A New Perspective of Urban–Rural Differences: The Impact of Social Support on the Mental Health of the Older Adults: A Case from Shaanxi Province, China
Abstract
:1. Introduction
2. Hypothesis and Framework
3. Data and Method
3.1. Data Source
3.2. Variable Selection
3.3. Analysis Method
3.4. Describing Sample
4. Results
4.1. Regression Analysis
4.2. Analysis of Results
4.3. Robust Test
5. Discussion
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Acknowledgments
Conflicts of Interest
References
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Variables | Name | Meaning |
---|---|---|
Dependent variable | Mental health | 1 = Health, 0 = Unhealthy |
Control variable | Gender | 1 = Male, 0 = Female |
Age | 1 = over 75 years old, 0 = 60–75 years old | |
Marriage | 1 = Married, 0 = Unmarried | |
Registered permanent residence | 1 = City, 0 = Countryside | |
Education | 1 = Primary school, 0 = Others | |
Political status | 1 = CPC, 0 = Others | |
Income | Distance variable | |
Formal social support | Health insurance | 1 = Have, 0 = No |
Pension | 1 = Have, 0 = No | |
Frequency of contact with government staff | 1 = High, 0 = Low | |
Health insurance satisfaction | 1 = Satisfied, 0 = Dissatisfied | |
Pension insurance satisfaction | 1 = Satisfied, 0 = Dissatisfied | |
Informal social support | Way of living | 1 = Live alone, 0 = Not living alone |
Children’s communication frequency | 1 = High, 0 = Low | |
Children’s financial support | 1 = High, 0 = Low | |
Frequency of helping each other with neighbors | 1 = High, 0 = Low | |
Frequency of communication with neighbors | 1 = High, 0 = Low |
Variables | Classification | Frequency | Percent (%) |
---|---|---|---|
Gender | Male | 405 | 42.7 |
Female | 543 | 57.3 | |
Age | 60–69 | 414 | 43.9 |
70–79 | 323 | 34.2 | |
80–89 | 188 | 19.9 | |
>90 | 19 | 2.0 | |
Marriage | Married | 536 | 56.5 |
Unmarried | 412 | 43.5 | |
Education | Primary school | 455 | 48.0 |
Junior high school | 248 | 26.3 | |
High school | 170 | 18.0 | |
University | 73 | 7.7 | |
Political status | Party of the CPC | 247 | 26.1 |
Others | 701 | 73.9 | |
Registered permanent residence | City | 515 | 54.6 |
Countryside | 429 | 45.4 | |
Children’s communication frequency | High | 731 | 77.2 |
Low | 217 | 22.8 | |
Children’s financial support | High | 745 | 78.6 |
Low | 203 | 21.4 | |
Frequency of helping each other with neighbors | High | 812 | 85.7 |
Low | 136 | 14.3 | |
Frequency of communication with neighbors | High | 777 | 82 |
Low | 171 | 18 | |
Pension insurance coverage rate | 887 | 93.6 | |
Health insurance coverage | 915 | 96.6 | |
Pension insurance satisfaction | 498 | 52.6 | |
Health insurance satisfaction | 583 | 61.5 |
Sources of Income | |||||
---|---|---|---|---|---|
Registered Permanent Residence | Children Provide | Pension | Savings | Commercial Pension Insurance | Others |
Countryside | 20.45% | 47.16% | 10.45% | 1.34% | 3.88% |
City | 37.01% | 71.19% | 15.67% | 0.75% | 1.64% |
Control Variable | Model 1a OR (95% CI) | Model 2a OR (95% CI) | Model 3a OR (95% CI) |
---|---|---|---|
Gender | 1.396 (0.925, 1.867) | 0.844 (0.635, 1.053) | 1.277 (0.916, 1.638) |
Age | 1.146 (0.815, 1.477) | 1.014 (0.846, 1.182) | 1.118 (0.887, 1.349) |
Marriage | 0.905 (0.784, 1.026) | 1.082 (0.875, 1.289) | 1.009 (0.805, 1.213) |
Education | 1.104 ** (1.012, 1.196) | 1.572 ** (1.115, 2.029) | 1.728 ** (1.346, 2.110) |
Political status | 1.385 (0.901, 1.869) | 1.112 (0.945, 1.279) | 0.962 (0.798, 1.126) |
Formal social support | |||
Health insurance | 0.988 (0.832, 1.144) | 1.032 (0.811, 1.253) | |
Pension | 0.819 (0.615, 1.023) | 0.939 (0.785, 1.093) | |
Frequency of contact with government staff | 1.357 *** (1.115, 1.599) | 1.992 *** (1.747, 2.237) | |
Health insurance satisfaction | 1.509 *** (1.047, 1.971) | 1.797 *** (1.534, 2.060) | |
Pension insurance satisfaction | 1.494 *** (1.028, 1.960) | 2.233 *** (2.045, 2.421) | |
Informal social support | |||
Way of living | 1.695 (0.801, 2.589) | ||
Children’s communication frequency | 2.169 * (1.928, 2.410) | ||
Children’s financial support | 1.037 (0.818, 1.256) | ||
Frequency of helping each other with neighbors | 2.057 *** (1.785, 2.329) | ||
Frequency of communication with neighbors | 1.114 *** (1.049, 1.179) |
Control Variable | Model 1b OR (95% CI) | Model 2b OR (95% CI) | Model 3b OR (95% CI) |
---|---|---|---|
Gender | 1.688 (0.823, 3.146) | 1.365 (1.112, 1.618) | 1.547 (0.984, 2.110) |
Age | 0.856 (0.581, 1.131) | 0.858 (0.641, 1.075) | 0.871 (0.788, 1.054) |
Marriage | 0.912 ** (0.742, 1.082) | 1.165 ** (1.093, 1.237) | 1.375 ** (1.145, 1.605) |
Education | 1.330 *** (1.124, 1.536) | 1.193 *** (0.985, 1.401) | 1.324 *** (1.126, 1.522) |
Political status | 1.503 (1.257, 2.131) | 1.208 (0.921, 1.495) | 1.244 (0.985, 1.503) |
Formal social support | |||
Health insurance | 1.125 (0.906, 1.344) | 1.025 (0.944, 1.106) | |
Pension | 0.871 (0.638, 1.104) | 0.622 (0.218, 1.026) | |
Frequency of contact with government staff | 1.982 ** (1.581, 2.383) | 2.586 ** (2.156, 3.016) | |
Health insurance satisfaction | 1.265 (0.996, 1.534) | 1.377 (1.201, 1.863) | |
Pension insurance satisfaction | 1.983 (0.894, 3.072) | 2.199 (1.818, 2.580) | |
Informal social support | |||
Way of living | 1.984 (1.784, 3.084) | ||
Children’s communication frequency | 3.113 *** (2.779, 3.447) | ||
Children’s financial support | 1.813 *** (1.568, 2.058) | ||
Frequency of helping each other with neighbors | 4.347 * (4.116, 4.578) | ||
Frequency of communication with neighbors | 0.973 (0.808, 1.138) |
Variable | Model 1a OR (95% CI) | Model 2a OR (95% CI) | Model 3a OR (95% CI) | Model 1b OR (95% CI) | Model 2b OR (95% CI) | Model 3b OR (95% CI) |
---|---|---|---|---|---|---|
Urban | Rural | |||||
Control Variable | ||||||
Gender | 1.125 (0.881, 1.369) | 0.821 (0.613, 1.029) | 1.384 (0.976, 1.792) | 1.536 (0.889, 2.183) | 1.425 (0.925, 1.925) | 1.452 (0.936, 1.968) |
Age | 1.047 (0.836, 1.231) | 1.115 (0.844, 1.386) | 1.256 (0.894, 1.618) | 0.872 (0.745, 1.093) | 0.896 (0.584, 1.208) | 0.912 (0.803, 1.021) |
Marriage | 0.925 (0.815, 1.035) | 1.762 (0.983, 2.541) | 1.009 (0.928, 1.090) | 0.984 ** (0.863, 1.105) | 1.172 ** (1.042, 1.302) | 1.465** (1.162, 1.768) |
Education | 1.108 ** (1.071, 1.145) | 1.717 ** (1.321, 2.113) | 1.816 ** (1.536, 2.096) | 1.325 *** (1.021, 1.629) | 1.996 *** (1.681, 2.311) | 1.514 *** (1.265, 1.763) |
Political status | 1.148 (0.907, 1.389) | 1.135 (0.901, 1.369) | 0.889 (0.761, 1.017) | 1.471 (0.861, 2.081) | 1.384 (0.954, 1.814) | 1.342 (0.911, 1.773) |
Formal social support | ||||||
Health insurance | 0.991 (0.832, 1.150) | 1.112 (0.874, 1.346) | 1.145 (0.921, 1.369) | 1.127 (0.908, 1.346) | ||
Pension | 0.845 (0.731, 1.059) | 0.979 (0.831, 1.127) | 0.752 (0.418, 1.086) | 0.735 (0.388, 1.082) | ||
Frequency of contact with government staff | 1.148 *** (0.906, 1.390) | 1.856 *** (1.614, 2.098) | 1.981 ** (1.281, 2.681) | 2.687 ** (2.447, 2.927) | ||
Health insurance satisfaction | 1.618 *** (1.284, 1.952) | 1.825 *** (1.593, 2.057) | 1.238 (0.853, 1.623) | 1.389 (0.873, 1.905) | ||
Pension insurance satisfaction | 1.543 *** (1.195, 1.891) | 2.112 *** (1.884, 2.340) | 1.894 (0.903, 2.885) | 2.129 (0.886, 3.372) | ||
Informal social support | ||||||
Way of living | 1.756 (1.414, 2.098) | 1.684 (0.744, 2.624) | ||||
Children’s communication frequency | 2.356 * (2.142, 2.570) | 3.256 *** (2.889, 3.623) | ||||
Children’s financial support | 1.365 (0.865, 1.865) | 1.012 *** (1.002, 1.022) | ||||
Frequency of helping each other with neighbors | 2.042 *** (1.691, 2.393) | 4.347 * (3.988, 4.706) | ||||
Frequency of communication with neighbors | 1.225 *** (0.987, 1.463) | 0.896 (0.654, 138) |
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Zhang, C.; Zhang, S.; Niu, Q. A New Perspective of Urban–Rural Differences: The Impact of Social Support on the Mental Health of the Older Adults: A Case from Shaanxi Province, China. Healthcare 2021, 9, 112. https://doi.org/10.3390/healthcare9020112
Zhang C, Zhang S, Niu Q. A New Perspective of Urban–Rural Differences: The Impact of Social Support on the Mental Health of the Older Adults: A Case from Shaanxi Province, China. Healthcare. 2021; 9(2):112. https://doi.org/10.3390/healthcare9020112
Chicago/Turabian StyleZhang, Chi, Sifeng Zhang, and Qing Niu. 2021. "A New Perspective of Urban–Rural Differences: The Impact of Social Support on the Mental Health of the Older Adults: A Case from Shaanxi Province, China" Healthcare 9, no. 2: 112. https://doi.org/10.3390/healthcare9020112
APA StyleZhang, C., Zhang, S., & Niu, Q. (2021). A New Perspective of Urban–Rural Differences: The Impact of Social Support on the Mental Health of the Older Adults: A Case from Shaanxi Province, China. Healthcare, 9(2), 112. https://doi.org/10.3390/healthcare9020112