TY - JOUR
T1 - Analysis of Regional Differences, Dynamic Evolution, and Influencing Factors of Medical Service Levels in Guangzhou Under the Health China Strategy
AU - Gong, Hanxiang
AU - Zhang, Tao
AU - Wang, Xi
AU - Chen, Baoxin
AU - Wu, Baoling
AU - Zhao, Shufang
N1 - Publisher Copyright:
© 2024 Gong et al.
PY - 2024
Y1 - 2024
N2 - Purpose: This study explores regional differences, dynamic evolution, and influencing factors of medical service levels in Guangzhou under the Health China Strategy to provide a basis for improving service quality and reducing disparities. Patients and Methods: An evaluation system was constructed using the entropy weight TOPSIS method. The Dagum Gini coefficient analyzed regional differences, Kernel density estimation assessed service levels’ distribution, and Tobit regression explored influencing factors. Data were collected from the “Guangzhou Statistical Yearbook”, Guangzhou Health Commission reports, and government work reports from 2017 to 2022. Results: The study shows that from 2017 to 2022, there were significant differences in medical service levels among different regions of Guangzhou, with higher service quality in central urban areas compared to remote and peripheral areas. The application of the entropy weight method revealed the importance of indicators such as medical business costs and the number of registered nurses per thousand population in evaluating service quality. According to the Dagum Gini coefficient decomposition method, regional differences in medical services in Guangzhou are the main factor causing uneven overall development quality. Kernel density estimation indicates a bimodal distribution of medical service quality, suggesting heterogeneity in service quality and an increasing trend in low-quality service areas. The Tobit model confirms that factors such as medical institution drug costs, bed occupancy rate, and medical human resources have a positive impact on improving service quality. Conclusion: This study uniquely integrates the entropy weight TOPSIS method, Dagum Gini coefficient decomposition, and Kernel density estimation to dissect regional disparities in Guangzhou’s medical services, offering a novel perspective on healthcare evolution under the Health China Strategy. The findings provide an innovative framework for optimizing resource allocation and enhancing service quality, guiding balanced development across regions.
AB - Purpose: This study explores regional differences, dynamic evolution, and influencing factors of medical service levels in Guangzhou under the Health China Strategy to provide a basis for improving service quality and reducing disparities. Patients and Methods: An evaluation system was constructed using the entropy weight TOPSIS method. The Dagum Gini coefficient analyzed regional differences, Kernel density estimation assessed service levels’ distribution, and Tobit regression explored influencing factors. Data were collected from the “Guangzhou Statistical Yearbook”, Guangzhou Health Commission reports, and government work reports from 2017 to 2022. Results: The study shows that from 2017 to 2022, there were significant differences in medical service levels among different regions of Guangzhou, with higher service quality in central urban areas compared to remote and peripheral areas. The application of the entropy weight method revealed the importance of indicators such as medical business costs and the number of registered nurses per thousand population in evaluating service quality. According to the Dagum Gini coefficient decomposition method, regional differences in medical services in Guangzhou are the main factor causing uneven overall development quality. Kernel density estimation indicates a bimodal distribution of medical service quality, suggesting heterogeneity in service quality and an increasing trend in low-quality service areas. The Tobit model confirms that factors such as medical institution drug costs, bed occupancy rate, and medical human resources have a positive impact on improving service quality. Conclusion: This study uniquely integrates the entropy weight TOPSIS method, Dagum Gini coefficient decomposition, and Kernel density estimation to dissect regional disparities in Guangzhou’s medical services, offering a novel perspective on healthcare evolution under the Health China Strategy. The findings provide an innovative framework for optimizing resource allocation and enhancing service quality, guiding balanced development across regions.
KW - Dynamic distribution
KW - Healthcare evaluation
KW - Medical resource allocation
KW - Resource optimization
KW - Service quality disparities
UR - http://www.scopus.com/inward/record.url?scp=85210152262&partnerID=8YFLogxK
U2 - 10.2147/RMHP.S479911
DO - 10.2147/RMHP.S479911
M3 - Article
AN - SCOPUS:85210152262
SN - 1179-1594
VL - 17
SP - 2811
EP - 2828
JO - Risk Management and Healthcare Policy
JF - Risk Management and Healthcare Policy
ER -