Personal Social Capital and Self-Rated Health among Middle-Aged and Older Adults: A Cross-sectional Study Exploring the Roles of Leisure-Time Physical Activity and Socioeconomic Status

DOI: https://doi.org/10.21203/rs.3.rs-46055/v1

Abstract

Background: Personal social capital, which refers to the scope and quality of an individual’s social networks within a community, has received increasing attention as a potential sociological factor associated with better individual health; yet, the mechanism relating social capital to health is still not fully understood. This study examined the associations between social capital and self-rated health while exploring the roles of leisure-time physical activity (LTPA) and socioeconomic status (SES) among middle-aged and older adults.

Methods: Cross-sectional data were collected from 662 middle-aged and older adults (Mean age: 58.11 ± 10.59 years old) using the Qualtrics survey panel. Personal Social Capital Scale was used to measure bonding and bridging social capital and the International Physical Activity Questionnaire was used to assess LTPA levels. SES was assessed by education and household income levels. Self-rated health was assessed using a single item, by which the participants were categorized into the two groups, having ‘good’ vs. ‘not good’ self-rated health. A series of univariate and multivariate logistic regression models were established to examine the independent and adjusted associations of social capital with self-rated health and to test mediating and moderating roles of LTPA and SES, respectively.

Results: Bonding and bridging social capital were positively associated with self-rated health (Odds ratios = 1.11 and 1.09; P’s < .05, respectively), independent of LTPA that was also significantly associated with greater self-rated health (P-for-linear trends = .007). After adjusting SES, the associations of social capital were significantly attenuated and there was a significant interaction effect by household income (P-for-interaction = .012). Follow-up analyses stratified by household income showed that beneficial associations of social capital with self-rated health were more apparent among the people with low and high levels of household income; yet, LTPA was the stronger predictor of self-rated health among those in the middle class of household income.

Conclusions: Findings suggest that both social capital and LTPA are associated with better self-rated health; yet, these associations vary by SES. The health policymakers should address both social capital and PA for enhancing perceived health among aging populations but may need to consider varying SES backgrounds.

Background

Aging is associated with numerous physical and biological changes, including a decrease in physiological reserves and a decline in physical, cognitive, and functional capacities, posing older adults at greater risk of experiencing health-related strains [1]. As a result, healthy aging becomes increasingly recognized as a key area of action within health policy worldwide to improve the quality of life among aging populations [2]. For the older adults, self-rated health, which refers to a self-assessment of an individual’s general health status [3], has been largely examined as one of the most relevant indicators of healthy aging [4]. Specifically, previous studies have reported self-rated health status to be a valid and sensitive predictor of mortality, physical performance or long-term care [5, 6], indicating self-rated health as one of the critical components of well-being in everyday life among the aging population [7, 8].

Given the critical role of self-rated health in healthy aging, there have been continuous efforts to explore its determinants at individual and socio-ecological levels. Social capital is one of the sociological factors that has received increasing attention in the past few decades as a potential determinant of health and well-being among elderly people [9]. Although there is a lack of consensus regarding its definition across the disciplines, the term social capital generally refers to social relations or connections and the productive benefits that arise from them [10]. Within the contexts of health, social capital has been conceptualized and studied at both individual and societal levels. The first approach emphasizes social capital as an individual attribute highlighting the role of a social network; whereas the second approach views social capital as a collective feature characterizing the entire social community. It has been hypothesized that individual and collective social capitals share a commonality in terms of the sources (e.g., network characteristics, macro-political structure) [11], but there has been an ongoing debate over the role of collective social capital as a determinant of health. Recently, a growing number of studies has demonstrated individual social capital as a stronger predictor of health in elderly people [12]; yet, the underlying mechanisms are not clearly understood.

One of the most prominent hypotheses explaining the links between individual-level social capital and health is the consideration of social influence on behaviors [13], such as the spread of information and norms regarding health-related behaviors [14]. Supporting an indirect pathway through the fostering of healthy behavior, PA has frequently been considered as a possible factor mediating the relationship between social capital and health [15]. PA is one of the modifiable lifestyle behaviors positively associated with the maintenance of health and well-being in elderly people. PA is also a complex behavior influenced by multiple socio-ecological factors, in which social capital has been frequently examined as a significant predictor of PA among elderly people [16, 17]. However, there is a little study that directly examined the role of PA on the relationship between individual-level social capital and self-rated health among older adults, requiring further investigation of a potential mechanism linking social capital and health in this population group.

Meanwhile, socioeconomic status (SES) is another important individual characteristic that has long been examined regarding the health of individuals. SES is a comprehensive measure of a person’s combined economic and social status and has been frequently operationalized along the dimensions of education, income, and occupation. For the older adults, there exists considerable evidence for an effect of SES on self-rated health, in which lower SES is associated with lower self-rated health [18], due to socioeconomic disadvantages and inequalities that may matter for the health. Such disadvantages include a lack of accessible resources to promote health-enhancing behaviors, resulting in SES being one of the key determinants of PA where the people with higher SES are more physically active than those with lower SES [19]. Additionally, it is shown that socioeconomically disadvantaged people tend to cluster with people who are in similar SES positions [20], indicating that social networks or support of certain socioeconomic groups may be more limited or resourceful than others and thus, social capital may be differently effects for persons with different SES. In line with this, there have been few studies exploring the interrelationship of socioeconomic inequalities in health as well as PA with social capital [21, 22]; yet, the evidence is inconclusive requiring further study to elucidate the role of SES on health-enhancing effects of social capital among aging populations.

Collectively, the current study aims to close the gaps identified in the literature by addressing the following purposes: a) to examine the independent association of personal social capital with self-rated health in middle-aged and older adults; b) to test the mediating role of PA on the relationship between social capital and self-rated health; and c) to extend analysis testing the moderating effects by SES characteristics.

Methods

Survey sample

A cross-sectional survey was conducted using a Qualtrics online survey platform (Qualtrics Inc, Provo, UT, USA). Qualtrics is a well-known online survey tool that offers various features for the research, which includes access to the Qualtrics research panel facilitating participant recruitment for online data collection. The Qualtrics research panel consists of pre-arranged individuals recruited from various sources who have agreed to respond to Qualtrics surveys in exchange for compensation. The Qualtrics research panel is increasingly recognized as an acceptable online data source for the research [23] and has been successfully used for health-related studies involving older adults [24]. For the present study, a total of 803 adults aged ≥ 40 years old who were the resident of Virginia in the U.S. and can read English participated in the survey. Upon electronic informed consent, participants were asked to complete an online survey including a set of questionnaires about demographic characteristics, social capital, and PA levels. Of the initial respondents of 803, 17.56% (n = 141) were excluded due to the failure to pass the pre-designed quality check questions and to provide valid data on key variables, leaving the final sample of 662. The study protocol was approved by the Institutional Review Board at Texas Tech University (IRB#: 2019 − 307).

Measures

Personal Social Capital

Individual-level social capital was assessed using the Personal Social Capital Scale (PSCS). PSCS was developed by Chen et al. [25] to measure the two subtypes of individual-level social capital, bonding and bridging social capital, that are derived from a network perspective. Bonding social capital refers to links between community residents whose social identities are similar while bridging social capital involves connections between community residents with differing status and power [11]. Thus, bonding social capital indicates the cohesion within a group, enhancing the homogeneity of the group’s characteristics and helping to mobilize reciprocity and solidarity among actors. By this means it strengthens the linkages between the members of the group. In contrast, bridging social capital is directed outside the group by linking actors of different networks. PSCS consists of 10 composite items calculated based on 42 subitems measured by a five-point Likert scale with 1 = ‘none or a few’ to 5 = ‘all or a lot’.

In the initial development, the scale’s internal consistency was proven to meet common standards with Cronbach’s alphas of 0.87 for the overall scale and 0.85 and 0.84 for the bonding and bridging social capital subscales, respectively, among 128 Chinese adults aged between 18 and 50 years old [25]. Additionally, the authors demonstrated acceptable construct validity by examining known-group differences as well as predictive validity. PSCS has repeatedly been tested for its validity and reliability across different population groups [26, 27] including older adults [28]. In the present study, the scale was checked for reliability with satisfying levels of internal consistency (Cronbach’s α = 0.82 & 0.81 for bonding and bridging scale, respectively). Additionally, confirmatory factor analysis was conducted and showed acceptable fit indices (Standardized root mean squared residual = 0.059; Root mean square error of approximation = 0.098; Comparative fit index = 0.911), indicating that the PSCS is an adequate tool to measure bonding and bridging social capital among the sample of this study.

Self-rated Health

The outcome variable of self-rated health was measured with a single question, asking how they would rate their health in general using a five-point Likert scale ranged from 1 (poor) through 5 (excellent). Self-rated health question is a simple and easy to administer measure of general health, allowing respondents to prioritize and evaluate different aspects of their health. The self-rated health question has been widely used as a measure of self-rated health in the elderly population [29]. Although the reliability of the item has been debated in some contexts, its adequate predictive validity in terms of several objective health measures has been verified in numerous studies [30, 31]. For instance, Baćak and Ólafsdóttir [32] examined the concurrent validity of self-rated health item among 19 European countries and found the measure to be a significant predictor of both mental and physical health (0.386 < r < 0.768). For the present study, participants were categorized into ‘not-good’ (fair/poor) and ‘good’ (good/very good/excellent) health groups, which is in line with the majority of literature examined self-rated health with social capital [33].

Leisure-Time Physical Activity

The long form of the International Physical Activity Questionnaire (IPAQ) was used to assess the level of PA. Initially developed by the International Consensus Group for the development of an internationally standardized measure of PA [34], the IPAQ has been extensively used worldwide with well-established evidence of the reliability and validity across different settings [35, 36]. The participants were asked to disclose frequency and time they have spent in PA at moderate- and vigorous-intensity levels during the past 7 days across the four domains (i.e., domestic, leisure-time, work-, and transport-related activities). For the present study, participant’s responses to leisure-time PA were used to calculate total energy expenditures in metabolic-equivalent units (METs-minutes/week) by the IPAQ scoring guidelines [34]. Participants were categorized into three groups based on the current PA recommendations [37]: ‘no LTPA’, ‘<600 MET-minutes/week’, which is equivalent to 150 minutes of moderate physical activity, and ‘≥600 MET-minutes per week’.

Socioeconomic Status

Following common operational definitions [38], SES was assessed among the dimensions of education and household income. Education level was assessed through a seven-point scale with the response categories of ‘less than high school diploma’, ‘high school degree’, ‘some college credit, no degree’, associate degree’, ‘bachelor’s degree’, ‘master’s degree’ and ‘doctorate’. Annual household income was assessed through a six-point scale with the response categories of ‘<$20k’, ‘$20 k to <$35k’, ‘$35 k to <$50k’, ‘$50 k to <$75k’, ‘$75 k to <$100k’ and ‘≥$100k’. Both variables were recoded to ‘low’ (‘high school degree’ or below), ‘middle’ (‘some college credit, no degree’ and ‘associate degree’) and ‘high’ (‘bachelor’s degree’ or above) for education level, and ‘low’ (<$35 k), ‘middle’ ($35 k to <$75 k) and ‘high’ (≥$75 k) for household income, respectively.

Other Study Covariates

Demographic characteristics including age (< 60 years old vs. ≥60 years old), gender (male vs. female), marital status (married or domestic partnership vs. single or no partnership), and ethnicity (white vs. others) were collected. Additionally, self-reported history of chronic diseases they have ever confirmed by health professionals such as stroke, asthma, cancer, arthritis, diabetes, kidney disease were used to categorize the participants into three groups (‘no’, ‘one’, and ‘one or more’ chronic diseases).

Statistical Analysis

Descriptive statistics of study variables were calculated differentiated by self-rated health status, followed by chi-square test of independence examining between-group differences in the proportions for categorical variables. The differences in social capital scores by the key explanatory variables including LTPA levels and SES characteristics were examined using one-way analysis of variance with Tukey’s pairwise comparisons. Additionally, given the ordered nature of LTPA and SES variables, linear trends were tested using orthogonal polynomial contrasts.

Using the self-rated health (‘good’ vs. ‘not good’) as a dependent variable, logistic regression model was established predicting the likelihoods of reporting ‘good’ self-rated health based on a set of explanatory variables. The models were hierarchically developed to address the proposed research questions. The model 1 was established to examine the association of social capital with self-rated health without adjustment of other study covariates, followed by the model 2 adjusting for the demographic variables including age, gender, ethnicity and marital status, as well as for the history of chronic diseases. LTPA levels were then introduced in the model 3 to test the possible mediating effect on the relationship between social capital and self-rated health as suggested by Baron and Kenny [39]. Specifically, two nested logistic regression models (model 2 and 3) were statistically compared using the KHB method [40] to test the significance of the indirect effect (i.e., mediating effect of LTPA). Lastly, SES variables including education and household income were additionally included in the model 4. After applying the overall model, the possible moderating effects of SES were tested by including interaction terms between bonding and bridging social capitals and SES variables in the model. If the interaction effect is significant regarding the specific SES variable, follow-up simple effect logistic regression analyses were conducted to examine the differences in the effect structures by the level of SES variable. Throughout the analyses, the results are presented as odds ratio (OR) along with 95% confidence interval (CI). Additionally, linear trends analyses were performed using orthogonal polynomial contrasts for the ordered categorical variables including LTPA and SES variables. The goodness of fit of the logistic models were reported with the Nagelkerke’s pseudo-R2, representing the reduction of deviance due to the inclusion of predictors, and the Hosmer-Lemeshow goodness-of-fit test. Multicollinearity was tested by the variance inflation factors for each model. All data analyses were performed using the SAS v9.4 (SAS Institute, Cary, NC, USA) and statistical significance was set at P ≤ .05.

Results

The final sample characteristics stratified by self-rated health are presented in Table 1. Overall, 76.4% (n = 506) participants were categorized into ‘good’ self-rated health group. A relatively large percentage of sample was female (n = 507; 76.6%) or white ethnicity (n = 563; 85.0%). The chi-square tests of independence indicated significant differences of self-rated health by LTPA levels as well as SES characteristics (P’s < .01), in which the groups with greater LTPA levels or greater SES tended to have a relatively larger percentage of individuals reporting ‘good’ self-rated health. There were significant differences in both bonding and bridging social capital by LTPA levels and SES characteristics (Table 2), with significant linear trends in which greater LTPA and SES levels were associated with greater bonding and bridging social capital (P-for-linear trends < .001).

Table 1.

Descriptive Statistics of Study Sample Across Self-Rated Health

 

Total

Self-rated health

P-value a

Characteristics

Good

Not good

N (%)

662

506 (76.4)

156 (23.6)


Gender (n, %)




.282

Male

155 (23.4)

113 (72.9)

42 (27.1)


Female

507 (76.6)

393 (77.5)

114 (22.5)


Age (n, %)




.070

<60 years

363 (54.8)

267 (73.6)

96 (26.4)


≥60 years

299 (45.2)

239 (79.9)

60 (20.1)


Race/ethnicity (n, %)




.764

Non-Hispanic White

563 (85.0)

432 (76.7)

131 (23.3)


Others 

99 (15.0)

74 (74.7)

25 (25.3)


Marital status (n, %)




.278

Married or partnership

375 (56.7)

293 (78.1)

82 (21.9)


Single or no partnership

287 (43.4)

213 (74.2)

74 (25.8)


Chronic diseases (n, %) b




<.001

No

298 (45.1)

264 (88.6)

34 (11.4)


Yes, one

226 (34.1)

173 (76.5)

53 (23.5)


Yes, one or more

138 (20.8)

69 (50.0)

69 (50.0)


LTPA (n, %) 




<.001

No-LTPA

244 (36.8)

171 (70.1)

73 (29.9)


<600 MET-mins/wk

158 (23.8)

114 (72.2)

44 (27.8)


≥600 MET-mins/wk

260 (39.4)

221 (85.0)

39 (15.0)


Education (n, %) b




<.001

Low

134 (20.3)

95 (70.9)

39 (29.1)


Middle

257 (38.8)

185 (72.0)

72 (28.0)


High

271 (40.9)

226 (83.4)

45 (16.6)


Household income (n, %) c




<.001

Low

200 (30.2)

131 (65.5)

69 (34.5)


Middle

252 (38.1)

191 (75.8)

61 (24.2)


High

210 (31.7)

184 (87.6)

26 (12.4)







































LTPA = leisure-time physical activity; MET = metabolic equivalent task

a P-value from the x2 test of independence

categorization was based on the response to the history of chronic diseases they have ever confirmed by health professionals including stroke, asthma, cancer, arthritis, diabetes, and kidney diseases.

Table 2.

Personal Social Capital Scores by LTPA and SES Characteristics

 

Personal social capital

 

Bonding

Bridging

Total (N = 662)

14.08 (2.91)

11.38 (3.34)

LTPA



No-LTPA

13.31 (3.02) a

10.56 (3.35) a

<600 MET-mins/wk

14.27 (2.84)

11.95 (3.05)

≥600 MET-mins/wk

14.67 (2.68)

11.81 (3.35)

P-for-linear trends

<.001

<.001

Education



Low

13.08 (2.83) c

9.96 (3.13) b, c

Middle

13.66 (2.93) c

10.93 (3.16) c

High

14.97 (2.67)

12.52 (3.23)

P-for-linear trends

<.001

<.001

Household income



Low

12.93 (3.08) b, c

10.50 (3.29) b, c

Middle

14.05 (2.68) c

11.41 (3.32) c

High

15.21 (2.55)

12.19 (3.20)

P-for-linear trends

<.001

<.001

LTPA = leisure-time physical activity; MET = metabolic equivalent tasks

Note. Values are presented as Mean (Standard Deviation) unless otherwise specified. All pairwise comparisons were adjusted by the Tukey’s method.

a significantly lower than ‘<600 MET-mins/wk' and ‘≥600 MET-mins/wk' groups (P <.05)

b significantly lower than ‘middle’ group (P <.05)

significantly lower than ‘high’ group (P <.05)


 

The results of logistic regression analyses sequentially adjusting for study variables are presented in Table 3. Bonding social capital was positively associated with self-rated health (OR = 1.17; 95% CI = 1.08–1.26) in the unadjusted model 1. After adjusting for demographic variables as well as history of chronic diseases in model 2, both bonding (OR = 1.14; 95% CI = 1.04–1.24) and bridging (OR = 1.09; 95% CI = 1.01–1.18) social capital were positively associated with self-rated health. The inclusion of LTPA in model 3 did not change the significances of bonding and bridging social capital predicting self-rated health. Greater LTPA levels were positively associated with self-rated health (P-for-linear trends = .007), in which the individuals with LTPA levels of ≥ 600 MET-min/week showed greater odds of reporting ‘good’ self-rated health when compared to no-LTPA group (OR = 1.97; 95% CI = 1.21–3.21). Additional analyses using the KHB method confirmed non-significance of the mediating effects of LTPA on bonding (change in logit coefficients = 0.02; 95% CI = − .13 – .17; P = .813) and bridging (change in logit coefficients = 0.001; 95% CI = − .15 – .15; P = .989). Lastly, additional inclusion of SES variables in model 4 showed that both bonding and bridging social capital were no longer significant predictors of self-rated health (P’s > .05), while LTPA levels remained the significant in that individuals with ≥ 600 MET minutes/week had greater odds of reporting ‘good’ self-rated health when compared to no-LTPA group (OR = 1.83; 95% CI = 1.11–3.00). There was a significant linear trend by household income levels (P-for-linear trends = .020), where those with high household income group showed greater odds of reporting ‘good’ self-rated health compared to those with low household income group (OR = 2.14; 95% CI = 1.13–4.05).

Table 3.

The Results of Hierarchical Logistic Regression Analyses Predicting the Likelihood of Reporting ‘Good’ Self-rated Health

 

Model 1

Model 2

Model 3

Model 4

OR (95% CI)

OR (95% CI)

OR (95% CI)

OR (95% CI)

Personal social capital





Bonding social capital

1.17* (1.08 – 1.26)

1.14* (1.04 – 1.24)

1.11* (1.02 – 1.22)

1.09 (0.99 – 1.19)

Bridging social capital

1.04 (0.98 – 1.12)

1.09* (1.01 – 1.18)

1.09* (1.01 – 1.18)

1.08 (0.99 – 1.17)

Demographic variables





Age (ref: <60 years)


1.96* (1.28 – 3.04)

2.04* (1.32 – 3.18)

1.95* (1.26 – 3.04)

Gender (ref: male)


1.90* (1.18 – 3.06)

1.99* (1.22 – 3.23)

2.06* (1.26 – 3.36)

Race/ethnicity (ref: white)


1.09 (0.63 – 1.93)

1.03 (0.59 – 1.85)

1.02 (0.58 – 1.80)

Marital status (ref: single or no partnership)


1.22 (0.81 – 1.84)

1.23 (0.81 – 1.86)

1.04 (0.67 – 1.62)

Chronic diseases (ref: no)





Yes, one


0.37* (0.22 – 0.60)

0.37* (0.22 – 0.61)

0.38* (0.23 – 0.64)

Yes, one or more


0.10* (0.06 – 0.16)

0.10* (0.06 – 0.17)

0.10* (0.06 – 0.18)

P-for-liner trends


<.001

<.001

<.001

LTPA (ref: no-LTPA)





<600 MET-mins/wk



0.98 (0.59 – 1.63)

0.94 (0.57 – 1.57)

≥600 MET-mins/wk



1.97* (1.21 – 3.21)

1.83* (1.11 – 3.00)

P-for-liner trends



.007

.017

Household income (ref: low)





Middle




1.29 (0.79 – 2.12)

High




2.14* (1.13 – 4.05)

P-for-liner trends




.020

Education (ref: low)





Middle




0.98 (0.58 – 1.67)

High




1.33 (0.72 – 2.45)

P-for-liner trends




.361

Nagelkerke R2

.076

.256

.274

.292

Goodness of Fit (P-value) a

.230

.290

.100

.414

OR = odds ratios; CI = confidence intervals; LTPA = leisure-time physical activity; MET = metabolic equivalent tasks 

a P-value from the Hosmer-Lemeshow goodness-of-fit test

* P < 0.05


The follow-up examination of the model including higher-order interaction terms between social capital and SES variables demonstrated a significant interaction effect between bridging social capital and household income (P-for-interaction effect = .012). The results of simple effect logistic regression analyses by household income levels are presented in Table 4. Among individuals with low and high household incomes, bridging social capital were positively associated with self-rated health (ORs = 1.19 and 1.29, respectively). Bonding social capital was also significantly associated with greater odds of reporting ‘good’ self-rated health among those with low household income (OR = 1.18; 95% CI = 1.02–1.37). Both bonding and bridging social capital were not significant predictor of self-rated health among individuals with middle household income; yet, LTPA was significantly associated with greater odds of reporting ‘good’ self-rated health in that group (P-for-linear trends = .033).

Table 4. 

The Results of Multivariate Logistic Regression Analyses Stratified by Household Income Levels

 

Low (n = 200)

Middle (n = 252)

High (n = 210)

OR (95% CI)

OR (95% CI)

OR (95% CI)

Personal social capital




Bonding social capital

1.18* (1.02 – 1.37)

1.04 (0.90 – 1.22)

0.95 (0.76 – 1.19)

Bridging social capital

1.19* (1.03 – 1.37)

0.98 (0.86 – 1.11)

1.29* (1.06 – 1.56)

Demographic variables




Age (ref: <60 years)

1.99 (0.92 – 4.30)

2.07* (1.00 – 4.28)

2.69 (0.97 – 7.44)

Gender (ref: male)

3.64* (1.41 – 9.39)

1.64 (0.75 – 3.59)

1.55 (0.55 – 4.41)

Race/ethnicity (ref: white)

1.37 (0.54 – 3.47)

0.68 (0.26 – 1.76)

0.87 (0.20 – 3.75)

Marital status (ref: single or no partnership)

1.70 (0.78 – 3.71)

0.88 (0.44 – 1.79)

0.50 (0.14 – 1.80)

Chronic diseases (ref: no)




Yes, one

0.50 (0.21 – 1.16)

0.37* (0.16 – 0.86)

0.16* (0.05 – 0.54)

Yes, one or more

0.08* (0.03 – 0.23)

0.09* (0.04 – 0.21)

0.07* (0.02 – 0.31)

P-for-liner trends

<.001

<.001

<.001

LTPA (ref.: no-LTPA)




<600 MET-mins/wk

0.81 (0.34 – 1.94)

0.71 (0.31 – 1.63)

1.95 (0.56 – 6.79)

≥600 MET-mins/wk

1.02 (0.42 – 2.49)

2.38* (1.07 – 5.29)

1.66 (0.58 – 4.77)

P-for-liner trends

.969

.033

.343

Education (ref: low)




Middle

0.75 (0.34 – 1.67)

0.92 (0.39 – 2.21)

1.86 (0.29 – 11.9)

High

1.90 (0.61 – 5.95)

1.62 (0.62 – 4.21)

1.14 (0.20 – 6.44)

P-for-liner trends

.271

.322

.879

Nagelkerke-R2

.375

.276

.254

Goodness of Fit (P-value) a

.709

.600

.719

OR = odds ratios; CI = confidence intervals; LTPA = leisure-time physical activity; MET = metabolic equivalent tasks 

Note. the model predicted the likelihood of reporting ‘good’ self-rated health.

a P-value from the Hosmer-Lemeshow goodness-of-fit test

* P < 0.05


Discussion

The present study sought to investigate the links between social capital and self-rated health among middle-aged and older adults while exploring the roles of LTPA and SES on its relationship. In line with previous research, the findings demonstrated a positive relationship between social capital and self-rated health. After adjusting for study confounders including demographic characteristics as well as history of chronic disease, greater bonding and bridging social capital were significantly associated with better self-rated health. This suggests that both stronger connections within homogeneous groups and weaker relations between different groups enhance the feeling of health among middle-aged and older adults, which is aligned with argumentation of Putnam [41] stating that bonding social capital may enhance the experience of health through mobilization of reciprocity and solidarity, and on the other side, bridging social capital may have health effects through external benefits secured.

However, after controlling for SES characteristics in the model, the associations of bonding and bridging social capital with self-rated health were attenuated and lost their significances, indicating that SES may play a crucial role on the relationship between bonding social capital and self-rated health. Whitley [42] explained this phenomenon by considering qualitative approaches, which suggest that social capital can play a minor role in protecting some aspects of health, but this pales into relative insignificance when wider SES factors are considered. Following this argumentation, prior studies have suggested that higher levels of social capital may simply be an epiphenomenon of more influential socioeconomic processes [43]. The follow-up test of interaction effects revealed significant moderating role of household income on the associations between bridging social capital and self-rated health. We found that, among individuals with low household income, bonding social capital was positively associated with greater self-rated health; yet, these associations were not apparent among those in middle and high household incomes. Our findings support one of the hypotheses in the literature, called the “buffer effects”, which suggests greater health benefits of social capital among people from disadvantaged populations when compared to their counterparts from non-disadvantaged populations [44]. Specifically, our results are aligned with a recent systematic review which concluded that bonding social capital may play a buffering role on the effects of low SES on health [22], suggesting that promoting social supports or networks within the people sharing common social identifies such as family members or close-friends would positively affect self-rated health among the people with low SES.

Additionally, our study demonstrated that the association of bridging social capital with health varied by the levels of household income, where beneficial effects were more apparent among the people with low and high household incomes, but not for those with middle household income. Interestingly, among the people with middle household income, social capital, both bonding and bridging, were not significantly associated with self-rated health, but LTPA, which was not a significant predictor of health among low and high household income groups, was positively associated with self-rated health. It is unclear as to what underlying mechanism explains such variations by household income levels. But given that the people with middle class tend to have different norms and values than other social classes [45, 46], personal human capital such as investment to health by engagement of PA [47], rather than social capital, may be a stronger influential factor promoting better self-rated health among middle-aged and older adults who are in the middle class. Collectively, our findings may imply that social networks and relationships established between the people from dissimilar social identifies may play a positive role in promoting the self-rated health of individuals who are at the lower and higher end of the SES spectrum. However, for those who are in the middle class, individualized behavioral factors such as LTPA rather than building social connectivity may be more influential to subjective health.

In line with previous study [48], engagement in LTPA that meets the current recommendations of the WHO, was found to be significantly and positively associated with better self-rated health. The findings also demonstrated positive associations of LTPA levels with both bonding and bridging social capital, supporting the previous results [49]. However, there was insufficient evidence observed to claim the mediating role of LTPA on the relationship between social capital and self-rated health, in which the inclusion of LTPA in the model did not significantly alter the association of bridging social capital with self-rated health even after the analysis was stratified by annual house income level (results are not reported but provided in Additional files). Our findings are generally aligned with former results from Boen et al. [50] who reported insignificant mediating effects of PA on the relationship between the indicators of social capital and self-rated health among middle-aged and older adults (≥ 55 years old). However, the present results are in contrast with the results from Mohnen et al. [51] who found PA as the behavioral factor at individual-level mediating the positive associations of neighborhood social capital and self-rated health among adults ≥ 18 years old. As previously noted, social capital is a broad concept and its operational definition is largely inconsistent across the studies [14, 33], which makes a direct comparison of the results with previous studies difficult. In other words, the discrepancies of the results may be attributed to the differences in measurement of social capital including the level of focus (e.g., individual- or, neighborhood-level social capital), dimension (e.g., cognitive/structural social capital, or bonding/bridging social capital), and measurement methods (e.g., surrogate indicators or structured questionnaire). In this study, social capital was operationally defined from the network perspective and measured using a structured questionnaire assessing bonding and bridging social capital at individual-level [25], which have been considered as part of structural social capital [14]. However, some researchers suggest that cognitive social capital, which refers to what people feel regarding social relations such as norms of trust and reciprocity, is more strongly associated with self-rated health [11], implying that the role of PA on the relationship between social capital and health may likely be influenced by how the social capital is operationally defined and measured.

The present study contributes to the body of literature by identifying socio-ecological factors that enhance self-rated health among middle-aged and older adults, helping to better understand the process of successful aging. However, caution is necessary when interpreting our findings due to several methodological limitations. First, as previously discussed, the interpretation of the results concerning social capital should be limited to bonding and bridging social capital as measured by PSCS. Second, the present study hypothesized PA as a potential mediating factor explaining the links between social capital and self-rated health based on the previous literature showing the directional association of social capital with PA (i.e., social capital → PA). However, it is also highly plausible that PA and social capital are reciprocally associated in that greater PA may lead to greater social capital as reported in the previous studies [52, 53]. This implies that PA may not be the complete mediator but a confounding factor influencing the association of social capital with health. Due to the cross-sectional nature of the present study, we could not further elucidate the causal associations not only between social capital and PA but also between other study variables, which we shall recommend being addressed in the future study. Lastly, the survey sample of this study was recruited from the Qualtrics research panel that may not fully represent the target population. Although the Qualtrics panels are shown to provide a reliable and valid survey data, the generalizability of the present findings should be tested in different, more representative sample of middle-aged and older adult populations.

Conclusion

The present study highlights that developing new social connections with people from different social identities as well as strengthening ties within closed social networks would be the promising strategies to improve sense of the health in aging societies. Although there was a lack of empirical evidence supporting the mediating role of LTPA on the relationship between social capital and health, greater LTPA was independently associated with better self-rated health, emphasizing the positive role of PA for successful healthy aging. Lastly, there is an interaction effect between SES and social capital, in that social capital differentially affects self-rated health across the levels of household income. This suggests that SES differences should be accounted for when formulating and implementing the strategies to promote health in aging societies.

Abbreviations

CI: confidence interval
 
IPAQ: International Physical Activity Questionnaire
 
LTPA: leisure-time physical activity
 
MET: metabolic equivalent unit
 
OR: odds ratio
 
PA: physical activity
 
PSCS: Personal social capital scale
 
SES: socioeconomic status

Declarations

Ethics approval and consent to participate:

All procedures performed in this study were approved by the Texas Tech University Institutional Ethical Review Board (IRB#: 2019 − 307) and are in accordance with the Declaration of Helsinki and its later amendments or comparable ethical standards. Electronic informed consent was obtained from all survey participants.

Consent for publication:

n/a

Availability of data and materials:

The datasets used and/or analyzed during the current study are available from the corresponding author on reasonable request.

Competing interests:

The author(s) declared no potential conflicts of interest concerning the research, authorship, and/or publication of this article.

Ackowledgements

n/a

Note

Values are presented as Mean (Standard Deviation) unless otherwise specified. All pairwise comparisons were adjusted by the Tukey’s method.

Note

the model predicted the likelihood of reporting ‘good’ self-rated health.

Funding:

The data collected for this study was funded by the Scholarship Catalyst Program from the Texas Tech University, TX, USA. This study was initiated while the second author, Tim Schneider, was a visiting graduate student at Virginia Commonwealth University supported by Ruhr University Bochum, Germany. The funders did not play any role in the design of the study and collection, analysis and interpretation of data and writing the manuscript.

Authors’ contributions:

YK, TS, EF, and ML conceived and designed the study. YK and ML collected the data. YK and TS analyzed the data and drafted the manuscript. All authors critically reviewed and approved the final version of manuscript.

References

  1. Fredriksen-Goldsen KI, Kim H-J, Emlet CA, Muraco A, Erosheva EA, Hoy-Ellis CP, Goldsen J, Petry H. The Aging and Health Report. Seattle: Institute for Multigenerational Health; 2011.
  2. Beard JR, Officer A, De Carvalho IA, Sadana R, Pot AM, Michel J-P, Lloyd-Sherlock P, Epping-Jordan JE, Peeters GG, Mahanani WR. The World report on ageing and health: a policy framework for healthy ageing. The Lancet. 2016;387(10033):2145–54.
  3. Kaplan G, Baron-Epel O. What lies behind the subjective evaluation of health status? Soc Sci Med. 2003;56(8):1669–76.
  4. Jivraj S, Nazroo J, Vanhoutte B, Chandola T. Aging and subjective well-being in later life. Journals of Gerontology Series B: Psychological Sciences Social Sciences. 2014;69(6):930–41.
  5. Benyamini Y. Why does self-rated health predict mortality? An update on current knowledge and a research agenda for psychologists. Psychol Health. 2011;26(11):1407–13.
  6. DeSalvo KB, Bloser N, Reynolds K, He J, Muntner P. Mortality prediction with a single general self-rated health question: A meta‐analysis. J Gen Intern Med. 2006;21(3):267–75.
  7. Brenowitz WD, Hubbard RA, Crane PK, Gray SL, Zaslavsky O, Larson EB. Longitudinal associations between self-rated health and performance-based physical function in a population-based cohort of older adults. PLoS ONE. 2014;9(11):e111761.
  8. Montross LP, Depp C, Daly J, Reichstadt J, Golshan S, Moore D, Sitzer D, Jeste DV. Correlates of self-rated successful aging among community-dwelling older adults. Am J Geriatr Psychiatry. 2006;14(1):43–51.
  9. Muckenhuber J, Stronegger WJ, Freidl W. Social capital affects the health of older people more strongly than that of younger people. Ageing Soc. 2013;33(5):853–70.
  10. Baron S, Field J, Schuller T. Social capital: Critical perspectives. New York: Oxford University Press; 2000.
  11. Eriksson M. Social capital and health–implications for health promotion. Global Health Action. 2011;4(1):5611.
  12. Rocco L, Suhrcke M. Is social capital good for health?: A European perspective. Copenhagen: WHO Regional Office for Europe; 2012.
  13. Berkman LF, Glass T, Brissette I, Seeman TE. From social integration to health: Durkheim in the new millennium. Soc Sci Med. 2000;51(6):843–57.
  14. Kawachi I, Subramanian SV, Kim D. Social Capital and Health. In: Social Capital and Health. edn. New York: Springer; 2008. pp. 1–26.
  15. Ho EC, Hawkley L, Dale W, Waite L, Huisingh-Scheetz M. Social capital predicts accelerometry-measured physical activity among older adults in the US: a cross-sectional study in the National Social Life, Health, and Aging Project. BMC Public Health. 2018;18(1):804.
  16. Legh-Jones H, Moore S. Network social capital, social participation, and physical inactivity in an urban adult population. Soc Sci Med. 2012;74(9):1362–7.
  17. Fu C, Wang C, Yang F, Cui D, Wang Q, Mao Z. Association between social capital and physical activity among community-dwelling elderly in Wuhan, China. Int J Gerontol. 2018;12(2):155–9.
  18. Schöllgen I, Huxhold O, Tesch-Römer C. Socioeconomic status and health in the second half of life: findings from the German Ageing Survey. Eur J Ageing. 2010;7(1):17–28.
  19. Moor I, Spallek J, Richter M. Explaining socioeconomic inequalities in self-rated health: a systematic review of the relative contribution of material, psychosocial and behavioural factors. J Epidemiol Community Health. 2017;71(6):565–75.
  20. Ajrouch KJ, Blandon AY, Antonucci TC. Social networks among men and women: The effects of age and socioeconomic status. J Gerontol B Psychol Sci Soc Sci. 2005;60(6):311–7.
  21. Lindström M, Hanson BS, Östergren P-O. Socioeconomic differences in leisure-time physical activity: the role of social participation and social capital in shaping health related behaviour. Soc Sci Med. 2001;52(3):441–51.
  22. Uphoff EP, Pickett KE, Cabieses B, Small N, Wright J. A systematic review of the relationships between social capital and socioeconomic inequalities in health: a contribution to understanding the psychosocial pathway of health inequalities. Int J Equity Health. 2013;12(1):54.
  23. Walter SL, Seibert SE, Goering D, O’Boyle EH. A tale of two sample sources: Do results from online panel data and conventional data converge? J Bus Psychol. 2019;34(4):425–52.
  24. Mackenzie CS, Abdulrazaq S. Social engagement mediates the relationship between participation in social activities and psychological distress among older adults. Aging Ment Health 2019:1–7.
  25. Chen X, Stanton B, Gong J, Fang X, Li X. Personal Social Capital Scale: an instrument for health and behavioral research. Health Educ Res. 2009;24(2):306–17.
  26. Archuleta AJ, Miller CR. Validity evidence for the translated version of the Personal Social Capital Scale among people of Mexican descent. J Soc Social Work Res. 2011;2(2):39–53.
  27. Wang P, Chen X, Gong J, Jacques-Tiura AJ. Reliability and validity of the personal social capital scale 16 and personal social capital scale 8: Two short instruments for survey studies. Soc Indic Res. 2014;119(2):1133–48.
  28. Emmerling SA, Astroth KS, Kim MJ, Woith WM, Dyck MJ. A comparative study of social capital and hospital readmission in older adults. Geriatric Nursing. 2019;40(1):25–30.
  29. Sargent-Cox KA, Anstey KJ, Luszcz MA. Determinants of self-rated health items with different points of reference: implications for health measurement of older adults. J Aging Health. 2008;20(6):739–61.
  30. Berchick ER, Lynch SM. Regional variation in the predictive validity of self-rated health for mortality. SSM Popul Health. 2017;3:275–82.
  31. Elran-Barak R, Weinstein G, Beeri MS, Ravona-Springer R. The associations between objective and subjective health among older adults with type 2 diabetes: The moderating role of personality. J Psychosom Res. 2019;117:41–7.
  32. Baćak V, Ólafsdóttir S. Gender and validity of self-rated health in nineteen European countries. Scand J Public Health. 2017;45(6):647–53.
  33. Rodgers J, Valuev AV, Hswen Y, Subramanian S. Social capital and physical health: An updated review of the literature for 2007–2018. Soc Sci Med 2019:112360.
  34. IPAQ Research Committee. Guidelines for data processing and analysis of the International Physical Activity Questionnaire. In.; 2005.
  35. Craig CL, Marshall AL, Sjöström M, Bauman AE, Booth ML, Ainsworth BE, Pratt M, Ekelund U, Yngve A, Sallis JF. International physical activity questionnaire: 12-country reliability and validity. Med Sci Sports Exerc. 2003;35(8):1381–95.
  36. Kim Y, Park I, Kang M. Convergent validity of the International Physical Activity Questionnaire (IPAQ): meta-analysis. Public Health Nutr. 2013;16(3):440–52.
  37. WHO. Global Recommendations on Physical Activity for Health. In. Geneva. Switzerland: World Health Organization; 2010.
  38. Baker EH. Socioeconomic Status, Definition. Hoboken: Wiley-Blackwell; 2014.
  39. Baron RM, Kenny DA. The moderator–mediator variable distinction in social psychological research: Conceptual, strategic, and statistical considerations. J Pers Soc Psychol. 1986;51(6):1173–82.
  40. Kohler U, Karlson KB, Holm A. Comparing coefficients of nested nonlinear probability models. The Stata Journal. 2011;11(3):420–38.
  41. Putnam RD. Bowling Alone: The Collapse and Revival of American Community. New York: Simon & Schuster; 2000.
  42. Whitley R: Social Capital and Public Health. Qualitative and Ethnographic Approaches. In: Social Capital and Health. edn. Edited by Kawachi I, Subramanian, SV. & Kim, D. New York: Springer; 2008: 95–115.
  43. Yamaguchi A. Effects of social capital on general health status. Glob J Health Sci. 2014;6(3):45–54.
  44. Eller M, Holle R, Landgraf R, Mielck A. Social network effect on self-rated health in type 2 diabetic patients–results from a longitudinal population-based study. Int J Public Health. 2008;53(4):188–94.
  45. Amoranto G, Chun N, Deolalikar AB: Who are the middle class and what values do they hold? Evidence from the World Values Survey. Mandaluyong City, Philippines: Asian Development Bank Economics Working Paper Series; 2010.
  46. Scervini F. Empirics of the median voter: democracy, redistribution and the role of the middle class. J Econ Inequal. 2012;10(4):529–50.
  47. Bailey R, Hillman C, Arent S, Petitpas A. Physical activity as an investment in personal and social change: The human capital model. J Phys Act Health. 2012;9(8):1053–5.
  48. Beyer A-K, Wolff JK, Warner LM, Schüz B, Wurm S. The role of physical activity in the relationship between self-perceptions of ageing and self-rated health in older adults. Psychol Health. 2015;30(6):671–85.
  49. Ueshima K, Fujiwara T, Takao S, Suzuki E, Iwase T, Doi H, Subramanian S, Kawachi I. Does social capital promote physical activity? A population-based study in Japan. PLoS ONE. 2010;5(8):e12135.
  50. Boen F, Pelssers J, Scheerder J, Vanbeselaere N, Vos S, Hurkmans E, Smits T, Fransen K. Does social capital benefit older adults’ health and well-being? The mediating role of physical activity. J Aging Health 2019.
  51. Mohnen SM, Völker B, Flap H, Groenewegen PP. Health-related behavior as a mechanism behind the relationship between neighborhood social capital and individual health-a multilevel analysis. BMC Public Health. 2012;12(1):116.
  52. Theeboom M, Schaillée H, Nols Z. Social capital development among ethnic minorities in mixed and separate sport clubs. International Journal of Sport Policy Politics. 2012;4(1):1–21.
  53. Ottesen L, Jeppesen RS, Krustrup BR. The development of social capital through football and running: studying an intervention program for inactive women. Scand J Med Sci Sports. 2010;20:118–31.