评估COVID-19病例报告作为美国住院预测领先指标的效用

IF 3 3区 医学 Q2 INFECTIOUS DISEASES
Nicholas G. Reich , Yijin Wang , Meagan Burns , Rosa Ergas , Estee Y. Cramer , Evan L. Ray
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引用次数: 0

摘要

确定能够持续提高流行病学预测模型准确性的数据流是一项挑战。我们使用旨在预测加利福尼亚州和马萨诸塞州因COVID-19导致的每日州级住院人数的模型,研究了纳入COVID-19病例数据是否系统地提高了预测准确性。此外,我们考虑了使用按检测日期汇总的病例数据或按监测系统报告日期汇总的病例数据是否会影响预测的准确性。在测试期间评估预测准确性,在验证期间首先选择了表现最好的方法后,我们发现方法之间的总体准确性差异很小,特别是在不到两周的预测范围内。然而,使用按检测日期汇总的病例进行的模型预测显示,在较长时期和大流行的关键时刻,例如2022年1月欧米克隆波的高峰期,预测的准确性较低。总的来说,这些结果突出了寻找一种建模方法的挑战,这种方法既可以对相对稳定时期的疫情趋势进行准确预测,也可以对传播率快速增长或衰减时期的疫情趋势进行准确预测。虽然COVID-19病例数似乎是帮助预测COVID-19住院治疗的自然选择,但在实践中,我们观察到的任何益处都很小且不一致。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assessing the utility of COVID-19 case reports as a leading indicator for hospitalization forecasting in the United States

Identifying data streams that can consistently improve the accuracy of epidemiological forecasting models is challenging. Using models designed to predict daily state-level hospital admissions due to COVID-19 in California and Massachusetts, we investigated whether incorporating COVID-19 case data systematically improved forecast accuracy. Additionally, we considered whether using case data aggregated by date of test or by date of report from a surveillance system made a difference to the forecast accuracy. Evaluating forecast accuracy in a test period, after first having selected the best-performing methods in a validation period, we found that overall the difference in accuracy between approaches was small, especially at forecast horizons of less than two weeks. However, forecasts from models using cases aggregated by test date showed lower accuracy at longer horizons and at key moments in the pandemic, such as the peak of the Omicron wave in January 2022. Overall, these results highlight the challenge of finding a modeling approach that can generate accurate forecasts of outbreak trends both during periods of relative stability and during periods that show rapid growth or decay of transmission rates. While COVID-19 case counts seem to be a natural choice to help predict COVID-19 hospitalizations, in practice any benefits we observed were small and inconsistent.

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来源期刊
Epidemics
Epidemics INFECTIOUS DISEASES-
CiteScore
6.00
自引率
7.90%
发文量
92
审稿时长
140 days
期刊介绍: Epidemics publishes papers on infectious disease dynamics in the broadest sense. Its scope covers both within-host dynamics of infectious agents and dynamics at the population level, particularly the interaction between the two. Areas of emphasis include: spread, transmission, persistence, implications and population dynamics of infectious diseases; population and public health as well as policy aspects of control and prevention; dynamics at the individual level; interaction with the environment, ecology and evolution of infectious diseases, as well as population genetics of infectious agents.
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