okumu, Hakiza, Kibuuka Musoke, Berry, Mwima, Kyambadde, Kiera, Loutet, Neema, Newby, McNamee, Baral, Lester, Musinguzi and Mbuagbaw2021a); the trial is registered at ClinicalTrials.gov (NCT05187689).

Participants and recruitment

Participants were recruited from the Tushirikiane HIV self-testing cohort study, whereby participants aged 16–24 years old were recruited between 2020 and 2021 (Logie et al. Reference Logie, Okumu, Hakiza, Kibuuka Musoke, Berry, Mwima, Kyambadde, Kiera, Loutet, Neema, Newby, McNamee, Baral, Lester, Musinguzi and Mbuagbaw2021a); the Tushirikiane cohort was continued for implementing a COVID-19 prevention study (Logie et al. Reference Logie, Okumu, Berry, Hakiza, Kibuuka Musoke, Kyambadde, Mwima, Lester, Perez-Brumer, Baral and Mbuagbaw2021b). In 2022, the cohort participants were invited to participate in the present study (Tushirikiane-4-MH) by peer navigators (PNs); to reach the desired sample size, we conducted additional purposive recruitment. PN purposively recruited 16- and 17-year-old participants to refresh the cohort as this age range was no longer present in the existing cohort. Baseline data were collected in April 2022, the intervention was conducted in June–July 2022, 8-week follow-up surveys were conducted in August–September 2022 and 16-week follow-up surveys were conducted in November–December 2022. Participants were recruited using peer-driven and convenience sampling methods from five informal settlements in Kampala where a large proportion of refugees live; informal settlements were grouped into three study sites based on geographical proximity (1: Kabalagala and Kansanga, 2: Katwe and Nsambya, 3: Rubaga). After recruitment was complete, each location was randomly assigned to one of the three study arms. PNs, who identify as refugee or displaced persons aged 18–25 years, were engaged to help with participant recruitment and retention. PNs were supervised by a study coordinator at YARID and trained by the PI on the study design, interventions, ethics and psychological first aid over multiple training sessions.

Eligibility criteria included: (1) currently living in one of the five selected informal settlements in Kampala (Kabalagala, Kansanga, Katwe, Nsambya or Rubaga); (2) identifying as a refugee or displaced person, or having refugee or displaced parents; (3) aged 16–25 years; (4) owning or have daily access to a mobile phone; and (5) speaking French, English, Kirundi, Kinyarwanda or Swahili. Interested participants were screened for eligibility by a trained PN by phone, in person or WhatsApp.

Intervention implementation

The study was designed as a three-arm RCT, consisting of two treatment arms and one control group randomized at a 1:1:1 ratio by the study coordinator using an online random number generator: Arm 1 was the VR experience, Arm 2 was the VR experience followed by GPM+ and Arm 3 was the control arm. Details of the study have been described elsewhere (Logie et al. Reference Logie, Okumu, Hakiza, Kibuuka Musoke, Berry, Mwima, Kyambadde, Kiera, Loutet, Neema, Newby, McNamee, Baral, Lester, Musinguzi and Mbuagbaw2021a). We briefly describe the intervention below:

Arm 1: VR

Participants in this arm received a single 15-min immersive and interactive VR session in a private room or in an outdoor setting. The VR experience was developed to equip participants with information and tools to improve their mental health outcomes. Components of the VR experience included three separate scenarios that included an interaction with different characters whereby psychosocial information was shared: the first scenario discussed depression symptoms and aimed to improve mental health literacy and psychological first aid skills; the second scenario included descriptions of a character’s lived experience of mental health stigma and isolation and aimed to reduce mental health stigma; and the third scenario involved teaching and practicing self-compassion and emotional regulation exercises. To ensure feasibility and sustainability of VR in this setting, PN co-developed the experience ensuring it was both simple and relevant for use with urban refugee youth. As illustrated in this screenshot from the VR experience, participants were guided to visit the three characters in the scene who were identified with a speech bubble above them (Supplementary Figure 1).

The PN facilitated the use of the VR with each participant, describing what VR is, how it will work, what the participant can expect and provided instruction in using the hand controller to move around the scene and meet the three characters. After extensive pilot testing with the PNs, the length of the VR was set to 15 min, and the interaction was minimized so the participant used hand controllers to move around the scene and touch the characters with speech bubbles, which would then trigger a prerecorded psychoeducation session as described above.

Arm 2: VR and GPM+

Participants in this arm participated in the VR intervention (described above) as well as GPM+. The GPM+ intervention consisted of a manualized five-session, 3-h/session, led by two trained PNs.

Arm 3: Control

Participants in this arm received a list of mental health resources in Kampala.

The Arm 1 and Arm 2 intervention arms received weekly SMS two-way check-ins and SMS mental health awareness messages in their preferred language on the WelTel platform (Lester et al. Reference Lester, Ritvo, Mills, Kariri, Karanja, Chung, Jack, Habyarimana, Sadatsafavi, Najafzadeh, Marra, Estambale, Ngugi, Ball, Thabane, Gelmon, Kimani, Ackers and Plummer2010). Any participant who expressed discomfort, mental health concerns or requested assistance was referred to YARID’s social workers and their PN in 48 h. To provide additional group-based support to participants, Arm 1 and Arm 2 participants were invited to take part in weekly WhatsApp group discussions with PN. All study members, including those in the control group, had access to mental health support from YARID resources and trained social workers as needed.

Outcomes

The primary outcome was depression assessed using the Patient Health Questionnaire-9 (PHQ-9; Cronbach’s alpha = 0.82). Responses for the nine items were summed up with the total scores ranging from 0 to 27, with higher scores indicating higher levels of depression (Negeri et al. Reference Negeri, Levis, Sun, He, Krishnan, Wu, Bhandari, Neupane, Brehaut, Benedetti and Thombs2021).

Secondary outcomes included mental health literacy which was assessed with the 16-item short version of the Mental Health Literacy Scale (Campos et al. Reference Campos, Dias, Costa, Rabin, Miles, Lestari, Feraihan, Pant, Sriwichai, Boonchieng and Yu2022). Higher scores indicate higher levels of mental health literacy (Cronbach’s alpha = 0.81). Mental health stigma was measured by the 7-item Day’s Mental Illness Stigma Scale (Day et al. Reference Day, Edgren and Eshleman2007). The higher the score, the more negative the attitude toward people with mental illness (Cronbach’s alpha = 0.81). Self-compassion was measured using items from the youth version of the Self-Compassion Scale (Neff et al. Reference Neff, Bluth, Tóth-Király, Davidson, Knox, Williamson and Costigan2021). For this study, 6 of the 17 items of the SCS-Y, from the subscales of Self-Kindness, Shared Humanity, Isolation and Overidentification, were used. Higher scores indicate higher levels of self-compassion (Cronbach’s alpha = 0.77). Mental well-being was measured using the WHO-5 Wellbeing Index. The total scale ranges from 0 (worst possible quality of life) to 25 (best possible quality of life) (Bech et al. Reference Bech, Olsen, Kjoller and Rasmussen2003). The scale reliability coefficient was 0.88. Adaptive coping (Cronbach’s alpha = 0.73) was assessed with KidCOPE, a brief checklist to measure cognitive and behavioral coping in children and adolescents (Spirito et al. Reference Spirito, Stark and Williams1988).

Sample size calculation

Our pretrial power calculation indicated that 330 participants, with 110 per study arm, were required to detect a difference of 3 points in mean depression score (moderate effect size). This assumes an intraclass correlation of 0.01 and standard deviation (SD) of 7, at a 5% level of significance with 80% power and anticipation of a 10% attrition rate. Calculations were performed using RStudio version 3.3.0, based on the formula for multiple comparisons of proportions and adjusted for design effects (Chow et al. Reference Chow, Wang and Shao2007).

Data collection and management

Participants’ data were collected at three time points from all study arms: pre-intervention, 8-week post-intervention and 16-week post-intervention follow-up. Standardized questionnaires were administered by trained research assistants using SurveyCTO, a secured tablet-based application (Dobility, Cambridge, USA). To maintain confidentiality, all participants were given a unique case ID, and no personal identifying information was collected in the survey.

Statistical analysis

All primary and secondary analyses were based on modified intention-to-treat principles (Montedori et al. Reference Montedori, Bonacini, Casazza, Luchetta, Duca, Cozzolino and Abraha2011) in accordance with the consolidated standards of reporting trials (CONSORT) statement (Abraha and Montedori Reference Abraha and Montedori2010) using complete case analysis, as our missing data were less than 10%, which is generally acceptable for maintaining the validity and power of the study.

First, we compared the study arms’ demographic and other baseline characteristics for any differences across study arms using analysis of variance for continuous variables and chi-square tests for categorical variables. Characteristics of study completers versus those lost to follow-up were compared using independent t-tests for continuous variables and chi-squared (χ 2) tests for categorical variables, and no significant differences were found.

The primary analysis comparing the three study arms at the three assessment time points was conducted by a population average model using generalized estimating equations (GEEs; Liang and Zeger Reference Liang and Zeger1993). For each outcome of interest, we used an unstructured correlation matrix to estimate the intervention effect across time while adjusting for potential confounding factors. We used robust standard errors to account for clustering. To specify a GEE model, we used a Poisson distribution and an identity link function for all response variables. GEEs account for correlated data due to multiple assessments of individual participants in longitudinal study designs (Liang and Zeger Reference Liang and Zeger1986). GEE models estimated the effects of (1) “Time” (time 1, time 2, time 3), (2) “Study Arm” (VR, VR + GPM, Control) and (3) the “Time × Study Arm” interaction. p-values associated with the interaction term were used to determine the statistical significance of any differences between the study arms at each time point. In these models, the main coefficient of the interaction term reveals the mean difference between intervention and control arms, controlling for baseline differences and secular trends. Each model was first conducted without adjustment, then with adjustment for age and gender, which were specified as a priori, as well as characteristics with baseline imbalances between study arms including the baseline study outcome scores for each respective model.

To explore gender differences in primary and secondary intervention outcomes, which is recommended in global health research due to the ways in which sociocultural norms shape gender expectations and roles (Shapiro et al. Reference Shapiro, Klein and Morgan2021), we conducted gender stratified analyses (i.e., men and women separately). Intervention effects are expressed as crude $ \left(\beta \right) $ and adjusted coefficient (a $ \beta \Big) $ , along with 95% confidence intervals (CIs). All regression analyses were performed as a complete case analysis and employed 2-tailed tests of significance and α = 0.05. Data were analyzed using Stata 14.2 (StataCorp, College Station, TX).

Consistency between the results of the primary analysis and the results of our sensitivity analysis was investigated to examine intervention effects by participating in any intervention arm (VR alone, VR followed by GPM+) vs. the control group (Thabane et al. Reference Thabane, Mbuagbaw, Zhang, Samaan, Marcucci, Ye, Thabane, Giangregorio, Dennis, Kosa, Debono, Dillenburg, Fruci, Bawor, Lee, Wells and Goldsmith2013).

Results

Enrolment and baseline characteristics

A total of 335 eligible and consenting participants were randomly assigned to VR (Arm 1) (n = 113), VR and GPM+ (Arm 2) (n = 112) and the control (SOC) (Arm 3) (n = 110) based on living in one of the three study sites randomized to each arm. The distribution of participant sociodemographic characteristics at baseline is reported in Table 1.

Table 1. Baseline characteristics of refugee youth participants enrolled in the Tushirikiane-4-MH study, Kampala, Uganda, 2022

Note: SD, standard deviation; n-missing case; VR arm = Kansanga/Kabalagala settlement; VR & GPM+ = Nsambya/Katwe settlement; Control = Rubaga settlement.

The mean age and SD of respondents was 20.8 years (SD: 3.01); nearly half (47.2%) were cisgender women. Most participants (75.5%) were from the Democratic Republic of the Congo. Baseline demographic characteristics were largely balanced across study arms, apart from age, place of birth, education level and food insecurity status (Table 1).

Participants’ baseline depression score was 7.23 (SD = 5.54). There was a statistically significant difference in baseline depression scores between the study arms (p < 0.001), with Arm 3 having the highest depression baseline scores (mean = 9.22; SD = 6.57), followed by Arm 2 (mean = 6.91; SD = 4.70), and then Arm 1 (VR alone) (mean = 5.62; SD = 3.80). The mean baseline mental health literacy scores differed significantly across study arms (p < 0.001), 54.87 (SD = 7.17) for Arm 1, 48.53 (SD = 7.29) for Arm 2 and GPM+, and 51.68 (SD = 5.82) for Arm 3 (Table 2). Baseline mental health stigma scores also differed significantly across study arms (p < 0.001). Control arm participants had the highest stigma scores (32.42, SD = 4.17), while the VR and VR + GPM Arms showed similar scores of 29.59 (SD = 7.02) and 29.46 (SD = 5.22), respectively. These baseline differences were adjusted for in multivariable analyses. Participant’s mean scores for baseline and post-intervention (8 weeks, 16 weeks) outcome characteristics are presented in Table 2.

Table 2. Distribution of mental health outcomes by intervention group and time point among refugee youth participants enrolled in the Tushirikiane-4-MH study in Kampala, Uganda, 2022

Note: SD, standard deviation; PHQ-9, Patient Heath Questionnaire; VR arm = Kansanga/Kabalagala settlement; VR & GPM+ = Nsambya/Katwe settlement; Control = Rubaga settlement. Prob > F (p-value) to indicate whether there are significant baseline differences among group means.

Study participant flow

For the 335 participants enrolled, the numbers and percentages of retained participants at the 8- and 16-week time points are shown in the CONSORT flow chart (Supplementary Figure 2). Excellent retention was found with 95.8%, and 94.8%, of participants retained at the 8-week follow-up, and 16-week follow-up, respectively. Data were missing for less than 5% of participants across all variables and time points and can thus be considered low. Sociodemographic characteristics were compared between those who had completed and those who had not completed the study at each time point, and there were no statistically significant differences found. The final data analysis was thus restricted to the participants who remained in the study.

Intervention effects on primary and secondary outcomes

Tables 3 and 4 show study arm comparisons on depression, mental health literacy, mental health stigma, self-compassion, mental well-being and adaptive coping strategies (main effects: interaction between group membership × time of measurement) measured at 8 weeks and 16 weeks. Multivariable analysis was conducted, after adjusting for prespecified covariates (age, gender) and baseline imbalances (place of birth, level of education, food security and relationship status). For gender-stratified analyses, we adjusted for age and baseline imbalances in place of birth, level of education, food security and relationship status.

Table 3. Effectiveness of virtual reality intervention approaches on mental health outcomes among refugee youth participants in the Tushirikiane-4-MH study in Kampala, Uganda, 2022

Note: CI, confidence interval; PHQ-9, Patient Health Questionnaire; Intervention effect is estimated as the interaction between intervention arm and time point, calculated using generalized estimating equation linear regression models with an unstructured correlation matrix; aβ*. Adjusted for prespecified covariates (age, gender) and baseline imbalances (place of birth, level of education, food security and relationship status), and baseline outcome scores.

Table 4. Effectiveness of virtual reality intervention approaches on mental health outcomes among refugee youth participants in the Tushirikiane-4-MH study in Kampala, Uganda, 2022, stratified by gender

Note: CI, confidence interval; PHQ-9, Patient Health Questionnaire; Intervention effect is estimated as the interaction between intervention arm and time point, calculated using generalized estimating equation linear regression models with an unstructured correlation matrix; aβ*. Adjusted for prespecified covariates (age) and baseline imbalances (place of birth, level of education, food security and relationship status), and baseline outcome scores.

Depression

Participants in Arm 1 (aβ = 0.27, 95% CI = −1.05, 1.58; p = 0.691) and Arm 2 (aβ = −0.36, 95% CI = −1.92, 1.20; p = 0.650) did not show any significant changes in depression scores when compared to the control arm at 8-weeks. At 16 weeks, Arm 2 participants reported statistically significant higher odds of depression (aβ = 2.24, 95% CI = 0.54, 3.93; p = 0.010) compared to the control arm; this association was significant among men (aβ = 3.67, 95% CI = 0.95, 6.38; p = 0.008), but not women. There was no significant difference in depression scores at 16 weeks in Arm 1 compared to Arm 3.

Mental health literacy

Adjusted regression scores for mental health literacy indicate that participants in both intervention arms had statistically significant higher mental health literacy compared to the control arm at 8 weeks: Arm 1 (aβ = 3.07, 95% CI = 1.09, 5.05; p = 0.002), and Arm 2 (aβ = 5.62, 95% CI = 3.61, 7.64; p < 0.001). At 16 weeks, participants in Arm 2 had significantly higher mental health literacy compared to the control arm (aβ = 2.98, 95% CI = 0.69, 5.26; p = 0.011); there were no significant differences for Arm 1 participants (aβ = 0.63, 95% CI = −1.21, 2.47; p = 0.502) compared to the control arm.

Mental health literacy scores among young men in Arm 2 were significantly higher than the control arm at 8 weeks (aβ = 7.35, 95% CI = 4.67, 10.03; p < 0.001) and 16 weeks (aβ = 3.25, 95% CI = −0.13, 6.63; p = 0.059). At 8 weeks, young men in Arm 1 (VR alone) reported higher mental health literacy scores compared to the control arm (aβ = 4.30, 95% CI = 1.58, 7.02; p = 0.002), but this was not sustained at 16 weeks (p = 0.567). Young women participants in Arm 2 reported significantly higher mental health literacy at 8 weeks compared to the control arm (aβ = 3.94, 95% CI = 0.95, 6.93; p = 0.010), but this was not sustained at 16 weeks. No significant changes were seen in mental health literacy scores among young women in Arm 1 compared to the control group.

Mental health stigma

There were no significant differences in mental health stigma at 8 weeks between Arm 1 or Arm 2 compared to the control arm, and there were no significant differences between Arm 2 and the control arm at 16 weeks. However, at 16 weeks, participants in Arm 1 reported higher mental health stigma compared with the control arm (aβ = 4.25, 95% CI = 1.92, 6.57; p < 0.001). In gender-stratified analyses, the only statistically significant mental health stigma differences at 8 weeks were among young men in Arm 1 who reported lower mental health stigma compared to the control arm (aβ = −3.10, 95% CI = −5.97, −0.23; p = 0.034). At 16 weeks, there were no significant differences in mental health stigma among young men between study arms, but mental health stigma was higher among young women in Arm 1 (aβ = 5.77, 95% CI = 2.40, 9.13; p = 0.001) and Arm 2 (aβ = 3.17, 95% CI = 0.22, 6.12; p = 0.035) compared to the control arm.

Self-compassion

Compared with participants in the control arm, participants in both intervention arms showed significantly higher self-compassion at nearly all follow-up periods. At 8 weeks, the higher self-compassion scores in Arm 1 compared to the control group were not statistically significant (aβ = 1.34, 95% CI = −0.16, 2.85; p = 0.081), yet were significantly higher at 16 weeks (aβ = 2.85, 95% CI = 1.24, 4.46; p = 0.001). Self-compassion scores in Arm 2 were significantly higher than the control arm at 8 weeks (aβ = 1.90, 95% CI = 0.55, 3.25; p = 0.006) and 16 weeks (aβ = 3.36, 95% CI = 1.76, 4.95; p < 0.001). Findings at 16 weeks for both intervention arms showed self-compassion was higher among both young men and young women compared with the control arm.

Mental well-being and adaptive coping

There were no statistically significant differences in mental well-being or adaptive coping between participants in the intervention versus control arms, except for at 8 weeks; Arm 2 reported lower adaptive coping than the control arm (aβ = −1.98, 95% CI = −3.49, −0.47; p = 0.010) but this difference was not sustained at 16 weeks. There were no significant differences in gender-stratified analyses at 16 weeks between Arm 1 or Arm 2 compared with the control arm in mental well-being or adaptive coping.

Sensitivity Analysis

Participants who received any intervention at any time point exhibited significantly lower depression (aβ = −1.93, 95% CI: −3.20, −0.65; p = 0.003) and reduced mental health stigma (aβ = −1.03, 95% CI: −3.95, −1.90; p = 0.022) compared to those who did not receive any intervention. Additionally, participants who received interventions reported significantly higher mental health literacy (aβ = 1.90, 95% CI: 0.05, 3.29; p = 0.008), greater self-compassion (aβ = 1.74, 95% CI: 0.70, 2.79, p = 0.001) and higher adaptive coping (aβ = 1.42, 95% CI: 0.44, 2.39, p = 0.004) compared to those who did not receive any intervention (Table 5).

Table 5. Sensitivity analyses of the effectiveness of virtual reality interventions on depression and other mental health outcomes among refugee and displaced youth aged 16–27 years in Kampala, Uganda, 2022

Note: CI, confidence interval; PHQ-9, Patient Health Questionnaire; Intervention effect is estimated as the interaction between intervention arm and time point, calculated using generalized estimating equation linear regression models with an unstructured correlation matrix; aβ*. Adjusted for prespecified covariates (age, gender), baseline imbalances (place of birth, level of education, food security and relationship status) and baseline outcome scores.

Discussion

This study examined the effectiveness of the Tushirikiane-4-MH VR intervention with urban refugee youth in Kampala, Uganda, and findings highlight the benefits of VR in improving self-compassion and mental health literacy. However, we found no significant difference in the VR intervention arms in reducing depression, our primary outcome. This study adds to the very limited evidence base of the effectiveness of VR mental health interventions in LMIC humanitarian settings, and signals that VR can benefit positive mental psychology outcomes.

Our findings corroborate prior research on the potential benefits of VR on positive psychology outcomes, such as self-compassion, in high-income contexts (Li Pira et al. Reference Li Pira, Aquilini, Davoli, Grandi and Ruini2023). We found improved self-compassion among VR participants – referring to viewing oneself with kindness, awareness of common humanity and mindfulness of negative self-perception – which is a protective factor associated with resilience (Neff Reference Neff2003, Reference Neff2011). Studies reveal that VR interventions are associated with increased self-compassion in high-income settings, with mixed results regarding improving depression (Falconer et al. Reference Falconer, Rovira, King, Gilbert, Antley, Fearon, Ralph, Slater and Brewin2016; Halim et al. Reference Halim, Stemmet, Hach, Porter, Liang, Vaezipour, Henry and Baghaei2023; Hidding et al. Reference Hidding, Veling, Pijnenborg and van der Stouwe2024). We also found improved self-compassion in the VR and GPM+ arm; we did not identify other GPM+ studies that evaluated its impact on self-compassion, so this is an area of future research for both PM+ and GPM+. Our study contributes to this knowledge base of VR, and VR alongside GPM+, as strategies to improve self-compassion in an LMIC context.

We also found increased mental health literacy among the VR and GPM+ arm. As this improvement was not reported in the VR-only arm, it suggests that GPM+ had particular benefits on improving mental health literacy, referring to knowledge and beliefs that help with understanding, preventing and caring for mental health challenges (Jorm Reference Jorm2012). This aligns with the psychoeducation focus of GPM+ (Dawson et al. Reference Dawson, Bryant, Harper, Kuowei Tay, Rahman, Schafer and van Ommeren2015). As mental health literacy is understudied in LMICs at large, including in African and humanitarian settings (Fox et al. Reference Fox, Kramer, Agrawal and Aniyizhai2022; Sodi et al. Reference Sodi, Quarshie, Oppong Asante, Radzilani-Makatu, Makgahlela, Nkoana and Mutambara2022), our findings identify VR alongside GPM+ as a promising approach to improve mental health literacy among youth in an urban LMIC humanitarian setting. As mental health literacy is associated with reduced adolescent psychological distress via improved psychological resilience (Zhang et al. Reference Zhang, Yue, Hao, Liu and Bao2023), and help-seeking self-efficacy (Kutcher et al. Reference Kutcher, Wei and Coniglio2016; Sodi et al. Reference Sodi, Quarshie, Oppong Asante, Radzilani-Makatu, Makgahlela, Nkoana and Mutambara2022) in other settings, future research can explore the benefits of mental health literacy with urban refugee youth in LMICs and apply strategies such as VR and GPM+.

Although improvements in positive mental health outcomes of self-compassion and mental health literacy in our study were corroborated in sensitivity analyses, our primary outcome of depression did not improve with either intervention arm. Our finding that the VR and GPM+ arm was not associated with reduced depression does not align with a study among conflict-affected adults in Nepal that found modest reductions following GPM+ in psychological distress and depression symptoms (Jordans et al. Reference Jordans, Kohrt, Sangraula, Turner, Wang, Shrestha, Ghimire, Van’T Hof, Bryant, Dawson, Marahatta, Luitel and Van Ommeren2021). This finding suggests that GPM+ may need to be further tailored for refugee adolescents and youth in Kampala to be efficacious in reducing depression. There is a scant evidence base assessing the effectiveness of GPM+ on reducing depression with youth, so further efficacy research with youth in LMIC conflict-affected settings is needed. By engaging with the interventions, it was expected that participants may be equipped with the information, skills and tools to improve their mental health outcomes, including depression. However, social and structural inequities are associated with pervasive and persistent depression among urban refugee youth in Kampala (Logie et al. Reference Logie, Berry, Okumu, Loutet, McNamee, Hakiza, Musoke, Mwima, Kyambadde and Mbuagbaw2022) – including food insecurity, violence and lower social support. Therefore, it is plausible that interventions such as ours that do not address these larger social-ecological drivers of depression may not be effective. Our findings are also corroborated by the mixed results reported in a review of VR’s effectiveness on reducing depression in high-income settings (Rowland et al. Reference Rowland, Casey, Ganapathy, Cassimatis and Clough2022). A review of mental health and psychosocial support programs on youth health in LMIC humanitarian settings found that among many intervention modalities, only CBT effectively reduced depression symptoms (Bangpan et al. Reference Bangpan, Felix, Soliman, D’Souza, A-T and Dickson2024); thus, future VR approaches could integrate CBT modalities.

While we found increased depression among Arm 2 at 16 weeks, this was only significant among young men in gender-disaggregated analyses and was not robust to sensitivity analyses. This suggests that the primary analyses of depression results could be influenced by some sociodemographic characteristics and design features (Thabane et al. Reference Thabane, Mbuagbaw, Zhang, Samaan, Marcucci, Ye, Thabane, Giangregorio, Dennis, Kosa, Debono, Dillenburg, Fruci, Bawor, Lee, Wells and Goldsmith2013). Social-contextual diversity in young refugee men’s experiences across Kampala’s informal settlements is evidenced in our findings of baseline differences in depression, age, place of birth, education level and food insecurity between study arms. This reflects the social organization of urban refugees in Kampala that poses challenges in designing RCTs with minimal baseline differences, as noted in past research (Logie et al. Reference Logie, Okumu, Berry, Hakiza, Baral, Musoke, Nakitende, Mwima, Kyambadde, Loutet, Batte, Lester, Neema, Newby and Mbuagbaw2023). It also raises the question of what we miss by controlling for variables such as food insecurity – that are known drivers of depression with this population (Logie et al. Reference Logie, Berry, Okumu, Loutet, McNamee, Hakiza, Musoke, Mwima, Kyambadde and Mbuagbaw2022) – that were higher in particular sites and how better understanding these baseline differences in food insecurity and depression may shed insight into larger social-ecological stressors and “meaningful sources of variation in the population” (p. 2) (Shapiro et al. Reference Shapiro, Klein and Morgan2021) that shape depression.

One unexpected finding was increased mental health stigma at 16 weeks, which in gender-disaggregated analyses was only significant among young women. Mental health stigma is a barrier to help-seeking among refugee youth (Marshall and Begoray Reference Marshall, Begoray, Bauer, Levin-Zamir, Pinheiro and Sørensen2019; Nickerson et al. Reference Nickerson, Byrow, Pajak, McMahon, Bryant, Christensen and Liddell2020), and there is limited evidence of efficacious mental health stigma reduction approaches with urban refugee youth in LMICs (Mehta et al. Reference Mehta, Clement, Marcus, Stona, Bezborodovs, Evans-Lacko, Palacios, Docherty, Barley, Rose, Koschorke, Shidhaye, Henderson and Thornicroft2015). There are also mixed findings regarding VR and mental health stigma reduction, with both significant (Yuen and Mak Reference Yuen and Mak2021) and nonsignificant effects (Lem et al. Reference Lem, Kohyama-Koganeya, Saito and Oyama2022) in other global contexts. It is plausible that our intervention did not sufficiently address mental health stigma drivers (e.g. social norms, values) (Stangl et al. Reference Stangl, Earnshaw, Logie, van Brakel, Simbayi, Barre and Dovidio2019), and we did not apply an intersectional approach that addressed the intersection of gender-based stigma and mental health stigma (Logie et al. Reference Logie, Earnshaw, Ahmed, Rowe, Fagan, Argyropoulos, Lorimer, MacKenzie, Ma, Yu, Kaida, Mbuagbaw, Nduna, Kagunda, Mmbaga, Perez-Brumer, Mudany and Meyers-Pantele2024a). Intersectional approaches to mental health stigma reduction (Sievwright et al. Reference Sievwright, Stangl, Nyblade, Lippman, Logie, de SM Veras, Zamudio-Haas, Poteat, Rao, Pachankis, Kumi Smith, Weiser, Brooks and Sevelius2022) are particularly important, as prior work in the United States noted gender, racial and ethnic identity differences in adolescent mental illness stigma and called for tailored stigma reduction (DuPont-Reyes et al. Reference DuPont-Reyes, Villatoro, Phelan, Painter and Link2020). In sensitivity analyses, any intervention participation was associated with reduced stigma; thus, our finding of increased stigma was not robust to sensitivity analyses and changed with the inclusion of both intervention arms, signaling the potential role of sociodemographic factors and/or sociocultural differences between study arms in shaping stigma outcomes.

There are several study limitations. First, the baseline differences between study arms were adjusted for in our analyses, yet indicate there may be sociocultural and contextual differences between study sites that can be considered when interpreting study results. Kampala hosts refugees from numerous countries who may live in informal settlements with others from similar communities, in turn creating sociocultural differences between informal settlements. In order to increase study pragmatism we included refugee youth in Kampala from many countries of origin, yet this increased heterogeneity in our sample and study design. We opted to randomize by site, rather than by individual, due to the shared physical and social environment of slums that could introduce contamination between arms (Ezeh et al. Reference Ezeh, Oyebode, Satterthwaite, Chen, Ndugwa, Sartori, Mberu, Melendez-Torres, Haregu, Watson, Caiaffa, Capon and Lilford2017). Although we accounted for clustering of individual repeated observations, we had insufficient sites to account for clustering within sites. As noted in prior research with this population: “This social organization and socio-cultural diversity of urban refugees in Kampala’s informal settlements presents challenges in designing a cluster randomized trial that requires multiple clusters (e.g. informal settlements) per condition with minimal baseline differences” (Logie et al. Reference Logie, Okumu, Berry, Hakiza, Baral, Musoke, Nakitende, Mwima, Kyambadde, Loutet, Batte, Lester, Neema, Newby and Mbuagbaw2023) (p. 11) and calls for larger randomized trials with methodological innovation. Second, the nonrandom sample precludes extrapolating findings to all urban refugee youth in Kampala. Third, we did not restrict inclusion criteria based on mental health screening to only include persons with moderate to severe levels of depression, and this may have allowed more accurate evaluations of the effect of the VR interventions on depression.

Conclusion

Our novel findings contribute to the growing evidence base of VR as a tool for addressing positive mental health outcomes in high-income settings, to show its efficacy in improving self-compassion with urban refugee youth in an LMIC context such as Kampala. Approaches for building resilience and positive psychology outcomes, as well as mental health literacy, with urban refugee youth in Kampala can incorporate VR and GPM+. VR-based interventions such as those implemented in this study involve up-front, one-time costs in developing the VR experience and purchasing VR headsets, but the headsets can be cleaned and reused and the VR experience can be similarly used again, signaling the possibility of scalability. GPM+, however, requires staff to coordinate logistics and implement in-person sessions, so is time and labor-intensive and would require more long-term costs in scaling up. While the VR approaches we tested were not efficacious in addressing depression, future multilevel approaches can supplement VR to address social and structural inequities that drive depression in urban refugee youth, such as violence, food insecurity and social isolation (Logie et al. Reference Logie, Berry, Okumu, Loutet, McNamee, Hakiza, Musoke, Mwima, Kyambadde and Mbuagbaw2022).

Open peer review

To view the open peer review materials for this article, please visit http://doi.org/10.1017/gmh.2025.3.

Supplementary material

The supplementary material for this article can be found at http://doi.org/10.1017/gmh.2025.3.

Data availability statement

Available upon reasonable request from C. Logie () and upon obtaining required research ethics board approvals in Canada and Uganda.

Acknowledgments

We would like to acknowledge the support and contributions of Young African Refugees for Integral Development (YARID), Uganda Ministry of Health, Uganda National AIDS Control Program, Dr. Gabby Serafini (WelTel), Mildmay Uganda, Organization for Gender Empowerment and Rights Advocacy (OGERA Uganda), Most At Risk Population Initiative, Uganda Office of the Prime Minister Department of Refugees and Tushirikiane Peer Navigators.

Author contribution

Study design: CHL, MO, NK, RH, DKM, PK, LM. Data collection: CHL, MO, LG, JLK, NK, RH, DKM, AN, BK, RL. Data management: CHL, ZA, FM, JLK, RH, DKM, AN, BK, PK, RL, LM. Manuscript writing: CHL, ZA, FM, LM. Manuscript editing: MO, LG, JLK, NK, RH, DKM, AN, BK, PK, RL.

Financial support

This study is funded by the Canadian Institutes of Health Research (CIHR) (Project Grant 389142) and Grand Challenges Canada (R-GMH-POC-2107-43740). The funding agencies played no role in the design or execution of the study. CHL is also funded by the Canada Research Chairs program (Tier 2: Logie), Canada Foundation for Innovation (Logie Lab) and the Canadian Institutes of Health Research (COVID-19 Wider Impacts Grant). Gittings was also supported by the Social Sciences and Humanities Research Council of Canada (postdoctoral fellowship).

Competing interest

RL is an academic physician-researcher and also has interests in a nonprofit and private company social enterprise, WelTel Inc., that develops and provides digital health software. He is not being paid or otherwise compensated by WelTel for this project. No other authors declare a conflict of interest.

Ethics statement

The Tushirikiane-4-MH trial has been approved by the University of Toronto Research Ethics Committee (May 12, 2021), Mildmay Uganda Research Ethics Committee (June 24, 2021) and the Uganda National Science and Technology Council (January 6, 2022). This trial is registered at ClinicalTrials.gov (NCT05187689). All participants provided written informed consent with the support of a peer navigator after receiving information about the study to ensure an understanding of refusal/withdrawal rights, study process and expectations. We received ethical approval to allow teens aged 16–17 to participate without parental consent.

References

Abraha, I and Montedori, A (2010) Modified intention to treat reporting in randomised controlled trials: Systematic review. The BMJ 340, c2697. https://doi.org/10.1136/bmj.c2697.Google Scholar
Akhtar, A, Giardinelli, L, Bawaneh, A, Awwad, M, Naser, H, Whitney, C, Jordans, MJD, Sijbrandij, M and Bryant, RA (2020) Group problem management plus (gPM+) in the treatment of common mental disorders in Syrian refugees in a Jordanian camp: Study protocol for a randomized controlled trial. BMC Public Health 20(1), 390390. https://doi.org/10.1186/s12889-020-08463-5.Google Scholar
Baghaei, N, Chitale, V, Hlasnik, A, Stemmet, L, H-N, Liang and Porter, R (2021) Virtual reality for supporting the treatment of depression and anxiety: Scoping review. JMIR Mental Health 8(9), e29681. https://doi.org/10.2196/29681.Google Scholar
Bangpan, M, Felix, L, Soliman, F, D’Souza, P, A-T, Jieman and Dickson, K (2024) The impact of mental health and psychosocial support programmes on children and young people’s mental health in the context of humanitarian emergencies in low- and middle-income countries: A systematic review and meta-analysis. Cambridge Prisms: Global Mental Health 11, e21. https://doi.org/10.1017/gmh.2024.17.Google Scholar
Bech, P, Olsen, LR, Kjoller, M and Rasmussen, NK (2003) Measuring well-being rather than the absence of distress symptoms: A comparison of the SF-36 mental health subscale and the WHO-five well-being scale. International Journal of Methods in Psychiatric Research 12(2), 8591. https://doi.org/10.1002/mpr.145.Google Scholar
Bolton, P, Bass, J, Betancourt, T, Speelman, L, Onyango, G, Clougherty, KF, Neugebauer, R, Murray, L and Verdeli, H (2007) Interventions for depression symptoms among adolescent survivors of war and displacement in northern Uganda: A randomized controlled trial. JAMA 298(5), 519527. https://doi.org/10.1001/jama.298.5.519.Google Scholar
Bryant, RA, Schafer, A, Dawson, KS, Anjuri, D, Mulili, C, Ndogoni, L, Koyiet, P, Sijbrandij, M, Ulate, J, Harper Shehadeh, M, Hadzi-Pavlovic, D and van Ommeren, M (2017) Effectiveness of a brief behavioural intervention on psychological distress among women with a history of gender-based violence in urban Kenya: A randomised clinical trial. PLoS Medicine 14(8), e1002371. https://doi.org/10.1371/journal.pmed.1002371.Google Scholar
Bukuluki, P, Mwenyango, H, Katongole, SP, Sidhva, D and Palattiyil, G (2020) The socio-economic and psychosocial impact of Covid-19 pandemic on urban refugees in Uganda. Social Sciences & Humanities Open 2(1), 100045. https://doi.org/10.1016/j.ssaho.2020.100045.Google Scholar
Campos, L, Dias, P, Costa, M, Rabin, L, Miles, R, Lestari, S, Feraihan, R, Pant, N, Sriwichai, N, Boonchieng, W and Yu, L (2022) Mental health literacy questionnaire-short version for adults (MHLq-SVa): Validation study in China, India, Indonesia, Portugal, Thailand, and the United States. BMC Psychiatry 22(1), 713. https://doi.org/10.1186/s12888-022-04308-0.Google Scholar
Chow, S-C, Wang, H and Shao, J (2007) Sample Size Calculations in Clinical Research, 2nd Edn. New York: Chapman and Hall/CRC. https://doi.org/10.1201/9781584889830.Google Scholar
Dawson, KS, Bryant, RA, Harper, M, Kuowei Tay, A, Rahman, A, Schafer, A and van Ommeren, M (2015) Problem management plus (PM+): A WHO transdiagnostic psychological intervention for common mental health problems. World Psychiatry 14(3), 354357. https://doi.org/10.1002/wps.20255.Google Scholar
Day, EN, Edgren, K and Eshleman, A (2007) Measuring stigma toward mental illness: Development and application of the mental illness stigma scale. Journal of Applied Social Psychology 37(10), 21912219. https://doi.org/10.1111/j.1559-1816.2007.00255.x.Google Scholar
DuPont-Reyes, MJ, Villatoro, AP, Phelan, JC, Painter, K and Link, BG (2020) Adolescent views of mental illness stigma: An intersectional lens. American Journal of Orthopsychiatry 90(2), 201211. https://doi.org/10.1037/ort0000425.Google Scholar
Ertl, V, Pfeiffer, A, Schauer, E, Elbert, T and Neuner, F (2011) Community-implemented trauma therapy for former child soldiers in northern Uganda: A randomized controlled trial. JAMA 306(5), 503512. https://doi.org/10.1001/jama.2011.1060.Google Scholar
Eshuis, LV, van Gelderen, MJ, van Zuiden, M, Nijdam, MJ, Vermetten, E, Olff, M and Bakker, A (2021) Efficacy of immersive PTSD treatments: A systematic review of virtual and augmented reality exposure therapy and a meta-analysis of virtual reality exposure therapy. Journal of Psychiatric Research 143, 516527. https://doi.org/10.1016/j.jpsychires.2020.11.030.Google Scholar
Ezeh, A, Oyebode, O, Satterthwaite, D, Chen, Y-F, Ndugwa, R, Sartori, J, Mberu, B, Melendez-Torres, GJ, Haregu, T, Watson, SI, Caiaffa, W, Capon, A and Lilford, RJ (2017) The history, geography, and sociology of slums and the health problems of people who live in slums. The Lancet 389(10068), 547558. https://doi.org/10.1016/S0140-6736(16)31650-6.Google Scholar
Falconer, CJ, Rovira, A, King, JA, Gilbert, P, Antley, A, Fearon, P, Ralph, N, Slater, M and Brewin, CR (2016) Embodying self-compassion within virtual reality and its effects on patients with depression. BJPsych Open 2(1), 7480. https://doi.org/10.1192/bjpo.bp.115.002147.Google Scholar
Fox, S, Kramer, E, Agrawal, P and Aniyizhai, A (2022) Refugee and migrant health literacy interventions in high-income countries: A systematic review. Journal of Immigrant and Minority Health 24(1), 207236. https://doi.org/10.1007/s10903-021-01152-4.Google Scholar
de Graaff, AM, Cuijpers, P, Twisk, JWR, Kieft, B, Hunaidy, S, Elsawy, M, Gorgis, N, Bouman, TK, Lommen, MJJ, Acarturk, C, Bryant, R, Burchert, S, Dawson, KS, Fuhr, DC, Hansen, P, Jordans, M, Knaevelsrud, C, McDaid, D, Morina, N, Moergeli, H, Park, A-L, Roberts, B, Ventevogel, P, Wiedemann, N, Woodward, A and Sijbrandij, M (2023) Peer-provided psychological intervention for Syrian refugees: Results of a randomised controlled trial on the effectiveness of problem management plus. BMJ Mental Health 26(1). https://doi.org/10.1136/bmjment-2022-300637.Google Scholar
Halim, I, Stemmet, L, Hach, S, Porter, R, Liang, H-N, Vaezipour, A, Henry, JD and Baghaei, N (2023) Individualized virtual reality for increasing self-compassion: Evaluation study. JMIR Mental Health 10, e47617. https://doi.org/10.2196/47617.Google Scholar
Hidding, M, Veling, W, Pijnenborg, GHM and van der Stouwe, ECD (2024) A single-session VR intervention addressing self-compassion and self-criticism with and without perspective change: Results of a randomized controlled experiment. Behaviour Research and Therapy 173, 104466. https://doi.org/10.1016/j.brat.2023.104466.Google Scholar
Im, H, Ferguson, AB, Warsame, AH and Isse, MM (2017) Mental health risks and stressors faced by urban refugees: Perceived impacts of war and community adversities among Somali refugees in Nairobi. International Journal of Social Psychiatry 63(8), 686693. https://doi.org/10.1177/0020764017728966.Google Scholar
Jordans, MJD, Kohrt, BA, Sangraula, M, Turner, EL, Wang, X, Shrestha, P, Ghimire, R, Van’T Hof, E, Bryant, RA, Dawson, KS, Marahatta, K, Luitel, NP and Van Ommeren, M (2021) Effectiveness of group problem management plus, a brief psychological intervention for adults affected by humanitarian disasters in Nepal: A cluster randomized controlled trial. PLoS Medicine 18(6), e1003621. https://doi.org/10.1371/journal.pmed.1003621.Google Scholar
Jorm, AF (2012) Mental health literacy; empowering the community to take action for better mental health. American Psychologist 67(3), 231243. https://doi.org/10.1037/a0025957.Google Scholar
Khan, MN, Hamdani, SU, Chiumento, A, Dawson, K, Bryant, RA, Sijbrandij, M, Nazir, H, Akhtar, P, Masood, A, Wang, D, Wang, E, Uddin, I, van Ommeren, M and Rahman, A (2017) Evaluating feasibility and acceptability of a group WHO trans-diagnostic intervention for women with common mental disorders in rural Pakistan: A cluster randomised controlled feasibility trial. Epidemiology and Psychiatric Sciences 28(1), 7787. https://doi.org/10.1017/S2045796017000336.Google Scholar
Kutcher, S, Wei, Y and Coniglio, C (2016) Mental health literacy: Past, present, and future. The Canadian Journal of Psychiatry 61(3), 154158. https://doi.org/10.1177/0706743715616609.Google Scholar
Lem, WG, Kohyama-Koganeya, A, Saito, T and Oyama, H (2022) Effect of a virtual reality contact-based educational intervention on the public stigma of depression: Randomized controlled pilot study. JMIR Formative Research 6(5), e28072. https://doi.org/10.2196/28072.Google Scholar
Lester, RT, Ritvo, P, Mills, EJ, Kariri, A, Karanja, S, Chung, MH, Jack, W, Habyarimana, J, Sadatsafavi, M, Najafzadeh, M, Marra, CA, Estambale, B, Ngugi, E, Ball, TB, Thabane, L, Gelmon, LJ, Kimani, J, Ackers, M and Plummer, FA (2010) Effects of a mobile phone short message service on antiretroviral treatment adherence in Kenya (WelTel Kenya1): A randomised trial. The Lancet 376(9755), 18381845. https://doi.org/10.1016/S0140-6736(10)61997-6.Google Scholar
Li Pira, G, Aquilini, B, Davoli, A, Grandi, S and Ruini, C (2023) The use of virtual reality interventions to promote positive mental health: Systematic literature review. JMIR Mental Health 10, e44998. https://doi.org/10.2196/44998.Google Scholar
Liang, K-Y and Zeger, SL (1986) Longitudinal data analysis using generalized linear models. Biometrika 73(1), 1322. https://doi.org/10.2307/2336267.Google Scholar
Liang, KY and Zeger, SL (1993) Regression analysis for correlated data. Annual Review of Public Health 14(1), 4368. https://doi.org/10.1146/annurev.pu.14.050193.000355.Google Scholar
Logie, C, Okumu, M, Hakiza, R, Kibuuka Musoke, D, Berry, I, Mwima, S, Kyambadde, P, Kiera, UM, Loutet, M, Neema, S, Newby, K, McNamee, C, Baral, SD, Lester, R, Musinguzi, J and Mbuagbaw, L (2021a) Mobile health–supported HIV self-testing strategy among urban refugee and displaced youth in Kampala, Uganda: Protocol for a cluster randomized trial (Tushirikiane, supporting each other). JMIR Research Protocols 10(2), e26192. https://doi.org/10.2196/26192.Google Scholar
Logie, CH, Berry, I, Okumu, M, Loutet, M, McNamee, C, Hakiza, R, Musoke, DK, Mwima, S, Kyambadde, P and Mbuagbaw, L (2022) The prevalence and correlates of depression before and after the COVID-19 pandemic declaration among urban refugee adolescents and youth in informal settlements in Kampala, Uganda: A longitudinal cohort study. Annals of Epidemiology 66, 3743. https://doi.org/10.1016/j.annepidem.2021.11.005.Google Scholar
Logie, CH, Earnshaw, V, Ahmed, R, Rowe, SE, Fagan, A, Argyropoulos, A, Lorimer, N, MacKenzie, F, Ma, J, Yu, I, Kaida, A, Mbuagbaw, L, Nduna, M, Kagunda, J, Mmbaga, BT, Perez-Brumer, A, Mudany, M and Meyers-Pantele, SA (2024a) Experiences of gender-based stigma and health care-related outcomes in the African region: A scoping review. Stigma and Health. https://doi.org/10.1037/sah0000538.Google Scholar
Logie, CH, MacKenzie, F, Malama, K, Lorimer, N, Lad, A, Zhao, M, Narasimhan, M, Fahme, S, Turan, B, Kagunda, J, Konda, K, Hasham, A and Perez-Brumer, A (2024b) Sexual and reproductive health among forcibly displaced persons in urban environments in low and middle-income countries: Scoping review findings. Reproductive Health 21(1), 51. https://doi.org/10.1186/s12978-024-01780-7.Google Scholar
Logie, CH, Okumu, M, Berry, I, Hakiza, R, Baral, SD, Musoke, DK, Nakitende, A, Mwima, S, Kyambadde, P, Loutet, M, Batte, S, Lester, R, Neema, S, Newby, K and Mbuagbaw, L (2023) Findings from the Tushirikiane mobile health (mHealth) HIV self-testing pragmatic trial with refugee adolescents and youth living in informal settlements in Kampala, Uganda. Journal of the International AIDS Society 26(10), e26185. https://doi.org/10.1002/jia2.26185.Google Scholar
Logie, CH, Okumu, M, Berry, I, Hakiza, R, Kibuuka Musoke, D, Kyambadde, P, Mwima, S, Lester, RT, Perez-Brumer, AG, Baral, S and Mbuagbaw, L (2021b) Kukaa Salama (staying safe): Study protocol for a pre/post-trial of an interactive mHealth intervention for increasing COVID-19 prevention practices with urban refugee youth in Kampala, Uganda. BMJ Open 11(11), e055530. https://doi.org/10.1136/bmjopen-2021-055530.Google Scholar
Logie, CH, Okumu, M, Mwima, S, Hakiza, R, Chemutai, D and Kyambadde, P (2020) Contextual factors associated with depression among urban refugee and displaced youth in Kampala, Uganda: Findings from a cross-sectional study. Conflict and Health 14(1), 45. https://doi.org/10.1186/s13031-020-00289-7.Google Scholar
Marshall, E and Begoray, D (2019) 17 Mental health literacy for refugee youth: Acultural approach. In Orkan Okan, Bauer, Ullrich, Levin-Zamir, Diane, Pinheiro, Paulo and Sørensen, Kristine, International Handbook of Health Literacy: Research, Practice and Policy across the Life-Span. Bristol, UK: Policy Press, 261274. https://doi.org/10.56687/9781447344520-020.Google Scholar
Mehta, N, Clement, S, Marcus, E, Stona, A-C, Bezborodovs, N, Evans-Lacko, S, Palacios, J, Docherty, M, Barley, E, Rose, D, Koschorke, M, Shidhaye, R, Henderson, C and Thornicroft, G (2015) Evidence for effective interventions to reduce mental health-related stigma and discrimination in the medium and long term: Systematic review. The British Journal of Psychiatry 207(5), 377384. https://doi.org/10.1192/bjp.bp.114.151944.Google Scholar
Meyer, SR, Lasater, M and Tol, WA (2017) Migration and mental health in low- and middle-income countries: A systematic review. Psychiatry 80(4), 374381. https://doi.org/10.1080/00332747.2017.1354608.Google Scholar
Montedori, A, Bonacini, MI, Casazza, G, Luchetta, ML, Duca, P, Cozzolino, F and Abraha, I (2011) Modified versus standard intention-to-treat reporting: Are there differences in methodological quality, sponsorship, and findings in randomized trials? A cross-sectional study. Trials 12(1), 58. https://doi.org/10.1186/1745-6215-12-58.Google Scholar
Muggah, R and Abdenur, AE (2018) Refugees and the City: The Twenty-first-century Front Line. World Refugee Council Research Paper (2). https://www.cigionline.org/publications/refugees-and-city-twenty-first-century-front-line/Google Scholar
Neff, K (2003) Self-compassion: An alternative conceptualization of a healthy attitude toward oneself. Self and Identity 2(2), 85101. https://doi.org/10.1080/15298860309032.Google Scholar
Neff, KD (2011) Self-compassion, self-esteem, and well-being. Social and Personality Psychology Compass 5(1), 112. https://doi.org/10.1111/j.1751-9004.2010.00330.x.Google Scholar
Neff, KD, Bluth, K, Tóth-Király, I, Davidson, O, Knox, MC, Williamson, Z and Costigan, A (2021) Development and validation of the self-compassion scale for youth. Journal of Personality Assessment 103(1), 92105. https://doi.org/10.1080/00223891.2020.1729774.Google Scholar
Negeri, ZF, Levis, B, Sun, Y, He, C, Krishnan, A, Wu, Y, Bhandari, PM, Neupane, D, Brehaut, E, Benedetti, A and Thombs, BD (2021) Accuracy of the patient health Questionnaire-9 for screening to detect major depression: Updated systematic review and individual participant data meta-analysis. BMJ n2183. https://doi.org/10.1136/bmj.n2183.Google Scholar
Nickerson, A, Byrow, Y, Pajak, R, McMahon, T, Bryant, RA, Christensen, H and Liddell, BJ (2020) ‘Tell your story’: A randomized controlled trial of an online intervention to reduce mental health stigma and increase help-seeking in refugee men with posttraumatic stress. Psychological Medicine 50(5), 781792. https://doi.org/10.1017/S0033291719000606.Google Scholar
Purgato, M, Gross, AL, Betancourt, T, Bolton, P, Bonetto, C, Gastaldon, C, Gordon, J, O’Callaghan, P, Papola, D, Peltonen, K, Punamaki, R-L, Richards, J, Staples, JK, Unterhitzenberger, J, van Ommeren, M, de Jong, J, Jordans, MJD, Tol, WA and Barbui, C (2018) Focused psychosocial interventions for children in low-resource humanitarian settings: A systematic review and individual participant data meta-analysis. The Lancet Global Health 6(4), e390e400. https://doi.org/10.1016/S2214-109X(18)30046-9.Google Scholar
Richards, J, Foster, C, Townsend, N and Bauman, A (2014) Physical fitness and mental health impact of a sport-for-development intervention in a post-conflict setting: Randomised controlled trial nested within an observational study of adolescents in Gulu, Uganda. BMC Public Health 14(1), 619. https://doi.org/10.1186/1471-2458-14-619.Google Scholar
Rowland, DP, Casey, LM, Ganapathy, A, Cassimatis, M and Clough, BA (2022) A decade in review: A systematic review of virtual reality interventions for emotional disorders. Psychosocial Intervention 31(1), 120. https://doi.org/10.5093/pi2021a8.Google Scholar
Saliba, S and Silver, I (2020) Cities as partners: The case of Kampala. Forced Migration Review (63), 4143.Google Scholar
Sangraula, M, Turner, EL, Luitel, NP, van‘t Hof, E, Shrestha, P, Ghimire, R, Bryant, R, Marahatta, K, van Ommeren, M, Kohrt, BA and Jordans, MJD (2020) Feasibility of group problem management plus (PM+) to improve mental health and functioning of adults in earthquake-affected communities in Nepal. Epidemiology and Psychiatric Sciences 29, e130. https://doi.org/10.1017/S2045796020000414.Google Scholar
Shapiro, JR, Klein, SL and Morgan, R (2021) Stop ‘controlling’ for sex and gender in global health research. BMJ Global Health 6(4), e005714. https://doi.org/10.1136/bmjgh-2021-005714.Google Scholar
Sievwright, KM, Stangl, AL, Nyblade, L, Lippman, SA, Logie, CH, de SM Veras, MA, Zamudio-Haas, S, Poteat, T, Rao, D, Pachankis, JE, Kumi Smith, M, Weiser, SD, Brooks, RA and Sevelius, JM (2022) An expanded definition of intersectional stigma for public Health Research and praxis. American Journal of Public Health 112(S4), S356S361. https://doi.org/10.2105/AJPH.2022.306718.Google Scholar
Silove, D, Ventevogel, P and Rees, S (2017) The contemporary refugee crisis: An overview of mental health challenges. World Psychiatry 16(2), 130139. https://doi.org/10.1002/wps.20438.Google Scholar
Sodi, T, Quarshie, EN-B, Oppong Asante, K, Radzilani-Makatu, M, Makgahlela, M, Nkoana, S and Mutambara, J (2022) Mental health literacy of school-going adolescents in sub-Saharan Africa: A regional systematic review protocol. BMJ Open 12(9), e063687. https://doi.org/10.1136/bmjopen-2022-063687.Google Scholar
Spirito, A, Stark, LJ and Williams, C (1988) Development of a brief coping checklist for use with pediatric populations. Journal of Pediatric Psychology 13(4), 555574. https://doi.org/10.1093/jpepsy/13.4.555.Google Scholar
Stangl, AL, Earnshaw, VA, Logie, CH, van Brakel, W, Simbayi, L C, Barre, I and Dovidio, JF (2019) The health stigma and discrimination framework: A global, crosscutting framework to inform research, intervention development, and policy on health-related stigmas. BMC Medicine 17(1), 3131. https://doi.org/10.1186/s12916-019-1271-3.Google Scholar
Thabane, L, Mbuagbaw, L, Zhang, S, Samaan, Z, Marcucci, M, Ye, C, Thabane, M, Giangregorio, L, Dennis, B, Kosa, D, Debono, VB, Dillenburg, R, Fruci, V, Bawor, M, Lee, J, Wells, G and Goldsmith, CH (2013) A tutorial on sensitivity analyses in clinical trials: The what, why, when and how. BMC Medical Research Methodology 13(1), 92. https://doi.org/10.1186/1471-2288-13-92.Google Scholar
UNHCR (2022a) Global Report 2022. Geneva: UNHCR. Available at https://reporting.unhcr.org/global-report-2022Google Scholar
UNHCR (2022b) Uganda - Refugee Statistics January 2022 - Kampala. Geneva: UNHCR. Available at https://data.unhcr.org/en/documents/details/91066Google Scholar
Women’s Refugee Comission (2011) The Living Ain’t Easy, Urban Refugees in Kampala. New York: Women’s Refugee Comission. Available at https://www.womensrefugeecommission.org/research-resources/the-living-ain-t-easy-urban-refugees-in-kampala/Google Scholar
World Health Organization (2020) Group Problem Management Plus (Group PM+): Group Psychological Help for Adults Impaired by Distress in Communities Exposed to Adversity (Generic field-trial version 1.0). Geneva. Available at https://www.who.int/publications-detail-redirect/9789240008106Google Scholar
World Health Organization, War Trauma Foundation and World Vision International (2011) Psychological first aid: Guide for Field Workers. Geneva. Available at https://www.who.int/publications/i/item/9789241548205Google Scholar
Yuen, ASY and Mak, WWS (2021) The effects of immersive virtual reality in reducing public stigma of mental illness in the university population of Hong Kong: Randomized controlled trial. Journal of Medical Internet Research 23(7), e23683. https://doi.org/10.2196/23683.Google Scholar
Zhang, X, Yue, H, Hao, X, Liu, X and Bao, H (2023) Exploring the relationship between mental health literacy and psychological distress in adolescents: A moderated mediation model. Preventive Medicine Reports 33, 102199. https://doi.org/10.1016/j.pmedr.2023.102199.Google Scholar
Figure 0

Table 1. Baseline characteristics of refugee youth participants enrolled in the Tushirikiane-4-MH study, Kampala, Uganda, 2022

Figure 1

Table 2. Distribution of mental health outcomes by intervention group and time point among refugee youth participants enrolled in the Tushirikiane-4-MH study in Kampala, Uganda, 2022

Figure 2

Table 3. Effectiveness of virtual reality intervention approaches on mental health outcomes among refugee youth participants in the Tushirikiane-4-MH study in Kampala, Uganda, 2022

Figure 3

Table 4. Effectiveness of virtual reality intervention approaches on mental health outcomes among refugee youth participants in the Tushirikiane-4-MH study in Kampala, Uganda, 2022, stratified by gender

Figure 4

Table 5. Sensitivity analyses of the effectiveness of virtual reality interventions on depression and other mental health outcomes among refugee and displaced youth aged 16–27 years in Kampala, Uganda, 2022

Supplementary material: File

Logie et al. supplementary material

Logie et al. supplementary material
Download Logie et al. supplementary material(File)
File 791.7 KB

Author comment: Findings from the Tushirikiane-4-MH (supporting each other for mental health) mobile health–supported virtual reality randomized controlled trial among urban refugee youth in Kampala, Uganda — R0/PR1

Comments

August16, 2024

Editor-in-Chiefs

Professor Judy Bass and Professor Dixon Chibanda

RE: Submission of an original research article: “Findings from the Tushirikiane-4-MH (Supporting Each Other for Mental Health) Mobile Health–Supported Virtual Reality Randomized Controlled Trial Among Urban Refugee Youth in Kampala, Uganda”

Dear Dr. Bass and Dr. Chibanda and the Global Mental Health Editorial Board:

On behalf of my co-authors I am submitting the enclosed original manuscript for review by the Global Mental Health Editorial Board. We thank you for the opportunity.

Youth living in low and middle-income country (LMIC) humanitarian settings disproportionately experience mental health challenge. While virtual reality (VR) showing promise in promoting mental wellbeing in high income settings, its potential benefits for mental health are understudied in LMIC at large, including humanitarian settings. To address this knowledge gap, we conducted a randomized controlled trial with an urban refugee youth community-based organization to develop and evaluate a VR intervention focused on mental health literacy, stigma, and coping strategies. We examined the VR intervention conducted on its own, and VR followed by group problem management plus (GMP+), compared to a control group with urban refugee youth in Kampala, Uganda.

We found that among participants (n=335, mean age: 20.77, standard deviation: 3.01) there were no depression reductions for either intervention arm (VR alone, VR followed by GMP+) at 16-week follow up compared to the control group. At 16-weeks, mental health literacy was significantly higher for the VR followed by GMP+ arm compared with the control group, and self-compassion was significantly higher in both intervention groups (VR, VR followed by GMP+) compared with the control group. Study findings suggest that VR alongside GPM+ may benefit positive mental health outcomes such as self-compassion and mental health literacy among urban refugee youth in Kampala, but these interventions were not effective in reducing depression. Future approaches can focus on reducing social and structural inequities that drive depression in urban refugee youth in Kampala.

We believe that this manuscript is well suited for publication in Global Mental Health. It targets a broad audience that will be interested in its findings, including researchers focused on urban refugees, humanitarian settings, refugee adolescents and youth in low and middle-income contexts, mental health disparities, and new technologies for mental health promotion.

We look forward to your review and comments.

Sincerely,

Carmen Logie, PhD

Professor, Factor-Inwentash Faculty of Social Work , University of Toronto, Canada

Canada Research Chair in Global Health Equity & Social Justice with Marginalized Populations

Review: Findings from the Tushirikiane-4-MH (supporting each other for mental health) mobile health–supported virtual reality randomized controlled trial among urban refugee youth in Kampala, Uganda — R0/PR2

Conflict of interest statement

Reviewer declares none.

Comments

This study tackles an important issue but suffers from several critical concerns regarding its research design, methodological approach, and interpretation of intervention effectiveness. Although the use of virtual reality (VR) for improving the mental health of refugee youth holds promise, this study falls short of meeting those expectations, leaving substantial doubts about the intervention’s efficacy and its broader applicability. The research requires significant refinement and further investigation.

1. In low-income countries and humanitarian crisis settings, interventions need to be both simple and cost-effective. VR technology, however, necessitates expensive equipment and technical support, which raises questions about the availability of the necessary infrastructure and resources to sustain such interventions in these environments. The study would benefit from a more thorough discussion of the practical challenges and feasibility of implementing VR interventions within refugee communities in Uganda over the long term.

2. Randomized controlled trials (RCTs) are integral to assessing the efficacy of interventions, but this study demonstrates significant imbalance in baseline depression levels between the groups, undermining the validity of its findings. For example, the control group (Arm 3) had a considerably higher mean depression score of 9.22 compared to the VR intervention group (Arm 1), which had a mean score of 5.62. This discrepancy complicates the interpretation of whether observed changes in the intervention groups were attributable to the intervention itself. Such an imbalance significantly weakens the internal validity of the study. To more accurately evaluate the effect of VR on depression, it would have been more appropriate to include participants with moderate or higher levels of depression at baseline. Given that only 27.5% of participants exhibited moderate to severe depression, the study’s design may not be well-suited for assessing improvements in depression. A more detailed explanation of the exclusion criteria would help address this issue.

3. The VR intervention, a central element of this study, requires further explanation. Specifically, the study needs to clearly articulate the mechanisms through which the intervention was expected to reduce depression. Given that the VR content was focused on improving health literacy, reducing mental health stigma, and promoting self-compassion, the observed changes in these secondary outcomes are not unexpected. However, a more in-depth discussion is needed to explain why the primary outcome—depression—did not show significant change, considering both the research design and the unique characteristics of the study participants.

Review: Findings from the Tushirikiane-4-MH (supporting each other for mental health) mobile health–supported virtual reality randomized controlled trial among urban refugee youth in Kampala, Uganda — R0/PR3

Conflict of interest statement

Reviewer declares none.

Comments

Comments to authors:

Overall:

Thank you for the opportunity to review this study. I enjoyed reading it. VR, as a mental health intervention by itself, and the combination of VR and GPM+, are both interesting and novel especially in LMIC settings. My overall feedback is that it would be helpful to clarify why a three-arm approach was chosen for this study. The overall framing of the study and the presentation, especially in the introduction and discussion, focus much more on the VR rather than VR and GPM+. Is the focus of the study to test the added potential benefit of GPM+ to VR compared to VR alone or to test the use of VR in general? The paper is currently written as if the purpose is to test the benefits of VR alone and if that is the case, why include a VR and GPM+ arm? I have some recommendations below to further refine the approach.

Introduction:

- Line 98 – should be forcibly displaced not displayed

- In the last paragraph of the Introduction, it would be helpful to add how the study aims to address the knowledge gaps outlined in the previous paragraph. What makes the VR and GPM+ approach different from the referenced studies? How could research on this intervention help to potentially fill in the gaps that currently exist? What is the evidence base for using VR as a mental health intervention?

- I find that the combination of VR and GPM+ is novel and could be helpful for adolescents. Could you share more information on why these two interventions are being combined? Since arm 1 and 2 are being compared with the SOC, what is the added value of using VR before GPM+?

- I would suggest shifting some of the background information about VR and GPM+ to the introduction and this may be helpful to address some of the points I listed in the previous bullets. The description of the interventions in the methods section could then go into further detail on how the two interventions were implemented.

- It is mentioned in the 2nd sentence of the last paragraph of the Introduction that feasibility is also being evaluated. However, feasibility is not listed in the primary or secondary study objectives that are highlighted at the end of the paragraph starting with the sentence “the primary study objective is...”. How was feasibility measured or determined?

Methods

- I find the section about recruitment from the previous studies to be slightly confusing and I would suggest clarifying some details around how the recruitment occurred. Please clarify what you mean by “additional purposive recruitment” and how exactly participants were recruited from the previous studies. Aside from the inclusion criteria listed, were there any exclusion criteria? Did randomization to the three study arms occur all at once or were participants recruited and randomized at different time points? In the results section, I see that there were statistically significant differences at baseline of some of the primary and secondary outcomes as well as the demographics across arms, so clarifying details in the methods section on recruitment procedures would be helpful to understand these differences.

- Were there any attempts at masking the research team to the study allocation of the participants?

- Was the VR experience (Arm 1) a one-time intervention or did participants receive several sessions?

- Aside from identifying as refugees or displaced persons and their age, what were other criteria for becoming a peer navigator to deliver GPM+? How were they trained and supervised? How were issues of safety related to suicidality managed? Were questions on self-harm asked?

- How were participants divided into various PM+ group? Was it based on location, age, or gender? Rather than providing justification of the use of VR and GPM+ in the Methods section, I would suggest moving this background information to the introduction and focusing the Intervention Approaches section within the Methods on how specifically VR was implemented in Arm 1 and VR and GPM+ was implemented in Arm 2.

- What exactly happens in the 15-minute VR session? For example, is it a virtual psychoeducation session that is pre-recorded? Is it a game? Who is delivering or facilitating the use of VR?

- What was the primary timepoint for measuring outcomes?

Results and Discussion

- Though included in the table, I think it is also important to mention in the text the statistically significant differences at baseline for some of the secondary outcomes.

- Table 5 – this is the first time that the term mHealth is being used to refer to the interventions. I would suggest change this in the title to align with the other tables.

- In the discussion section, the 2nd paragraph focuses on VR and improvements in self-compassion but this outcome was also observed in the VR and GPM+ arm. How does this outcome compare to other GPM+ studies?

- In the discussion paragraph starting with “although improvements...”, while the findings on depression outcomes may be in line with mixed results from other VR studies, there is some evidence for reduction in depression symptoms for GPM+. Please include how findings in this study compare to other GPM+ studies.

- Do you think there are any issues of scalability or implementation around VR based interventions? or VR and GPM+?

- One limitation is also that there was not any inclusion criteria based on mental health assessments.

Recommendation: Findings from the Tushirikiane-4-MH (supporting each other for mental health) mobile health–supported virtual reality randomized controlled trial among urban refugee youth in Kampala, Uganda — R0/PR4

Comments

We have received feedback from two reviewers. Both reviewers were enthusiastic about the paper, but acknowledged some limitations and areas to improve the manuscript. We encourage the reviewers to revise the manuscript according to these comments with particular attention to the requests for clarifying certain points and addressing some of the methodological limitations. Thank you for submitting your manuscript to Global Mental Health.

Decision: Findings from the Tushirikiane-4-MH (supporting each other for mental health) mobile health–supported virtual reality randomized controlled trial among urban refugee youth in Kampala, Uganda — R0/PR5

Comments

No accompanying comment.

Author comment: Findings from the Tushirikiane-4-MH (supporting each other for mental health) mobile health–supported virtual reality randomized controlled trial among urban refugee youth in Kampala, Uganda — R1/PR6

Comments

Thank you for the care and time and thoughtfulness providing the reviews. We believe they have greatly strengthened our manuscript.

We hope the manuscript is now found suitable for publication.

We have detailed the responses below and they are reflected in the manuscript text.

Reviewer(s)' Comments to Author:

Reviewer: 1

Comment-1. In low-income countries and humanitarian crisis settings, interventions need to be both simple and cost-effective. VR technology, however, necessitates expensive equipment and technical support, which raises questions about the availability of the necessary infrastructure and resources to sustain such interventions in these environments. The study would benefit from a more thorough discussion of the practical challenges and feasibility of implementing VR interventions within refugee communities in Uganda over the long term.

Response-1: Thank you for your comment. When initiating this study, we ensured feasibility and simplicity by co-developing the VR experience with a community-based organization that is refugee founded and led in Kampala, and worked closely with this organization and the peer navigators, who are urban refugee youth. The peer navigators were thoroughly trained and comfortable using, as well as showing others how to use, the VR technology. Young people in this study were very excited about VR. The intention of the training was to allow the VR technology to be self-sustaining within a community organization (YARID) accessible to urban refugee youth. Our study used low-cost VR headsets that could be cleaned and re-used, and are still being used by the community partner. While there were upfront costs to the development of the VR, both the headsets as well as the experience is something that can continue to be used among this population. A sentence has been added to the methods for clarity. In fact, we found this intervention was low-cost as the up-front costs included the technology development and purchasing headsets, and once this was completed, the tools can be used in perpetuity. We have added to the conclusion, as requested by both reviewers:

“VR based interventions such as implemented in this study involve up-front, one-time costs in developing the VR experience and purchasing VR headsets, but the headsets can be cleaned and reused and the VR experience can be similarly used again, signalling the possibility of scalability. GPM+, however, requires staff to coordinate logistics and implement in-person sessions, so is time and labour intensive and would require more long-term costs in scaling up.”

Comment-2. Randomized controlled trials (RCTs) are integral to assessing the efficacy of interventions, but this study demonstrates significant imbalance in baseline depression levels between the groups, undermining the validity of its findings. For example, the control group (Arm 3) had a considerably higher mean depression score of 9.22 compared to the VR intervention group (Arm 1), which had a mean score of 5.62. This discrepancy complicates the interpretation of whether observed changes in the intervention groups were attributable to the intervention itself. Such an imbalance significantly weakens the internal validity of the study. To more accurately evaluate the effect of VR on depression, it would have been more appropriate to include participants with moderate or higher levels of depression at baseline. Given that only 27.5% of participants exhibited moderate to severe depression, the study’s design may not be well-suited for assessing improvements in depression. A more detailed explanation of the exclusion criteria would help address this issue.

Response-2: Thank you for your comment. We agree that baseline differences in depression and other study outcome scores between the groups are an important factor to consider in interpreting intervention effects. In our analysis, we adjusted for these baseline differences (including study outcome scores) to account for initial group imbalances. By doing so, we aimed to isolate the effect of the intervention on depression and other study outcomes, helping ensure that any observed changes can be more reliably attributed to the intervention itself, rather than initial differences between groups. This adjustment strengthens the validity of our findings by controlling baseline study outcome scores when comparing post-intervention outcomes across all groups.

We add additional discussion regarding the challenge of conducting RCT’s with urban refugee youth in Kampala to the social organization of urban refugees in the limitations section:

“The baseline differences between study arms were adjusted for in our analyses, yet indicate there may be socio-cultural and contextual differences between study sites that can be considered when interpreting study results. Kampala hosts refugees from numerous countries who may live in informal settlements with others from similar communities, in turn creating socio-cultural differences between informal settlements. In order to increase study pragmatism we included refugee youth in Kampala from many countries of origin, yet this increased heterogeneity in our sample and study design. We opted to randomize by site, rather than by individual, due to the shared physical and social environment of slums that could introduce contamination between arms (Ezeh et al. 2017). As noted in prior research with this population: “This social organization and socio-cultural diversity of urban refugees in Kampala’s informal settlements presents challenges in designing a cluster randomized trial that requires multiple clusters (e.g. informal settlements) per condition with minimal baseline differences” (p. 11) and calls for larger randomized trials with methodological innovation.

We did not have mental health screening for inclusion into the study to our team’s prior research and publications that documented high prevalence of mental health challenges among this population; we now add this as a limitation:

“Another limitation was not restricting inclusion criteria based on mental health screening to only include persons with moderate to severe levels of depression, as this may have allowed more accurate evaluations of the effect of the VR interventions on depression.”

Comment-3. VR intervention, a central element of this study, requires further explanation. Specifically, the study needs to clearly articulate the mechanisms through which the intervention was expected to reduce depression. Given that the VR content was focused on improving health literacy, reducing mental health stigma, and promoting self-compassion, the observed changes in these secondary outcomes are not unexpected. However, a more in-depth discussion is needed to explain why the primary outcome—depression—did not show significant change, considering both the research design and the unique characteristics of the study participants.

Response-3: Thank you for your comment. The VR content was focused on mental health literacy, mental health stigma reduction as well as self-compassion and emotional regulation exercises to help participants cope with mental health challenges. By engaging with this experience, it was expected that participants would be equipped with the information and tools to improve their mental health outcomes, including depression. We have referenced these methods in our study protocol which is blinded for peer review, but we have added more detail.

“Details of the study has been described elsewhere (Logie et al. 2021a). We briefly describe the intervention below:

Arm 1: VR: Participants in this arm received a single 15-minute immersive and interactive VR session in a private room or in an outdoor setting. The VR experience was developed to equip participants with information and tools to improve their mental health outcomes. Components of the VR experience included three separate scenarios that included an interaction with different characters whereby psychosocial information was shared: the first scenario discussed depression symptoms and aimed to improve mental health literacy and psychological first aid skills; the second scenario included descriptions of a character’s lived experience of mental health stigma and isolation and aimed to reduce mental health stigma; and the third scenario involved teaching and practicing self-compassion and emotional regulation exercises.”

And

“As illustrated in this screenshot from the VR experience, participants were guided to visit the characters in the scene who were identified with a speech bubble above them (Figure 1).”

While we cannot definitively explain why depression did not show significant change, within our discussion we suggest that a VR intervention may not be able to address the larger social drivers of depression among this population, such as food insecurity, violence, and lower social support. Clarifying language has been added to the methods and discussion sections:

“However, social and structural inequities are associated with pervasive and persistent depression among urban refugee youth in Kampala (Logie et al. 2022)—including food insecurity, violence, and lower social support. Therefore it is plausible that interventions such as ours that do not address these larger social-ecological drivers of depression may not be effective.”

Reviewer: 2

Comment-1. Introduction: - Line 98 – should be forcibly displaced not displayed

Response-1: Thank you for this comment, this change has been made.

Comment-2. In the last paragraph of the Introduction, it would be helpful to add how the study aims to address the knowledge gaps outlined in the previous paragraph. What makes the VR and GPM+ approach different from the referenced studies? How could research on this intervention help to potentially fill in the gaps that currently exist? What is the evidence base for using VR as a mental health intervention?

Response-2: Thank you for this feedback. This study addresses the knowledge gaps outlined in the introduction by using interventions novel and tailored to urban refugee youth.

The last paragraph of the introduction has been amended to include this. The evidence base for using VR as a mental health intervention is noted within the ‘background on intervention approaches’ within the methods section:

“In high-income contexts, studies have pointed to the potential of VR for improving various mental health outcomes. VR-based technology allows users to experience an interactive three-dimensional environment where psychotherapeutic interventions such as CBT can be applied (Rowland et al. 2022). A systematic review of VR treatment for PTSD among adults found it was more effective than a control group and as effective as other therapeutic modalities; however the small number of studies and low study quality underscore the need for additional research (Eshuis et al. 2021). Scoping review findings of VR for treating depression and anxiety with CBT approaches reported reduced anxiety or depression symptoms, but few studies used a RCT design (Baghaei et al. 2021). Another systematic review examining the efficacy of VR interventions for emotional disorders reported that most VR studies were effective compared to waitlist and control conditions in reducing self-reported social anxiety, panic disorder, PTSD; however, there was heterogeneity in findings (Rowland et al. 2022). Despite these promising findings, most VR studies were focused on adults in high-income settings, revealing knowledge gaps of their efficacy with youth in LMIC and/or humanitarian contexts.”

Comment-3. I find that the combination of VR and GPM+ is novel and could be helpful for adolescents. Could you share more information on why these two interventions are being combined? Since arm 1 and 2 are being compared with the SOC, what is the added value of using VR before GPM+?

Response-3: Thank you for your comment and questions. A systematic review examining the efficacy of VR interventions for emotional disorders found that the interventions often integrate other evidence-based approaches (Rowland et al. 2022). For this reason, we chose to combine the VR with GPM+ as it is an evidence-based approach to reduce symptoms of depression among refugees, despite not being evaluated among adolescents. This is noted in the ‘background on intervention approaches’ section of the methods. We wanted to see if GPM+ would have added value to VR, so we compared that addition, as well as VR alone, to the SOC:

“As many VR mental health interventions integrate CBT and other evidence-based approaches (Rowland et al. 2022), we also tested VR followed by in-person GPM+ to explore any additional added value by combining these approaches.”

Comment-4. I would suggest shifting some of the background information about VR and GPM+ to the introduction and this may be helpful to address some of the points I listed in the previous bullets. The description of the interventions in the methods section could then go into further detail on how the two interventions were implemented.

Response-4: Thank you for this feedback. We have now moved the background on the intervention approaches to the introduction. The interventions have been previously described in detail, and the protocol paper is referenced in the text, and per your comment here and the previous reviewer we add more detail:

“Details of the study has been described elsewhere (Logie et al. 2021a). We briefly describe the intervention below:

Arm 1: VR: Participants in this arm received a single 15-minute immersive and interactive VR session in a private room or in an outdoor setting. The VR experience was developed to equip participants with information and tools to improve their mental health outcomes. Components of the VR experience included three separate scenarios that included an interaction with different characters whereby psychosocial information was shared: the first scenario discussed depression symptoms and aimed to improve mental health literacy and psychological first aid skills; the second scenario included descriptions of a character’s lived experience of mental health stigma and isolation and aimed to reduce mental health stigma; and the third scenario involved teaching and practicing self-compassion and emotional regulation exercises.”

“As illustrated in this screenshot from the VR experience, participants were guided to visit the characters in the scene who were identified with a speech bubble above them (Figure 1).”

Comment-5. It is mentioned in the 2nd sentence of the last paragraph of the Introduction that feasibility is also being evaluated. However, feasibility is not listed in the primary or secondary study objectives that are highlighted at the end of the paragraph starting with the sentence “the primary study objective is...”. How was feasibility measured or determined?

Response-5: Thank you for this feedback. Feasibility was not quantitatively assessed; however, we reflected on how feasible the implementation of the VR was with this novel population and setting by measuring the number of participants who engaged in the VR and GPM+ interventions. Given that feasibility was not quantitatively assessed, it has been removed from the sentence mentioned in this comment.

Comment-6. I find the section about recruitment from the previous studies to be slightly confusing and I would suggest clarifying some details around how the recruitment occurred. Please clarify what you mean by “additional purposive recruitment” and how exactly participants were recruited from the previous studies. Aside from the inclusion criteria listed, were there any exclusion criteria? Did randomization to the three study arms occur all at once or were participants recruited and randomized at different time points? In the results section, I see that there were statistically significant differences at baseline of some of the primary and secondary outcomes as well as the demographics across arms, so clarifying details in the methods section on recruitment procedures would be helpful to understand these differences.

Response-6: Thank you for this feedback. To clarify, we developed an existing cohort of urban refugee youth in 2020 and 2021. This cohort of participants was invited to participate in the current study. Over time, attrition occurred due to reasons such as migration or loss of interest in participating. Further, as participants were recruited to the cohort at least one year prior to the current study, there would be no 16- and limited 17-year-old participants. Because of this we had to recruit additional participants which was done purposively by peer navigators to include participants at the lower age range. As noted in the ‘participants and recruitment’ section, participants were grouped into 3 study sites based on geographical proximity, and those sites were then randomly assigned to the study arms. Randomization was done all at once after recruit was complete. The ‘participants and recruitment’ section has been amended for clarity.

There were no other exclusion criteria. We have clarified:

“Participants were recruited from the Tushirikiane HIV self-testing cohort study, whereby participants aged 16-24 years old were recruited between 2020 and 2021 (Logie et al. 2021a); the Tushirikiane cohort was continued for implementing a COVID-19 prevention study (Logie et al. 2021b). In 2022, the cohort participants were invited to participate in the present study (Tushirikiane4MH) by peer navigators (PN); to reach the desired sample size we conducted additional purposive recruitment. PN purposively recruited 16- and 17-year-old participants to refresh the cohort as this age range was no longer present in the existing cohort.”

Comment-7. Were there any attempts at masking the research team to the study allocation of the participants?

Response-7: Thank you for your comment. We did not attempt to mask the research team to the study allocation of the participants. To feasibly engage study participants, they were grouped into one of the three study arms based on geographical proximity. Because the study arms correlated to the informal settlement in which the participants live, and that information was included in the data collected, it was not possible to mask the research team. However, the data analyst was masked to the intervention allocation.

Comment-8. Was the VR experience (Arm 1) a one-time intervention or did participants receive several sessions?

Response-8: Thank you for your comment, the VR experience was a one time, 15-minute intervention. Clarifying language has been added to the intervention implementation section of the methods.

Comment-9. Aside from identifying as refugees or displaced persons and their age, what were other criteria for becoming a peer navigator to deliver GPM+? How were they trained and supervised? How were issues of safety related to suicidality managed? Were questions on self-harm asked?

Response-9: Thank you for your comment. In addition to identifying as refugee and displaced youth aged 18-24 years living in these same five informal settlements (Kabalagala, Kansanga, Katwe, Nsambya, or Rubaga) as the participants, the peer navigators have experience working in the various study communities as health educators or peer educators. This was previously described in detail (Logie 2021a). The peer navigators were trained by the PI on GPM+, ethics, and psychological first aid over multiple training sessions using the manual provided by the WHO. The training sessions were interactive and engaging, ensuring the peer navigators understood and could successfully lead the GPM+ sessions. The peer navigators were supervised by the study coordinator.

As described in the methods, depression was assessed using the PHQ-9. Within that scale, there is a question that asks “Over the last 2 weeks, how often have you been bothered by any of the following problems? – Thoughts that you would be better off dead, or of hurting yourself”. If a participant responded to this question indicating they had any thoughts of self-harm, their survey submission would be flagged by the research team within 48 hours and a trained social worker at our community partner, YARID, would be notified to reach out to the participant.

Comment-10. How were participants divided into various PM+ group? Was it based on location, age, or gender? Rather than providing justification of the use of VR and GPM+ in the Methods section, I would suggest moving this background information to the introduction and focusing the Intervention Approaches section within the Methods on how specifically VR was implemented in Arm 1 and VR and GPM+ was implemented in Arm 2.

Response-10: Thank you for your comment. Participants were divided in the GPM+ groups based on logistics regarding their day/time availability. In response to a reviewer comment, we moved the background on the intervention approaches to the introduction. The interventions have been previously described in detail in our study protocol and are referenced in our text, and we provided further detail per response above (response 4).

Comment-11. What exactly happens in the 15-minute VR session? For example, is it a virtual psychoeducation session that is pre-recorded? Is it a game? Who is delivering or facilitating the use of VR?

Response-11: Thank you for your comment. The details regarding the VR session are outlined in more detail in response 4 above, we now add an image (figure 1) portraying the scene and a character, and to reply to your questions above we also now add that:

“The peer navigator facilitated the use of the VR with each participant, describing what VR is, how it will work, what the participant can expect, and provided instruction in using the hand controller to move around the scene and meet the three characters. After extensive pilot testing with the peer navigators, the length of the VR was set to 15 minutes, and the interaction was minimized so the participant used hand controllers to move around the scene and touch the characters with speech bubbles, which would then trigger a pre-recorded psychoeducation session as described above.”

Comment-12. What was the primary timepoint for measuring outcomes?

Response-12: To clarify, the primary timepoint for measuring outcomes was at baseline, before the intervention began, and 16-week follow up surveys post-intervention. This timeframe is described in the methods, tables, and supplementary figure.

Comment-13. Though included in the table, I think it is also important to mention in the text the statistically significant differences at baseline for some of the secondary outcomes.

Response-13: Thank you for the detail review, we have added this to the text.

Comment-14. Table 5 – this is the first time that the term mHealth is being used to refer to the interventions. I would suggest change this in the title to align with the other tables.

Response-14: Thank you for your feedback, the title of table 5 has been changed to align with the other tables: (Table 5: Sensitivity analyses of the effectiveness of virtual reality intervention approaches on depression and other mental health outcomes among refugee and displaced youth aged 16-27 years in Kampala, Uganda, 2022)

Comment-15. In the discussion section, the 2nd paragraph focuses on VR and improvements in self-compassion but this outcome was also observed in the VR and GPM+ arm. How does this outcome compare to other GPM+ studies?

Response-15: Thank you for bringing this up. We have now added:

“We also found improved self-compassion in the VR and GPM+ arm; we did not identify other GPM+ studies that evaluated its impact on self-compassion, so this is an area of future research for both PM+ and GMP+. Our study contributes to this knowledge base of VR, and VR alongside GMP+, as strategies to improve self-compassion in a LMIC context.”

Comment-16. In the discussion paragraph starting with “although improvements...”, while the findings on depression outcomes may be in line with mixed results from other VR studies, there is some evidence for reduction in depression symptoms for GPM+. Please include how findings in this study compare to other GPM+ studies.

Response-16: Thank you, we now expand on this point. We reference the one GPM+ study we identified that evaluated efficacy:

“Our finding that the VR and GPM+ arm was not associated with reduced depression does not align with a study among conflict-affected adults in Nepal that found modest reductions following GMP+ in psychological distress and depression symptoms (Jordans et al. 2021). This finding suggests that GPM+ may need to be further tailored for refugee adolescents and youth in Kampala to be efficacious in reducing depression. There is a scant evidence base assessing the effectiveness of GPM+ on reducing depression with youth, so further efficacy research with youth in LMIC conflict-affected settings is needed.”

Comment-17. Do you think there are any issues of scalability or implementation around VR based interventions? or VR and GPM+?

Response-17: Thank you for this question that also reflects a query from Reviewer 1. We address this in the conclusions:

“VR based interventions such as implemented in this study involve up-front, one-time costs in developing the VR experience and purchasing VR headsets, but the headsets can be cleaned and reused and the VR experience can be similarly used again, signalling the possibility of scalability. GPM+, however, requires staff to coordinate logistics and implement in-person sessions, so is time and labour intensive and would require more long-term costs in scaling up.”

Comment-18. One limitation is also that there was not any inclusion criteria based on mental health assessments.

Response-18: Thank you for raising this. Based on your comment and the previous reviewer we now add this as a limitation:

“Another limitation was not restricting inclusion criteria based on mental health screening to only include persons with moderate to severe levels of depression, as this may have allowed more accurate evaluations of the effect of the VR interventions on depression.”

Review: Findings from the Tushirikiane-4-MH (supporting each other for mental health) mobile health–supported virtual reality randomized controlled trial among urban refugee youth in Kampala, Uganda — R1/PR7

Conflict of interest statement

n/a

Comments

Thank you for addressing the comments and feedback.

Recommendation: Findings from the Tushirikiane-4-MH (supporting each other for mental health) mobile health–supported virtual reality randomized controlled trial among urban refugee youth in Kampala, Uganda — R1/PR8

Comments

No accompanying comment.

Decision: Findings from the Tushirikiane-4-MH (supporting each other for mental health) mobile health–supported virtual reality randomized controlled trial among urban refugee youth in Kampala, Uganda — R1/PR9

Comments

No accompanying comment.