Mount Auburn Hospital, Cambridge, Massachusetts.
Harvard Medical School, Boston, Massachusetts.
JAMA Intern Med. 2020 Dec 1;180(12):1614-1620. doi: 10.1001/jamainternmed.2020.4288.
It is unknown how well cell phone location data portray social distancing strategies or if they are associated with the incidence of coronavirus disease 2019 (COVID-19) cases in a particular geographical area.
To determine if cell phone location data are associated with the rate of change in new COVID-19 cases by county across the US.
DESIGN, SETTING, AND PARTICIPANTS: This cohort study incorporated publicly available county-level daily COVID-19 case data from January 22, 2020, to May 11, 2020, and county-level daily cell phone location data made publicly available by Google. It examined the daily cases of COVID-19 per capita and daily estimates of cell phone activity compared with the baseline (where baseline was defined as the median value for that day of the week from a 5-week period between January 3 and February 6, 2020). All days and counties with available data after the initiation of stay-at-home orders for each state were included.
The primary exposure was cell phone activity compared with baseline for each day and each county in different categories of place.
The primary outcome was the percentage change in COVID-19 cases 5 days from the exposure date.
Between 949 and 2740 US counties and between 22 124 and 83 745 daily observations were studied depending on the availability of cell phone data for that county and day. Marked changes in cell phone activity occurred around the time stay-at-home orders were issued by various states. Counties with higher per-capita cases (per 100 000 population) showed greater reductions in cell phone activity at the workplace (β, -0.002; 95% CI, -0.003 to -0.001; P < 0.001), areas classified as retail (β, -0.008; 95% CI, -0.011 to -0.005; P < 0.001) and grocery stores (β, -0.006; 95% CI, -0.007 to -0.004; P < 0.001), and transit stations (β, -0.003, 95% CI, -0.005 to -0.002; P < 0.001), and greater increase in activity at the place of residence (β, 0.002; 95% CI, 0.001-0.002; P < 0.001). Adjusting for county-level and state-level characteristics, counties with the greatest decline in workplace activity, transit stations, and retail activity and the greatest increases in time spent at residential places had lower percentage growth in cases at 5, 10, and 15 days. For example, counties in the lowest quartile of retail activity had a 45.5% lower growth in cases at 15 days compared with the highest quartile (SD, 37.4%-53.5%; P < .001).
Our findings support the hypothesis that greater reductions in cell phone activity in the workplace and retail locations, and greater increases in activity at the residence, are associated with lesser growth in COVID-19 cases. These data provide support for the value of monitoring cell phone location data to anticipate future trends of the pandemic.
目前尚不清楚手机位置数据在多大程度上能够描绘社交距离策略,或者它们是否与特定地理区域的 2019 年冠状病毒病(COVID-19)病例的发生率有关。
确定手机位置数据与美国各县 COVID-19 新发病例变化率之间是否存在关联。
设计、地点和参与者:本队列研究纳入了 2020 年 1 月 22 日至 5 月 11 日期间公开的县一级每日 COVID-19 病例数据,以及谷歌公开提供的县一级每日手机位置数据。它检查了 COVID-19 人均每日病例数和与基线相比的每日手机活动估计数(其中,基线定义为 2020 年 1 月 3 日至 2 月 6 日的 5 周期间每天的中位数)。所有在各州下达居家令后有可用数据的县和日期都包括在内。
主要暴露因素是每天在不同地点类别中与基线相比的手机活动。
主要结果是暴露日期后 5 天 COVID-19 病例的百分比变化。
根据该州每天的手机数据可用性,研究了 949 至 2740 个美国县和 22124 至 83745 个每日观察值。在各州发布居家令前后,手机活动发生了明显变化。人均病例(每 10 万人)较高的县,其工作场所的手机活动减少幅度更大(β,-0.002;95%CI,-0.003 至-0.001;P<0.001),零售(β,-0.008;95%CI,-0.011 至-0.005;P<0.001)和杂货店(β,-0.006;95%CI,-0.007 至-0.004;P<0.001)以及过境站(β,-0.003,95%CI,-0.005 至-0.002;P<0.001)的活动减少幅度更大,而居住场所的活动增加幅度更大(β,0.002;95%CI,0.001-0.002;P<0.001)。在调整了县一级和州一级的特征后,工作场所活动、过境站和零售活动下降幅度最大、居住场所活动增加幅度最大的县,其病例在 5、10 和 15 天的增长率较低。例如,零售活动最低四分位数的县在第 15 天的病例增长率比最高四分位数低 45.5%(SD,37.4%-53.5%;P<0.001)。
我们的研究结果支持以下假设:工作场所和零售场所的手机活动减少幅度更大,居住场所的活动增加幅度更大,与 COVID-19 病例的增长率较低有关。这些数据为监测手机位置数据以预测大流行未来趋势提供了支持。