Department of Mathematical and Statistical Sciences, University of Alberta , Edmonton, Alberta, Canada.
Department of Mathematics and Statistics, Brock University , St. Catharines, Ontario, Canada.
J R Soc Interface. 2024 Aug;21(217):20240199. doi: 10.1098/rsif.2024.0199. Epub 2024 Aug 9.
The timely detection of disease outbreaks through reliable early warning signals (EWSs) is indispensable for effective public health mitigation strategies. Nevertheless, the intricate dynamics of real-world disease spread, often influenced by diverse sources of noise and limited data in the early stages of outbreaks, pose a significant challenge in developing reliable EWSs, as the performance of existing indicators varies with extrinsic and intrinsic noises. Here, we address the challenge of modelling disease when the measurements are corrupted by additive white noise, multiplicative environmental noise and demographic noise into a standard epidemic mathematical model. To navigate the complexities introduced by these noise sources, we employ a deep learning algorithm that provides EWS in infectious disease outbreaks by training on noise-induced disease-spreading models. The indicator's effectiveness is demonstrated through its application to real-world COVID-19 cases in Edmonton and simulated time series derived from diverse disease spread models affected by noise. Notably, the indicator captures an impending transition in a time series of disease outbreaks and outperforms existing indicators. This study contributes to advancing early warning capabilities by addressing the intricate dynamics inherent in real-world disease spread, presenting a promising avenue for enhancing public health preparedness and response efforts.
通过可靠的早期预警信号(EWS)及时发现疾病爆发对于有效的公共卫生缓解策略是必不可少的。然而,现实世界中疾病传播的复杂动态,通常受到爆发初期各种来源的噪声和有限数据的影响,给开发可靠的 EWS 带来了重大挑战,因为现有指标的性能随外在和内在噪声而变化。在这里,我们将在标准传染病数学模型中处理因加性白噪声、乘性环境噪声和人口噪声而使测量值受到污染的疾病建模问题。为了应对这些噪声源带来的复杂性,我们使用深度学习算法通过在噪声诱导的疾病传播模型上进行训练来提供传染病爆发的 EWS。该指标通过应用于埃德蒙顿的真实 COVID-19 病例和受噪声影响的各种疾病传播模型的模拟时间序列,展示了其有效性。值得注意的是,该指标能够捕捉到疾病爆发时间序列中的即将到来的转变,并且表现优于现有指标。本研究通过解决现实世界疾病传播中固有的复杂动态,为提高早期预警能力做出了贡献,为增强公共卫生准备和应对工作提供了有前途的途径。