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Fine-Scale Space-Time Cluster Detection of COVID-19 in Mainland China Using Retrospective Analysis

机译:利用回顾性分析在中国大陆的微量空间集群检测

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摘要

Exploring spatio-temporal patterns of disease incidence can help to identify areas of significantly elevated or decreased risk, providing potential etiologic clues. The study uses the retrospective analysis of space-time scan statistic to detect the clusters of COVID-19 in mainland China with a different maximum clustering radius at the family-level based on case dates of onset. The results show that the detected clusters vary with the clustering radius. Forty-three space-time clusters were detected with a maximum clustering radius of 100 km and 88 clusters with a maximum clustering radius of 10 km from 2 December 2019 to 20 June 2020. Using a smaller clustering radius may identify finer clusters. Hubei has the most clusters regardless of scale. In addition, most of the clusters were generated in February. That indicates China’s COVID-19 epidemic prevention and control strategy is effective, and they have successfully prevented the virus from spreading from Hubei to other provinces over time. Well-developed provinces or cities, which have larger populations and developed transportation networks, are more likely to generate space-time clusters. The analysis based on the data of cases from onset may detect the start times of clusters seven days earlier than similar research based on diagnosis dates. Our analysis of space-time clustering based on the data of cases on the family-level can be reproduced in other countries that are still seriously affected by the epidemic such as the USA, India, and Brazil, thus providing them with more precise signals of clustering.
机译:探索疾病的发病率的时空模式可以帮助识别领域的显著升高或降低风险,提供潜在病因的线索。该研究采用时空扫描统计量的回顾性分析与基于发病的情况下日期家庭级不同的最大簇半径检测COVID-19在中国大陆的集群。结果表明所检测到的簇与所述聚类半径而变化。与100km的最大聚类半径和88簇与从2019 12月2日10公里的最大聚类半径到6月20日到2020年使用较小的聚类半径可以识别较细簇中检测到四十三时空簇。湖北拥有最集群无论规模如何。此外,大部分集群在2月产生。这表明中国的COVID-19疫情防控策略是有效的,他们已经成功地从随着时间的推移,从湖北蔓延到其他省份防止病毒。发达的省市,其具有较大的人群和发达的交通网络,更容易产生时空集群。基于从发病例的数据分析可以检测早期7天集群的开始时间比基于诊断日期类似的研究。我们基于对家庭层面的个案数据时空聚类分析可以在那些仍然受疫情如美国,印度,巴西等其他国家进行复制,从而为他们提供更精确的信号集群。

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