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Predicting COVID-19 incidence in French hospitals using human contact network analytics

机译:使用人类联系网络分析预测法式医院的Covid-19发病率

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Background COVID-19 was first detected in Wuhan, China, in 2019 and spread worldwide within a few weeks. The COVID-19 epidemic started to gain traction in France in March 2020. Subnational hospital admissions and deaths were then recorded daily and served as the main policy indicators. Concurrently, mobile phone positioning data have been curated to determine the frequency of users being colocalized within a given distance. Contrarily to individual tracking data, these can be a proxy for human contact networks between subnational administrative units. Methods Motivated by numerous studies correlating human mobility data and disease incidence, we developed predictive time series models of hospital incidence between July 2020 and April 2021. We added human contact network analytics, such as clustering coefficients, contact network strength, null links or curvature, as regressors. Findings We found that predictions can be improved substantially (by more than 50 % ) at both the national level and the subnational level for up to 2?weeks. Our subnational analysis also revealed the importance of spatial structure, as incidence in colocalized administrative units improved predictions. This original application of network analytics from colocalization data to epidemic spread opens new perspectives for epidemic forecasting and public health.
机译:背景COVID-19在中国武汉,首次发现在2019年蔓延全球的几个星期之内。该COVID-19疫情开始获得在法国牵引三月2020年国内地区住院和死亡,然后,每天记录,并担任主要政策指标。同时,移动电话的定位数据已策划,以确定用户的频率被给定距离内的共定位。相反个别跟踪数据,这些可以成为地方政府行政部门之间的人接触网络的代理。通过大量研究人类移动性数据和发病相关的启发方法,我们开发了医院发生的预测时间序列模型2020年7月和2021年四月加入我们的人接触网络的分析,如集聚系数,接触网络的力量,空链接或曲率之间,作为回归量。调查结果我们发现,预测可在国家一级和长达2?周次国家一级都得到大幅度的提高(超过50%)。我们的地方政府的分析还揭示了空间结构的重要性,在共定位行政单位发病率提高的预测。这种原始的网络分析的应用从数据共存疫情传播打开了疫情预测和公共卫生新视角。

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