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东南亚新冠疫情的早期时空模式及人口特征

Early Spatiotemporal Patterns and Population Characteristics of the COVID-19 Pandemic in Southeast Asia.

作者信息

Zhu Mingjian, Kleepbua Jirapat, Guan Zhou, Chew Sien Ping, Tan Joanna Weihui, Shen Jian, Latthitham Natthjija, Hu Jianxiong, Law Jia Xian, Li Lanjuan

机构信息

State Key Laboratory for Diagnosis and Treatment of Infectious Diseases, National Clinical Research Center for Infectious Diseases, Collaborative Innovation Center for Diagnosis and Treatment of Infectious Diseases, The First Affiliated Hospital, Zhejiang University School of Medicine, Hangzhou 310003, China.

Thammasat University Hospital, Pathum Thani 12120, Thailand.

出版信息

Healthcare (Basel). 2021 Sep 16;9(9):1220. doi: 10.3390/healthcare9091220.

DOI:10.3390/healthcare9091220
PMID:34574997
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC8466219/
Abstract

This observational study aims to investigate the early disease patterns of coronavirus disease 2019 (COVID-19) in Southeast Asia, consequently providing historical experience for further interventions. Data were extracted from official websites of the WHO and health authorities of relevant countries. A total of 1346 confirmed cases of COVID-19, with 217 recoveries and 18 deaths, were reported in Southeast Asia as of 16 March 2020. The basic reproductive number () of COVID-19 in the region was estimated as 2.51 (95% CI:2.31 to 2.73), and there were significant geographical variations at the subregional level. Early transmission dynamics were examined with an exponential regression model: y = 0.30e ( < 0.01, R = 0.96), which could help predict short-term incidence. Country-level disease burden was positively correlated with Human Development Index (r = 0.86, < 0.01). A potential early shift in spatial diffusion patterns and a spatiotemporal cluster occurring in Malaysia and Singapore were detected. Demographic analyses of 925 confirmed cases indicated a median age of 44 years and a sex ratio (male/female) of 1.25. Age may play a significant role in both susceptibilities and outcomes. The COVID-19 situation in Southeast Asia is challenging and unevenly geographically distributed. Hence, enhanced real-time surveillance and more efficient resource allocation are urgently needed.

摘要

这项观察性研究旨在调查2019冠状病毒病(COVID-19)在东南亚的早期疾病模式,从而为进一步的干预措施提供历史经验。数据从世界卫生组织和相关国家卫生当局的官方网站提取。截至2020年3月16日,东南亚共报告了1346例COVID-19确诊病例,其中217例康复,18例死亡。该地区COVID-19的基本再生数()估计为2.51(95%置信区间:2.31至2.73),在次区域层面存在显著的地理差异。采用指数回归模型y = 0.30e(<0.01,R = 0.96)研究早期传播动态,该模型有助于预测短期发病率。国家层面的疾病负担与人类发展指数呈正相关(r = 0.86,<0.01)。检测到马来西亚和新加坡的空间扩散模式可能出现早期转变以及一个时空聚集现象。对925例确诊病例的人口统计学分析表明,中位年龄为44岁,性别比(男/女)为1.25。年龄可能在易感性和结果方面都发挥重要作用。东南亚的COVID-19情况具有挑战性,且在地理分布上不均衡。因此,迫切需要加强实时监测和更有效的资源分配。

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