Department of Mathematics, Duke University, Durham, NC, USA.
Department of Statistics, Harvard University, Cambridge, MA, USA.
J Math Biol. 2022 Sep 20;85(4):36. doi: 10.1007/s00285-022-01804-5.
The Susceptible-Infectious-Recovered (SIR) equations and their extensions comprise a commonly utilized set of models for understanding and predicting the course of an epidemic. In practice, it is of substantial interest to estimate the model parameters based on noisy observations early in the outbreak, well before the epidemic reaches its peak. This allows prediction of the subsequent course of the epidemic and design of appropriate interventions. However, accurately inferring SIR model parameters in such scenarios is problematic. This article provides novel, theoretical insight on this issue of practical identifiability of the SIR model. Our theory provides new understanding of the inferential limits of routinely used epidemic models and provides a valuable addition to current simulate-and-check methods. We illustrate some practical implications through application to a real-world epidemic data set.
易感-感染-恢复(SIR)方程及其扩展是一组常用于理解和预测传染病传播过程的模型。在实践中,根据早期疫情的噪声观测值来估计模型参数,在疫情达到高峰之前进行预测,这具有重要意义。这可以预测疫情的后续发展,并设计相应的干预措施。然而,在这种情况下准确推断 SIR 模型参数是有问题的。本文针对 SIR 模型在实际中的可识别性问题提供了新的理论见解。我们的理论为常用传染病模型的推断极限提供了新的理解,并为当前的模拟-检验方法提供了有价值的补充。我们通过对真实世界的疫情数据集的应用说明了一些实际意义。