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

机译:湖北省地县两级COVID-19流行的空间统计及影响因素

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摘要

The coronavirus disease 2019 (COVID-19) epidemic has had a crucial influence on people’s lives and socio-economic development. 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 hotspots and cluster/outlier areas were 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 epidemics at both levels in Hubei province had evident characteristics of significant global spatial autocorrelations and significant centralized high-risk outbreaks. (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.
机译:2019年冠状病毒病(COVID-19)流行对人们的生活和社会经济发展产生了至关重要的影响。对COVID-19流行病的时空模式和影响因素的多尺度理解可能有助于控制疫情。因此,我们分别使用空间自相关和Spearman的秩相关方法来研究这两个主题。对湖北省公开报道的COVID-19流行病数据和相关公开数据进行了分析。结果表明:(1)在县和县两级,对于2020年1月30日至2月18日湖北省的累积确诊COVID-19病例(CCC),全球空间自相关性极为显着。此外,(2)从2020年1月30日至2020年2月18日,仅在武汉市及其大部分地区/副城市中,观测到了显着的热点和集群/偏远地区。(3)在湖北省的地级市,CCC的数量为与注册人口(RGP),常住人口(RSP),百度移民指数(BMI),区域国内生产总值(GDP)和消费品零售总额(TRS)分别呈正相关和极显着相关(<0.01) ,即2020年1月29日至2月18日,与2020年2月2日至2月18日的最低海拔高度(MINE)呈负相关且显着相关(<0.05),但与土地面积(LA),人口密度(PD)没有关联,最大海拔E),2020年1月23日至2月18日的平均海拔(MNE)和海拔范围(RAE)。(4)在县一级,湖北省的CCC数量具有正相关且极显着相关(<0.01)分别于2020年1月27日至2月18日与PD,RGP,RSP,GDP和TRS关联,并分别于2020年1月26日至2月18日与MINE,MAXE,MNE和RAE关联为负关联,与洛杉矶于2020年1月30日至2月18日。这表明(1)湖北省两个级别的COVID-19流行病均具有明显的全球空间自相关特征和明显的集中高风险爆发特征。 (2)从2020年2月2日至2月18日,COVID-19流行病与LA,MAXE,MNE和RAE等自然因素显着相关-仅在县级而非县级。(3 )从2020年1月26日至2月18日这两个级别,COVID-19流行病与社会经济因素(如RGP,RSP,TRS和GDP)均显着相关。希望这项研究能丰富我们对时空模式和影响COVID-19流行病的因素,并为决策者分类预防和控制COVID-19流行病。

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