West Virginia Clinical and Translational Science Institute, Morgantown, West Virginia, United States of America.
Management Information Systems Department, West Virginia University, Morgantown, West Virginia, United States of America.
PLoS One. 2021 Nov 3;16(11):e0259538. doi: 10.1371/journal.pone.0259538. eCollection 2021.
During the COVID-19 pandemic, West Virginia developed an aggressive SARS-CoV-2 testing strategy which included utilizing pop-up mobile testing in locations anticipated to have near-term increases in SARS-CoV-2 infections. This study describes and compares two methods for predicting near-term SARS-CoV-2 incidence in West Virginia counties. The first method, Rt Only, is solely based on producing forecasts for each county using the daily instantaneous reproductive numbers, Rt. The second method, ML+Rt, is a machine learning approach that uses a Long Short-Term Memory network to predict the near-term number of cases for each county using epidemiological statistics such as Rt, county population information, and time series trends including information on major holidays, as well as leveraging statewide COVID-19 trends across counties and county population size. Both approaches used daily county-level SARS-CoV-2 incidence data provided by the West Virginia Department Health and Human Resources beginning April 2020. The methods are compared on the accuracy of near-term SARS-CoV-2 increases predictions by county over 17 weeks from January 1, 2021- April 30, 2021. Both methods performed well (correlation between forecasted number of cases and the actual number of cases week over week is 0.872 for the ML+Rt method and 0.867 for the Rt Only method) but differ in performance at various time points. Over the 17-week assessment period, the ML+Rt method outperforms the Rt Only method in identifying larger spikes. Results show that both methods perform adequately in both rural and non-rural predictions. Finally, a detailed discussion on practical issues regarding implementing forecasting models for public health action based on Rt is provided, and the potential for further development of machine learning methods that are enhanced by Rt.
在 COVID-19 大流行期间,西弗吉尼亚州制定了一项积极的 SARS-CoV-2 检测策略,包括在预计近期 SARS-CoV-2 感染人数增加的地点利用弹出式移动检测。本研究描述并比较了两种预测西弗吉尼亚州各县近期 SARS-CoV-2 发病率的方法。第一种方法仅基于使用每日即时繁殖数 Rt 为每个县制作预测。第二种方法 ML+Rt 是一种机器学习方法,它使用长短期记忆网络使用流行病学统计数据(如 Rt、县人口信息和时间序列趋势,包括主要节假日信息)以及利用全州范围内的 COVID-19 趋势来预测每个县的近期病例数县人口规模。这两种方法都使用了西弗吉尼亚州卫生和人类资源部自 2020 年 4 月以来提供的每日县一级 SARS-CoV-2 发病率数据。方法是通过比较 2021 年 1 月 1 日至 2021 年 4 月 30 日的 17 周内各县 SARS-CoV-2 增加的预测准确性来进行的。两种方法的表现都很好(与每周实际病例数的预测数之间的相关性对于 ML+Rt 方法为 0.872,对于 Rt 仅方法为 0.867),但在不同时间点的性能有所不同。在 17 周的评估期间,ML+Rt 方法在识别较大的尖峰方面优于 Rt 仅方法。结果表明,这两种方法在农村和非农村预测中都表现出足够的能力。最后,详细讨论了基于 Rt 为公共卫生行动实施预测模型的实际问题,并讨论了增强 Rt 的机器学习方法的进一步发展的潜力。