| Literature DB >> 36169721 |
Félix Foutel-Rodier1,2, François Blanquart3, Philibert Courau4, Peter Czuppon4,5, Jean-Jil Duchamps6, Jasmine Gamblin4, Élise Kerdoncuff4,7,8, Rob Kulathinal9, Léo Régnier4,10, Laura Vuduc4,11, Amaury Lambert4,12, Emmanuel Schertzer13.
Abstract
We present a unifying, tractable approach for studying the spread of viruses causing complex diseases requiring to be modeled using a large number of types (e.g., infective stage, clinical state, risk factor class). We show that recording each infected individual's infection age, i.e., the time elapsed since infection, has three benefits. First, regardless of the number of types, the age distribution of the population can be described by means of a first-order, one-dimensional partial differential equation (PDE) known as the McKendrick-von Foerster equation. The frequency of type i is simply obtained by integrating the probability of being in state i at a given age against the age distribution. This representation induces a simple methodology based on the additional assumption of Poisson sampling to infer and forecast the epidemic. We illustrate this technique using French data from the COVID-19 epidemic. Second, our approach generalizes and simplifies standard compartmental models using high-dimensional systems of ordinary differential equations (ODEs) to account for disease complexity. We show that such models can always be rewritten in our framework, thus, providing a low-dimensional yet equivalent representation of these complex models. Third, beyond the simplicity of the approach, we show that our population model naturally appears as a universal scaling limit of a large class of fully stochastic individual-based epidemic models, where the initial condition of the PDE emerges as the limiting age structure of an exponentially growing population starting from a single individual.Entities:
Keywords: 35Q92; 60J85; 62P10; Primary 53D35; Secondary 60J80
Mesh:
Year: 2022 PMID: 36169721 PMCID: PMC9517997 DOI: 10.1007/s00285-022-01794-4
Source DB: PubMed Journal: J Math Biol ISSN: 0303-6812 Impact factor: 2.164