Reformulating the susceptible-infectious-removed model in terms of the number of detected cases: well-posedness of the observational model.

Eduard Campillo-Funollet, Hayley Wragg, James Van Yperen, Duc-Lam Duong, Anotida Madzvamuse
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引用次数: 2

Abstract

Compartmental models are popular in the mathematics of epidemiology for their simplicity and wide range of applications. Although they are typically solved as initial value problems for a system of ordinary differential equations, the observed data are typically akin to a boundary value-type problem: we observe some of the dependent variables at given times, but we do not know the initial conditions. In this paper, we reformulate the classical susceptible-infectious-recovered system in terms of the number of detected positive infected cases at different times to yield what we term the observational model. We then prove the existence and uniqueness of a solution to the boundary value problem associated with the observational model and present a numerical algorithm to approximate the solution. This article is part of the theme issue 'Technical challenges of modelling real-life epidemics and examples of overcoming these'.

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根据检测到的病例数重新制定易感-传染性去除模型:观察模型的适定性。
隔间模型因其简单和广泛的应用范围而在流行病学数学中很受欢迎。虽然它们通常作为常微分方程系统的初值问题来解决,但观察到的数据通常类似于边界值型问题:我们在给定时间观察到一些因变量,但我们不知道初始条件。在本文中,我们根据在不同时间检测到的阳性感染病例的数量重新制定了经典的易感-感染-恢复系统,以产生我们称之为观察模型的东西。然后,我们证明了与观测模型相关的边值问题解的存在唯一性,并给出了近似解的数值算法。这篇文章是主题“模拟现实生活中的流行病的技术挑战和克服这些挑战的例子”的一部分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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