Suppr超能文献

中国新冠肺炎的时空分布特征:一项城市层面的建模研究

Spatio-temporal distribution characteristics of COVID-19 in China: a city-level modeling study.

作者信息

Ma Qianqian, Gao Jinghong, Zhang Wenjie, Wang Linlin, Li Mingyuan, Shi Jinming, Zhai Yunkai, Sun Dongxu, Wang Lin, Chen Baozhan, Jiang Shuai, Zhao Jie

机构信息

The First Affiliated Hospital of Zhengzhou University, Zhengzhou, Henan, China.

National Engineering Laboratory for Internet Medical Systems and Applications, Zhengzhou, China.

出版信息

BMC Infect Dis. 2021 Aug 14;21(1):816. doi: 10.1186/s12879-021-06515-8.

Abstract

BACKGROUND

The coronavirus disease 2019 (COVID-19) has become a pandemic. Few studies have been conducted to investigate the spatio-temporal distribution of COVID-19 on nationwide city-level in China.

OBJECTIVE

To analyze and visualize the spatiotemporal distribution characteristics and clustering pattern of COVID-19 cases from 362 cities of 31 provinces, municipalities and autonomous regions in mainland China.

METHODS

A spatiotemporal statistical analysis of COVID-19 cases was carried out by collecting the confirmed COVID-19 cases in mainland China from January 10, 2020 to October 5, 2020. Methods including statistical charts, hotspot analysis, spatial autocorrelation, and Poisson space-time scan statistic were conducted.

RESULTS

The high incidence stage of China's COVID-19 epidemic was from January 17 to February 9, 2020 with daily increase rate greater than 7.5%. The hot spot analysis suggested that the cities including Wuhan, Huangshi, Ezhou, Xiaogan, Jingzhou, Huanggang, Xianning, and Xiantao, were the hot spots with statistical significance. Spatial autocorrelation analysis indicated a moderately correlated pattern of spatial clustering of COVID-19 cases across China in the early phase, with Moran's I statistic reaching maximum value on January 31, at 0.235 (Z = 12.344, P = 0.001), but the spatial correlation gradually decreased later and showed a discrete trend to a random distribution. Considering both space and time, 19 statistically significant clusters were identified. 63.16% of the clusters occurred from January to February. Larger clusters were located in central and southern China. The most likely cluster (RR = 845.01, P < 0.01) included 6 cities in Hubei province with Wuhan as the centre. Overall, the clusters with larger coverage were in the early stage of the epidemic, while it changed to only gather in a specific city in the later period. The pattern and scope of clusters changed and reduced over time in China.

CONCLUSIONS

Spatio-temporal cluster detection plays a vital role in the exploration of epidemic evolution and early warning of disease outbreaks and recurrences. This study can provide scientific reference for the allocation of medical resources and monitoring potential rebound of the COVID-19 epidemic in China.

摘要

背景

2019冠状病毒病(COVID-19)已成为大流行病。在中国,很少有研究对全国城市层面COVID-19的时空分布进行调查。

目的

分析并可视化中国大陆31个省、直辖市和自治区362个城市COVID-19病例的时空分布特征及聚集模式。

方法

通过收集2020年1月10日至2020年10月5日中国大陆确诊的COVID-19病例,对COVID-19病例进行时空统计分析。采用了统计图表、热点分析、空间自相关和泊松时空扫描统计等方法。

结果

中国COVID-19疫情的高发阶段为2020年1月17日至2月9日,日增长率大于7.5%。热点分析表明,武汉、黄石、鄂州、孝感、荆州、黄冈、咸宁和仙桃等城市是具有统计学意义的热点地区。空间自相关分析表明,中国早期COVID-19病例在空间上呈中度聚集相关模式,1月31日莫兰指数(Moran's I)达到最大值,为0.235(Z = 12.344,P = 0.001),但随后空间相关性逐渐下降,并呈现出向随机分布的离散趋势。综合考虑空间和时间因素,确定了19个具有统计学意义的聚集区。63.16%的聚集区出现在1月至2月。较大的聚集区位于中国中部和南部。最有可能的聚集区(相对风险RR = 845.01,P < 0.01)包括以武汉为中心的湖北省6个城市。总体而言,覆盖范围较大的聚集区出现在疫情早期,而后期则仅聚集在特定城市。中国聚集区的模式和范围随时间变化并缩小。

结论

时空聚集性检测在探索疫情演变及疾病爆发和复发的早期预警中起着至关重要的作用。本研究可为中国COVID-19疫情的医疗资源分配及监测潜在反弹提供科学参考。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/44eb/8364047/bbd4ca3be3df/12879_2021_6515_Fig1_HTML.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验