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COVID-19 全球传播的社区获得性暴发分类:机器学习和统计模型分析。

Classification of community-acquired outbreaks for the global transmission of COVID-19: Machine learning and statistical model analysis.

机构信息

Institute of Epidemiology and Preventive Medicine, College of Public Health, National Taiwan University, Taipei, Taiwan.

Department of Health Care Management and Healthy Aging Research Center, Chang Gung University, Taoyuan, Taiwan.

出版信息

J Formos Med Assoc. 2021 Jun;120 Suppl 1:S26-S37. doi: 10.1016/j.jfma.2021.05.010. Epub 2021 May 16.

Abstract

BACKGROUND

As Coronavirus disease 2019 (COVID-19) pandemic led to the unprecedent large-scale repeated surges of epidemics worldwide since the end of 2019, data-driven analysis to look into the duration and case load of each episode of outbreak worldwide has been motivated.

METHODS

Using open data repository with daily infected, recovered and death cases in the period between March 2020 and April 2021, a descriptive analysis was performed. The susceptible-exposed-infected-recovery model was used to estimate the effective productive number (R). The duration taken from R > 1 to R < 1 and case load were first modelled by using the compound Poisson method. Machine learning analysis using the K-means clustering method was further adopted to classify patterns of community-acquired outbreaks worldwide.

RESULTS

The global estimated R declined after the first surge of COVID-19 pandemic but there were still two major surges of epidemics occurring in September 2020 and March 2021, respectively, and numerous episodes due to various extents of Nonpharmaceutical Interventions (NPIs). Unsupervised machine learning identified five patterns as "controlled epidemic", "mutant propagated epidemic", "propagated epidemic", "persistent epidemic" and "long persistent epidemic" with the corresponding duration and the logarithm of case load from the lowest (18.6 ± 11.7; 3.4 ± 1.8)) to the highest (258.2 ± 31.9; 11.9 ± 2.4). Countries like Taiwan outside five clusters were classified as no community-acquired outbreak.

CONCLUSION

Data-driven models for the new classification of community-acquired outbreaks are useful for global surveillance of uninterrupted COVID-19 pandemic and provide a timely decision support for the distribution of vaccine and the optimal NPIs from global to local community.

摘要

背景

自 2019 年底以来,2019 年冠状病毒病(COVID-19)大流行导致全球前所未有的大规模反复疫情浪潮,因此激发了对全球每次疫情爆发持续时间和病例数量进行数据驱动分析的动力。

方法

使用 2020 年 3 月至 2021 年 4 月期间每日感染、康复和死亡病例的开放数据存储库进行描述性分析。采用易感性-暴露-感染-康复模型来估计有效繁殖数(R)。首先使用复合泊松方法对从 R>1 到 R<1 的持续时间和病例数进行建模。然后采用 K-均值聚类方法进行机器学习分析,以对全球社区获得性暴发模式进行分类。

结果

全球估计的 R 在 COVID-19 大流行的第一波之后下降,但仍在 2020 年 9 月和 2021 年 3 月分别发生了两次主要的疫情浪潮,以及由于各种非药物干预(NPI)程度的多次疫情。无监督机器学习确定了五种模式,即“受控疫情”、“突变传播疫情”、“传播疫情”、“持续疫情”和“长期持续疫情”,相应的持续时间和病例数的对数从最低(18.6±11.7;3.4±1.8)到最高(258.2±31.9;11.9±2.4)。台湾等不在五个集群中的国家被归类为无社区获得性暴发。

结论

用于新的社区获得性暴发分类的基于数据的模型有助于对 COVID-19 大流行进行全球监测,并为疫苗分配和从全球到当地社区的最佳 NPI 提供及时的决策支持。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/edf4/8126178/364ad7acfd27/gr1_lrg.jpg

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