| Literature DB >> 32823743 |
Chao Song1,2,3, Yaode Wang1, Xiu Yang4, Yili Yang5, Zhangying Tang1, Xiuli Wang2,5, Jay Pan2,5.
Abstract
Comprehensive investigation on understanding geographical inequalities of healthcare resources and their influencing factors in China remains scarce. This study aimed to explore both spatial and temporal heterogeneous impacts of various socioeconomic and environmental factors on healthcare resource inequalities at a fine-scale administrative county level. We collected data on county-level hospital beds per ten thousand people to represent healthcare resources, as well as data on 32 candidate socioeconomic and environmental covariates in southwest China from 2002 to 2011. We innovatively employed a cutting-edge local spatiotemporal regression, namely, a Bayesian spatiotemporally varying coefficients (STVC) model, to simultaneously detect spatial and temporal autocorrelated nonstationarity in healthcare-covariate relationships via estimating posterior space-coefficients (SC) within each county, as well as time-coefficients (TC) over ten years. Our findings reported that in addition to socioeconomic factors, environmental factors also had significant impacts on healthcare resources inequalities at both global and local space-time scales. Globally, the personal economy was identified as the most significant explanatory factor. However, the temporal impacts of personal economy demonstrated a gradual decline, while the impacts of the regional economy and government investment showed a constant growth from 2002 to 2011. Spatially, geographical clustered regions for both hospital bed distributions and various hospital bed-covariates relationships were detected. Finally, the first spatiotemporal series of complete county-level hospital bed inequality maps in southwest China was produced. This work is expected to provide evidence-based implications for future policy making procedures to improve healthcare equalities from a spatiotemporal perspective. The employed Bayesian STVC model provides frontier insights into investigating spatiotemporal heterogeneous variables relationships embedded in broader areas such as public health, environment, and earth sciences.Entities:
Keywords: Bayesian STVC model; China; geographical inequality; health planning; healthcare resources; hospital beds; socioeconomic and environmental factors; spatiotemporal nonstationarity
Mesh:
Year: 2020 PMID: 32823743 PMCID: PMC7460194 DOI: 10.3390/ijerph17165890
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 3.390
Figure 1Geographical distribution of the original county-level hospital beds in the study area of southwest China in 2002.
Indicator system of socioeconomic and environmental variables potentially affecting county-level hospital bed resources in southwest China (SE1–SE20 denote socioeconomic variables, and EX1–EX12 denote environmental variables).
| Abbreviation | Variables | Units |
|---|---|---|
| SE1 | Population density | Person/km2 |
| SE2 | Employee population density | Person/km2 |
| SE3 | Local telephone users’ density | Person/km2 |
| SE4 | Local government budgetary expenditures per capita | Yuan |
| SE5 | Local general budget revenue per capita | Yuan |
| SE6 | Residents’ saving deposits per capita | Yuan |
| SE7 | Loan balance of financial institutions per capita | Yuan |
| SE8 | Above-scale total industrial density | Number/km2 |
| SE9 | Above-scale total industrial output value per capita | Yuan |
| SE10 | Total investment in fixed assets per capita | Yuan |
| SE11 | Junior high school student density | Person/km2 |
| SE12 | Primary school student density | Person/km2 |
| SE13 | Gross domestic product (GDP) | Million |
| SE14 | First industry output per capita | Yuan |
| SE15 | Second industry output per capita | Yuan |
| SE16 | Tertiary industry output per capita | Yuan |
| SE17 | GDP per capita | Yuan |
| SE18 | Urban worker population density | Person/km2 |
| SE19 | Average wage of employees in urban units | Yuan |
| SE20 | Total retail sales of consumer goods per capita | Yuan |
| EX1 | Normalized vegetation index (NDVI) | / |
| EX2 | Nighttime light index | / |
| EX3 | Precipitation | 0.1 mm |
| EX4 | Temperature | 0.1 centigrade |
| EX5 | Air pressure | 1 N/m2 |
| EX6 | Wind speed | m/s |
| EX7 | Vapor pressure | hPa |
| EX8 | Sunshine hours | hours |
| EX9 | River network density | km/km2 |
| EX10 | Elevation | Meter |
| EX11 | Slope | ° |
| EX12 | Road network density | km/km2 |
Descriptive statistics of the modeling data.
| Variables | Minimum | Maximum | Mean | Std. Deviation | Skewness | Kurtosis |
|---|---|---|---|---|---|---|
| Y | 1.20 | 135.60 | 22.87 | 15.09 | 2.08 | 6.00 |
| SE1 | 0.00001 | 0.2513 | 0.0228 | 0.0267 | 2.33 | 9.33 |
| SE2 | 0.0002 | 684.30 | 14.69 | 36.40 | 7.85 | 90.56 |
| SE3 | 0.0001 | 1527.90 | 33.40 | 82.65 | 9.88 | 141.10 |
| SE4 | 4.99 | 6,329,247 | 32,533 | 194,713 | 19.74 | 486.90 |
| SE5 | 5.67 | 10,310,602 | 89,787 | 302,255 | 18.75 | 464.19 |
| SE6 | 0.75 | 201,423 | 5514 | 8153 | 8.35 | 131.73 |
| SE7 | 4.00 | 122,519,466 | 502,703 | 4,014,174.76 | 20.24 | 501.36 |
| SE8 | 0.51 | 4558 | 42 | 166 | 16.96 | 363.20 |
| SE9 | 1.57 | 101,037,587 | 506,231 | 2,773,609 | 21.03 | 585.25 |
| SE10 | 0.77 | 256,720 | 5208 | 8618.07 | 8.33 | 172.10 |
| SE11 | 0.0002 | 140.52 | 12.77 | 15.47 | 2.36 | 9.04 |
| SE12 | 0.0002 | 179.10 | 19.27 | 20.76 | 2.24 | 9.23 |
| SE13 | 5.26 | 77,489,300 | 521,682 | 2,315,996 | 19.46 | 480.79 |
| SE14 | 4.53 | 442,463,903 | 362,658 | 7,002,860 | 55.50 | 3454.81 |
| SE15 | 3.13 | 4,366,522,055 | 2,906,142 | 74,407,402 | 49.34 | 2715.86 |
| SE16 | 2.75 | 2,940,718,935 | 3,408,027 | 60,985,621 | 41.88 | 1872.98 |
| SE17 | 4.72 | 617,811 | 9492 | 12,017 | 29.03 | 1426.97 |
| SE18 | 0.0001 | 653.65 | 15.64 | 34.12 | 7.95 | 98.80 |
| SE19 | 0.31 | 32,916 | 1027 | 1472 | 5.18 | 61.29 |
| SE20 | 122 | 728,600 | 4328 | 14,171 | 31.57 | 1502.91 |
| EX1 | 0.0844 | 0.87 | 0.68 | 0.16 | −1.93 | 2.85 |
| EX2 | 0.0001 | 38.03 | 1.67 | 3.11 | 4.72 | 31.53 |
| EX3 | 2093 | 21,169 | 10,234 | 2904 | 0.05 | 0.25 |
| EX4 | −46.83 | 224.05 | 130.81 | 61.98 | −1.11 | −0.10 |
| EX5 | 572.19 | 977.84 | 840.22 | 108.95 | −0.83 | −0.40 |
| EX6 | 0.76 | 2.72 | 1.53 | 0.31 | 0.86 | 1.03 |
| EX7 | 2.45 | 20.40 | 12.45 | 4.20 | −0.86 | −0.54 |
| EX8 | 71.77 | 296.55 | 147.03 | 51.68 | 0.57 | −0.64 |
| EX9 | 0.000006 | 0.000283 | 0.000068 | 0.000022 | 3.51 | 28.03 |
| EX10 | 294.57 | 5154.40 | 1997.05 | 1476.69 | 0.87 | −0.57 |
| EX11 | 0.22 | 16.51 | 6.07 | 3.44 | 0.51 | −0.26 |
| EX12 | 0.0000 | 0.000388 | 0.000064 | 0.000031 | 2.84 | 24.56 |
Notes: Y: the number of hospital beds per ten thousand people; SE1–SE20: socioeconomic variables; EX1–EX12: environmental variables; Std. Deviation: standard deviation; Skewness: a measure of the direction and degree of skew in the distribution of statistical data. A normal distribution has a skewness value of zero; Kurtosis: a statistic that describes the steepness of the data distribution pattern. A normal distribution has a kurtosis value of zero.
Multicollinearity evaluation for the socioeconomic (SE1–SE20) and environmental (EX1–EX12) variables.
| Socioeconomic | VIF | Selection | Environment | VIF | Selection |
|---|---|---|---|---|---|
| SE1 | 6.67 | N | EX1 | 1.68 | Y |
| SE2 | 6.19 | N | EX2 | 1.30 | Y |
| SE3 | 7.68 | N | EX3 | 3.00 | Y |
| SE4 | 39.34 | N | EX4 | 39.06 | N |
| SE5 | 24.53 | N | EX5 | 56.51 | N |
| SE6 | 2.50 | Y | EX6 | 2.95 | Y |
| SE7 | 8.97 | N | EX7 | 47.18 | N |
| SE8 | 20.72 | N | EX8 | 7.69 | N |
| SE9 | 39.99 | N | EX9 | 1.24 | Y |
| SE10 | 1.55 | Y | EX10 | 78.75 | N |
| SE11 | 17.04 | N | EX11 | 2.50 | Y |
| SE12 | 11.16 | N | EX12 | 1.20 | Y |
| SE13 | 50.85 | N | |||
| SE14 | 18.11 | N | |||
| SE15 | 61.97 | N | |||
| SE16 | 25.15 | N | |||
| SE17 | 1.37 | Y | |||
| SE18 | 4.63 | Y | |||
| SE19 | 1.36 | Y | |||
| SE20 | 1.17 | Y |
Notes: VIF: variance inflation factor; variables screening threshold: VIF < 5; Y denotes yes, and N denotes no.
Figure 2Variables’ relative importance evaluated by random forest-based indicators: (a) mean decrease impurity (MDI) and (b) mean decrease accuracy (MDA).
Evaluations for the five alternative regressions considering model fitness, complexity, predictive power, and explained variation.
| Index | DIC | WAIC |
|
| LS |
|
|---|---|---|---|---|---|---|
| Model 1 | 6028.53 | 6119.66 | 12.16 | 84.16 | 0.68 | 0.75 |
| Model 2 | 1928.71 | 1998.96 | 475.17 | 486.15 | 0.20 | 0.89 |
| Model 3 | 7917.86 | 7934.69 | 44.59 | 56.22 | 0.88 | 0.51 |
| Model 4 | 2036.76 | 2010.19 | 1144.72 | 931.87 | 0.22 | 0.86 |
| Model 5 | 1778.38 | 1749.55 | 1165.08 | 944.15 | 0.19 | 0.92 |
Models 1–5: Bayesian-based regression models of ordinary multivariate, spatiotemporal multivariate, TVC, SVC, and STVC; DIC: deviance information criterion; WAIC: Watanabe–Akaike information criterion; P: effective number of parameters from DIC; P: effective number of parameters from WAIC; LS: logarithmic score; R2: coefficient of determination.
Global-scale regression statistics of socioeconomic and environmental covariates affecting healthcare resources of hospital beds over southwest China.
| Covariate | Name | Coefficient | SD | 2.5% CI | 97.5% CI |
|---|---|---|---|---|---|
| X1 | Residents’ saving deposits per capita | 0.2159 | 0.0115 | 0.1932 | 0.2385 |
| X2 | Total investment in fixed assets per capita | 0.0387 | 0.0088 | 0.0213 | 0.056 |
| X3 | GDP per capita | 0.0499 | 0.0081 | 0.0338 | 0.0659 |
| X4 | Urban worker population density | 0.0187 | 0.0099 | −0.0009 | 0.0382 |
| X5 | Total retail sales of consumer goods per capita | 0.0179 | 0.0113 | −0.0043 | 0.0401 |
| X6 | Nighttime light index | 0.0686 | 0.0132 | 0.0425 | 0.0946 |
| X7 | Wind speed | 0.0778 | 0.0074 | 0.0632 | 0.0923 |
| X8 | River network density | 0.0337 | 0.0088 | 0.0163 | 0.0509 |
| X9 | Slope | 0.0954 | 0.0082 | 0.0793 | 0.1115 |
| X10 | Road network density | 0.0235 | 0.0084 | 0.0069 | 0.0401 |
Figure 3(a) Time-intercepts (TI) plot on behalf of the crude temporal variation of hospital beds in southwest China during 2002–2011, and (b) time-coefficients (TC) plots representing the temporal heterogeneous hospital bed-covariates relationships: X1, residents’ saving deposits per capita; X2, total investment in fixed assets per capita; X3, GDP per capita; X4, urban worker population density; X5, total retail sales of consumer goods per capita; and X6, nighttime light index.
Figure 4(a) Space-intercepts (SI) map representing the crude geographical distribution of the county-level hospital beds across southwest China, and (b) SI’s clustered hot spot map.
Figure 5(a) Space-coefficient (SC) maps for detecting the spatially heterogeneous hospital bed-covariates relationships of both socioeconomic and environmental factors at the county level across southwest China, and (b) SC’s clustered hot spot maps: X1 residents’ saving deposits per capita; X2, total investment in fixed assets per capita; X3, GDP per capita; X4, urban worker population density; X5, total retail sales of consumer goods per capita; X6, nighttime light index; X7, wind speed; X8, river network density; X9, slope; X10, road network density.
Figure 6Estimated spatiotemporal equalities maps of the county-level healthcare resources of hospital beds across southwest China from 2002 to 2011.