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中国湖北省州县级 COVID-19 疫情的空间统计及影响因素。

Spatial Statistics and Influencing Factors of the COVID-19 Epidemic at Both Prefecture and County Levels in Hubei Province, China.

机构信息

School of Geography and Tourism, Jiaying University, Meizhou 514015, China.

Guangzhou Institute of Geochemistry, Chinese Academy of Sciences, Guangzhou 510640, China.

出版信息

Int J Environ Res Public Health. 2020 May 31;17(11):3903. doi: 10.3390/ijerph17113903.

Abstract

The coronavirus disease 2019 (COVID-19) epidemic has had a crucial influence on people's lives and socio-economic development throughout China and across the globe since December 2019. An understanding of the spatiotemporal patterns and influencing factors of the COVID-19 epidemic on multiple scales could benefit the control of the outbreak. Therefore, we used spatial autocorrelation and Spearman's rank correlation methods to investigate these two topics, respectively. The COVID-19 epidemic data reported publicly and relevant open data in Hubei province were analyzed. The results showed that (1) at both prefecture and county levels, the global spatial autocorrelation was extremely significant for the cumulative confirmed COVID-19 cases (CCC) in Hubei province from 30 January to 18 February 2020. Further, (2) at both levels, the significant hotspot and cluster/outlier area was observed solely in Wuhan city and most of its districts/sub-cities from 30 January to 18 February 2020. (3) At the prefecture level in Hubei province, the number of CCC had a positive and extremely significant correlation ( < 0.01) with the registered population (RGP), resident population (RSP), Baidu migration index (BMI), regional gross domestic production (GDP), and total retail sales of consumer goods (TRS), respectively, from 29 January to 18 February 2020 and had a negative and significant correlation ( < 0.05) with minimum elevation (MINE) from 2 February to 18 February 2020, but no association with the land area (LA), population density (PD), maximum elevation (MAXE), mean elevation (MNE), and range of elevation (RAE) from 23 January to 18 February 2020. (4) At the county level, the number of CCC in Hubei province had a positive and extremely significant correlation ( < 0.01) with PD, RGP, RSP, GDP, and TRS, respectively, from 27 January to 18 February 2020, and was negatively associated with MINE, MAXE, MNE, and RAE, respectively, from 26 January to 18 February 2020, and negatively associated with LA from 30 January to 18 February 2020. It suggested that (1) the COVID-19 epidemic at both levels in Hubei province had evident characteristics of significant global spatial autocorrelations and significant centralized high-risk outbreaks, and had an extremely significant association with social and economic factors. (2) The COVID-19 epidemics were significantly associated with the natural factors, such as LA, MAXE, MNE, and RAE, -only at the county level, not at the prefecture level, from 2 February to 18 February 2020. (3) The COVID-19 epidemics were significantly related to the socioeconomic factors, such as RGP, RSP, TRS, and GDP, at both levels from 26 January to 18 February 2020. It is desired that this study enrich our understanding of the spatiotemporal patterns and influencing factors of the COVID-19 epidemic and benefit classified prevention and control of the COVID-19 epidemic for policymakers.

摘要

自 2019 年 12 月以来,新型冠状病毒病 2019(COVID-19)疫情对中国乃至全球人民的生活和社会经济发展产生了重大影响。了解 COVID-19 疫情在多个尺度上的时空格局和影响因素有助于控制疫情的爆发。因此,我们分别使用空间自相关和 Spearman 秩相关方法来研究这两个主题。我们分析了湖北省公开报告的 COVID-19 疫情数据和相关公开数据。结果表明:(1)在县级和县级以下两个层面上,湖北省 2020 年 1 月 30 日至 2 月 18 日累计确诊 COVID-19 病例(CCC)的全球空间自相关均具有极显著意义。进一步地,(2)在这两个层面上,仅在武汉市及其大部分区/市观察到显著热点和聚集/离散区,时间为 2020 年 1 月 30 日至 2 月 18 日。(3)在湖北省县级层面上,2020 年 1 月 29 日至 2 月 18 日,CCC 与登记人口(RGP)、常住人口(RSP)、百度迁徙指数(BMI)、地区生产总值(GDP)和社会消费品零售总额(TRS)呈正相关(<0.01),与 2020 年 2 月 2 日至 18 日的最低海拔(MINE)呈负相关(<0.05),但与 2020 年 1 月 23 日至 18 日的土地面积(LA)、人口密度(PD)、最大海拔(MAXE)、平均海拔(MNE)和海拔范围(RAE)无显著关联。(4)在县级层面上,2020 年 1 月 27 日至 2 月 18 日,湖北省 CCC 与 PD、RGP、RSP、GDP 和 TRS 呈正相关(<0.01),与 MINE、MAXE、MNE 和 RAE 呈负相关(<0.01),与 LA 呈负相关(<0.01),时间为 2020 年 1 月 30 日至 18 日。这表明:(1)湖北省两个层面的 COVID-19 疫情具有显著的全球空间自相关特征和显著的集中高危暴发特征,与社会经济因素具有极显著的关联。(2)COVID-19 疫情仅在县级层面上与 LA、MAXE、MNE 和 RAE 等自然因素存在显著关联,而在县级层面上则没有关联,时间为 2020 年 2 月 2 日至 18 日。(3)COVID-19 疫情与 RGP、RSP、TRS 和 GDP 等社会经济因素在 2020 年 1 月 26 日至 18 日期间存在显著关联。本研究有助于丰富对 COVID-19 疫情时空格局和影响因素的认识,为决策者提供 COVID-19 疫情分类防控的依据。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/47ad/7312640/ad03c5bedd59/ijerph-17-03903-g001.jpg

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