Spatial Disparities and Correlated Variables of Community Care Facility Accessibility in Rural Areas of China
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Area and Data Preparation
2.1.1. Study Area
2.1.2. Data Preparation
- Villages. This paper uses villages as the smallest spatial scale to explore the spatial accessibility of CCFs in rural areas of Hubei Province. A village is usually formed naturally by one or more families living together, and it is the smallest relatively independent settlement unit in rural areas. These villages are numerous, widely distributed, and vary in size from isolated villages with only a few households (e.g., in mountainous areas) to large villages with hundreds of people (e.g., in densely populated plain areas). In this study, the spatial locations of villages were obtained via the points of information (POIs) of Baidu Map [22]. These POIs provided by Baidu Maps are point-based spatial location data, which can be any meaningful point in map representation, such as a building, store, or attraction. We searched villages by administrative area on Baidu Map with the help of crawler tools and obtained geospatial location information of a total of 223,877 villages in the study area, including their names, latitude and longitude, and types (Figure 1b).
- CCFs. The CCF data (including attributes such as name, address, and person in charge, but excluding data on quality of health care) were collected from the Hubei Pension Service Information Network [23], which is maintained by Hubei Elderly Care Institutions Association, mainly providing information on elderly care service policy, elderly care service reform, and elderly care institutions. This data acquisition process is not restricted; we first collected and organized the names of a total of 7985 CCFs in the study area with the help of web crawler tools and extracted their locations by Baidu Map coordinates (Figure 1b). In order to ensure the achievement of research purposes and verify the reliability of data sources, we conducted field survey and telephone interview on CCFs in Hubei Province. A total of 17 Civil Affairs Department staff and 216 elderly residents from 9 cities participated in the survey. The survey shows that the elderly are willing to choose the nearest CCFs and receive corresponding services, and the CCFs data provided by the website are consistent with the reality and have high reliability.
- Road Network. The road network data were used to calculate the distance cost between villages and CCFs. Data were collected using the Geofabrik tool [24], which provides a continuously updated geographical extract of the OpenStreetMap database [25]. This also includes road network vector data, which we extracted and classified into the following categories: highways, national roads, provincial roads, county roads, and township roads (see Figure 1c).
- Aged Population. The aged population (aged 65 and above in this study) is directly related to the potential demands for CCFs, which is very important to accurately assess variables correlating with the spatial accessibility of CCFs in rural areas. We extracted the gridded population data for the study area at a 100 m spatial resolution from the WorldPop database [26]. The datasets were built using a random-forest-based semi-automated dasymetric mapping method [27]. The regional population in the census was redistributed into fine spatial units by borrowing geographic attributes (e.g., topography, climate, land cover, and land use) and the density of human-built features (e.g., roads, buildings, and nighttime lights). The data downloaded from the WorldPop database are as of November 2020. The spatial distribution of elderly population in the study area is shown in Figure 1d.
- Other Data. The township boundary data (scale 1:250), digital elevation model (DEM), slope data, and terrain relief were obtained from the Resource and Environment Science and Data Center of Chinese Academy of Sciences [28]. Terrain relief was defined as the difference between the highest elevation and the lowest elevation within each township [29].
2.2. Methods
2.2.1. Accessibility Calculation
2.2.2. Spatial Autocorrelation
- 1.
- Global spatial autocorrelation
- 2.
- Local spatial autocorrelation
2.2.3. Geographically Weighted Regression
3. Results
3.1. Spatial Accessibility Analysis
3.2. Spatial Clustering Analysis
3.2.1. Global Spatial Autocorrelation Analysis
3.2.2. Local Spatial Autocorrelation Analysis
3.3. Analysis of Correlated Variables
3.3.1. Regression Comparison of OLS and GWR
3.3.2. Analysis of Correlated Variables Based on GWR
4. Discussion
4.1. From the Perspective of Spatial Disparities
4.2. From the Perspective of Spatial Clustering Analysis
4.3. From the Perspective of Correlated Variable Analysis
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Level | Accessibility | Distance Cost | Number | Proportion |
---|---|---|---|---|
Village | Very high | 0~3143 | 122,916 | 54.9% |
High | 3144~7121 | 71,866 | 32.1% | |
Medium | 7122~14,988 | 24,078 | 10.8% | |
Low | 14,989~36,653 | 4732 | 2.1% | |
Very low | 36,654~74,407 | 285 | 0.1% | |
Township | Very high | 956~2995 | 427 | 44.4% |
High | 2996~5114 | 356 | 37.0% | |
Medium | 5115~9043 | 133 | 13.8% | |
Low | 9044~16,862 | 33 | 3.4% | |
Very low | 16,863~50,766 | 13 | 1.4% |
Variable | OLS | GWR | ||
---|---|---|---|---|
Coefficient | p Value | VIF | Average Coefficient | |
Area | 10.5520 | 0.0000 * | 2.7800 | 10.7439 |
Elevation | 2.6681 | 0.0000 * | 1.8939 | 1.6711 |
Population aged 65 and above | −0.0515 | 0.0001 * | 1.0888 | −0.0397 |
Number of villages | −6.0377 | 0.0000 * | 1.8939 | −7.1065 |
R2 | 0.2757 | — | — | 0.6282 |
R2 Adjusted | 0.2727 | — | — | 0.5530 |
AICc | 18,154.15 | — | — | 17,773.38 |
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Yu, Y.; Wu, Y.; Xu, X.; Chen, Y.; Tian, X.; Wang, L.; Chen, S. Spatial Disparities and Correlated Variables of Community Care Facility Accessibility in Rural Areas of China. Sustainability 2021, 13, 13400. https://doi.org/10.3390/su132313400
Yu Y, Wu Y, Xu X, Chen Y, Tian X, Wang L, Chen S. Spatial Disparities and Correlated Variables of Community Care Facility Accessibility in Rural Areas of China. Sustainability. 2021; 13(23):13400. https://doi.org/10.3390/su132313400
Chicago/Turabian StyleYu, Yang, Yijin Wu, Xin Xu, Yun Chen, Xiaobo Tian, Li Wang, and Siyun Chen. 2021. "Spatial Disparities and Correlated Variables of Community Care Facility Accessibility in Rural Areas of China" Sustainability 13, no. 23: 13400. https://doi.org/10.3390/su132313400
APA StyleYu, Y., Wu, Y., Xu, X., Chen, Y., Tian, X., Wang, L., & Chen, S. (2021). Spatial Disparities and Correlated Variables of Community Care Facility Accessibility in Rural Areas of China. Sustainability, 13(23), 13400. https://doi.org/10.3390/su132313400