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COVID-19 期间武汉市的可持续规划:影响因素、风险概况和聚类模式分析。

Sustainable planning in Wuhan City during COVID-19: an analysis of influential factors, risk profiles, and clustered patterns.

机构信息

School of Civil Engineering and Architecture, Wuhan Institute of Technology, Wuhan, China.

出版信息

Front Public Health. 2023 Dec 13;11:1241029. doi: 10.3389/fpubh.2023.1241029. eCollection 2023.

Abstract

The outbreak of novel coronavirus pneumonia (COVID-19) is closely related to the intra-urban environment. It is important to understand the influence mechanism and risk characteristics of urban environment on infectious diseases from the perspective of urban environment composition. In this study, we used python to collect Sina Weibo help data as well as urban multivariate big data, and The random forest model was used to measure the contribution of each influential factor within to the COVID-19 outbreak. A comprehensive risk evaluation system from the perspective of urban environment was constructed, and the entropy weighting method was used to produce the weights of various types of risks, generate the specific values of the four types of risks, and obtain the four levels of comprehensive risk zones through the K-MEANS clustering of Wuhan's central urban area for zoning planning. Based on the results, we found: ①the five most significant indicators contributing to the risk of the Wuhan COVID-19 outbreak were Road Network Density, Shopping Mall Density, Public Transport Density, Educational Facility Density, Bank Density. Floor Area Ration, Poi Functional Mix ②After streamlining five indicators such as Proportion of Aged Population, Tertiary Hospital Density, Open Space Density, Night-time Light Intensity, Number of Beds Available in Designated Hospitals, the prediction accuracy of the random forest model was the highest. ③The spatial characteristics of the four categories of new crown epidemic risk, namely transmission risk, exposure risk, susceptibility risk and Risk of Scarcity of Medical Resources, were highly differentiated, and a four-level integrated risk zone was obtained by K-MEANS clustering. Its distribution pattern was in the form of "multicenter-periphery" gradient diffusion. For the risk composition of the four-level comprehensive zones combined with the internal characteristics of the urban environment in specific zones to develop differentiated control strategies. Targeted policies were then devised for each partition, offering a practical advantage over singular COVID-19 impact factor analyses. This methodology, beneficial for future public health crises, enables the swift identification of unique risk profiles in different partitions, streamlining the formulation of precise policies. The overarching goal is to maintain regular social development, harmonizing preventive measures and economic efforts.

摘要

新型冠状病毒肺炎(COVID-19)的爆发与城市环境密切相关。从城市环境构成的角度出发,了解城市环境对传染病的影响机制和风险特征非常重要。本研究利用 python 收集了新浪微博求助数据和城市多源大数据,采用随机森林模型来衡量各影响因素对 COVID-19 爆发的贡献度。构建了一个从城市环境角度出发的综合风险评价体系,利用熵权法对各类风险的权重进行赋值,生成四类风险的具体值,通过 K-MEANS 聚类对武汉市中心城区进行分区规划,得到综合风险区的四个等级。基于研究结果,我们发现:①对武汉 COVID-19 疫情风险贡献最大的五个指标分别是路网密度、购物中心密度、公共交通密度、教育设施密度、银行密度、容积率、POI 功能混合;②经过精简人口老龄化比例、三甲医院密度、开敞空间密度、夜间灯光强度、定点医院可床位数等五个指标后,随机森林模型的预测准确率最高;③新型冠状肺炎疫情传播风险、暴露风险、易感性风险和医疗资源匮乏风险这四类风险的空间特征存在高度差异,通过 K-MEANS 聚类得到四级综合风险区。其分布模式呈“多中心-外围”梯度扩散。对四级综合区的风险构成结合特定区域的城市环境内部特征进行差异化控制策略的制定。然后为每个分区制定了有针对性的政策,相对于单一的 COVID-19 影响因素分析具有实际优势。这种方法有利于未来的公共卫生危机,能够快速识别不同分区的独特风险特征,简化精确政策的制定。总体目标是维持社会的正常发展,协调预防措施和经济投入。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9187/10751330/d3fd71a1acc6/fpubh-11-1241029-g001.jpg

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