Is Urbanization Good for the Health of Middle-Aged and Elderly People in China?—Based on CHARLS Data
Abstract
:1. Introduction
2. Methods and Data
2.1. Methods
2.1.1. Constructing the Comprehensive Indicator System of Urbanization
2.1.2. The Calculating Methods of the Comprehensive Urbanization Indicator System
- (1)
- The hyperbolic standardization function is applied to standardize the index values:
- (2)
- The hyperbolic standardized function fulfills F(U) = 1, F(T) = 0, F(L) = −1, where U is the higher limit of the exponent X, L is the lower limit of X, and T is the critical value of the X. The threshold value can be expressed as the exponential mean.
- (3)
- For the ith index, the single index value, Si, is:
- (4)
- The fully aligned polygonal graphical indexing method is indicated as follows:
2.1.3. The Model of the Relationship between Urbanization and Health
2.2. Variables and Data
2.2.1. Variables
2.2.2. Data
3. Results and Discussion
3.1. The Influence of Integrated Urbanization on Chronic Diseases in Older Adults
3.2. The Heterogeneity Analysis of Urbanization on Chronic Diseases in Middle-Aged and Elderly People
3.2.1. The Influence of the Development Trend of Urbanization on Chronic Diseases
3.2.2. The Impact of City Type on Chronic Diseases
3.2.3. The Regional Differences in the Impact of Urbanization on Chronic Diseases
3.3. The Robustness Test
4. Conclusions
- (1)
- The comprehensive urbanization index was constructed by applying the fully arrange polygon graphical index method from four dimensions: the urbanization of the population, the urbanization of economy, the urbanization of residential environment, and the urbanization of residential conditions. The results indicate that integrated urbanization can significantly decrease the rate of chronic diseases among the middle-aged and elderly. However, although the enhancement of healthcare conditions can significantly reduce the prevalence of chronic diseases induced by industrial sulfur dioxide and industrial soot and dust, it cannot offset the health damage caused by PM2.5.
- (2)
- Each city has different development directions in the process of urbanization, which can be considered by the four dimensions of demographic urbanization, economy urbanization, residential surroundings urbanization, and residential conditions urbanization. When the main development direction is economic urbanization, although the medical care still does not fully counteract the health risks from PM2.5, the health damage is the lowest, with an increase in the morbidity of chronic diseases among middle-aged and elderly adults of only 12.4%. In addition, the mitigation effect of healthcare for health hazards caused by industrial soot and dust is the highest, with the largest decrease in the incidence of chronic diseases at 18.4% in the primary stage of urbanization. When the development direction is residential surroundings urbanization, the healthcare service has the greatest mitigating effect on the health problems caused by industrial sulfur and dioxide, reducing the incidence of chronic diseases in middle-aged and elderly people by 14.9%. With residential condition urbanization, healthcare can significantly decrease the incidence of chronic diseases caused by industrial wastewater, and the significance level is 1%.
- (3)
- Referring to Nelson’s classification in the United States, the study cities are separated into three categories: industrial, commercial, and mixed-economy cities. The results suggest that although medical treatment cannot counteract the health risks induced by PM2.5, at 13.2%, the commercial cities have the lowest overall increase in the incidence of chronic diseases among middle-aged and elderly people. The greatest reduction in the incidence of chronic diseases in middle-aged and elderly people induced by industrial sulfur dioxide and industrial soot and dust is seen in mixed-economy cities, with incidences decreased by 27.3% and 16.4%, respectively.
- (4)
- In order to consider the regional imbalance of urban development in China, the sample is divided into three sections: eastern, central, and western China. The regression results suggest that in eastern China, although healthcare does not offset the health damage caused by PM2.5, the overall health risks are lowest, with the incidence of chronic diseases increase by 0.5%. The mitigation of health hazards caused by industrial sulfur and dioxide is the lowest in eastern China, with the prevalence of chronic diseases decreased by 7.4%. However, the reduction influence of medical treatment on health risks caused by industrial soot and dust is the largest in the central part of China, which shows an 18.6% decrease in the prevalence of chronic diseases. Healthcare can significantly decrease the incidence of chronic diseases induced by industrial wastewater.
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
The Multidimensionality of Urbanization | Variable | Marginal Effects | ||
---|---|---|---|---|
A Person Does Not Have Chronic Diseases | Contracting 1 or 2 Chronic Diseases | Contracting 3 or More Chronic Diseases | ||
Demographic urbanization | Mhs × ln (PM2.5) | −0.191 *** (0.048) | 0.038 *** (0.010) | 0.152 *** (0.039) |
Mhs × ln (SO2) | 0.172 *** (0.023) | −0.035 *** (0.005) | −0.137 *** (0.018) | |
Mhs × ln (Soot) | 0.211 *** (0.025) | −0.042 *** (0.005) | −0.169 *** (0.20) | |
Mhs × ln (Wastewater) | −0.011 (0.032) | −0.002 (0.006) | −0.009 (0.026) | |
Economic Urbanization | Mhs × ln (PM2.5) | −0.155 ** (0.049) | 0.031 ** (0.010) | 0.124 ** (0.039) |
Mhs × ln (SO2) | 0.183 *** (0.023) | −0.037 *** (0.005) | −0.146 *** (0.018) | |
Mhs × ln (Soot) | 0.230 *** (0.025) | −0.046 *** (0.006) | −0.184 *** (0.020) | |
Mhs × ln (Wastewater) | 0.219 (0.032) | −0.004 (0.007) | −0.018 (0.026) | |
Residential surroundings urbanization | Mhs × ln (PM2.5) | −0.181 *** (0.049) | 0.036 *** (0.010) | 0.144 *** (0.039) |
Mhs × ln (SO2) | 0.187 *** (0.024) | −0.037 *** (0.005) | −0.149 *** (0.019) | |
Mhs × ln (Soot) | 0.222 *** (0.025) | −0.044 *** (0.006) | −0.178 *** (0.020) | |
Mhs × ln (Wastewater) | 0.040 (0.031) | −0.008 (0.006) | −0.032 (0.025) | |
Residential conditions urbanization | Mhs × ln (PM2.5) | −0.201 *** (0.049) | 0.040 *** (0.010) | 0.161 *** (0.039) |
Mhs × ln (SO2) | 0.173 *** (0.024) | −0.035 *** (0.005) | −0.138 *** (0.019) | |
Mhs × ln (Soot) | 0.210 *** (0.025) | −0.042 *** (0.005) | −0.168 *** (0.020) | |
Mhs × ln (Wastewater) | 0.057 * (0.031) | −0.011* (0.006) | −0.045 * (0.025) |
Different Types of City | Variable | Marginal Effects | ||
---|---|---|---|---|
A Person Does Not Have Chronic Diseases | A Person Has 1 or 2 Chronic Diseases | A Person Has 3 or More Chronic Diseases | ||
Industrial city | Mhs × ln (PM2.5) | 0.845 *** (0.217) | −0.242 *** (0.066) | −0.602 *** (0.157) |
Mhs × ln (SO2) | 0.082 (0.060) | −0.024 (0.017) | −0.058 (0.043) | |
Mhs × ln (Soot) | 0.382 *** (0.091) | −0.110 *** (0.028) | −0.272 *** (0.066) | |
Mhs × ln (Wastewater) | −0.069 (0.095) | 0.020 (0.027) | 0.09 (0.068) | |
Commercial city | Mhs × ln (PM2.5) | −0.167 * (0.092) | 0.035 * (0.020) | 0.132 * (0.073) |
Mhs × ln (SO2) | 0.082 (0.053) | −0.017 (0.011) | −0.065 (0.042) | |
Mhs × ln (Soot) | 0.034 (0.059) | −0.007 (0.012) | −0.027 (0.070) | |
Mhs × ln (Wastewater) | −0.088 (0.056) | 0.018 (0.012) | 0.070 (0.045) | |
Mixed-economy city | Mhs × ln (PM2.5) | −0.195 ** (0.073) | 0.039 ** (0.015) | 0.156 ** (0.058) |
Mhs × ln (SO2) | 0.256 *** (0.036) | −0.051 *** (0.008) | −0.205 *** (0.029) | |
Mhs × ln (Soot) | 0.354 *** (0.037) | −0.070 *** (0.008) | −0.284 *** (0.030) | |
Mhs × ln (Wastewater) | 0.103 * (0.046) | −0.021 * (0.009) | −0.082 * (0.037) |
Different Regions | Variable | Marginal Effects | ||
---|---|---|---|---|
A Person Does Not Have Chronic Diseases | A Person Has 1 or 2 Chronic Diseases | A Person Has 3 or More Chronic Diseases | ||
Eastern | Mhs × ln (PM2.5) | −0.008 (0.099) | 0.003 (0.036) | 0.005 (0.063) |
Mhs × ln (SO2) | 0.117 ** (0.044) | −0.043 ** (0.016) | −0.074 ** (0.028) | |
Mhs × ln (Soot) | 0.166 *** (0.048) | −0.060 *** (0.018) | −0.106 *** (0.031) | |
Mhs × ln (Wastewater) | −0.200 *** (0.053) | 0.073 *** (0.019) | 0.123 *** (0.034) | |
Central | Mhs × ln (PM2.5) | −0.359 * (0.140) | 0.050 * (0.021) | 0.310 * (0.121) |
Mhs × ln (SO2) | 0.085 * (0.039) | −0.012 * (0.006) | −0.073 * (0.034) | |
Mhs × ln (Soot) | 0.215 *** (0.047) | −0.030 *** (0.008) | −0.186 *** (0.041) | |
Mhs × ln (Wastewater) | 0.008 (0.075) | −0.001 (0.010) | −0.007 (0.065) | |
Western | Mhs × ln (PM2.5) | −0.231 ** (0.072) | 0.007 (0.006) | 0.224 ** (0.070) |
Mhs × ln (SO2) | 0.246 *** (0.040) | −0.007 (0.006) | −0.234 *** (0.039) | |
Mhs × ln (Soot) | 0.298 *** (0.051) | −0.009 (0.007) | −0.290 *** (0.050) | |
Mhs × ln (Wastewater) | 0.533 *** (0.088) | −0.017 (0.012) | −0.516 *** (0.085) |
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Target Level | Criterion Level | Indicator Level | Unit | Indicator Attribute |
---|---|---|---|---|
Comprehensive urbanization | Demographic urbanization | City Population Density | person/square kilometer | rising |
Percentage of urban population | % | rising | ||
Percentage of tertiary sector employees | % | rising | ||
Economy urbanization | Per capita GDP | Yuan | rising | |
Per capita disposable income of urban residents | Yuan | rising | ||
The tertiary sector as a proportion of GDP | % | rising | ||
Residential surroundings urbanization | The capacity of daily sewage treatment in the city | Million cubic meters/day | constrained | |
Green coverage rate in the built-up area | % | constrained | ||
Per capita park green area | Square meter | constrained | ||
Harmless treatment rate of domestic waste (the whole city) | % | constrained | ||
The integrated utilization rate of general solid waste | % | constrained | ||
Residential condition urbanization | Urban water coverage rate | % | rising | |
Urban gas penetration rate | % | rising | ||
Number of toilets per 1000 population | unit | rising | ||
Number of buses per 1000 population (city district) | unit | rising | ||
Per capita urban road space | Square meter | rising |
Variable | Definition |
---|---|
Composite urbanization (CU) | Calculated based on demographic urbanization economy urbanization, residential surroundings urbanization, and residential condition urbanization. |
Demographic urbanization (DU) | Calculated using the fully arrayed polygonal graphical indication method |
Economy urbanization (EU) | |
Residential surroundings urbanization (RSU) | |
Residential condition urbanization (RCU) | |
Medical and health service (Mhs) | |
Chronic diseases | A person does not have chronic diseases = 1; has contracted 1 or 2 chronic diseases = 2; has contracted 3 or more chronic diseases = 3 |
Household income per capita | Gross household income/household size (Yuan/person) |
Industrial sulfur dioxide | Urban per capita industrial SO2 emissions in 2011, 2013, and 2015 (tons per person) |
Industrial soot | Urban per capita industrial soot emissions in 2011, 2013, and 2015 (tons per person) |
Industrial wastewater | Urban per capita industrial wastewater emissions in 2011, 2013, and 2015 (tons per person) |
PM2.5 | The urban annual average concentration of PM2.5 in 2011, 2013, and 2015 (µg/m3) |
Education | The highest education: 0 to 6 (Private schools, illiteracy, non-primary school graduates = 0; Primary school graduates = 1; Junior high school graduates = 2; High school graduates = 3; Secondary technical school graduates = 4; College and undergraduate degrees = 5; Master’s degree and above = 6) |
Residence | Rural = 1; urban = 0 |
Age | Age of respondents in 2011, 2013, and 2015 |
Sex | Male = 1; female = 0 |
Marriage | Married = 1; otherwise = 0 |
Healthcare insurance | Obtained healthcare insurance = 1, otherwise = 0 |
Smoking | More than 100 cigarettes in a lifetime = 1, less than 100 cigarettes = 0 |
Alcohol use | Consumption of alcoholic beverages, such as beer, wine, or liquor, in the past year, yes = 1, no = 0 |
Variable | Observation | Mean | S.D. | Min | Max |
---|---|---|---|---|---|
Chronic disease | 21,298 | 1.914 | 0.705 | 1 | 3 |
Comprehensive urbanization | 21,298 | 0.384 | 0.048 | 0.299 | 0.545 |
Demographic urbanization | 21,298 | 0.229 | 0.084 | 0.071 | 0.618 |
Economy urbanization | 21,298 | 0.230 | 0.101 | 0.100 | 0.619 |
Residential surroundings urbanization | 21,298 | 0.251 | 0.111 | 0.039 | 0.546 |
Residential condition urbanization | 21,298 | 0.239 | 0.083 | 0.052 | 0.440 |
Medical and health service | 21,298 | 0.384 | 0.048 | 0.055 | 0.743 |
Household income per capita | 21,298 | 8208.774 | 26,711.500 | 0.000 | 3,082,500 |
Industrial sulfur dioxide | 21,298 | 0.014 | 0.016 | 0.000 | 0.136 |
Industrial soot and dust | 21,298 | 0.019 | 0.114 | 0.000 | 1.203 |
PM2.5 | 21,298 | 48.252 | 20.911 | 3.641 | 96.540 |
Industrial wastewater | 21,298 | 16.315 | 16.515 | 0.818 | 181.144 |
Education | 21,298 | 1.140 | 1.275 | 0 | 6 |
Age | 21,298 | 61.349 | 10.141 | 45 | 102 |
Sex | 21,298 | 0.467 | 0.499 | 0 | 1 |
Marriage | 21,298 | 0.800 | 0.400 | 0 | 1 |
Residence | 21,298 | 0.696 | 0.460 | 0 | 1 |
Smoking | 21,298 | 0.564 | 0.496 | 0 | 1 |
Alcohol use | 21,298 | 0.336 | 0.472 | 0 | 1 |
Insurance | 21,298 | 0.719 | 0.449 | 0 | 1 |
Variable | Chronic Diseases in Middle-Aged and Elderly People | |||||||
---|---|---|---|---|---|---|---|---|
Model 1 | Model 2 | Model 3 | Model 4 | Model 5 | Model 6 | Model 7 | Model 8 | |
Core Independent Variable | ||||||||
CU | −2.227 *** (0.357) | −2.323 *** (0.357) | −1.602 *** (0.376) | −2.184 *** (0.357) | −2.058 *** (0.360) | −2.491 *** (0.358) | −1.529 *** (0.391) | −2.485 *** (0.359) |
Mhs | 0.284 * (0.162) | 0.336 ** (0.162) | 0.242 (0.160) | 0.209 (0.161) | 0.183 (0.164) | 0.451 *** (0.162) | 0.236 (0.160) | 0.192 (0.159) |
ln(PM2.5) | −0.030 (0.025) | −0.009 (0.025) | ||||||
ln(SO2) | −0.039 *** (0.012) | −0.044 *** (0.012) | ||||||
ln(Soot) | 0.037 *** (0.013) | −0.100 *** (0.018) | ||||||
ln(Wastewater) | −0.097 *** (0.018) | 0.013 (0.013) | ||||||
Mhs × ln (PM2.5) | 0.826 *** (0.243) | |||||||
Mhs × ln (SO2) | −0.909 *** (0.120) | |||||||
Mhs × ln (Soot) | −1.114 *** (0.125) | |||||||
Mhs × ln (Wastewater) | −0.108 (0.160) | |||||||
Household characteristicsvariables | ||||||||
Household income per capita | −0.019 ** (0.008) | −0.018 ** (0.008) | −0.016 * (0.008) | −0.020 ** (0.008) | −0.019 ** (0.008) | −0.018 ** (0.008) | −0.016 * (0.008) | −0.019 ** (0.008) |
Individual characteristicsvariables | ||||||||
Marriage | 0.138 *** (0.037) | 0.136 *** (0.037) | 0.134 *** (0.037) | 0.138 *** (0.037) | 0.137 *** (0.037) | 0.138 *** (0.037) | 0.134 *** (0.037) | 0.134 *** (0.037) |
Smoking | 0.043 (0.030) | 0.037 (0.030) | 0.044 (0.030) | 0.047 (0.030) | 0.042 (0.030) | 0.024 (0.030) | 0.044 (0.030) | 0.036 (0.030) |
Alcohol use | −0.216 *** (0.031) | −0.219 *** (0.031) | −0.219 *** (0.031) | −0.215 *** (0.031) | −0.216 *** (0.031) | −0.223 *** (0.031) | −0.219 *** (0.031) | −0.220 *** (0.031) |
Education | −0.011 (0.012) | −0.011 (0.012) | −0.011 (0.012) | −0.014 (0.012) | −0.011 (0.012) | −0.011 (0.012) | −0.011 (0.012) | −0.013 (0.012) |
Age | 0.034 *** (0.002) | 0.034 *** (0.002) | 0.034 *** (0.002) | 0.034 *** (0.002) | 0.034 *** (0.002) | 0.034 *** (0.002) | 0.034 *** (0.002) | 0.034 *** (0.002) |
Sex | −0.193 *** (0.032) | −0.189 *** (0.032) | −0.192 *** (0.032) | −0.193 *** (0.032) | −0.191 *** (0.032) | −0.181 *** (0.032) | −0.192 *** (0.032) | −0.183 *** (0.032) |
Insurance | 0.015 (0.031) | 0.020 (0.031) | 0.022 (0.031) | 0.013 (0.031) | 0.017 (0.031) | 0.030 (0.031) | 0.022 (0.031) | 0.020 (0.031) |
Residence | −0.143 *** (0.032) | −0.142 *** (0.032) | −0.158 *** (0.032) | −0.146 *** (0.032) | −0.143 *** (0.032) | −0.127 *** (0.032) | −0.158 *** (0.032) | −0.137 *** (0.032) |
Number of individuals | 21,298 | 21,298 | 21,298 | 21,298 | 21,298 | 21,298 | 21,298 | 21,298 |
Number of cities | 114 | 114 | 114 | 114 | 114 | 114 | 114 | 114 |
Variable | Demographic Urbanization | Economy Urbanization | ||||||
---|---|---|---|---|---|---|---|---|
(1) PM2.5 | (2) SO2 | (3) Soot | (4) Wastewater | (1) PM2.5 | (2) SO2 | (3) Soot | (4) Wastewater | |
DU | −0.909 *** (0.217) | −1.178 *** (0.215) | −0.877 *** (0.222) | −1.096 *** (0.216) | ||||
EU | −1.250 *** (0.190) | −1.206 *** (0.183) | −1.499 *** (0.185) | −0.752 *** (0.205) | ||||
RSU | ||||||||
RCU | ||||||||
Mhs | −0.003 (0.158) | 0.331 ** (0.163) | −0.074 (0.162) | 0.377 ** (0.161) | 0.466 ** (0.184) | 0.484 *** (0.169) | 0.420 ** (0.168) | 0.274 (0.171) |
ln (PM2.5) | 0.019 (0.026) | −0.060 ** (0.026) | ||||||
ln (SO2) | −0.055 *** (0.012) | −0.029 ** (0.012) | ||||||
ln (Soot) | 0.001 (0.014) | 0.035 *** (0.013) | ||||||
ln (Wastewater) | −0.129 *** (0.017) | −0.096 *** (0.019) | ||||||
Mhs × ln (PM2.5) | 0.944 *** (0.241) | 0.770 *** (0.243) | ||||||
Mhs × ln (SO2) | −0.854 *** (0.119) | −0.909 *** (0.119) | ||||||
Mhs × ln (Soot) | −1.048 *** (0.124) | −1.146 *** (0.125) | ||||||
Mhs × ln (Wastewater) | −0.055 (0.159) | −0.109 (0.161) | ||||||
Variable | Residential surroundings urbanization | Residential condition urbanization | ||||||
(1) PM2.5 | (2) SO2 | (3) Soot | (4) Wastew-ater | (1) PM2.5 | (2) SO2 | (3) Soot | (4) Wastew-ater | |
DU | ||||||||
EU | ||||||||
RSU | −0.613 *** (0.130) | −0.803 *** (0.129) | −0.750 *** (0.130) | −0.427 *** (0.136) | ||||
RCU | −0.119 (0.166) | −0.178 (0.165) | −0.290 * (0.166) | 0.166 (0.171) | ||||
Mhs | −0.136 (0.141) | 0.113 (0.140) | −0.167 (0.138) | 0.022 (0.138) | −0.370 *** (0.135) | −0.219 * (0.133) | −0.437 *** (0.132) | −0.157 (0.133) |
ln (PM2.5) | 0.001 (0.026) | −0.010 (0.025) | ||||||
ln (SO2) | −0.044 *** (0.012) | −0.038 *** (0.012) | ||||||
ln (Soot) | 0.010 (0.013) | 0.022 * (0.013) | ||||||
ln (Wastewater) | −0.109 *** (0.018) | −0.130 *** (0.018) | ||||||
Mhs × ln (PM2.5) | 0.895 *** (0.242) | 0.997 *** (0.242) | ||||||
Mhs × ln (SO2) | −0.926 *** (0.120) | −0.859 *** (0.119) | ||||||
Mhs × ln (Soot) | −1.104 *** (0.125) | −1.044 *** (0.124) | ||||||
Mhs × ln (Wastewater) | −0.198 (0.156) | −0.281 * (0.154) |
Variable | Industrial City | Commercial city | ||||
---|---|---|---|---|---|---|
(1) PM2.5 | (2) SO2 | (3) Soot | (4) Wastewater | (1) PM2.5 | (2) SO2 | |
CU | 0.044 ** (0.004 −0.514) | 0.071 ** (0.008–0.646) | 0.091 * (0.006–1.465) | 0.183 (0.021–1.618) | 0.310 (0.031–3.124) | 0.244 (0.027–2.203) |
Mhs | 0.316 ** (0.128–0.781) | 0.810 (0.321–2.043) | 0.582 (0.245–1.383) | 1.193 (0.480–2.964) | 1.392 (0.574- 3.381) | 1.236 (0.486–3.146) |
ln (PM2.5) | 1.373 *** (1.155–1.632) | 1.037 (0.885- 1.214) | ||||
ln (SO2) | 0.949 (0.889–1.014) | 0.936 (0.860–1.019) | ||||
ln (Soot) | 0.870 *** (0.800–0.946) | |||||
ln (Wastewater) | 0.981 (0.861–1.116) | |||||
Mhs × ln (PM2.5) | 0.016 *** (0.002–0.131) | 2.380 * (0.969–5.848) | ||||
Mhs × ln (SO2) | 0.663 (0.381–1.153) | 0.669 (0.395–1.131) | ||||
Mhs × ln (Soot) | 0.174 *** (0.074–0.409) | |||||
Mhs × ln (Wastewater) | 1.437 (0.583–3.542) | |||||
Variable | Commercial city | Mixed-economy city | ||||
(3) Soot | (4) Wastewater | (1) PM2.5 | (2) SO2 | (3) Soot | (4) Wastewater | |
CU | 0.610 (0.059–6.331) | 0.366 (0.042 −3.158) | 0.064 *** (0.028–0.147) | 0.057 *** (0.025–0.128) | 0.122 *** (0.049 −0.303) | 0.047 *** (0.021–0.106) |
Mhs | 1.388 (0.577–3.337) | 1.317 (0.516 −3.360) | 1.360 (0.891–2.075) | 1.824 *** (1.224–2.718) | 1.499 ** (1.007–2.232) | 1.598 ** (1.076–2.372) |
ln (PM2.5) | 0.975 (0.923–1.030) | |||||
ln (SO2) | 0.968 ** (0.944–0.993) | |||||
ln (Soot) | 1.050 (0.951–1.158) | 1.017 (0.989–1.046) | ||||
ln (Wastewater) | 0.937 (0.822–1.069) | 0.911 *** (0.877–0.947) | ||||
Mhs × ln (PM2.5) | 2.250 ** (1.193–4.242) | |||||
Mhs × ln (SO2) | 0.350 *** (0.254–0.482) | |||||
Mhs × ln (Soot) | 0.786 (0.453–1.366) | 0.176 *** (0.123–0.251) | ||||
Mhs × ln (Wastewater) | 1.535 (0.879–2.680) | 0.727 (0.482–1.097) |
Variable | Eastern | Central | ||||
---|---|---|---|---|---|---|
(1) PM2.5 | (2) SO2 | (3) Soot | (4) Wastewater | (1) PM2.5 | (2) SO2 | |
CU | 1.179 (0.163–8.546) | 1.730 (0.245–12.208) | 7.556 ** (1.036–55.126) | 4.187 (0.582–30.098) | 3.074 (0.513–18.430) | 2.174 (0.369–12.793) |
Mhs | 1.198 (0.543–2.640) | 1.083 (0.486–2.410) | 0.897 (0.400–2.012) | 0.661 (0.292–1.499) | 0.287 *** (0.168–0.490) | 0.565 ** (0.335–0.954) |
ln (PM2.5) | 1.162 *** (1.066–1.266) | 1.000 (0.876–1.142) | ||||
ln (SO2) | 0.980 (0.941–1.020) | 0.923 *** (0.885–0.961) | ||||
ln (Soot) | 1.157 *** (1.095–1.222) | |||||
ln (Wastewater) | 0.981 (0.861–1.116) | |||||
Mhs × ln (PM2.5) | 1.039 (0.423–2.552) | 6.367 ** (1.540–26.320) | ||||
Mhs × ln (SO2) | 0.582 *** (0.389–0.870) | 0.637 ** (0.426–0.952) | ||||
Mhs × ln (Soot) | 0.463 *** (0.300–0.717) | |||||
Mhs × ln (Wastewater) | 2.531 *** (1.567–4.090) | |||||
Variable | Central | Western | ||||
(3) Soot | (4) Wastewater | (1) PM2.5 | (2) SO2 | (3) Soot | (4) Wastewater | |
CU | 2.826 (0.460–17.372) | 2.070 (0.327–13.098) | 2.173 (0.356–13.248) | 1.401 (0.231–8.502) | 23.288 *** (3.360–161.400) | 0.712 (0.113–4.464) |
Mhs | 0.339 *** (0.204–0.564) | 0.445 *** (0.266–0.744) | 1.210 (0.626–2.341) | 1.134 (0.591–2.174) | 0.768 (0.394–1.498) | 0.909 (0.461–1.792) |
ln (PM2.5) | 0.923 ** (0.857–0.994) | |||||
ln (SO2) | 1.010 (0.972–1.051) | |||||
ln (Soot) | 0.983 (0.936–1.032) | 1.026 (0.986–1.067) | ||||
ln (Wastewater) | 1.030 (0.959–1.107) | 0.056 *** (0.022–0.143) | ||||
Mhs × ln (PM2.5) | 1.210 (0.626–2.341) | |||||
Mh s× ln (SO2) | 0.265 *** (0.173–0.407) | |||||
Mhs × ln (Soot) | 0.316 *** (0.195–0.512) | 0.197 *** (0.114–0.341) | ||||
Mhs × ln (Wastewater) | 0.951 (0.443–2.042) | 0.846 *** (0.791–0.906) |
Variable | Model 1 | Model 2 | Model 3 | Model 4 |
---|---|---|---|---|
CU | −4.166 *** (0.366) | −4.571 *** (0.363) | −4.161 *** (0.391) | −4.673 *** (0.364) |
Mhs | 0.757 *** (0.167) | 0.582 *** (0.161) | 0.566 *** (0.161) | 0.485 *** (0.162) |
ln (PM2.5) | −0.178 *** (0.026) | |||
ln (SO2) | −0.006 (0.013) | |||
ln (Soot) | −0.004 (0.013) | |||
ln (Wastewater) | −0.065 *** (0.018) | |||
Mhs × ln (PM2.5) | −0.325 (0.260) | |||
Mhs × ln (SO2) | −0.456 *** (0.126) | |||
Mhs × ln (Soot) | −0.766 *** (0.121) | |||
Mhs × ln (Wastewater) | 0.266 * (0.153) |
Variable | Model 1 | Model 2 | Model 3 | Model 4 |
---|---|---|---|---|
CU | −2.166 *** (0.390) | −2.660 *** (0.389) | −1.677 *** (0.427) | −2.573 *** (0.390) |
Mhs | 0.238 (0.173) | 0.466 *** (0.170) | 0.275 (0.169) | 0.163 (0.169) |
ln (PM2.5) | −0.010 (0.027) | |||
ln (SO2) | −0.044 *** (0.012) | |||
ln (Soot) | 0.010 (0.013) | |||
ln (Wastewater) | −0.101 *** (0.018) | |||
Mhs × ln (PM2.5) | 0.936 *** (0.252) | |||
Mhs × ln (SO2) | −1.047 *** (0.123) | |||
Mhs × ln (Soot) | −1.152 *** (0.122) | |||
Mhs × ln (Wastewater) | 0.126 (0.156) |
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Liu, X.; Fang, W.; Li, H.; Han, X.; Xiao, H. Is Urbanization Good for the Health of Middle-Aged and Elderly People in China?—Based on CHARLS Data. Sustainability 2021, 13, 4996. https://doi.org/10.3390/su13094996
Liu X, Fang W, Li H, Han X, Xiao H. Is Urbanization Good for the Health of Middle-Aged and Elderly People in China?—Based on CHARLS Data. Sustainability. 2021; 13(9):4996. https://doi.org/10.3390/su13094996
Chicago/Turabian StyleLiu, Xuena, Wei Fang, Haiming Li, Xiaodan Han, and Han Xiao. 2021. "Is Urbanization Good for the Health of Middle-Aged and Elderly People in China?—Based on CHARLS Data" Sustainability 13, no. 9: 4996. https://doi.org/10.3390/su13094996
APA StyleLiu, X., Fang, W., Li, H., Han, X., & Xiao, H. (2021). Is Urbanization Good for the Health of Middle-Aged and Elderly People in China?—Based on CHARLS Data. Sustainability, 13(9), 4996. https://doi.org/10.3390/su13094996