Hu Wei-Hua, Sun Hui-Min, Wei Yong-Yue, Hao Yuan-Tao
Department of Epidemiology and Biostatistics, School of Public Health, Peking University, 38 Xueyuan Road, Beijing, 100191, China.
Peking University Center for Public Health and Epidemic Preparedness & Response, Peking University, 38 Xueyuan Road, Beijing, 100191, China.
Infect Dis Model. 2024 Dec 3;10(2):410-422. doi: 10.1016/j.idm.2024.12.001. eCollection 2025 Jun.
An early warning model for infectious diseases is a crucial tool for timely monitoring, prevention, and control of disease outbreaks. The integration of diverse multi-source data using big data and artificial intelligence techniques has emerged as a key approach in advancing these early warning models. This paper presents a comprehensive review of widely utilized early warning models for infectious diseases around the globe. Unlike previous review studies, this review encompasses newly developed approaches such as the combined model and Hawkes model after the COVID-19 pandemic, providing a thorough evaluation of their current application status and development prospects for the first time. These models not only rely on conventional surveillance data but also incorporate information from various sources. We aim to provide valuable insights for enhancing global infectious disease surveillance and early warning systems, as well as informing future research in this field, by summarizing the underlying modeling concepts, algorithms, and application scenarios of each model.
传染病早期预警模型是及时监测、预防和控制疾病爆发的关键工具。利用大数据和人工智能技术整合多样的多源数据,已成为推进这些早期预警模型的关键方法。本文全面综述了全球广泛使用的传染病早期预警模型。与以往的综述研究不同,本综述涵盖了新冠疫情后新开发的方法,如组合模型和霍克斯模型,首次对其当前应用状况和发展前景进行了全面评估。这些模型不仅依赖传统监测数据,还纳入了来自各种来源的信息。我们旨在通过总结每个模型的基础建模概念、算法和应用场景,为加强全球传染病监测和早期预警系统提供有价值的见解,并为该领域的未来研究提供参考。