从人员流动模式和社会人口指标分析COVID-19的传播特征

Avipsa Roy, B. Kar
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引用次数: 15

摘要

流动性是人类通过空间和时间运动的一个指标。随着地理定位数据(来自GPS、加速度计等)的日益可用性,现在可以检查个人和群体的人类移动模式。人类的流动性受到内在因素(即个人动机)和外在因素(即自然灾害或COVID-19等大流行)的影响。然而,在大流行背景下,人类流动模式与社会人口特征之间的复杂关系尚未得到充分探讨。我们的目标是利用手机提供的人口普查分组人口流动数据,并将这些数据与社会脆弱性指标相结合,在地方空间尺度上考察COVID-19的总体传播情况,从而克服这一差距。我们利用安全图(Safegraph)每周对37,871个兴趣点(poi)的585,878次访问,量化了洛杉矶市(LA) 2,820个人口普查街区群体的流动性指数和社会距离指标——在封锁之前和期间,以及在第一阶段和第二阶段重新开放期间。最后,我们使用监督机器学习算法,根据截至2020年7月24日的COVID-19病例累积发生率,将洛杉矶的人口普查街区组分为高、中、低三类,这些类别代表了这些街区组的脆弱性。我们的结果表明,与支持向量机和多项Logit模型相比,基于树的分类器表现良好。梯度增强对COVID-19的分类准确率最高,为97.4%,AUC评分为0.987。高病例区社会弱势人群集中度高,人员流动指数高,社会距离指数低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Characterizing the spread of COVID-19 from human mobility patterns and SocioDemographic indicators
Mobility is an indicator of human movement through space and time. With the increasing availability of geolocated data (from GPS, accelerometers, etc.), it is now possible to examine individual as well as group human mobility patterns. Human mobility is influenced by both intrinsic (i.e. personal motivations) and extrinsic (i.e., events like natural hazards or a pandemic like the COVID-19) factors. However, the intricate relationships between human mobility patterns and sociodemographic characteristics in the context of a pandemic are yet to be fully explored. Our goal is to overcome this gap by using human mobility data at the census block group level from mobile phones and combining those with social vulnerability indicators to examine the overall spread of COVID-19 at local spatial scales. We used 585,878 weekly visits to 37,871 points of interests (POIs) from Safegraph to quantify mobility indices and social distancing metrics in 2,820 census block groups in the city of Los Angeles (LA) - before and during lockdown as well as during the phase1 and phase 2 reopening. Finally, using supervised machine learning algorithms, we classified the census block groups in LA into High, Medium and Low categories that represented the vulnerability of these block groups based on the cumulative number of occurrences of COVID-19 cases till July 24, 2020. Our results indicate that the tree-based classifiers performed well in comparison to the Support Vector Machines and Multinomial Logit models. Gradient Boosting had the highest classification accuracy of 97.4% COVID-19 with an AUC score of 0.987. The block groups with high COVID-19 cases also had a high concentration of socially vulnerable populations, high human mobility index and a low social distancing index.
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