Spatial Allocation Rationality Analysis of Medical Resources Based on Multi-Source Data: Case Study of Taiyuan, China
Abstract
:1. Introduction
2. Materials
2.1. Study Area
2.2. Data Sources and Data Pre-Processing
2.2.1. Medical Data
2.2.2. Population Data
2.2.3. Road Network Data
2.2.4. Dianping Data
2.2.5. Public Transportation Data
3. Methods
3.1. Technology Frame
3.2. Construction of Index System
3.3. Index Calculation
3.3.1. Medical Service Coverage Rate Index from Different Medical Orientations
3.3.2. Comprehensive Accessibility Index for Multiple Transportation Modes
- Improvement of the distance decay function.
- 2.
- Improvement of transportation modes.
- 3.
- Improvement of catchment size.
3.3.3. Equity Index of Medical Facilities
3.3.4. Supply and Demand Ratio Index of Medical Resources from the Perspective of Sudden Public Health Events
3.4. Index Weighting Methodology
- Normalization of the Indicators: The purpose of normalization is to remove the dimensions:
- 2.
- Calculation of the Proportion of Each Indicator for All Samples:
- 3.
- Calculation of the Information Entropy for Each Indicator:
- 4.
- Calculation of the Weights for Each Indicator:
4. Results
4.1. Analysis of Index Terms of the Evaluation Model of Rationality of Medical Resources Spatial Allocation
4.1.1. Analysis of Medical Service Coverage Rate Index from Different Medical Orientations
4.1.2. Analysis of Comprehensive Accessibility Index for Multiple Transportation Modes
4.1.3. Analysis of Equity Index of Medical Facilities
4.1.4. Analysis of Supply and Demand Ratio Index of Medical Resources from the Perspective of Sudden Public Health Events
4.2. Evaluation and Analysis of Rationality of Medical Resource Spatial Allocation
5. Discussion
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Road Class | Expressway | Trunk Road | Secondary Road | Spur Road |
---|---|---|---|---|
Speed of design (km/h) | 80 | 50 | 40 | 20 |
Objective Layer | Criterion Layer | Overall Indicator Layer | Description |
---|---|---|---|
Evaluation Model Index System for the Rationality of Medical Resources Spatial Allocation | Spatial Layout | 1. Medical Service Coverage Rate Index from Different Medical Orientations ) | Calculate the service coverage rates of various levels of medical institutions based on the behavior patterns of residents choosing corresponding medical institutions under different disease conditions |
2. Comprehensive Accessibility Index for Multiple Transportation Modes ) | Quantify the convenience of residents obtaining medical services through different modes of transportation, including driving, walking, bus, and cycling | ||
3. Equity Index of Medical Facilities ) | Describe whether the distribution of medical resources and services is equitable among different population groups and geographic regions | ||
Supply and Demand of Medical Resources | 4. Supply and Demand Ratio Index of Medical Resources From the Perspective of Sudden Public Health Events ) | Assess whether medical resources can meet medical demands during sudden medical events |
Time (min) | 0–15 | 15–30 | 30–45 | 45–60 | >60 | ||
---|---|---|---|---|---|---|---|
Walking | Major illness medical orientations ) | Percentage of residential points | 6.61% | 20.11% | 15.43% | 13.77% | 44.08% |
Percentage of area | 4.33% | 21.32% | 16.15% | 14.20% | 44.00% | ||
Routine medical orientations ) | Percentage of residential points | 39.67% | 29.75% | 16.53% | 7.16% | 6.89% | |
Percentage of area | 37.64% | 36.08% | 15.21% | 6.78% | 4.29% |
Overall Indicators | Secondary Indicators | Information Entropy (d) | Weights ) |
---|---|---|---|
Medical Service Coverage Rate Index from Different Medical Orientations ) | 0.880714 | 18.54% | |
Comprehensive Accessibility Index for Multiple Transportation Modes ) | 0.977458 | 3.50% | |
Equity Index of Medical Facilities | Geographic factors ) | 0.810196 | 29.50% |
Population factors ) | 0.993955 | 0.94% | |
Supply and Demand Ratio Index of Medical Resources From the Perspective of Sudden Public Health Events ) | 0.694190 | 47.52% |
Rationality Rating | Score | Percentage of Regional Area |
---|---|---|
Less rational | 0–0.06 | 38.73% |
Slightly rational | 0.07–0.14 | 22.40% |
Moderately rational | 0.15–0.24 | 18.95% |
Rational | 0.25–0.36 | 14.24% |
Very rational | 0.37–0.71 | 5.68% |
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Hu, L.; Cai, S. Spatial Allocation Rationality Analysis of Medical Resources Based on Multi-Source Data: Case Study of Taiyuan, China. Healthcare 2024, 12, 1669. https://doi.org/10.3390/healthcare12161669
Hu L, Cai S. Spatial Allocation Rationality Analysis of Medical Resources Based on Multi-Source Data: Case Study of Taiyuan, China. Healthcare. 2024; 12(16):1669. https://doi.org/10.3390/healthcare12161669
Chicago/Turabian StyleHu, Lujin, and Shengqi Cai. 2024. "Spatial Allocation Rationality Analysis of Medical Resources Based on Multi-Source Data: Case Study of Taiyuan, China" Healthcare 12, no. 16: 1669. https://doi.org/10.3390/healthcare12161669