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Latent groups from multidimensional factors and effects on suicidal ideation in older adults

Published online by Cambridge University Press:  07 May 2024

Hyun Lee
Affiliation:
Department of Social Welfare, Mokwon University, Daejeon, South Korea
Eunjin Lee*
Affiliation:
The Center for Social Welfare Research, Yonsei University, Seoul, South Korea
*
Correspondence: Eunjin Lee. Email: [email protected]
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Abstract

Background

Suicide is a serious social problem among older adults. However, little is known about how multidimensional factors affect suicide of older adults.

Aims

We classify the multidimensional suicidal risk types of older adults based on their characteristics and identify differences in suicidal ideation.

Method

Data were obtained via a nationwide online survey targeting 612 older adults over the age of 55 years. A latent profile analysis identified three profiles, one of which represented the optimal situation for these adults.

Results

We identified three distinct multidimensional suicidal risk types in older adults: high-risk predicament (24.5%), moderate-risk predicament (57.7%) and abundant internal/external resources (17.8%). In particular, depression, a major risk factor for suicide, was found together with self-neglect in each group. Multiple regression analysis showed that older adults in the moderate-risk predicament and high-risk predicament groups were more likely to have suicidal ideation than those in the abundant internal/external resources group.

Conclusions

Our findings suggest that co-occurrence of depression and self-neglect represents a suicide risk pattern in high-risk older individuals. Therefore, local communities need to urgently screen and provide interventions for such older adults and strengthen their capacity for multidimensional aspects of life to prevent suicide in the long term.

Type
Paper
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
Copyright © The Author(s), 2024. Published by Cambridge University Press on behalf of Royal College of Psychiatrists

Suicide is a serious social problem. In 2020, Korea had the world's highest suicide rate, at 23.5 deaths per 100 000, compared with the OECD average of 10.9 deaths per 100 000Reference Statistics Korea.1 Moreover, the average suicide rate among Koreans in their 50s or older is very high, exceeding 30 deaths per 100 000.Reference Statistics Korea.1 There is thus an urgent need to identify older adults vulnerable to suicide and determine their characteristics. Studies have been conducted to identify the characteristics of individuals or groups at higher risk of suicide based on risk factors associated with elderly suicide. A systemic review on suicidal behaviour in older age found that risk factors most closely associated with self-harm attempts in elderly individuals included depressive disorders, methods of self-harm, and use of psychotropic medications. In particular, male sex, violent methods of self-harm, any psychiatric disorder, poor medical condition, stressors/bereavement and living alone appeared to be significant predictors of suicide.Reference Beghi, Butera, Cerri, Cornaggia, Febbo and Mollica2 In addition, other studies have reported that individual social factors such as limited social connectedness,Reference Fässberg, van Orden, Duberstein, Erlangsen, Lapierre and Bodner3 low social trustReference Noguchi, Kobayashi, Iwase, Suzuki, Kawachi and Takao4 and low social participationReference Yen, Yang, Yang, Lung, Shih and Hahn5 have a great impact on suicide of elderly people. These studies contribute to identifying risk and protective factors influencing elderly suicide based on various research outcomes. However, they were limited by not being able to simultaneously verify each factor. Consequently, it is challenging to understand which groups are most vulnerable to suicide based on variations in these factors.

Recent studies have used latent class analysis (LCA) or latent profile analysis (LPA) to classify individuals into groups vulnerable to suicide. As an example, in the study by Podlogar et al., LCA was applied to classify suicide risky groups among psychiatric outpatients based on depression and anxiety indicators.Reference Podlogar, Rogers, Stanley, Hom, Chiurliza and Joiner6 Subgroups with high levels of depression and physical anxiety were found to have a high risk of suicide. Also, another study used LPA to classify older adults living alone in Korea into three types based on psychosocial risk factors.Reference Lee, Cho, Yang, Chang, Ko and Yi7 The study found a positive correlation between depression and suicidal ideation and a negative correlation between low social support and high depression and loneliness. However, few studies have focused on older adults. In addition, most studies of suicide have focused on only a small number of mental health or psychological indicators;Reference Van Orden, O'Riley, Simning, Podgorski, Richardson and Conwell8 hence, they have failed to consider social-relational and community factors in an integrated manner.

Older adults face various changes and difficulties, and complex long-term factors are involved in the causes of suicide in this population.Reference Leenaars9 Thus, the suicide problem among older adults cannot be addressed by intervening with respect to only one factor.Reference Stanley, Hom, Rogers, Hagan and Joiner10 According to Leenaars’ multidimensional model, suicide is a result of a multidimensional process involving individuals’ psychosocial internal and external factors.Reference Leenaars9 This is similar to the ‘predicament model’ of suicide, which divides the stressor factors of suicide into internal predicaments related to mental health and intrapsychic factors and external predicaments explained by the external environmental and situational factors.Reference Pridmore and Jamil11 Taking a multidimensional approach, this study considered the external and internal indicators generated by prior suicide-related studies to identify older adult groups vulnerable to suicidal ideation.

Numerous studies have identified internal factors related to intrapsychic and mental health that influence suicide.Reference Lau, Morse and Macfarlane12 Depression is reported to be the strongest and most direct intrapsychic factor in suicide.Reference Hawton, Casañas, Comabella, Haw and Saunders13 Moreover, depression is highly associated with and accompanied by other intrapsychic factors such as anxiety, other mental disorders and psychological distress, which all affect suicide.Reference Batterham, Christensen and Calear14 In addition, the absence or impairment of goals, and the presence of hopelessness and negative cognitive distortions about reality and the futureReference Leenaars, Dieserud and Wenckstern15 are intrapsychic risk factors leading to suicidal ideation. However, in addition to focusing on these risk factors, a new approach has been used to investigate effective protective factors that can reduce the potential risk of suicidal ideation and behaviour. Meaning in life,Reference Beach, Brown and Cukrowicz16 hopeReference O'Keefe, Tucker, Wingate and Rasmussen17 and self-compassion, which enable one to adapt to difficult situations and overcome suicidal crises as part of an inner resilience,Reference Hasking, Boyes, Finlay-Jones, McEvoy and Rees18 are among the protective factors that have been confirmed to have an impact. Self-compassion refers to the intrinsic psychological capacity of mindful awareness, where individuals do not avoid or evade the pain and difficulties they experience.Reference Neff and Beretvas19 It involves recognising these challenges not as issues exclusive to oneself but as problems that anyone can encounter, alleviating the suffering through a mindset that acknowledges the universality of such experiences.Reference Neff20 This study considered depression (which is the strongest risk factor for suicide), motivation and self-compassion, which are internal protective factors, to be intrapsychic indicators affecting suicide.

The external risk factors influencing suicide are closely related to social connectedness.Reference Van Orden, O'Riley, Simning, Podgorski, Richardson and Conwell8 Social connectedness is a concept that includes not only interpersonal relationships with family and friends but also a sense of belonging to the community, such as social participation and social trust. It directly impacts elderly suicide.Reference Conwell, van Orden and Caine21 In addition, unmet expectations and frustrated ambitions with respect to employment, health and financial status are among the external stressors influencing suicide.Reference Leenaars, Dieserud and Wenckstern15 Self-directed aggression and escape behaviours or attitudes occur when needs for relational, environmental and physical factors are not fulfilled; this can lead to suicide.Reference Leenaars, Dieserud and Wenckstern15 Self-neglect refers to the inability to perform essential self-care tasks, indicating a state where individuals cannot meet their basic needs.Reference Brandl, Dyer, Heisler, Otto, Steigel and Thomas22 This is manifested through behaviours that threaten the health and safety of older people. It involves the inability to secure essential physical living conditions and personal hygiene conditions, manage one's finances, and obtain goods and services for maintaining physical health, emotional stability and general safety, leading to social isolation.Reference Brandl, Dyer, Heisler, Otto, Steigel and Thomas22,Reference National Center on Elder Abuse.23 This study considered health status, social support, social participation, social trust and self-neglect to be external indicators related to the social/environmental factors affecting suicide.

Intrinsic and extrinsic factors that affect suicidal ideation are reported to have different effects according to individual sociodemographic characteristics. In general, suicidal ideation is higher with older ageReference Chan, Liu, Chau and Chang24 and occurs more in elderly women than in men.Reference Chan, Liu, Chau and Chang24,Reference Yen, Yang, Yang, Lung, Shih and Hahn25 Considering marital status, being non-married/non-cohabiting had a significant effect on suicidal ideation.Reference Chang, Chan and Yip26 Absence of a spouse in old age owing to bereavement or divorce is linked to living alone and can lead to a decrease in interpersonal networks and support systems, which can negatively affect suicidal ideation.Reference Mclaren, Gomez, Gill and Chesler27 Low socioeconomic status (SES) is an established risk factor for suicidal behaviors.Reference Aschan, Goodwin, Cross, Moran, Hotopf and Hatch28 Education and working status are variables closely related to SES,Reference Li, Page, Martin and Taylor29 and low levels of educational attainment and unemployment have a significant effect on suicidal ideation in older adults.Reference Yen, Yang, Yang, Lung, Shih and Hahn25 Based on previous studies, the present study attempted to examine differences in the effects of gender, age, employment status, education level, marital status and SES on subgroups of suicidal ideation classified using LPA.

To review, suicidal ideation among older adults is the result of multidimensional and complex action of external/internal factors, and their patterns differ depending on the individual. We classified types of potential suicide crises using LPA based on the characteristics of the external/internal factors that affect suicidal ideation. LPA is an analytical approach that categorises groups based on the similarities of response patterns among individuals who are heterogeneously latent in the collected data; it is applied when the indicators used for analysis consist of continuous variables.Reference Berlin, Williams and Parra30 Therefore, it is an appropriate method for classifying suicide risk groups based on the characteristics of individual responses. After applying LPA, we examined the characteristics of the subgroups that were typified and checked the differences in the impacts of each type on suicidal ideation. Overall, we explored which older adult groups with which characteristics were most vulnerable to suicidal ideation. The aim was to propose ways of reducing suicidal ideation in older adults by considering the characteristics of each type of suicidal crisis.

Method

Participants and procedure

We conducted a nationwide online survey targeting 612 older adults over the age of 55 years. The nature of online surveys means that they are likely to receive more responses from relatively young age groups, so quota sampling was performed by age group (256 people 55 to 64 years old, 356 people 65 years old or older) based on the population ratio. We set the minimum age to 55 years because this is the retirement age set by most Korean companies; therefore, this is when retirement and lifestyle changes usually occur (Korea's average retirement age was recently calculated to be 49.3 years).Reference Statistics Korea31 The survey was conducted for about 3 weeks from 13 October to 3 November 2021. After respondents expressed their intention to participate voluntarily, they completed the survey using a smartphone or PC. The research goals and contents were explained in advance of the survey, and only individuals who clicked on the consent to participate in the study were allowed to respond. In addition, respondents were informed that they could stop participating in the survey at any time if they wished. As the survey response data were encrypted and converted into personally identifiable data, personal information was thoroughly protected. The authors assert that all procedures contributing to this work comply with the ethical standards of the relevant national and institutional committees on human experimentation and with the Helsinki Declaration of 1975, as revised in 2008. All procedures involving human subjects/patients were approved by Yonsei University Institutional Review Board (7001988-202110-HR-1380-02).

Measures

The Suicide Ideation Scale was used to measure suicidal ideation.Reference Harlow, Newcomb and Bentler32 It consists of five questions on suicidal thoughts and suicide attempts. Regarding its reliability, the Cronbach's alpha was 0.84. To measure self-neglect among the elderly, the Self-Neglect Scale for older adults was used;Reference Park and Kim33 the Cronbach's alpha was 0.88. To measure self-compassion, the Korean version of the Self-Compassion ScaleReference Kim, Yi, Cho, Lee and Chai34 was used; its Cronbach's alpha was 0.72. For motivation, the items to evaluate intrinsic motivation were used;Reference Lim35 the Cronbach's alpha was 0.94. For depression, a five-item version of the Geriatric Depression Scale was used;Reference Weeks, McGann, Michaels and Penninx36 its reliability was 0.79. Social trust was measured as a single item using the question: ‘To what extent do you think our society is reliable?’ Answers ranged from ‘not at all’ (1) to ‘very reliable’ (5).Reference Shin, Choi, Suh and Koo37 Social support was measured as the number of people (e.g. family members, relatives, friends, neighbours and colleagues) who could provide help. If no one could provide help, this was marked as 0. Regarding health, the respondents were asked to choose from ‘very bad’ (1) to ‘very healthy’ (5) in answer to the question ‘How is your health in general?’ A single question was used for social participation. The respondents were asked, ‘Have you ever participated in one or more social groups (social groups, religious groups, leisure activity groups, etc.) during the past year?’ The answers ranged from ‘not participated at all’ (1) to ‘very actively participated’ (4).

Data analysis

We conducted the analysis in three steps using LPA. In the first step, we identified the optimal number of potential profiles based on the relevant index. Various indices, including log-likelihood, Akaike's information criterion (AIC), Bayesian information criterion (BIC), sample-size-adjusted BIC (SABIC), and the entropy and Vuong-Lo-Mendell-Rubin likelihood ratio test (LMR-LRT), were used to select the number of profiles. Lower values of log-likelihood, AIC, BIC, and SABIC and higher values of entropy were interpreted as being more suitable. Significance in LMR-LRT indicates that the k-profile is a more compact solution than the k−1-profile.Reference Nylund, Asparouhov and Muthén38 The following indicators were used for profile classification. Internal aspects included indicators of depression, motivation and self-compassion, and external aspects encompassed indicators of health, social support, social participation, social trust and self-neglect. In the second step, chi-squared test and analysis of variance (ANOVA) were used to explore the sociodemographic variables of the survey respondents and predictors of suicidal ideation. In the third step, after controlling for sociodemographic variables, we performed multiple regression analysis to verify the influence of suicidal ideation on groups derived from the profile analysis. The statistical procedures were performed using R software and the tidyLPA packageReference Rosenberg, Beymer, Anderson, van Lissa and Schmidt39 for LPA.

Results

Latent profile analysis

Table 1 summarises the classification of multidimensional suicidal risk types among older adults. From classes 2 to 5, the log-likelihood, AIC and SABIC values continued to decrease, and the LMR-LRT values were significant in all classes. However, class 3 showed the lowest BIC value and a greater entropy value. When these results were considered comprehensively, class 3 was identified as representing the optimal situation.

Table 1 Goodness-of-fit statistics for classifications

AIC, Akaike information criterion; BIC, Bayesian information criterion; SABIC, sample-size-adjusted BIC; LMR-LRT, Vuong-Lo-Mendell-Rubin likelihood ratio test.

Figure 1 shows the characteristics of the multidimensional suicidal risk types of older adults. The group with high depression and self-neglect and low motivation and social participation was named the ‘high-risk predicament’ group (24.5% of the sample). Class 2, with moderate psychosocial risks scores, was classified as the ‘moderate-risk predicament’ group (57.7% of the sample). Class 3, with high self-compassion, motivation, social participation and trust and low depression and self-neglect was classified as the ‘abundant internal/external resources’ group (17.8% of the sample).

Fig. 1 Multidimensional suicidal risk groups in the three-class latent profile model. Class 1, high-risk predicament; class 2, moderate-risk predicament; class 3, abundant internal/external resources.

Predictors of class membership

Table 2 presents the differences in sociodemographic and suicidal ideation variables among the three multidimensional suicidal risk types. Chi-squared test and one-way ANOVA were performed according to the nature of the variables. Significant differences between classes were observed with respect to education, marriage, SES and suicidal ideation. The ‘abundant internal/external resources’ profile had a higher education level compared with the other profiles. Married/cohabiting individuals accounted for a rather low proportion of the ‘high-risk predicament’ profile, whereas their proportion was relatively high in the other profiles. The highest SES and the lowest suicidal ideation were found for the ‘abundant internal/external resources’ profile (mean = 5.8, s.d. = 1.5; mean = 1.4, s.d. = 0.5, respectively). No class differences were observed in terms of gender, age group or work.

Table 2 Differences in sociodemographic and suicidal ideation by profile

a. Values are frequency (percentage) or mean (standard deviation).

b. P-values come from chi-squared test or analysis of variance.

*P < 0.05, **P < 0.01, ***P < 0.001.

Multiple regression for suicidal ideation

Multiple regression analysis was performed to verify the effects of the multidimensional suicidal risk types on suicidal ideation among older adults (Table 3). The ‘abundant internal/external resources’ profile was used as the reference group for comparison with other groups. The other groups (moderate-risk predicament and high-risk predicament) had significantly higher rates of suicidal ideation than the reference group. In particular, the older adults with the ‘high-risk predicament’ profile showed the greatest effect size for suicidal ideation (β = 1.13, P < 0.001).

Table 3 Multiple regression for suicidal ideation

a. Standardised coefficient.

Discussion

In this study, first, the participants were classified into ‘high-risk predicament’, ‘moderate-risk predicament’ and ‘abundant internal/external resources’ groups according to the results of LPA based on multidimensional factors affecting suicidal ideation. Unlike the other two types, the ‘abundant internal/external resources’ type was associated with high self-compassion, social participation, health, motivation, social support and social trust but markedly low depression and self-neglect. For the ‘high-risk predicament’ profile, levels of depression and self-neglect were high, but those of self-compassion and health were low. For the ‘moderate-risk predicament’ profile, all variables showed moderate levels of psychosocial risk.

Depression, one of the major characteristics, tended to appear along with self-neglect in both the ‘high-risk predicament’ and ‘abundant internal/external resources’ groups. However, for the ‘high-risk predicament’ profile, depression and self-neglect levels were both found to be very high, whereas the in ‘abundant internal/external resources’ profile, depression and self-neglect levels were low. It was thus confirmed that depression occurs with self-neglect. Suicidal ideation was found to be highest when depression and self-neglect had a high combined effect. Previous studies have verified that depression has a positive correlation with self-neglect.Reference Burnett, Coverdale, Pickens and Dyer40 Thus, the combined effect of depression and self-neglect observed in the ‘high-risk predicament’ group suggests that depression influenced self-neglect. Future research should verify the combined effect of depression and self-neglect on suicidal ideation.

Second, comparing the sociodemographic characteristics of subgroups classified through LPA revealed statistically significant differences in education, marriage and SES. These results are consistent with those of previous studies mentioned above.Reference Neff20Reference Chan, Liu, Chau and Chang24 Therefore, to understand suicidal ideation in vulnerable groups, it is necessary to focus on these characteristics, with close attention to the risk of suicide. In the ‘high-risk predicament’ group – which showed very low levels of social support, social participation and social trust – the ratio of people without a spouse was much higher than in the other two groups. This result is in line with the findings of previous studies on the social relationships of older adults who committed suicide, which found that they were more likely to live alone and have fewer acquaintances and friends, as well as being less likely to participate in social activities and having low levels of social trust.Reference Noguchi, Kobayashi, Iwase, Suzuki, Kawachi and Takao41 Moreover, a study that attempted to typify the psychosocial crisis in older adults using LPA found that low social support was accompanied by high loneliness and depression.Reference Lee, Cho, Yang, Chang, Ko and Yi7 When planning suicide prevention policies, it is necessary to ensure that they enhance social support and social trust and increase social participation, taking into account the suicide risk of older adults without a spouse or with weak social networks and socioeconomic resources.Reference Kim42

In Korea, a specialised service in the Individualised Support Service for older adults is provided to prevent lonely death and suicide among vulnerable elderly people with high levels of social isolation and depression. The recipients of this service are divided into two groups: depressed older adults who suffer from mental health problems and are at high risk of suicide; and reclusive older adults who are cut off from family and neighbours, and disconnected from public and private support systems. Specialised services not only provide mental health treatment for the group at high risk of depression and suicide but also identify older adults who are disconnected from society and promote connection through individual case management strategies such as counselling, group activities, medical treatment, connection to community resources, and so on. However, as voluntary application for this service is likely to be low, social efforts are needed to identify and find people in need. Based on the results of this study, among low-income elderly people living alone, those who do not use welfare centres or senior citizen centre or have no local community activities, could be screened first in efforts to identify high-risk older adults with limited social networks.

Third, this study compared the influences on suicide between the groups through multiple regression analysis. When the ‘abundant internal/external resources’ group was used as a reference, the ‘high-risk predicament’ profile showed a strong effect on suicidal ideation based on the standardised coefficient. This result could be used as a basis to determine which group needs intervention first. Previous studies have found that suicidal ideation in older adults is highly likely to lead to suicide attempts and completed suicide.Reference Nylund, Asparouhov and Muthén38,Reference Halder and Manot43 Therefore, the ‘high-risk predicament’ group, which showed the highest level of suicidal ideation, can be viewed as a high-risk group with a high probability of suicide implementation. Therefore, local communities need to urgently screen and provide interventions for older adults who show the characteristics of the ‘high-risk predicament’ group.

The ‘high-risk predicament’ group also had the highest levels of depression and self-neglect. Therefore, using depression and self-neglect assessments may be an effective way to screen older adults who can be classified as having a ‘high-risk predicament’ profile. Furthermore, as mentioned earlier, owing to the higher rates of suicide attempts and completions among older adults with high suicidal ideation, early intervention is essential for at-risk groups. Klonsky and May's three-step theoryReference Klonsky and May44 suggests that psychological pain and hopelessness contribute to suicidal ideation, whereas lack of connectedness influences its escalation, potentially leading to suicide attempts. Therefore, proactive early intervention is vital after identifying groups with high levels of suicidal ideation, focusing on reducing depression influenced by psychological pain and hopelessness, as well as mitigating self-isolating and neglectful behaviours that affect connectedness. To address this specifically, the significance of community-based education programmes is emphasised, aiming to raise awareness of potential environmental hazards and promote self-care, thereby preventing older adults from experiencing depression and engaging in self-harm.Reference Dong, Xu and Ding45

Conversely, the ‘abundant internal/external resources’ group, with the lowest risk of suicidal ideation, showed high self-compassion and motivation (internal indicators). This group also displayed high levels of health, social participation, social support and social trust (external indicators). Therefore, for older adults in the ‘abundant internal/external resources’ group, interventions could focus on managing and strengthening these protective factors for suicide prevention.

This study had several limitations. First, it used data collected through an online survey targeting older adults, and the questions were kept short to increase the response rate and enable intuitive responses. In future research, additional analysis using standardised scales is needed to more precisely confirm the effects of the variables considered in this study.

Second, the health-related variables used in this study were measured subjectively and did not reflect the objective health status of the participants. More research is needed to understand the effects of objective health conditions such as frailty and functioning disability, chronic diseases and cognitive disorders on suicidal ideation. Recently, studies have used biomarkers to verify causality in suicide risk or suicidal behavior.Reference Calati, Nemeroff, Lopez-Castroman, Cohen and Galynker46 More precise verification will be possible if objective health-related indices and variables are used.

Third, LPA was conducted, and the effects of typified latent profiles on suicidal ideation were examined in a cross-sectional study. The study did not fully investigate the longitudinal causal relationships between changes in the latent profiles over time and suicidal ideation. It is important to understand these longitudinal relationships using analyses such as latent transition analysis and latent class growth analysis. More research is needed using longitudinal data to determine whether transitions occur over time in different types of biopsychosocial crisis. Research that identifies the longitudinal effects of these types on suicidal ideation could better reflect the characteristics of suicide among older adults, which evolve over a long period, from the stages of suicidal ideation and suicide planning to final implementation.

Data availability

The data-sets analysed during the current study are not publicly available. Any individual may apply for data access by contacting the corresponding author.

Author contributions

All authors contributed equally to all aspects of the research reported in this paper.

Funding

This research received no specific grant from any funding agency, commercial or not-for-profit sectors.

Declaration of interest

None.

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Figure 0

Table 1 Goodness-of-fit statistics for classifications

Figure 1

Fig. 1 Multidimensional suicidal risk groups in the three-class latent profile model. Class 1, high-risk predicament; class 2, moderate-risk predicament; class 3, abundant internal/external resources.

Figure 2

Table 2 Differences in sociodemographic and suicidal ideation by profile

Figure 3

Table 3 Multiple regression for suicidal ideation

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