Use of an E2SFCA Method to Measure and Analyse Spatial Accessibility to Medical Services for Elderly People in Wuhan, China
Abstract
:1. Introduction
- The E2SFCA (i.e., the road network-based Gaussian 2SFCA) method is first proposed for measuring the AMSE. Based on the road network dataset, the travel time from urban–rural resident autonomous units (URAUs) to general hospitals for the elderly to access medical services was calculated using the O-D time cost matrix. Meanwhile, a Gaussian function was applied to improve the conventional 2SFCA for measuring the AMSE.
- Ageing population-focused medical services accessibility measurement was first applied to Wuhan, China. Perhaps it can also be applied in other cities or even other countries in future studies.
- Global and local analyses were conducted to comprehensively illustrate the spatial differences in AMSE scores. In terms of global analysis, sensitivity analysis uncovered differences in AMSE for two different threshold times. Hot spot analysis was used to assess whether and where high or low AMSE scores clustered spatially and to find hot spots, and in local analysis, the spatial differences in AMSE scores of three regional areas (i.e., central urban districts, development zones and new urban districts) were internally compared.
2. Study Area and Data
2.1. Study Area
2.2. Study Data and Preprocessing
- Ageing population data. A GIS format vector polygon layer extracted from the NGCM includes 3493 URAUs, and each URAU has age-specific demographic data. As shown in Figure 2, a population map of Wuhan was drawn covering all URAUs.
- Road network data included urban rail transit, freeways, major roads, minor roads and country roads. As shown in Figure 2a, a vector road network data of Wuhan was built up after topology checking. The average speed set for different road types refers to the Code for Design of Urban Road Eengineering (CJJ37-2012), which is one of the national standards of China. Table 1 shows the speed stability and characteristics of different kinds of roads in Wuhan, China.
- General hospital data included vector GIS format and volume data. The vector data are the hospitals registered in the health department of Wuhan, and the point vector data were obtained by vectorization according to the registered name and address. Data preprocessing of the general hospital primarily consisted of two aspects: selecting medical facilities and measuring the medical services supply volume. For the elderly, with increasing age, numerous underlying physiological changes occur, and the risk of disease rises [41]. Considering that common sudden diseases (e.g., ischaemic heart disease, stroke, hypertensive heart disease, etc.) and severe injuries of the elderly population are comprehensive and emergent, clinics and specialized hospitals, such as rehabilitation hospitals, children’s hospitals, stomatological hospitals, and cosmetic surgery hospitals, cannot satisfy the elderly medical service demand entirely. Hence, general hospitals, which are set up to address many types of disease and injuries and normally have an emergency department were selected in our study after eliminating clinics and specialized hospitals. General hospitals in China can be roughly divided into three types: primary hospitals, secondary hospitals and tertiary hospitals [42]. In 2016, there were 365 hospitals in Wuhan city, and as is shown in Figure 2b, 288 general hospitals have been selected based on the above filters, including 213 primary hospitals, 40 secondary hospitals and 35 tertiary hospitals.
3. Methodology
3.1. Enhanced Two-Step Floating Catchment Area (E2SFCA) Algorithm
3.2. Two-Threshold Travel Time
3.3. Hot Spot Analysis (Getis-Ord Gi*)
4. Experimental Results
4.1. Global Analysis of Accessibility of Medical Services for the Elderly (AMSE) Scores
4.1.1. Sensitivity Analysis
4.1.2. High/Low Value Spatial Cluster Analysis
4.2. Local Analysis of AMSE Scores
4.2.1. Central Urban Districts
4.2.2. Development Zones
4.2.3. New Urban Districts
5. Discussion
5.1. The Innovation of Measuring the AMSE Method
5.2. The Division of Travel Time Zones
5.3. Traffic Conditions Affect Car Travel Time
6. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Road Types | Average Speed (km/h) | Speed Stability | Descriptions | Characteristics | |
---|---|---|---|---|---|
Urban roads | Urban rail transit (URT) | 40 | Stable | Metro; light rail transit (LRT) | No traffic jams and traffic lights |
Freeway | 60 | Urban high-speed road; ring road | Seldom have traffic jams; no traffic lights | ||
Major roads | 55 | Unstable | Arterial road; secondary road | Sometimes have traffic jams; many traffic lights | |
Minor roads | 40 | Tertiary road; fourth-class road; branch road | Sometimes have traffic jams; fewer traffic lights | ||
Rural roads | 30 | Stable | Rural hardened road | Seldom have traffic jams; no traffic lights |
General Hospitals | Scales | Levels | Medical Services | |
---|---|---|---|---|
Hospital Beds | Professional Physicians (Per Bed) | |||
Primary hospital | 20–99 | 0.70 | Community-level | Providing prevention, treatment, healthcare and rehabilitation services. |
Secondary hospital | 100–499 | 0.88 | County-level | Providing comprehensive medical and health services. |
Tertiary hospital | ≥500 | 1.03 | Region-level or nationwide | Providing high-level specialized medical and health services. |
Time Threshold t0 | Level | AMSE Scores | Number of URAUs | Proportion of URAUs | Elderly Population (Ten Thousands) | Proportion of Elderly Population |
---|---|---|---|---|---|---|
10 min | The lowest | 0.00–0.01 | 1639 | 46.92% | 46.89 | 27.14% |
Lower | 0.02–0.04 | 376 | 10.76% | 17.21 | 9.96% | |
Medium | 0.05–0.07 | 523 | 14.97% | 24.63 | 14.26% | |
Higher | 0.08–0.11 | 483 | 13.83% | 39.82 | 23.05% | |
The highest | 0.12–0.18 | 472 | 13.51% | 44.19 | 25.58% | |
60 min | The lowest | 0.00–0.04 | 412 | 11.80% | 9.07 | 5.16% |
Lower | 0.05–0.08 | 891 | 25.51% | 21.51 | 12.23% | |
Medium | 0.09–0.11 | 624 | 18.44% | 16.96 | 9.64% | |
Higher | 0.12–0.18 | 557 | 15.37% | 29.87 | 16.99% | |
The highest | 0.19–0.30 | 1009 | 28.89% | 98.44 | 55.98% |
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Luo, J.; Chen, G.; Li, C.; Xia, B.; Sun, X.; Chen, S. Use of an E2SFCA Method to Measure and Analyse Spatial Accessibility to Medical Services for Elderly People in Wuhan, China. Int. J. Environ. Res. Public Health 2018, 15, 1503. https://doi.org/10.3390/ijerph15071503
Luo J, Chen G, Li C, Xia B, Sun X, Chen S. Use of an E2SFCA Method to Measure and Analyse Spatial Accessibility to Medical Services for Elderly People in Wuhan, China. International Journal of Environmental Research and Public Health. 2018; 15(7):1503. https://doi.org/10.3390/ijerph15071503
Chicago/Turabian StyleLuo, Jing, Guangping Chen, Chang Li, Bingyan Xia, Xuan Sun, and Siyun Chen. 2018. "Use of an E2SFCA Method to Measure and Analyse Spatial Accessibility to Medical Services for Elderly People in Wuhan, China" International Journal of Environmental Research and Public Health 15, no. 7: 1503. https://doi.org/10.3390/ijerph15071503