Department of Economics and Social Sciences, Institute for Sociology and Demography, University of Rostock, 18057 Rostock, Germany.
German Center for Neurodegenerative Diseases, 53127 Bonn, Germany.
Int J Environ Res Public Health. 2021 Oct 12;18(20):10663. doi: 10.3390/ijerph182010663.
(1) Background: In the absence of individual level information, the aim of this study was to identify the regional key features explaining SARS-CoV-2 infections and COVID-19 deaths during the upswing of the second wave in Germany. (2) Methods: We used COVID-19 diagnoses and deaths from 1 October to 15 December 2020, on the county-level, differentiating five two-week time periods. For each period, we calculated the age-standardized COVID-19 incidence and death rates on the county level. We trained gradient boosting models to predict the incidence and death rates by 155 indicators and identified the top 20 associations using Shap values. (3) Results: Counties with low socioeconomic status (SES) had higher infection and death rates, as had those with high international migration, a high proportion of foreigners, and a large nursing home population. The importance of these characteristics changed over time. During the period of intense exponential increase in infections, the proportion of the population that voted for the Alternative for Germany (AfD) party in the last federal election was among the top characteristics correlated with high incidence and death rates. (4) Machine learning approaches can reveal regional characteristics that are associated with high rates of infection and mortality.
(1) 背景:在缺乏个体水平信息的情况下,本研究旨在确定在德国第二波疫情上升期间,解释 SARS-CoV-2 感染和 COVID-19 死亡的区域关键特征。(2) 方法:我们使用了 2020 年 10 月 1 日至 12 月 15 日期间按县区分的 COVID-19 诊断和死亡数据,区分了五个为期两周的时间段。对于每个时间段,我们计算了县级的年龄标准化 COVID-19 发病率和死亡率。我们通过 155 个指标训练梯度提升模型来预测发病率和死亡率,并使用 Shap 值确定前 20 个关联。(3) 结果:社会经济地位(SES)较低的县感染率和死亡率较高,国际移民较多、外国人比例较高以及疗养院人口较多的县也是如此。这些特征的重要性随时间而变化。在感染呈指数级增长的时期,在上一次联邦选举中投票给德国另类选择党(AfD)的人口比例是与高发病率和死亡率相关的最高特征之一。(4) 机器学习方法可以揭示与高感染率和死亡率相关的区域特征。