Introduction
The COVID-19 outbreak and the policies to prevent its spread have disrupted the daily living of the population. The evidence regarding the mental health consequences of the confinement due to the COVID-19 pandemic in the general population is inconclusive (Bueno-Notivol et al., Reference Bueno-Notivol, Gracia-Garcia, Olaya, Lasheras, Lopez-Anton and Santabarbara2021; Faust et al., Reference Faust, Shah, Du, Li, Lin and Krumholz2021; O’Connor et al., Reference O’Connor, Wetherall, Cleare, McClelland, Melson, Niedzwiedz, O’Carroll, O’Connor, Platt, Scowcroft, Watson, Zortea, Ferguson and Robb2021; Prati and Mancini, Reference Prati and Mancini2021; Tanaka and Okamoto, Reference Tanaka and Okamoto2021; van der Velden et al., Reference van der Velden, Hyland, Contino, von Gaudecker, Muffels and Das2021).
The lockdown in Spain was one of the most restrictive in Europe (García-Esquinas et al., Reference García-Esquinas, Ortolá, Gine-Vázquez, Carnicero, Mañas, Lara, Alvarez-Bustos, Vicente-Rodriguez, Sotos-Prieto, Olaya, José Garcia-Garcia, Gusi, Banegas, Rodríguez-Gómez, Struijk, Martínez-Gómez, Lana, María Haro, Ayuso-Mateos, Rodríguez-Mañas, Ara, Miret and Rodríguez-Artalejo2021). The Government imposed a State of Alarm starting on 15 March that established a national lockdown that included distancing measures such as the closure of non-essential customer-facing businesses and educational institutions (Real Decreto 463/2020). In order to avoid the saturation of the intensive care units, theses initial measures were strengthened with another decree from the Government on 29 March (Real Decreto 10/2020). A period of 5 weeks started in which citizens were only allowed to leave their homes for essential work, to buy food and other staple products, or for emergencies. On 4 May, citizens were first authorized to leave their homes to exercise or walk, for a maximum of 1 hour a day, under strict conditions. From 10 May to 21 June, a progressive de-escalation of confinement measures led to the so-called “new normality” in which Spaniards were allowed to attend their jobs, gather in small groups and move between provinces as long as they complied with safe distancing and face covering requirements.
During the first wave of the COVID-19 pandemic, several studies have investigated its mental health consequences in the Spanish adult population (Balanzá-Martínez et al., Reference Balanzá-Martínez, Kapczinski, de Azevedo Cardoso, Atienza-Carbonell, Rosa, Mota, Jurema, Motak and De Boni2021; Cecchini et al., Reference Cecchini, Carriedo, Fernandez-Rio, Mendez-Gimenez, Gonzalez, Sanchez-Martinez and Rodriguez-Gonzalez2021; Garcia-Fernandez et al., Reference Garcia-Fernandez, Romero-Ferreiro, Lopez-Roldan, Padilla and Rodriguez-Jimenez2020; Gonzalez-Sanguino et al., Reference Gonzalez-Sanguino, Ausin, Castellanos, Saiz and Munoz2021; Justo-Alonso et al., Reference Justo-Alonso, García-Dantas, González-Vázquez, Sánchez-Martín and Del Río-Casanova2020; Losada-Baltar et al., Reference Losada-Baltar, Martinez-Huertas, Jimenez-Gonzalo, Pedroso-Chaparro, Gallego-Alberto, Fernandes-Pires and Marquez-Gonzalez2022; Mortier et al., Reference Mortier, Vilagut, Ferrer, Alayo, Bruffaerts, Cristóbal-Narváez, Del Cura-gonzález, Domènech-Abella, Felez-Nobrega, Olaya, Pijoan, Vieta, Pérez-Solà, Kessler, Haro and Alonso2021; Pérez et al., Reference Pérez, Masegoso and Hernández-Espeso2021; Planchuelo-Gomez et al., Reference Planchuelo-Gomez, Odriozola-Gonzalez, Irurtia and de Luis-garcia2020; Valiente et al., Reference Valiente, Contreras, Peinado, Trucharte, Martínez and Vázquez2021). Overall, these studies have shown a general worsening in mental health throughout the confinement, with prevalence estimates ranging from 9% to 46% among those reporting data on depressive symptoms. Younger age, being female, being a healthcare worker, low income, prior mental disorders, loneliness and substance use appeared as the strongest factors associated with mental health problems. However, the validity of these findings may be somewhat hindered by at least one of the following drawbacks: (i) non-probabilistic sampling approaches or convenience samples were evaluated through online surveys, which increases the risk of selection bias; (ii) cross-sectional design or lack of information on the pre-pandemic period, which does not allow for a proper assessment of the determinants of the observed changes in mental health indicators; and (iii) assessment of dimensional measures were solely of psychological distress.
The present study aims to assess whether there is a change in the prevalence of depression and suicidal ideation after the strict lockdown measures during the first wave of the COVID-19 pandemic in Spain, and to assess which are the factors associated with the incidence of a depressive episode or suicidal ideation during the lockdown. Our analysis is based on an adult population-based cohort from the provinces of Madrid and Barcelona, which was evaluated before the pandemic and once more after the first COVID-19 lockdown.
Method
Sample and recruitment
Non-institutionalized adults (i.e., 18+ years old) from the regions of Madrid and Barcelona participated in this study. These constitute the refreshment sample of the Edad con Salud project (ageingandhealth.com) (Lara et al., Reference Lara, Miret, Olaya, Caballero, Morillo, Moneta, Haro and Ayuso-Mateos2022). They were recruited following a multistage stratified design consisting of (i) a random sample of municipalities (sampling probability proportional to population size); (ii) a random sample of census units from each municipality; and (iii) a random sample of households within each census track, and assigned to one of two age groups: 18–49, or 50+ (the second one oversampled). For each household, individuals in the assigned age group were invited to participate; the response rate was 68.0%. Sampling weights were generated for the sample to be representative of the target population, according to the population distribution obtained from the National Institute of Statistics.
Participants were interviewed at their homes between 17 June 2019 and 14 March 2020 (Pre-COVID measure). They were reached out again between 21 May and 30 June 2020 to respond to a telephone interview (Post measure). Trained interviewers conducted the Pre- and Post-measure interviews, using a Computer-Assisted Personal and Telephonic Interviewing system, respectively. Protocols were approved by the Clinical Research Ethics Review Committees of Parc Sanitari Sant Joan de Déu (Barcelona) and Hospital Universitario La Princesa (Madrid). All participants provided informed consent.
Some participants were unable to respond first-hand due to physical and/or mental limitations, and thus a relative or cohabitant answered in their name. Only first-hand respondents to both interviews were included in these analyses; therefore, out of a sample of 1935 participants, 54 proxy respondents were discarded, making a sample of 1881 participants in the Pre measure. A total of 778 participants were excluded from the Post measure (81 participants did not provide recontact information, 110 participants could not be contacted, 9 were deceased, 39 were responded by a proxy respondent, 329 either rejected to respond to the Post-measure telephone interview or aborted it before finishing, and 210 had unspecified incidents), so the final Post-measure sample comprised 1103 participants.
Measures
Depressive symptoms were assessed with an adapted version of the Composite International Diagnostic Interview (CIDI) for Depression Screening (Kessler and Ustün, Reference Kessler and Ustün2004). An algorithm following the ICD-10 criteria was used to diagnose depression in the previous 12 months (World Health Organization, 1993). For the Post-measure interview, an abbreviated version was used, and the items were adapted to ask for a 30-day time span in order to account for an onset while the lockdown measures were in effect. The assessment algorithm in the Pre measure was adapted to use the same item set as in the Post measure. Suicidal ideation comprised a single item asking whether the participant had had suicidal thoughts in the previous 12 months/30 days, for the Pre- and Post-measures periods, respectively.
The following covariates were also measured: age, sex, education level, whether the participant lived alone (both before and during the lockdown), whether the participant had cohabited/was cohabiting with a relative isolated by COVID-19, whether the participant had been/was concerned about a relative/friend infected by COVID-19, whether the participant had been infected with COVID-19 and its severity, whether the participant had enough quietness at home to get proper rest, whether the household economic situation had worsened due to COVID-19, whether the participant had been unemployed due to COVID-19, time a day spent in front of screens during the lockdown (working and non-working), Pre- and Post-measure levels of physical activity according to an abbreviated version of the Global Physical Activity Questionnaire version 2 (GPAQ-2) (Armstrong and Bull, Reference Armstrong and Bull2006) and the following scales: Post-measure score in the Brief Resilience scale (Rodríguez-Rey et al., Reference Rodríguez-Rey, Alonso-Tapia and Hernansaiz-Garrido2016), Pre and Post measures of social support measured with the OSLO3 Social Support scale (Dalgard et al., Reference Dalgard, Dowrick, Lehtinen, Vazquez-Barquero, Casey, Wilkinson, Ayuso-Mateos, Page and Dunn2006), Pre and Post measures of loneliness measured with the UCLA Loneliness Scale (Hughes et al., Reference Hughes, Waite, Hawkley and Cacioppo2004), and Post measure of disability assessed with the 12-item World Health Organization Disability Assessment Schedule (WHODAS 2.0) (Luciano et al., Reference Luciano, Ayuso-Mateos, Aguado, Fernandez, Serrano-Blanco, Roca and Haro2010). The Brief Resilience Scale was taken from the validated version by Rodríguez-Rey et al. (Reference Rodríguez-Rey, Alonso-Tapia and Hernansaiz-Garrido2016), while the rest of them have been validated in the original in English (as referenced) and were adapted for their use in the Edad con Salud cohort study. All of them had internal consistency indices (i.e., Cronbach’s $\alpha $) above .70, except for the OSLO3 Social Support scale, which had moderate ($\alpha $ = .653) and low ($\alpha $ = .386) reliability in the Pre and Post measures, respectively.
Data analysis
Sample descriptive statistics were computed for depression, suicidal ideation and all the covariates. Attrition in the Pre-measure sample was analysed for differences in socio-demographic and the two outcome variables: sex, depression and suicidal ideation were tested with the χ2-test; bias-corrected Cramér’s V (ϕc) was computed as a measure of effect size. For age, a two-sample T-test was performed, with Hedges’ g as a measure of effect size.
Prevalence estimates – population-wise and disaggregated by sex and age (grouped in 18–29, 30–49 and 50+ year-olds) – were computed for depression and suicidal ideation in both measures. The differences between both measures were tested with a weighted McNemar’s test of symmetry, using the complete data. Bonferroni correction was applied variable-wise to the disaggregated estimates.
To model the risk of incidence after the lockdown, the cases with depression or suicidal ideation in the Pre-measures period were filtered out from the dataset for its corresponding analysis. Then, we performed a weighted logistic regression model on the Post measure. All covariates stated in the section ‘Measures’ were initially considered. In the case of suicidal ideation, the Pre and Post measures of depression were also considered as covariates. The following procedures were applied for fitting the models: First, in order to archive better numerical convergence, all interval-level variables were standardized, and categorical covariates that yielded complete separation (Albert and Anderson, Reference Albert and Anderson1984) were discarded. Covariates were tested individually with univariate weighted logistic regression models and the Rao-Scott (Reference Rao and Scott1984) Likelihood-ratio test (without Bonferroni correction, in order to decrease Type-II error risk). Among the significant covariates, the ordinal ones were tested for non-linearity with the Wald test, comparing the general model with a model with the linear term only. Whenever the test was non-significant, only the linear term was included. Afterwards, a multivariate weighted logistic model was fit with all the significant covariates. A backward-step procedure was then run, dropping covariates according to the Akaike information criterion statistic. Demographic variables such as sex and age were fixed. In the model of suicidal ideation, the measures of depression were also fixed. Finally, the resulting model was refit to the subset of complete cases in the covariates selected by the backward-step procedure. As the procedure may select a different subset of covariates for each model, the number of complete cases may also differ.
A significance level of ${{\alpha }}$ = .05 was used. All significance tests were performed applying Bonferroni correction for multiple comparisons (unless stated otherwise). All the analyses were conducted in R v. 4.2.2 (R Core Team, 2019). Package survey v. 4.1-1 (Lumley, Reference Lumley2004) was used to fit the models.
n = number of participants; sd = standard deviation.
a These variables are measured in a 0–100 scale.
b Cohabited/ing with relative isolated by COVID-19.
c Concerned about relative/friend infected by COVID-19.
d Severity of COVID-19 infection.
* p-Values correspond to a paired-sample T-test for the quantitative variables, and a McNemar’s test of symmetry for the categorical ones.
Results
Sample descriptives
Participants with data in both measures differed from the ones excluded in the Post measure in sex (χ2 = 15.80, p-value < .001) and age (χ2 = 5.59, p-value < .001). The proportion of men excluded (48.8%) was relatively higher than the ones included (39.6%), and the participants excluded were older (mean = 59.6, sd = 19.8) than the ones included (mean = 54.8, sd = 16.4). However, the effect size was negligible for sex (ϕc = .089), and small for age (g = 0.270). No significant differences were found in depression between the included and the excluded sample (χ2 = 0.22, p-value = .638, ϕc = .000). Regarding suicidal ideation, the excluded sample differed significantly from the included one (0.64% versus 2.18%, respectively; χ2 = 7.07, p-value = .008); the effect size was also negligible though (ϕc = .052). The descriptive statistics for both outcome variables and the covariates for the sample included in the analysis are shown in Table 1.
Prevalence rates
Estimated prevalence rates are given in Table 2. For depression, the prevalence increased from 3.06% in the Pre to 12.00% in the Post measure. According to the McNemar’s test, the difference was significant (χ2 = 64.67, p-value < .001), as was for men (χ2 = 26.22, p-value < .001) and women (χ2 = 38.73, p-value < .001) considered separately. When considering the differentiated age groups, the difference was more prominent for the 18–29 (increasing from 2.58% to 18.13%) and the 30–49 (increasing from 2.70% to 14.25%) groups. Although the increase in the 50+ group was still significant (from 3.52% to 7.92%; χ2 = 19.86, p-value < .001), it was much less prominent when compared with the younger groups.
sd = standard deviation.
For suicidal ideation, the prevalence rate estimate increased from 1.56% in the Pre to 2.78% in the Post measure, but this difference was not significant (χ2 = 1.39, p-value = .239). After Bonferroni correction, none of the disaggregated estimates was significant either.
Risk of depression after the lockdown
The final regression model for depression was fit with a sample size of 1037. Its covariates are given in Table 3, along with their odds ratios (ORs). The coefficient for COVID-19 concern was found to be significant, along with the Post measures of Loneliness and Resilience.
OR = odds ratio; CI = confidence interval; Resilience = Brief Resilience Scale; Loneliness = UCLA Loneliness Scale; Disability = 12-item WHO Disability Assessment Schedule
The OR for COVID-19 concern was 3.115 (z = 2.91, p-value = .004); that is, the risk of developing depression was expected to be 211.5% higher for those who reported being concerned about a relative or friend infected by COVID-19 than for those who did not. For Loneliness (Post), the OR was 1.992 (z = 4.97, p-value < .001), which means that an increase of 1 standard deviation in the Post measure of the UCLA Loneliness Scale was associated with an increase of 99.2% in the OR of receiving a positive diagnosis of depression in the Post measure. In the case of Resilience (Post), the OR was 0.573 (z = −2.90, p-value = .004), meaning that an increase of 1 standard deviation in the Post measure of the Brief Resilience Scale was associated with a decrease of 42.7% in the OR of receiving a positive diagnosis of depression in the Post measure.
Risk of suicidal ideation after the lockdown
This model was fit with a sample size of 921; its covariates and their coefficients (as ORs) are shown in Table 4. After Bonferroni correction, the significant covariates were the Post measures of social support and disability. The OR of social support was 0.206 (z = −3.81, p-value < .001). This implies that an increase of 1 standard deviation in the Post measure of the Oslo-3 Social Support Scale was associated with a decrease of 79.4% in the OR of reporting having suicidal ideation in the Post measure. The OR for disability was 2.773 (z = 3.36, p-value = .001), implying an increase of 177.3% for a 1-standard-deviation increase in the Post measure of the WHODAS 2.0 scale.
OR = odds ratio; CI = confidence interval; Resilience = Brief Resilience Scale; Social support = OSLO3 Social Support Scale; Loneliness = UCLA Loneliness Scale; Disability = 12-item WHO Disability Assessment Schedule Physical activity = GPAQ-2 abbreviated.
Discussion
The present study is the first to assess changes on mental health during the first wave of the COVID-19 pandemic in Spain by using a population-based cohort. Overall, our results showed significant differences in the prevalence of depression from before to after the COVID-19 outbreak. Interestingly, the rates of suicidal ideation did not significantly increase compared to pre-pandemic. The study findings also indicate that individuals reporting COVID-19 concerns and those feeling lonely during the lockdown exhibited a significant increase in the risk of developing depression. Resilience showed a protective effect against the risk of depression, while individuals perceiving social support during the confinement were at lower risk of developing suicidal thoughts. Greater disability during the lockdown was also associated with the risk of suicidal ideation.
Most of the studies tracking longitudinal changes in mental health from before to during the pandemic have shown increases in the prevalence rate of depression and suicidal ideation (Daly et al., Reference Daly, Sutin and Robinson2022; McGinty et al., Reference McGinty, Presskreischer, Han and Barry2020b; Niedzwiedz et al., Reference Niedzwiedz, Green, Benzeval, Campbell, Craig, Demou, Leyland, Pearce, Thomson, Whitley and Katikireddi2021; Novotny et al., Reference Novotny, Gonzalez-Rivas, Kunzova, Skladana, Pospisilova, Polcrova, Medina-Inojosa, Lopez-Jimenez, Geda and Stokin2020; Pierce et al., Reference Pierce, Hope, Ford, Hatch, Hotopf, John, Kontopantelis, Webb, Wessely, McManus and Abel2020; Planchuelo-Gomez et al., Reference Planchuelo-Gomez, Odriozola-Gonzalez, Irurtia and de Luis-garcia2020; Winkler et al., Reference Winkler, Formanek, Mlada, Kagstrom, Mohrova, Mohr and Csemy2020), while others did not report differences above pre-pandemic levels (Kwong et al., Reference Kwong, Pearson, Adams, Northstone, Tilling, Smith, Fawns-Ritchie, Bould, Warne, Zammit, Gunnell, Moran, Micali, Reichenberg, Hickman, Rai, Haworth, Campbell, Altschul, Flaig, McIntosh, Lawlor, Porteous and Timpson2021; van der Velden et al., Reference van der Velden, Contino, Das, van Loon and Bosmans2020) or even decreased estimates (van der Velden et al., Reference van der Velden, Hyland, Contino, von Gaudecker, Muffels and Das2021). It is worth noting previous studies generally measured psychological distress or depressive symptoms rather than using diagnostic mental health interviews. According to a meta-analysis of longitudinal studies investigating the psychological impact of the COVID-19 pandemic (COVID-19 Mental Disorders Collaborators, 2021), the prevalence of major depressive disorder significantly increased in 2020. These findings contrast with those of Prati and Mancini (Reference Prati and Mancini2021), who found the initial effect of lockdowns on mental health to be relatively small, with no evidence of a significant increase in suicide risk.
The first emotional reactions may represent feelings of fear, anger or sadness in response to an unprecedented situation rather than a mental disorder. More fine-grained analyses have shown that mental health problems remained stable or declined throughout the initial lockdown period (Bryan et al., Reference Bryan, Bryan and Baker2020; Chandola et al., Reference Chandola, Kumari, Booker and Benzeval2022; Daly et al., Reference Daly, Sutin and Robinson2022; Gonzalez-Sanguino et al., Reference Gonzalez-Sanguino, Ausin, Castellanos, Saiz and Munoz2021; Hyland et al., Reference Hyland, Shevlin, McBride, Murphy, Karatzias, Bentall, Martinez and Vallieres2020; McGinty et al., Reference McGinty, Presskreischer, Anderson, Han and Barry2020a; Somma et al., Reference Somma, Krueger, Markon, Gialdi, Colanino, Ferlito, Liotta, Frau and Fossati2021; van der Velden et al., Reference van der Velden, Hyland, Contino, von Gaudecker, Muffels and Das2021; Wang et al., Reference Wang, Pan, Wan, Tan, Xu, McIntyre, Choo, Tran, Ho, Sharma and Ho2020), which would be consistent with the notion of a progressive adjustment for managing and overcoming stressful events. However, these are findings based on the very early stage of the COVID-19 outbreak and different conclusions may hold for the comparisons among rate estimates of mental health conditions in the mid- and long-term. In this regard, few observational studies so far have provided data on the trajectories of depression over an extended timeframe. For example, Rosa et al. (Reference Rosa, Godwin, Cortese and Brandt2022) found in four UK cohorts of different ages that depressive symptoms remained stable from May 2020 to September 2020, but then increased during the winter lockdown in 2021. In a similar vein, Landi et al. (Reference Landi, Pakenham, Crocetti, Tossani and Grandi2022) showed a quadratic trajectory of depression in an Italian community sample, with increasing symptom levels during the mandatory lockdown periods (spring 2020 and winter 2021). The work of Mayerl et al. (Reference Mayerl, Stolz and Freidl2022), carried out among an Australian sample of older adults aged 60+ years, further suggested that most participants appeared to be either resilient or have recovered relatively quickly from the effects of the pandemic across the entire period of observation (from May 2020 to December 2021). On the other hand, Tanaka and Okamoto (Reference Tanaka and Okamoto2021) examined whether suicide mortality changed during the pandemic using high-frequency data covering the entire Japanese population. The authors found that there was an initial drop in suicide deaths from February to June 2020, then followed by an increase during the second wave (July to October 2020). Similarly, the Spanish Statistical Office revealed that suicide remained the leading cause of external death during the first few months of 2020. However, there was a drop of 8.8% as compared with the same period in 2019 (Spanish Statistical Office, 2021). Initial declines in suicidal behaviours are not unexpected and may be explained by reduced stress derived from workplaces and social interactions, government financial support and limited access to lethal means (Tanaka and Okamoto, Reference Tanaka and Okamoto2021). Furthermore, Pirkis et al. (Reference Pirkis, Gunnell, Shin, Del Pozo-Banos, Arya, Aguilar, Appleby, Arafat, Arensman, Ayuso-Mateos, Balhara, Bantjes, Baran, Behera, Bertolote, Borges, Bray, Brečić, Caine, Calati, Carli, Castelpietra, Chan, Chang, Colchester, Coss-Guzmán, Crompton, Ćurković, Dandona, De Jaegere, De Leo, Deisenhammer, Dwyer, Erlangsen, Faust, Fornaro, Fortune, Garrett, Gentile, Gerstner, Gilissen, Gould, Gupta, Hawton, Holz, Kamenshchikov, Kapur, Kasal, Khan, Kirtley, Knipe, Kõlves, Kölzer, Krivda, Leske, Madeddu, Marshall, Memon, Mittendorfer-Rutz, Nestadt, Neznanov, Niederkrotenthaler, Nielsen, Nordentoft, Oberlerchner, RC, Papsdorf, Partonen, Phillips, Platt, Portzky, Psota, Qin, Radeloff, Reif, Reif-Leonhard, Rezaeian, Román-Vázquez, Roskar, Rozanov, Sara, Scavacini, Schneider, Semenova, Sinyor, Tambuzzi, Townsend, Ueda, Wasserman, Webb, Winkler, Yip, Zalsman, Zoja, John and Spittal2022), who synthesized sex- and age-specific suicide trend data from 33 countries over the first 9–15 months of the pandemic, found no evidence of a change in suicide trends from before to during the pandemic in most countries/areas-within-countries.
Specific groups appear to be disproportionately affected by the COVID-19 pandemic. That is the case of individuals reporting feelings of loneliness. Prior studies have repeatedly documented the intimate link between loneliness and depression (de la Torre-luque et al., Reference de la Torre-luque, de la Fuente, Prina, Sanchez-Niubo, Haro and Ayuso-Mateos2019; Lee et al., Reference Lee, Pearce, Ajnakina, Johnson, Lewis, Mann, Pitman, Solmi, Sommerlad, Steptoe, Tymoszuk and Lewis2021; van den Brink et al., Reference van den Brink, Schutter, Hanssen, Elzinga, Rabeling-Keus, Stek, Comijs, Penninx and Oude Voshaar2018). The consistency of results among other COVID-19-related research is also noteworthy (Chandola et al., Reference Chandola, Kumari, Booker and Benzeval2022; Creese et al., Reference Creese, Khan, Henley, O’Dwyer, Corbett, Vasconcelos Da Silva, Mills, Wright, Testad, Aarsland and Ballard2021; Gonzalez-Sanguino et al., Reference Gonzalez-Sanguino, Ausin, Castellanos, Saiz and Munoz2021; Kantor and Kantor, Reference Kantor and Kantor2020; Novotny et al., Reference Novotny, Gonzalez-Rivas, Kunzova, Skladana, Pospisilova, Polcrova, Medina-Inojosa, Lopez-Jimenez, Geda and Stokin2020; Palgi et al., Reference Palgi, Shrira, Ring, Bodner, Avidor, Bergman, Cohen-Fridel, Keisari and Hoffman2020; van der Velden et al., Reference van der Velden, Hyland, Contino, von Gaudecker, Muffels and Das2021; Ward et al., Reference Ward, Briggs, McGarrigle, De Looze, O’Halloran and Kenny2023). Even though little is known yet about the mechanisms underlying this association, there is evidence that loneliness may compromise emotion processing and regulation, can lead to decreased cognitive function and alter metabolic, endocrine and immune responses (de la Torre-luque et al., Reference de la Torre-luque, Lara, de la Fuente, Rico-Uribe, Caballero, Lopez-Garcia, Sanchez-Niubo, Bobak, Koskinen, Haro and Ayuso-Mateos2021; Hawkley and Cacioppo, Reference Hawkley and Cacioppo2010; Lara et al., Reference Lara, Caballero, Rico-Uribe, Olaya, Haro, Ayuso-Mateos and Miret2019), all of which have been associated with depression. In our current situation, the risk of loneliness over depression is expected to be heightened. Individuals reporting concerns about COVID-19 were also more likely to develop depression, in line with evidence showing that COVID-19-related fear entailed a threat to mental health (Li et al., Reference Li, Yang, Qiu, Wang, Jian, Ji and Li2020; Rossi et al., Reference Rossi, Panzeri, Pietrabissa, Manzoni, Castelnuovo and Mannarini2020). Uncertainties about the future, hopelessness and misinformation about the outbreak may have contributed to this association (Voitsidis et al., Reference Voitsidis, Nikopoulou, Holeva, Parlapani, Sereslis, Tsipropoulou, Karamouzi, Giazkoulidou, Tsopaneli and Diakogiannis2021). In the opposite corner, the identification of the protective effect of resilience on depression accords with recent reports (Cenat et al., Reference Cenat, Noorishad, Kokou-Kpolou, Dalexis, Hajizadeh, Guerrier, Clormeus, Bukaka, Birangui, Adansikou, Ndengeyingoma, Sezibera, Derivois and Rousseau2021; Killgore et al., Reference Killgore, Taylor, Cloonan and Dailey2020; Lenzo et al., Reference Lenzo, Quattropani, Musetti, Zenesini, Freda, Lemmo, Vegni, Borghi, Plazzi, Castelnuovo, Cattivelli, Saita and Franceschini2020; Novotny et al., Reference Novotny, Gonzalez-Rivas, Kunzova, Skladana, Pospisilova, Polcrova, Medina-Inojosa, Lopez-Jimenez, Geda and Stokin2020; Ran et al., Reference Ran, Wang, Ai, Kong, Chen and Kuang2020). Resilience is the process of effectively coping with uncertainty and hardship. While this finding may be well-suited for designing interventions to mitigate the risk of depression, it remains to be further investigated who are these resilient people and what factors characterize resilience (Huisman et al., Reference Huisman, Klokgieters and Beekman2017). Furthermore, social support is among the best well-documented variables to influence suicidal behaviour (Calati et al., Reference Calati, Ferrari, Brittner, Oasi, Olie, Carvalho and Courtet2019; Hegerl and Heinz, Reference Hegerl and Heinz2019). Early research has also proposed a similar association between social support and suicidal ideation in the context of COVID-19 (Bryan et al., Reference Bryan, Bryan and Baker2020; Fitzpatrick et al., Reference Fitzpatrick, Harris and Drawve2020; Gratz et al., Reference Gratz, Tull, Richmond, Edmonds, Scamaldo and Rose2020; Papadopoulou et al., Reference Papadopoulou, Efstathiou, Yotsidi, Pomini, Michopoulos, Markopoulou, Papadopoulou, Tsigkaropoulou, Kalemi, Tournikioti, Douzenis and Gournellis2021). For instance, Gratz et al. (Reference Gratz, Tull, Richmond, Edmonds, Scamaldo and Rose2020), having analysed data from a nationwide community sample of 500 adults from 45 states, claimed that it is not loneliness but an absence of belongingness and significant connections that accounts for the association of the lockdown to greater suicide risk. In this sense, Joiner’s Interpersonal Theory of Suicide (Joiner et al., Reference Joiner, Brown and Wingate2005) proposed that the lack of social connectedness may lead to a potentially lethal suicidal attempt. More recently, Klonsky and May (Reference Klonsky and May2015) suggested that there is a three-step process towards suicidal attempts where connectedness protects against the escalation of ideation among individuals suffering both psychological pain and hopelessness. Greater disability during the confinement was also related to suicidal ideation. Individuals with limited functioning are thought to be at higher risk of suicidal ideation (Russell et al., Reference Russell, Turner and Joiner2009). Within the context of the COVID-19 pandemic, these individuals may have showed greater vulnerability to morbidity and mortality related to the SARS-CoV-2 virus, and thus have been forced to follow more stringent physical distancing measures. It is also possible that they encountered higher difficulties to follow their daily routines as compared with individuals without functional impairment, and coped less efficiently against the COVID-19 stressors (Sheffler et al., Reference Sheffler, Joiner and Sachs-Ericsson2021). In this situation, the perception of being a burden to others and low social belonging, factors that account for the association between these variables (Espinosa-Salido et al., Reference Espinosa-Salido, Perez Nieto, Baca-García and Provencio Ortega2021), may have been exacerbated. In this regard, Iob et al. (Reference Iob, Steptoe and Fancourt2020), using data from almost 45,000 adults in the UK, reported that people with disabilities and/or chronic physical illness reported higher thoughts of suicide between March and April 2020. In addition, an Indonesian nationwide survey found that individuals with disability had 2.18 times higher chance of experiencing self-harm and suicidal ideation than those without disability (Liem et al., Reference Liem, Prawira, Magdalena, Siandita and Hudiyana2022).
It will take time to know what the ultimate impact of the COVID-19 outbreak is on mental health. The psychological toll of the pandemic is unquestionable, but the reality is complex. Its consequences are predicted to gradually appear, including rising unemployment, financial loss, reduced participation or inadequate supplies derived from significant cuts in spending on social and healthcare. The effects on mental conditions are expected to stay and peak later, with variations across populations and nations (Ayuso-Mateos et al., Reference Ayuso-Mateos, Mediavilla, Rodriguez and Bravo2021; Brooks et al., Reference Brooks, Webster, Smith, Woodland, Wessely, Greenberg and Rubin2020; John et al., Reference John, Pirkis, Gunnell, Appleby and Morrissey2020). Continuous reinforcement of preventive and intervening mental health measures is thus of global importance. In this regard, a position paper detailed several mental health research priorities in response to the demands of COVID-19 (Holmes et al., Reference Holmes, O’Connor, Perry, Tracey, Wessely, Arseneault, Ballard, Christensen, Cohen Silver, Everall, Ford, John, Kabir, King, Madan, Michie, Przybylski, Shafran, Sweeney, Worthman, Yardley, Cowan, Cope, Hotopf and Bullmore2020). These include the collection of high-quality data on the mental health effects of the pandemic across the whole population and vulnerable groups, together with the development, assessment and refinement of driven strategies to address its psychological, social and neuroscientific aspects.
Strengths and limitations
This research has an important number of strengths. First, the use of an adult population-based cohort following a probabilistic sampling approach. Moreover, this sample comprises subjects of all educational levels and age ranges, as compared to recent published studies that tend to over-represent highly educated people and under-represent the oldest old population. Second, this study is one of the few including a baseline evaluation of the participants some months before the pandemic outbreak. Third, data from our study were collected through structured face-to-face home-based interviews and telephone interviews, unlike most prior studies, relying on web-based surveys instead. Fourth, we used a standardized assessment tool providing a clinical diagnosis of major depression, while the majority of previous research assessed depressive symptoms through screening tests or non-validated instruments. Finally, we used a large variety of validated instruments and socio-demographic variables to cover a broad-ranging research of potentially vulnerable groups. Our findings need to also be interpreted in the context of their shortcomings. As with all COVID-19-related research, the present study is limited by a short follow-up period, which reduced the power to evaluate the effects of the confinement on depression and suicidal behaviour. However, ours is an ongoing project that will provide information to a more comprehensive understanding of the changes in mental health in the mid- and long-term. We also acknowledge that some measures were collected retrospectively through self-report, which may be affected by recall or reporting bias, especially for the longer recall period. Finally, as this survey did not intend to generate clinical diagnoses for all mental disorders, some individuals presenting for example bipolar disorder or schizophrenia may have been included in our analytical sample.
Conclusions
The COVID-19 pandemic has put at the forefront the imperative of taking care for others, particularly among vulnerable groups who are experiencing the most distress. Altogether, our results point to the value of the social factors as strongly associated with mental health conditions, with loneliness and social support maybe representing different risk pathways. Promoting a sense of connectedness, experiences of companionship and meaningful relationships show promise in mental health prevention, especially in times of physical distancing and lockdowns. Future research should strive to evaluate the long-lasting effects of the COVID-19 crisis on mental health.
Availability of Data and Materials
Data supporting the findings of this study are available upon reasonable request.
Acknowledgements
E.L.’s work was supported by the Sara Borrell postdoctoral programme (CD18/00099) from the Instituto de Salud Carlos III (Spain) and co-funded by European Union (ERDF/ESF, “Investing in your future”). BO is supported by the Miguel Servet Contract (Instituto de Salud Carlos III, grant number CP20/00040). The authors sincerely appreciate the generous contribution of all the participants, which made this work possible.
Financial support
This work was funded by the Instituto de Salud Carlos III (J.L.A.M., grant numbers PI16/00218 and PI19/00150; J.M.H., grant number PI16/01073), the Centro de Investigación Biomédica en Red de Salud Mental, CIBERSAM and the RESPOND project funded by the European Commission under Horizon 2020 -the Framework Programme for Research and Innovation (2014–2020) (grant number: 101016127).
Competing interests
None declared.
Ethical standards
The protocols were approved by the Clinical Research Ethics Review Committees of both Parc Sanitari Sant Joan de Déu (Barcelona), and Hospital Universitario La Princesa (Madrid). All participants provided written informed consent for their participation and the treatment of their personal data. The ones that participated in the Post-measures period gave further verbal consent before the telephonic interview.