🌙

多阶段随机流行病模型

Multiphasic stochastic epidemic models

Journal of the Royal Statistical Society. Series C: Applied Statistics · 2024
被引 2
ABS 3

中文导读

本文提出一种多阶段随机流行病模型,利用分段常数Rt和泊松过程等推断疫情阶段和感染人数,并在英国、希腊等地的数据上验证了模型有效性。

Abstract

Abstract At the onset of the COVID-19 pandemic, various non-pharmaceutical interventions aimed to reduce infection levels, leading to multiple phases of transmission. The disease reproduction number, Rt, quantifies transmissibility and is central to evaluating these interventions. This article discusses hierarchical stochastic epidemic models with piece-wise constant Rt, suitable for capturing distinct epidemic phases and estimating disease magnitude. The timing and scale of Rt changes are inferred from data, while the number of phases is allowed to vary. The model uses Poisson point processes and Dirichlet process components to learn the number of phases, providing insight into epidemic dynamics. We test the models on synthetic data and apply them to freely available data from the UK, Greece, California, and New York. We estimate the true number of infections and Rt and independently validate this approach via a large seroprevalence study. The results show that key disease characteristics can be derived from publicly available data without imposing strong assumptions.

计算机科学计量经济学数学流行病学