Ma Simin, Ning Shaoyang, Yang Shihao
H. Milton Stewart School of Industrial and Systems Engineering, Georgia Institute of Technology, Atlanta, GA, USA.
Department of Mathematics and Statistics, Williams College, Williamstown, MA, 01267, USA.
Commun Med (Lond). 2023 Mar 24;3(1):39. doi: 10.1038/s43856-023-00272-2.
As the prolonged COVID-19 pandemic continues, severe seasonal Influenza (flu) may happen alongside COVID-19. This could cause a "twindemic", in which there are additional burdens on health care resources and public safety compared to those occurring in the presence of a single infection. Amidst the raising trend of co-infections of the two diseases, forecasting both Influenza-like Illness (ILI) outbreaks and COVID-19 waves in a reliable and timely manner becomes more urgent than ever. Accurate and real-time joint prediction of the twindemic aids public health organizations and policymakers in adequate preparation and decision making. However, in the current pandemic, existing ILI and COVID-19 forecasting models face shortcomings under complex inter-disease dynamics, particularly due to the similarities in symptoms and healthcare-seeking patterns of the two diseases.
Inspired by the interconnection between ILI and COVID-19 activities, we combine related internet search and bi-disease time series information for the U.S. national level and state level forecasts. Our proposed ARGOX-Joint-Ensemble adopts a new ensemble framework that integrates ILI and COVID-19 disease forecasting models to pool the information between the two diseases and provide joint multi-resolution and multi-target predictions. Through a winner-takes-all ensemble fashion, our framework is able to adaptively select the most predictive COVID-19 or ILI signals.
In the retrospective evaluation, our model steadily outperforms alternative benchmark methods, and remains competitive with other publicly available models in both point estimates and probabilistic predictions (including intervals).
The success of our approach illustrates that pooling information between the ILI and COVID-19 leads to improved forecasting models than individual models for either of the disease.
随着新冠疫情的持续蔓延,严重的季节性流感可能会与新冠疫情同时出现。这可能会引发一场“双流行”,与单一感染相比,会给医疗资源和公共安全带来额外负担。在两种疾病合并感染呈上升趋势的情况下,以可靠且及时的方式预测流感样疾病(ILI)爆发和新冠疫情浪潮变得比以往任何时候都更加紧迫。对双流行进行准确且实时的联合预测有助于公共卫生组织和政策制定者做好充分准备并做出决策。然而,在当前的疫情中,现有的ILI和新冠预测模型在复杂的疾病间动态关系下存在不足,特别是由于两种疾病在症状和就医模式上存在相似性。
受ILI和新冠活动之间相互联系的启发,我们结合了相关的互联网搜索以及美国国家和州层面的双疾病时间序列信息进行预测。我们提出的ARGOX-Joint-Ensemble采用了一种新的集成框架,该框架整合了ILI和新冠疾病预测模型,以汇集两种疾病之间的信息,并提供联合多分辨率和多目标预测。通过一种胜者全得的集成方式,我们的框架能够自适应地选择最具预测性的新冠或ILI信号。
在回顾性评估中,我们的模型持续优于其他基准方法,并且在点估计和概率预测(包括区间)方面与其他公开可用的模型相比仍具有竞争力。
我们方法的成功表明,汇集ILI和新冠之间的信息会产生比单一疾病的单独模型更好的预测模型。