State Key Laboratory of Molecular Vaccinology and Molecular Diagnostics, School of Public Health, Xiamen University, Xiamen, China.
Key Laboratory of Health Technology Assessment of Fujian Province, School of Public Health, Xiamen University, Xiamen, China.
BMC Public Health. 2024 Feb 22;24(1):550. doi: 10.1186/s12889-024-17986-0.
This study describes regional differences and dynamic changes in the prevalence of comorbidities among middle-aged and elderly people with chronic diseases (PCMC) in China from 2011-2018, and explores distribution patterns and the relationship between PM and PCMC, aiming to provide data support for regional prevention and control measures for chronic disease comorbidities in China.
This study utilized CHARLS follow-up data for ≥ 45-year-old individuals from 2011, 2013, 2015, and 2018 as research subjects. Missing values were filled using the random forest machine learning method. PCMC spatial clustering investigated using spatial autocorrelation methods. The relationship between macro factors and PCMC was examined using Geographically and Temporally Weighted Regression, Ordinary Linear Regression, and Geographically Weighted Regression.
PCMC in China showing a decreasing trend. Hotspots of PCMC appeared mainly in western and northern provinces, while cold spots were in southeastern coastal provinces. PM content was a risk factor for PCMC, the range of influence expanded from the southeastern coastal areas to inland areas, and the magnitude of influence decreased from the southeastern coastal areas to inland areas.
PM content, as a risk factor, should be given special attention, taking into account regional factors. In the future, policy-makers should develop stricter air pollution control policies based on different regional economic, demographic, and geographic factors, while promoting public education, increasing public transportation, and urban green coverage.
本研究描述了 2011 年至 2018 年期间中国中老年慢性病患者(PCMC)合并症的患病率在区域间的差异和动态变化,并探讨了其分布模式和与 PM 之间的关系,旨在为中国慢性病合并症的区域性预防和控制措施提供数据支持。
本研究以 CHARLS 2011 年、2013 年、2015 年和 2018 年≥45 岁人群的随访数据为研究对象,采用随机森林机器学习方法填补缺失值。采用空间自相关方法对 PCMC 的空间集聚进行研究。采用时空加权回归、普通线性回归和地理加权回归分析宏观因素与 PCMC 的关系。
中国 PCMC 呈下降趋势。PCMC 的热点主要出现在西部和北部省份,而冷点则出现在东南部沿海省份。PM 含量是 PCMC 的一个危险因素,其影响范围从东南沿海地区向内陆地区扩大,影响程度从东南沿海地区向内陆地区逐渐减弱。
PM 含量作为一个危险因素,应考虑到区域因素,给予特别关注。未来,政策制定者应根据不同的区域经济、人口和地理因素,制定更严格的空气污染控制政策,同时促进公众教育、增加公共交通和城市绿化覆盖率。