Public Health Services, Health Human Capital, and Relative Poverty of Rural Families
Abstract
:1. Introduction
2. Analysis Framework and Research Assumptions
3. Model Setting, Data Source, and Variable Description
3.1. Model Setting
3.2. Data source and Variable Description
4. Analysis of Empirical Results
4.1. Basic Regression of Poverty Reduction in Public Health Services
4.2. Mediating Effect of Family Health Human Capital
4.3. Robustness Test
5. Discussion
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Variable Name | Variable Description | Mean | SD a | MIN | MAX |
---|---|---|---|---|---|
Family relative poverty (Pov) | 1 = Poverty 0 = Non-poverty | 0.21072 | 0.40783 | 0 | 1 |
Public health services (Pubmed) | Per capita financial medical and health expenditure (CNY) | 637.08610 | 268.54480 | 199.83100 | 1704.61700 |
Age of householder (Age) | Year | 47.65101 | 16.75277 | 10 | 99 |
Education level of householder (Aedu) | Year | 5.89187 | 4.40064 | 0 | 22 |
Family health human capital (Heapop) | Family self-rated healthy population/total family population | 0.81935 | 0.26627 | 0 | 1 |
Time spent by the family away from the nearest business street (Cdis) | minute | 36.60226 | 59.45423 | 1 | 1440 |
Whether the family is farming (Farm) | 1 = Engage in agricultural work, 0 = not engaged in agricultural work | 0.81585 | 0.38762 | 0 | 1 |
Family health expenditure (Afmedcost) | Per capita health care expenditure of households (CNY) | 1273.3460 | 4303.7340 | 0 | 246,666.70 |
Family burden coefficient (Bur) | Family non-working age population/working age population | 0.36143 | 0.59995 | 0 | 10 |
Geographical location of the village (Cdistance) | Distance between village and county (LI) | 44.11037 | 37.13605 | 0 | 280 |
Industrial structure (Third) | Proportion of tertiary industry in the province (%) | 41.90452 | 6.79345 | 29.30 | 69.17880 |
Independent Variable | Coefficient | Odds Ratio | |
---|---|---|---|
Pubmed | −0.00210 *** (0.00026) | 0.99791 *** (0.00026) | −0.00027 *** (0.00003) |
Age | −0.04382 *** (0.00708) | 0.95713 *** (0.00678) | −0.00558 *** (0.00090) |
Age2 | 0.00063 *** (0.00007) | 1.00063 *** (0.00007) | 0.00008 *** (0.00001) |
Aedu | −0.05400 *** (0.00627) | 0.94743*** (0.00594) | −0.00688 *** (0.00080) |
Lnafmedcost | −0.02146 *** (0.00553) | 0.97877 *** (0.00541) | −0.00273 *** (0.00070) |
Cdis | 0.00214 *** (0.00045) | 1.00214 *** (0.00045) | 0.00027 *** (0.00006) |
Farm | −0.27129 *** (0.06154) | 0.76240 *** (0.04692) | −0.03456 *** (0.00781) |
Bur | 0.23207 *** (0.03927) | 1.26121 *** (0.04953) | 0.02956 *** (0.00499) |
Cdistance | 0.00392 *** (0.00076) | 1.00393 *** (0.00076) | 0.00050 *** (0.00010) |
Third | −0.00835 (0.00553) | 0.99168 (0.00548) | −0.00317 (0.00070) |
Constant term | −0.34084 (0.29349) | 0.71117 (0.20872) | _ |
Observations | 19,890 | 19,890 | 19,890 |
Independent Variable | (1) | (2) | |
---|---|---|---|
Heapop | Pov | ||
Coefficient | Odds ratio | ||
Pubmed | 0.00007 *** (0.00002) | 0.99797 *** (0.00026) | −0.00026 *** (0.00003) |
Heapop | 0.35703 *** (0.03058) | −0.13132 *** (0.01088) | |
Lnafmedcost | −0.00722 *** (0.00043) | 0.96972 *** (0.00537) | −0.00392 *** (0.00071) |
Age | 0.00030 (0.00053) | 0.95569 *** (0.00673) | −0.00578 *** (0.00090) |
Age2 | −0.00002 *** (0.00001) | 1.00062 *** (0.00007) | 0.00008 *** (0.00001) |
Cdis | −0.00008 * (0.00005) | 1.00206 *** (0.00044) | 0.00026 *** (0.00006) |
Cdistance | −0.00008 (0.00007) | 1.00379 *** (0.00075) | 0.00048 *** (0.00009) |
Farm | 0.02003 *** (0.00486) | 0.78939 *** (0.04845) | −0.03015 *** (0.00780) |
Bur | 0.05296 *** (0.00310) | 1.34931 *** (0.05289) | 0.03820 *** (0.00499) |
Aedu | 0.00412 *** (0.00048) | 0.95211 *** (0.00594) | −0.00626 *** (0.00080) |
Third | −0.00095 ** (0.00045) | 0.99091 * (0.00542) | −0.00116 *** (0.00070) |
Constant term | 0.86184 *** (0.02320) | 1.78025 * (0.53466) | — |
Observations | 19,890 | 19,890 |
Core Explanatory Variables | Intermediary Variable | Dependent Variable (POV) | |
---|---|---|---|
Pubmed | Heapop | Total effect | −0.00028 ** |
(0.00012) | |||
Direct effect | −0.00023 * | ||
(0.00012) | |||
Indirect effect | −0.00005 *** | ||
(0.00001) | |||
Indirect effect/Total effect | 18.56% |
Estimation Method | Probit | Logit | Probit |
---|---|---|---|
Dependent Variable | Pov | Pov1 | Pov1 |
Model Number | (1) | (2) | (3) |
Pubmed | −0.00025 *** (0.00003) | −0.00030 *** (0.00004) | −0.00028 *** (0.00004) |
Heapop | −0.13364 *** (0.01104) | −0.16094 *** (0.01215) | −0.16899 *** (0.01231) |
Other control variables | Yes | Yes | Yes |
Observations | 19,890 | 19,890 | 19,890 |
Total effect | −0.00017 ** (0.00007) | −0.00024 ** (0.00011) | −0.00014 ** (0.00007) |
Direct effect | −0.00014 ** (0.00007) | −0.00020 * (0.00011) | −0.00011 * (0.00007) |
Indirect effect | −0.00003 *** (0.00001) | −0.00004 *** (0.00001) | −0.00003 *** (0.00001) |
Indirect effect/Total effect | 17.56% | 16.58% | 23.55% |
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Yang, Y.; Zhou, L.; Zhang, C.; Luo, X.; Luo, Y.; Wang, W. Public Health Services, Health Human Capital, and Relative Poverty of Rural Families. Int. J. Environ. Res. Public Health 2022, 19, 11089. https://doi.org/10.3390/ijerph191711089
Yang Y, Zhou L, Zhang C, Luo X, Luo Y, Wang W. Public Health Services, Health Human Capital, and Relative Poverty of Rural Families. International Journal of Environmental Research and Public Health. 2022; 19(17):11089. https://doi.org/10.3390/ijerph191711089
Chicago/Turabian StyleYang, Yingya, Liangliang Zhou, Chongmei Zhang, Xin Luo, Yihan Luo, and Wei Wang. 2022. "Public Health Services, Health Human Capital, and Relative Poverty of Rural Families" International Journal of Environmental Research and Public Health 19, no. 17: 11089. https://doi.org/10.3390/ijerph191711089
APA StyleYang, Y., Zhou, L., Zhang, C., Luo, X., Luo, Y., & Wang, W. (2022). Public Health Services, Health Human Capital, and Relative Poverty of Rural Families. International Journal of Environmental Research and Public Health, 19(17), 11089. https://doi.org/10.3390/ijerph191711089