Haque Shovanur, Mengersen Kerrie, Barr Ian, Wang Liping, Yang Weizhong, Vardoulakis Sotiris, Bambrick Hilary, Hu Wenbiao
Ecosystem Change and Population Health Research Group, School of Public Health and Social Work, Queensland University of Technology, Brisbane, Australia.
School of Mathematical Sciences, Queensland University of Technology, Brisbane, Australia; Centre for Data Science (CDS), Queensland University of Technology (QUT), Brisbane, Australia.
Environ Res. 2024 May 15;249:118568. doi: 10.1016/j.envres.2024.118568. Epub 2024 Feb 28.
Climate, weather and environmental change have significantly influenced patterns of infectious disease transmission, necessitating the development of early warning systems to anticipate potential impacts and respond in a timely and effective way. Statistical modelling plays a pivotal role in understanding the intricate relationships between climatic factors and infectious disease transmission. For example, time series regression modelling and spatial cluster analysis have been employed to identify risk factors and predict spatial and temporal patterns of infectious diseases. Recently advanced spatio-temporal models and machine learning offer an increasingly robust framework for modelling uncertainty, which is essential in climate-driven disease surveillance due to the dynamic and multifaceted nature of the data. Moreover, Artificial Intelligence (AI) techniques, including deep learning and neural networks, excel in capturing intricate patterns and hidden relationships within climate and environmental data sets. Web-based data has emerged as a powerful complement to other datasets encompassing climate variables and disease occurrences. However, given the complexity and non-linearity of climate-disease interactions, advanced techniques are required to integrate and analyse these diverse data to obtain more accurate predictions of impending outbreaks, epidemics or pandemics. This article presents an overview of an approach to creating climate-driven early warning systems with a focus on statistical model suitability and selection, along with recommendations for utilizing spatio-temporal and machine learning techniques. By addressing the limitations and embracing the recommendations for future research, we could enhance preparedness and response strategies, ultimately contributing to the safeguarding of public health in the face of evolving climate challenges.
气候、天气和环境变化对传染病传播模式产生了重大影响,因此有必要开发预警系统,以预测潜在影响并及时有效地做出应对。统计建模在理解气候因素与传染病传播之间的复杂关系方面发挥着关键作用。例如,时间序列回归建模和空间聚类分析已被用于识别风险因素并预测传染病的时空模式。最近发展起来的时空模型和机器学习为不确定性建模提供了一个日益强大的框架,由于数据的动态性和多面性,这在气候驱动的疾病监测中至关重要。此外,包括深度学习和神经网络在内的人工智能技术擅长捕捉气候和环境数据集中的复杂模式和隐藏关系。基于网络的数据已成为包含气候变量和疾病发生情况的其他数据集的有力补充。然而,鉴于气候与疾病相互作用的复杂性和非线性,需要先进的技术来整合和分析这些多样化的数据,以更准确地预测即将爆发的疫情、流行病或大流行病。本文概述了一种创建气候驱动预警系统的方法,重点关注统计模型的适用性和选择,以及利用时空和机器学习技术的建议。通过解决局限性并接受对未来研究的建议,我们可以加强防范和应对策略,最终在面对不断演变的气候挑战时为保障公众健康做出贡献。