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The mediating roles of functional limitations and social support on the relationship between vision impairment and depressive symptoms in older adults

Published online by Cambridge University Press:  05 September 2018

Xiuquan Gong
Affiliation:
Social Science and Public Administration, East China University of Science and Technology, Shanghai, China
Zhao Ni
Affiliation:
School of Nursing, Duke University, North Carolina, USA
Bei Wu*
Affiliation:
Rory Meyers College of Nursing, New York University NYC Aging Incubator, New York University, New York, USA
*
*Corresponding author. Email: [email protected]
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Abstract

Vision impairment is prevalent and it is strongly associated with depressive symptoms in older adults. This study aimed to investigate the mediating roles of functional limitations and social support on the relationship between vision impairment and depressive symptoms in older adults. This study used data from a probability-based sample of 1,093 adults aged 60 and older in Shanghai, China. Structural equation models were used to examine the structural relationships among sets of variables simultaneously, including vision impairment, activities of daily living ADLs, instrumental ADLs (IADLs), friends support, family support, relatives support and depressive symptoms. The bootstrapping method and the program PRODCLIN were used to test the indirect effects of these variables. This study found that vision impairment was directly associated with a higher level of depressive symptoms, and the association was partially mediated by functional limitations (IADLs) and social support (friends support). The study demonstrates that improving social support from friends and enhancing social participation for visually impaired older adults can reduce depressive symptoms. More importantly, this study contributes to the knowledge of mediating mechanisms between vision impairment and depressive symptoms.

Type
Article
Copyright
Copyright © Cambridge University Press 2018

Introduction

Vision impairment affects one-fifth of adults over the age of 60 in the world (Brown and Barrett, Reference Brown and Barrett2011). The number of visually impaired adults aged 50 and older is 186 million, which represents 13.89 per cent of the global population (World Health Organization, 2012). Previous research suggests a strong link between vision impairment and depressive symptoms: older adults with vision impairment are more likely to have depressive symptoms (Heine and Browning, Reference Heine and Browning2004; Augustin et al., Reference Augustin, Sahel, Bandello, Dardennes, Maurel, Negrini, Hieke and Berdeaux2007; Evans et al., Reference Evans, Fletcher and Wormald2007; Hayman et al., Reference Hayman, Kerse, La Grow, Wouldes, Robertson and Campbell2007; Jin and Wong, Reference Jin and Wong2008; Bernabei et al., Reference Bernabei, Morini, Moretti, Marchiori, Ferrari, Dalmonte, Ronchi and Atti2011; Rees et al., Reference Rees, Xie, Holloway, Sturrock, Fenwick, Keeffe and Lamoureux2013). For example, older adults with vision impairment were 1.43–1.65 times more likely to have suicidal ideation compared to those with normal vision (Kim et al., Reference Kim, Kwak and Kim2015).

In the literature, functional limitations and social support are often identified as important factors associated with depressive symptoms among visually impaired older adults (Beekman et al., Reference Beekman, Kriegsman, Deeg and Tilburg1995; Rovner et al., Reference Rovner, Zisselman and Shmuely-Dulitzki1996; Lebowitz et al., Reference Lebowitz, Pearson, Schneider, Reynolds, Alexopoulos, Bruce, Conwell, Katz, Meyers, Morrison, Mossey, Niederehe and Parmelee1997; Penninx et al., Reference Penninx, Guralnik, Ferrucci, Simonsick, Deeg and Wallace1998; Hybels et al., Reference Hybels, Blazer and Pieper2001; Rovner and Casten, Reference Rovner and Casten2002; Guerette and Smedema, Reference Guerette and Smedema2011; Rees et al., Reference Rees, Xie, Holloway, Sturrock, Fenwick, Keeffe and Lamoureux2013). For example, visually impaired older adults often have serious functional limitations associated with depressive symptoms (Branch et al., Reference Branch, Horowitz and Carr1989; Keller et al., Reference Keller, Ba, Thomas and Potter1999; Brody et al., Reference Brody, Gamst, Williams, Smith, Lau, Dolnak, Rapaport, Kaplan and Brown2001; Burmedi et al., Reference Burmedi, Becker, Heyl, Wahl and Himmelsbach2002; West et al., Reference West, Gildengorin, Haegerstrom-Portnoy, Schneck, Lott and Brabyn2002; Jang et al., Reference Jang, Mortimer, Haley, Small, Chisolm and Graves2003; Schilling et al., Reference Schilling, Wahl, Horowitz, Reinhardt and Boerner2011; Hochberg et al., Reference Hochberg, Maul, Chan, Van, Ferrucci, Friedman and Ramulu2012). Furthermore, studies have shown that greater support from family and friends is significantly associated with better adaptation to vision impairment and fewer depressive symptoms (Reinhardt, Reference Reinhardt1996; McIlvane and Reinhardt, Reference McIlvane and Reinhardt2001; Horowitz et al., Reference Horowitz, Reinhardt, Boerner and Travis2003; Reinhardt et al., Reference Reinhardt, Boerner and Horowitz2009).

The research reviewed above emphasised the importance of investigating the prevalence and predictors of depressive symptoms in older adults with vision impairment. However, these studies failed to address possible explanatory variables associated with the relationship between vision impairment and depressive symptoms among older adults. Furthermore, family support and friends support were often treated as exogenous independent variables, when in fact they could be endogenous variables. For example, older adults with vision impairment were less likely to participate in social activities than their peers with normal vision, had decreased contact with friends and experienced decreased size of their friendship network (Wang et al., Reference Wang, Chan, Ho and Xiong2008a). Also, in England and Finland, women with greater functional limitations had higher odds of receiving spousal and filial help (Blomgren et al., Reference Blomgren, Breeze, Koskinen and Martikainen2012).

Therefore, it is important to understand the mediation mechanisms between vision impairment and depressive symptoms. A few studies have examined the mediation effects of functional limitations and social support on the relationship between vision impairment and depressive symptoms. However, the results from these studies were not consistent. Brown and Barrett (Reference Brown and Barrett2011) tested these mediation effects based on the data from the Americans’ Changing Lives Study, and found that perceived support did not significantly predict depressive symptoms among older adults with vision impairment. On the contrary, Bookwala and Lawson (Reference Bookwala and Lawson2011) conducted a study by using path analysis showing that older adults’ functional limitations and social isolation played mediating roles on the relationship between self-rated vision impairment and depressive symptoms (Bookwala and Lawson, Reference Bookwala and Lawson2011). Similarly, in a separate study conducted in Amsterdam, the size of the social network among older adults played a mediating role in the association between vision impairment and depressive symptoms (van Nispen et al., Reference van Nispen, Vreeken, Comijs, Deeg and van Rens2016). These studies examined one domain of social support (Bookwala and Lawson, Reference Bookwala and Lawson2011; van Nispen et al., Reference van Nispen, Vreeken, Comijs, Deeg and van Rens2016) and ignored other ways to gauge social support. In fact, social support includes multiple domains. Lynch (Reference Lynch1998) operationalised the role of social support in various ways, with at least three distinct dimensions: structure, function and perceived quality. Each aspect of social support was independently related to depressive symptoms (Chi and Chou, Reference Chi and Chou2001). Additionally, the social support characteristics such as who provides the support and forms of support may influence the wellbeing of older adults (Merz and Huxhold, Reference Merz and Huxhold2010). Individuals are likely to maintain various relationships to achieve a good sense of wellbeing (Weiss, Reference Weiss and Rubin1974). Some of these provisions are typically provided by family, sibling, friends and neighbours (Lynch, Reference Lynch1998; Campbell et al., Reference Campbell, Connidis and Davies1999; Brown et al., Reference Brown, Mason, Spokane, Cruza-Guet, Lopez and Szapocznik2009; Li and Zhang, Reference Li and Zhang2015). Therefore, it is important to examine multiple domains of social support (i.e. support from friends, support from family, etc.), the mediating roles of multiple domains of social support between vision impairment and depressive symptoms, and how this association varies by support type and provider in older adults.

China has the largest number of visually impaired residents in the world (World Health Organization, 2012). However, to the best of our knowledge, only one study has examined the potential mediators on the relationship between vision impairment and quality of life among the Chinese population (Wang et al., Reference Wang, Chan, Ng and Ho2008b). The mediator examined was spirituality. Therefore, it is important to examine the potential mediators of functional limitations and social support on the relationship between vision impairment and depressive symptoms with evidence from China to expand our understanding of additional factors that could influence this relationship. A better understanding of these relationships will help health-care providers and policy makers to develop clinical and policy interventions to improve the health and wellbeing of older adults.

The purpose of this study was to examine how functional limitations and social support mediate the relationship between vision impairment and depressive symptoms. We hypothesised that vision impairment would be associated with greater depressive symptoms and that more functional limitations and less social support would partially account for this association. We predicted that these relationships would exist after controlling for the socio-demographic variables which are known to be related to vision impairment and depressive symptoms in older adults, such as age, gender, education level and marital status. We further assessed what types of functional limitations (i.e. activities of daily living (ADLs) and instrumental ADLs (IADLs)) and social support (i.e. support from friends, support from family, etc.) mediated the relationship between vision impairment and depressive symptoms.

Methods

Sample and procedures

We conducted this study from January 2014 to July 2014 among older adults aged 60 and above in Jing'an district, a central part of Shanghai, China. The sampling and recruitment methods are as follows. The Civil Affairs Bureau of Jing'an District had a list of all the residents in their community. We used this list as a sample frame and randomly selected study participants from the sample. Trained interviewers conducted a face-to-face interview with study participants using a structured questionnaire. From the population of 56,190 persons, 1,875 individuals were selected to enrol in the study, and a total of 1,233 participants completed the interviews. In the study, participants whose Mini-Mental State Examination (MMSE) score (Katzman et al., Reference Katzman, Zhang, Ouang, Wang, Liu, Yu, Wong, Salmon and Grant1988) was lower than 20 (N = 87) were excluded, and participants with missing values of the Geriatric Depression Scale (GDS) (N = 53) were deleted. The final sample included a total of 1,093 older adults.

Measures

Vision impairment

Self-rated vision status is defined by asking patients to rate the global quality of their vision from poor to good (El-Gasim et al., Reference El-Gasim, Munoz, West and Scott2013). This method is widely used in scientific studies and routine assessments because it is simple and has been demonstrated to be a valid measure of vision impairment (Saaddine et al., Reference Saaddine, Narayan, Engelgau, Aubert, Klein and Beckles1999; Crews et al., Reference Crews, Chou, Zhang, Zack and Saaddine2014). For example, El-Gasim et al. (Reference El-Gasim, Munoz, West and Scott2013) studied the association between self-rated vision function and clinical vision tests, and found that better self-rated vision status was associated with better visual acuity, contrast sensitivity, stereoacuity and visual fields. In our study, we used self-rated vision status to measure vision impairment: ‘Which statement best describes your present vision?’ Response categories were as follows: 1 = normal: no vision impairment or a little vision impairment but having no difficulty in managing familiar surroundings; 2 = moderate impairment: some vision impairment and having some difficulty in managing familiar surroundings; 3 = severe impairment: low vision or blindness (after wearing glasses or contact lenses) and needing help to take care of oneself even under familiar surroundings.

Functional limitations

The functional limitations scale included ADLs and IADLs (Lawton and Brody, Reference Lawton and Brody1969). ADL items included eating, walking, toileting, dressing, bathing, washing face and brushing teeth. IADL items included tasks such as doing housework, taking medicine, washing clothes, shopping, cooking, taking a bus, making phone calls and managing money. Responses were scored on a four-point scale (1 = no difficulty, 4 = unable to). Higher total scores indicated more functional limitations. The Cronbach's alpha reliability coefficients of ADLs and IADLs in our study were 0.907 and 0.942, respectively.

Social support

Social support was assessed using the Social Support Rating Scale by a Chinese researcher (Xiao, Reference Xiao1994) and the scale has been widely used in China due to its high reliability and validity (Wang et al., Reference Wang, Haslam, Yu, Ding, Lu and Pan2015; Nie et al., Reference Nie, Dai, Zhao, Dong, Chen and Ren2017). It consisted of 14 items. The Cronbach's alpha for this scale was 0.745 in this study. We evaluated the 14 items of social support by using an exploratory factor analysis. After deleting the items with a loading below 0.40, results of this analysis are depicted in Table 1. The most important factor explained 14.57 per cent of the variance, and it was related to friends support (FRS). The second, third, fourth and fifth factors explained an additional 12.41, 12.16, 12.09 and 10.63 per cent of the variance, respectively, and were related to relatives support (RES), calamity support (CAS), family support (FAS) and talking/asking for help (TAH). A total of 61.85 per cent of the variance of social support was explained by these five factors. The friends support included four items (close friends, neighbour relationship, colleague relationship and group activities); the relatives support included three items (parents support, siblings support and other family members support); the family support included three items (spouse support, offsprings support and family relationship); the calamity support included two items (financial support resources and emotional support resources) and the talking/asking for help included two items (sharing distress and asking for help). The score of each item ranged from 0 to 3, except the items of financial support resources and emotional support resources which ranged from 0 to 8.

Table 1. Factor loadings of items of social support using exploratory factor analysis

Notes: FRS: friends support. FAS: family support. RES: relatives support. CAS: calamity support. TAH: talking/asking for help. 1. Questions with an asterisk were assessed on an nine-point scale; the others were assessed on a four-point scale.

We calculated the mean scores of factors grouped by vision impairment, as shown in Table 2. By analysis of variance, friends support, family support and relatives support showed significant difference among different vision impairment groups (p < 0.05). Calamity support and talking/asking for help were not significantly associated with vision impairment (p > 0.05), therefore they were deleted from the subsequent tests.

Table 2. Characteristics of the study population

Notes: SD: standard deviation. ADLs: activities of daily living. IADLS: instrumental activities of daily living. FRS: friends support. FAS: family support. RES: relatives support. CAS: calamity support. TAH: talking/asking for help. GDS: Geriatric Depression Scale. 1. 1 = <2,000 CNY monthly (equivalent to US $300 in 2014); 2 = 2,000–3,999 CNY (US $450); 3 = >4,000 CNY. 2. Values for p based on chi-square test.

Depressive symptoms

Depressive symptoms were assessed using the GDS (D'Ath et al., Reference D'Ath, Katona, Mullan, Evans and Katona1994). Respondents were asked how in the past week they felt about each of the following: satisfaction with ones’ life, abandonment of activities and interests, emptiness, boredom, spirits, anxiousness, happiness, helplessness, preference to stay at home, problems with memory, wonderfulness, energy, worthlessness, hopelessness, better off than other people. Responses were scored on a yes/no scale (1 = yes, 0 = no). The 15-item GDS is a valid screening tool for depressive symptoms in the Chinese population (Lai et al., Reference Lai, Tong, Zeng and Xu2010). The internal consistency reliability of the Kuder–Richardson Formula 20 (KR-20) of this scale was 0.830. Scores on the GDS range from 0 to 15, with a higher score indicating worse depressive symptoms.

Analytic techniques

SPSS 17.0 for Windows (SPSS Inc., Chicago, IL) was used for preliminary analyses, including normality tests of the data, descriptive statistics of the variables and exploratory factor analysis for social support. Before modelling the latent constructs’ inter-relationship in a structural equation model (SEM), we performed the Confirmatory Factor Analysis (CFA) for the latent variables (Anderson and Gerbing, Reference Anderson and Gerbing1988). To investigate all the measurement issues and examine structural relationships among sets of variables simultaneously, SEM were used (Baumgartner and Homburg, Reference Baumgartner and Homburg1996), using IBM-SPSS AMOS 20 software. To test the hypothesised mediation effects more effectively, the bootstrapping method was selected (Williams and MacKinnon, Reference Williams and MacKinnon2008; Hayes, Reference Hayes2009). We used the program PRODCLIN (Mackinnon et al., Reference Mackinnon, Fritz, Williams and Lockwood2007) to test the specific indirect effect of confidence limits.

Results

Participant characteristics

Table 2 presents the characteristics of the participants. With regard to vision impairment, 67.7 per cent of the respondents were normal, 26.3 per cent reported moderate vision impairment and 5.9 per cent reported severe vision impairment. Participants with greater vision impairment were older, and had a lower education level, poorer ADLs and IADLs, less social support and fewer of them had a spouse. The mean GDS score of the group of normal vision, moderate vision impairment and severe vision impairment was 2.04, 2.54 and 4.46, respectively. The greater the severity of vision impairment, the more depressive symptoms were reported.

Confirmatory Factor Analysis

This full CFA model consists of the latent variables of ADLs, IADLs, friends support, family support, relatives support and depressive symptoms. To minimise the effects of nuisance factors at a lower level of generality and improve the model fit, all six items of ADLs and eight items of IADLs were parcelled due to being uni-dimensional and having high alpha coefficients (Little et al., Reference Little, William and Shahar2002). Because items on the GDS were binary variables (yes/no), the variable depressive symptoms were parcelled out as well (Bandalos and Finney, Reference Bandalos, Finney, Marcoulides and Schumacker2001). The Maximum Likelihood (ML) approach was used to estimate the parameters and assess the model (Gao et al., Reference Gao, Mokhtarian and Johnston2008), and the Bollen–Stine bootstrap procedure (2,000 replicates) was used to estimate chi-square and correct the model fit indices (Bollen and Stine, Reference Bollen and Stine1992). The Bollen–Stine bootstrap was p = 0.000, therefore the model was considered correct.

There were good fit indices for the measurement model: Root Mean Square Error of Approximation (RMSEA) = 0.006, Comparative Fit Index (CFI) = 1.00, Relative Fit Index (RFI) = 0.97, Tucker–Lewis Index (TLI) = 1.00, Normed Fit Index (NFI) = 0.98, χ2/df (degrees of freedom) = 1.05. Most of the factor loadings were over or close to 0.4, and all loadings were statistically significant (p < 0.001). All Composite Reliability values were over 0.6, which we considered desirable (Bagozzi and Yi, Reference Bagozzi and Yi1988). All the correlations between exogenous constructs were below 0.7, indicating a good discriminant validity (Grewal et al., Reference Grewal, Cote and Baumgartner2004).

Structural Equation Model testing

The initial SEM consisted of primary variables (the six latent variables) and the independent variable of vision impairment, covariates (demographic variables) and pathways in the initial theoretical model, plus empirically determined pathways from covariates to the latent variables. The Maximum Likelihood (ML) approach and the Bollen–Stine bootstrap procedure were used here as well. There were good fit indices for Model 1: RMSEA = 0.010, NFI = 0.98, CFI = 1.00, TLI = 1.00, Incremental Fit Index (IFI) = 1.00, RFI = 0.97, χ2/df = 1.05. The R 2 of ADLs, IADLs, friends support, family support, relatives support and depressive symptoms was 0.104, 0.179, 0.155, 0.852, 0.089 and 0.234, respectively. The primary variables and coefficients of paths in Model 1 are shown in Figure 1.

Notes: FAS: family support. FRS: friends support. RES: relatives support. ADLs: activities of daily living. IADLS: instrumental activities of daily living.

Figure 1. Structural model for vision impairment and depressive symptoms in Model 1. The dashed lines indicate that the relationship between the two variables was NOT statistically significant (p >0.05). The other solid lines indicate that the relationship between the two variables was statistically significant (p ⩾ 0.05).

From Model 1, we drew the following conclusions: (a) respondents reporting more vision impairment also reported a higher level of functional limitations (poorer ADLs and IADLs) and a lower level of friends support; (b) less friends support, family support, relatives support and poorer IADLs were related to more depressive symptoms; (c) the associations between vision impairment and family support, vision impairment and relatives support were not statistically significant (p > 0.05); (d) the association between ADLs and depressive symptoms was not statistically significant (p > 0.05).

Testing mediation hypotheses

As shown in Table 3, the total effect, the direct effect and the total indirect effect from vision impairment to depressive symptoms were statistically significant in Model 1. The ratio of the total indirect effect to the total effect was 37.35 per cent. By Mackinnon PRODCLIN test, we concluded that the 95 per cent confidence intervals for the indirect effects through friends support and IADLs did not contain zero, which indicated that these two factors were playing mediating roles on the relationship between vision impairment and depressive symptoms. The friends support contributed mainly to the total indirect effect, and the ratio of the specific indirect effect to the total indirect effect was 52.69 per cent. But the 95 per cent confidence intervals for the indirect effects through family support, relatives support and ADLs contained zero, which indicated that these three factors did not play mediating roles on the relationship between vision impairment and depressive symptoms.

Table 3. Mediation effects testing in Model 1

Notes: FRS: friends support. FAS: family support. RES: relatives support. ADLs: activities of daily living. IADLs: instrumental activities of daily living. CI: confidence interval.

These results suggest that (a) vision impairment was directly associated with depressive symptoms; (b) the association between vision impairment and depressive symptoms was partially mediated by friends support and IADLs; and (c) friends support played a more important mediating role than IADLs on the relationship between vision impairment and depressive symptoms.

Discussion

The findings indicate a strong relationship between vision impairment and depressive symptoms after controlling for socio-demographic variables. A few studies explored the mediating mechanisms through which vision impairment is associated with depressive symptoms (Bookwala and Lawson, Reference Bookwala and Lawson2011; Brown and Barrett, Reference Brown and Barrett2011; van Nispen et al., Reference van Nispen, Vreeken, Comijs, Deeg and van Rens2016). This is the first study conducted in China and the findings from this study provided important evidence for the adverse effect of vision impairment on depressive symptoms. Additionally, it provided a clear explanatory mechanism for this relationship. In particular, for the first time we differentiated types of social support and tested the potential mediating roles of friends support, family support and relatives support on the relationship between vision impairment and depressive symptoms. Furthermore, we assessed the potential separate mediating roles of ADLs and IADLs on the relationship between vision impairment and depressive symptoms.

The results of this study supported all of our hypotheses. Consistent with a previous study (Wang et al., Reference Wang, Chan, Ho and Xiong2008a), vision impairment was directly associated with a lower level of friends support. Vision impairment was associated with fewer close friends, fewer close neighbour relationships and colleague relationships, and a lower frequency of participation in group activities. These findings echoed the exchange theory (Gouldner, Reference Gouldner1960), positing that vision impairment makes it difficult for older adults to reciprocate. Breaking the balance of support received and provided can lead to the end of a relationship (Aartsen et al., Reference Aartsen, Tilburg, Smits and Knipscheer2004). The result that lower levels of family support, relatives support and friends support were associated with greater depressive symptoms confirmed previous findings that more positive social support is related to fewer depressive symptoms (McIlvane and Reinhardt, Reference McIlvane and Reinhardt2001; Papadopoulos et al., Reference Papadopoulos, Papakonstantinou, Montgomery and Solomou2014). While some research indicated that a higher level of support received was associated with greater depressive symptoms among visually impaired older adults mainly because of greater disability and psychological consequences of depending on others for basic daily needs (Cimarolli and Boerner, Reference Cimarolli and Boerner2005), abundant studies have demonstrated that affective support has the most important positive impact on mental health (Lee et al., Reference Lee, Crittenden and Yu1996; Reinhardt et al., Reference Reinhardt, Boerner and Horowitz2006). Friends (including neighbours and colleagues) are important affective support providers. In our study, we found that decrease of friends support among the visually impaired older adults would result in greater depressive symptoms.

Our findings supported previous findings that vision impairment was associated with IADL disability (Hochberg et al., Reference Hochberg, Maul, Chan, Van, Ferrucci, Friedman and Ramulu2012), and functional limitations and social support played mediating roles on the association between vision impairment and depressive symptoms (Bookwala and Lawson, Reference Bookwala and Lawson2011). However, these findings were not aligned with a previous study that showed adults with low visual ability received higher social support than the general population (Kempen et al., Reference Kempen, Ranchor, Ambergen and Zijlstra2014). It is possible that Kempen's study recruited participants seeking vision rehabilitation services in the Netherlands. The different recruitment strategy and study sample may yield different results.

One advantage of conducting mediation analysis was to identify potential pathways to gain a better understanding of the potential association between vision impairment and depressive symptoms. This analysis also allowed us to obtain an accurate measure of the association. Based on the aforementioned findings, our study offers important new insights to improve our current understanding of the link between depressive symptoms and vision impairment. The mediating mechanism has implications for interventions aimed at decreasing the depressive symptoms of older adults with vision impairment.

Our findings reinforce the findings that (a) depressive symptoms may be reduced by increasing one's social support, and (b) a higher level and better quality of friendship is associated with better adaptation to vision impairment (Reinhardt, Reference Reinhardt1996; McIlvane and Reinhardt, Reference McIlvane and Reinhardt2001). Due to stigma in Chinese society, older adults with vision impairment are often labelled as a vulnerable population, and their social interactions are limited for safety reasons. We should recognise the vulnerability of the elderly with vision impairment, however, we should not limit the elderly population's social interaction and social participation. The Chinese government should focus on improving the policies related to community support and family support to enhance social support and care services for older adults with vision impairment. Friends, neighbours, colleagues and volunteers may provide support to older adults with vision impairment by having frequent home visits or regular phone calls. It is also essential to help and encourage older adults with vision impairment to take part in group recreational activities. We found that vision impairment of older adults was not statistically associated with calamity support and talking/asking for help, implying that when these older adults encounter difficulties, they could potentially attain a similar amount of help as those with normal vision. Therefore, more social support should be given to vision-impaired older adults in daily routines.

Maintaining social contact contributed to an improved quality of life for people with vision impairment (Heine and Browning, Reference Heine and Browning2004; Bowes et al., Reference Bowes, Dawson, Greasley-Adams and McCabe2018) and environmental variables may play a role in the social participation of older adults with vision impairment (Cimarolli et al., Reference Cimarolli, Boerner, Reinhardt, Horowitz, Wahl, Schilling and Brennan-Ing2017). Clinicians and other health-care providers should evaluate the impact of visual ability on their patients’ functional limitations, and make transportation services more accessible to these individuals (Bookwala and Lawson, Reference Bookwala and Lawson2011). In China, accessible transportation services and facilities for the disabled are very poor, which further restricts the activities of older adults with vision impairment. Therefore, it is necessary to increase infrastructure investment for the disabled elderly.

There are several limitations in this study worthy of mention. First, the sample consisted of older adults from a developed urban district in China. It may not be representative of older adults living in developing urban districts or in rural areas. However, it may represent China's future development trend. At the same time, it was difficult for us to assess the correctness of the self-reported social support and GDS of the elderly participants with low cognitive abilities, and we had to exclude the participants whose MMSE score was lower than 20 in this study. Determining how to objectively assess the social support and GDS of these older adults needs further research. Second, vision impairment was self-reported, not measured by an objective measurement; and our study did not investigate the cause of vision impairment. Future research measuring vision impairment by a valid and reliable measurement is needed. Lastly, our study was cross-sectional and there may be additional interaction effects among functional limitations, social support and depressive symptoms. We were not able to tease out the time sequence of the variables between vision impairment and depressive symptoms. In the future, using longitudinal data to examine the relationship of these variables is needed. However, this study greatly contributes to the knowledge of mediating mechanisms between vision impairment and depressive symptoms. It found that vision impairment was directly associated with a higher level of depressive symptoms, and the association was partially mediated by functional limitations (IADLs) and social support (friends support). These findings can provide clinical and policy implications to improve the life of older adults with vision impairment.

Acknowledgement

We thank Darina Petrovsky for her editorial assistance.

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Figure 0

Table 1. Factor loadings of items of social support using exploratory factor analysis

Figure 1

Table 2. Characteristics of the study population

Figure 2

Figure 1. Structural model for vision impairment and depressive symptoms in Model 1. The dashed lines indicate that the relationship between the two variables was NOT statistically significant (p >0.05). The other solid lines indicate that the relationship between the two variables was statistically significant (p ⩾ 0.05).

Notes: FAS: family support. FRS: friends support. RES: relatives support. ADLs: activities of daily living. IADLS: instrumental activities of daily living.
Figure 3

Table 3. Mediation effects testing in Model 1