College of Health, Lehigh University, Bethlehem, PA, USA.
Metaculus, Santa Cruz, CA, USA.
BMC Infect Dis. 2022 Nov 10;22(1):833. doi: 10.1186/s12879-022-07794-5.
Forecasts of the trajectory of an infectious agent can help guide public health decision making. A traditional approach to forecasting fits a computational model to structured data and generates a predictive distribution. However, human judgment has access to the same data as computational models plus experience, intuition, and subjective data. We propose a chimeric ensemble-a combination of computational and human judgment forecasts-as a novel approach to predicting the trajectory of an infectious agent. Each month from January, 2021 to June, 2021 we asked two generalist crowds, using the same criteria as the COVID-19 Forecast Hub, to submit a predictive distribution over incident cases and deaths at the US national level either two or three weeks into the future and combined these human judgment forecasts with forecasts from computational models submitted to the COVID-19 Forecasthub into a chimeric ensemble. We find a chimeric ensemble compared to an ensemble including only computational models improves predictions of incident cases and shows similar performance for predictions of incident deaths. A chimeric ensemble is a flexible, supportive public health tool and shows promising results for predictions of the spread of an infectious agent.
传染病媒介轨迹预测有助于指导公共卫生决策。传统的预测方法是将计算模型拟合到结构化数据上,并生成预测分布。然而,人类判断可以访问与计算模型相同的数据,加上经验、直觉和主观数据。我们提出了一种嵌合集成 - 计算和人类判断预测的组合 - 作为预测传染病媒介轨迹的一种新方法。从 2021 年 1 月到 2021 年 6 月,每个月我们都会要求两个多面手群体(使用与 COVID-19 预测中心相同的标准),在未来两到三周内提交美国国家级的病例和死亡预测分布,将这些人类判断预测与提交给 COVID-19 Forecasthub 的计算模型预测结合到嵌合集成中。我们发现,与仅包含计算模型的集成相比,嵌合集成可以改善对病例的预测,并对病例死亡的预测表现出相似的性能。嵌合集成是一种灵活的、支持性的公共卫生工具,对传染病传播的预测显示出有前途的结果。