| Literature DB >> 31374880 |
Xiaocang Xu1, Zhiming Xu2, Linhong Chen3,4, Chang Li5.
Abstract
Industrial development has brought about not only rapid economic growth, but also serious environmental pollution in China, which has led to serious health problems and heavy economic burdens on healthcare. Therefore, the relationship between the industrial air pollution and health care expenditure (HCE) has attracted the attention of researchers, most of which used the traditional empirical methods, such as ordinary least squares (OLS), logistic and so on. By collecting the panel data of 30 provinces of China during 2005-2016, this paper attempts to use the Bayesian quantile regression (BQR) to reveal the impact of industrial air pollution represented by industrial waste gas emission (IWGE) on HCE in high-, middle-, low-income regions. It was found that double heterogeneity in the influence of IWGE on HCE was obvious, which revealed that people in high-, middle-, low-income regions have significantly different understandings of environmental pollution and health problems. In addition, the BQR method provided more information than the traditional empirical methods, which verified that the BQR method, as a new empirical method for previous studies, was applicable in this topic and expanded the discussion space of this research field.Entities:
Keywords: Bayesian quantile regression (BQR); double heterogeneity; health care expenditure (HCE); industrial waste gas emission (IWGE); regional difference
Mesh:
Substances:
Year: 2019 PMID: 31374880 PMCID: PMC6695856 DOI: 10.3390/ijerph16152748
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 3.390
The definition of the variables.
| Variable Types | Variable Name | Variable Definition |
|---|---|---|
| Dependent variable | ln | Per capita health expenditure in each region (yuan) in the form of natural logarithm |
| Environment pollution variables | ln | Per capita IWGE in each region (ton/10 thousand people) in the form of logarithm |
| Economic variables | ln | Per capita income in each region (yuan) in the form of natural logarithm |
| Public service variables | ln | Per capita government financial expenditure in each region (yuan) in the form of natural logarithm |
| ln | Number of health technicians per thousand population in each region in the form of natural logarithm | |
| Social variable | ln | Density of commercial life insurance in each region in the form of natural logarithm |
| Family and personal variables | ln | Old dependency ratio in each region in the form of natural logarithm |
| ln | The number of chronic disease each region (1000 people) in the form of natural logarithm |
Summary statistics (after log processing).
| Variables | Mean | SD | Skew | Kurtosis | Mean | SD | Skew | Kurtosis | Mean | SD | Skew | Kurtosis |
|---|---|---|---|---|---|---|---|---|---|---|---|---|
| High-Income Region | Middle-Income Region | Low-Income Region | ||||||||||
| HCE | 6.68 | 0.48 | −0.15 | −0.64 | 6.32 | 0.54 | −0.09 | −0.82 | 6.15 | 0.54 | 0.01 | −0.62 |
| INCOME | 9.73 | 0.51 | −0.21 | −0.59 | 9.22 | 0.45 | −0.11 | −1.19 | 9.03 | 0.48 | −0.04 | −1.23 |
| IWGE | 1.32 | 0.52 | 0.21 | −0.12 | 1.03 | 0.63 | 0.2 | −0.6 | 1.32 | 0.7 | 0.23 | −0.55 |
| DCLI | 6.76 | 0.82 | 0.2 | −0.49 | 6.03 | 0.58 | −0.34 | −0.73 | 5.74 | 0.71 | −0.31 | −0.71 |
| GFE | −0.45 | 0.74 | −0.23 | −0.88 | −0.9 | 0.71 | −0.31 | −1.04 | −0.7 | 0.77 | −0.13 | −0.85 |
| ODR | 2.57 | 0.2 | −0.01 | −0.84 | 2.53 | 0.14 | −0.13 | −0.6 | 2.43 | 0.2 | 0.42 | −0.33 |
| CD | 6.82 | 0.69 | 0.08 | −1.26 | 6.98 | 0.64 | −1.43 | 1.5 | 6.47 | 0.82 | −0.86 | −0.42 |
| HT | 1.7 | 0.4 | 0.32 | −0.19 | 1.42 | 0.24 | −0.3 | −0.94 | 1.41 | 0.3 | −0.39 | −0.68 |
Note: The sample size for the whole country is equal to the sum of the three different regions. HCE, INCOME, IWGE, DCLI, GFE, ODR, CD and HT stand for health care expenditure, income, industrial waste gas emission, the density of commercial life insurance, government financial expenditure, the old dependency ratio, chronic diseases, and health technicians respectively.
The results of the panel unit root test—Augmented by the Dickey-Fuller test (ADF).
| Variable | Dickey-Fuller | Variable | Dickey-Fuller | Variable | Dickey-Fuller |
|---|---|---|---|---|---|
| HCE | −8.638 *** | GFE | −9.062 *** | CD | −3.186 * |
| INCOME | −8.827 *** | ODR | −4.293 *** | HT | −6.409 *** |
| IWGE | −5.952 *** | DCLI | −7.161 *** | —— | —— |
| Hausman test | Chisq:63.365( | F test | F:35.676( | ||
| Pooltest | F:2.644( | Pooltest | F:0.7186( | ||
Note: “*” indicates p-value < 0.10, “**” indicates p < 0.05, “***” indicates p < 0.01.
Figure 1The Markov Chain Monte Carlo (MCMC) chains for the intercept (the upper left), health care expenditure (HCE) (the upper right) and industrial waste gas emission (IWGE) (the lower left), INCOME (the lower right) for the Bayesian quantile regression (BQR). Only the whole country sample as an example were listed here due to space constraints.
The Bayes estimate of different quantiles between different income regions. (τ = quantile).
| Region | Variables/Quantile | τ = 0.1 | τ = 0.3 | τ = 0.5 | τ = 0.7 | τ = 0.9 |
|---|---|---|---|---|---|---|
| Whole country | INCOME | 0.3874 ** | 0.3291 ** | 0.3377 ** | 0.3362 ** | 0.3679 ** |
| IWGE | 0.1041 ** | 0.1067 ** | 0.1023 ** | 0.0638 ** | 0.0229 ** | |
| DCLI | 0.0584 ** | 0.1219 ** | 0.1897 ** | 0.2011 ** | 0.2461 ** | |
| GFE | 0.2341 ** | 0.2791 ** | 0.2571 ** | 0.2795 ** | 0.2671 ** | |
| ODR | 0.0140 ** | 0.0473 ** | 0.0562 ** | 0.0434 ** | 0.0287 ** | |
| CD | 0.1308 ** | 0.0778 ** | 0.0297 ** | 0.0128 ** | −0.0294 ** | |
| HT | 0.2125 ** | 0.219 ** | 0.1902 ** | 0.184 ** | 0.157 ** | |
| High-income region | INCOME | 0.3723 ** | 0.4865 ** | 0.4259 ** | 0.4720 ** | 0.4544 ** |
| IWGE | 0.0099 ** | 0.0121 ** | 0.0028 ** | 0.0264 ** | 0.0296 ** | |
| DCLI | −0.1042 ** | −0.1771 ** | −0.1101 ** | −0.0137 ** | 0.0693 ** | |
| GFE | 0.4689 ** | 0.4285 ** | 0.4603 ** | 0.3504 | 0.3152 ** | |
| ODR | 0.0374 ** | 0.05 ** | 0.0521 ** | 0.0525 ** | 0.0348 ** | |
| CD | 0.0561 ** | −0.0101 ** | −0.0446 ** | −0.0879 ** | −0.1078 ** | |
| HT | 0.1811 ** | 0.2142 ** | 0.1997 ** | 0.1592 ** | 0.1305 ** | |
| Middle-income region | INCOME | 0.2403 ** | 0.1661 ** | 0.0657 ** | 0.0879 ** | 0.3003 ** |
| IWGE | 0.0534 ** | 0.0492 ** | 0.0138 ** | 0.0126 ** | 0.0323 ** | |
| DCLI | 0.2657 ** | 0.2972 ** | 0.3165 ** | 0.3052 ** | 0.2063 ** | |
| GFE | 0.1901 ** | 0.2123 ** | 0.3208 ** | 0.3411 ** | 0.2169 ** | |
| ODR | 0.032 ** | 0.0177 ** | 0.0161 ** | 0.0155 ** | 0.0178 ** | |
| CD | 0.137 ** | 0.1225 ** | 0.1259 ** | 0.0946 ** | 0.0258 ** | |
| HT | 0.2448 ** | 0.2972 ** | 0.3088 ** | 0.2759 ** | 0.2634 ** | |
| Low-income region | INCOME | 0.5481 ** | 0.5904 ** | 0.5759 ** | 0.5691 ** | 0.5023 ** |
| IWGE | −0.0147 ** | −0.0822 ** | −0.0981 ** | −0.1107 ** | −0.0411 ** | |
| DCLI | 0.2117 ** | 0.24231 ** | 0.2102 ** | 0.2067 ** | 0.152 ** | |
| GFE | 0.1353 ** | 0.1005 ** | 0.1254 ** | 0.1382 ** | 0.1557 ** | |
| ODR | −0.0028 ** | 0.0091 ** | 0.0095 ** | 0.0177 ** | 0.0445 ** | |
| CD | −0.0953 ** | -0.164 ** | −0.1504 ** | −0.1511 ** | −0.1144 ** | |
| HT | 0.1268 ** | 0.1303 ** | 0.1656 ** | 0.1717 ** | 0.2123 ** |
Note: All of the outcomes are 95% credible interval (the 95% confidence interval in the quantile regression had the same meaning as p < 0.05 in the conditional mean regression such as OLS, so ** were added in this table.). The number of burn in draws: 1000, Number of retained draws: 4000. INCOME, IWGE, DCLI, GFE, ODR, CD and HT stand for income, industrial waste gas emission, the density of commercial life insurance, government financial expenditure, the old dependency ratio, chronic diseases, and health technicians respectively.
A comparison of the estimation results of various empirical methods (Variable = IWGE, tau = 0.5/mean).
| Region | Model | Estimate | Model | Estimate |
|---|---|---|---|---|
| Whole country | OLS | 0.0854 *** | QR | 0.1043 ** |
| BLR | 0.0855 *** | BQR | 0.1023 ** | |
| High-income region | OLS | −0.0610 * | QR | −0.0427 ** |
| BLR | −0.0607 *** | BQR | 0.0028 ** | |
| Middle-income region | OLS | −0.0191 * | QR | −0.0282 ** |
| BLR | −0.0190 *** | BQR | 0.0138 ** | |
| Low-income region | OLS | −0.2671 *** | QR | −0.3041 ** |
| BLR | −0.266 *** | BQR | −0.0981 ** |
Note. “***” indicates statistical significance level at 1%. “**” indicates statistical significance level at 5%. “*” indicates statistical significance level at 10%. Both the outcomes of QR and BQR were 95% credible interval (**), In BQR, Number of burn in draws: 1000, Number of retained draws: 4000. OLS: Ordinary least squares; QR: Quantile regression; BLR: Bayesian linear regression; BQR: Bayesian quantile regression.
Figure 2The quantile plots for the Bayes quantile regression and the dotted lines represent the ordinary least squares (OLS) estimate (Variable = IWGE).