As the COVID-19 spread over the globe and new variants of COVID-19 keep occurring, reliable real-time forecasts of COVID-19 hospitalizations are critical for public health decision on medical resources allocations such as ICU beds, ventilators, and personnel to prepare for the surge of COVID-19 pandemics. Inspired by the strong association between public search behavior and hospitalization admission, we extended previously-proposed influenza tracking model, ARGO (AutoRegression with GOogle search data), to predict future 2-week national and state-level COVID-19 new hospital admissions. Leveraging the COVID-19 related time series information and Google search data, our method is able to robustly capture new COVID-19 variants' surges, and self-correct at both national and state level. Based on our retrospective out-of-sample evaluation over 12-month comparison period, our method achieves on average 15\% error reduction over the best alternative models collected from COVID-19 forecast hub. Overall, we showed that our method is flexible, self-correcting, robust, accurate, and interpretable, making it a potentially powerful tool to assist health-care officials and decision making for the current and future infectious disease outbreak.
翻译:随着全球范围传播的COVID-19和COVID-19的新品种不断发生,可靠的COVID-19住院的实时预测对于公共卫生决定如何分配医疗资源至关重要,如ICU床、通风器和人员等,以备COVID-19大流行病的激增。由于公众搜索行为与住院住院住院的强烈联系,我们扩大了先前提出的流感跟踪模型ARGO(用谷歌搜索数据自动回归),以预测未来两周国家和州一级的COVID-19新医院入院情况。利用COVID-19相关时间序列信息和谷歌搜索数据,我们的方法能够有力地捕捉到新的COVID-19变异的激增,并在国家和州一级自我纠正。根据我们12个月时间里对抽样的追溯性评估,我们的方法在从COVID-19预测中心收集的最佳替代模型中平均减少了15 ⁇ 误差。总体而言,我们的方法是灵活、自我纠正、稳健、准确和可解释的。我们的方法能够强有力地捕捉到新的COVID-19变异的激增,并能够在国家和州一级自我纠正。根据我们对12个月里的分析,我们的方法可以帮助官员们作出传染性疾病爆发。