随机分区模型中相关不确定性的建模。

IF 1.9 4区 数学 Q2 BIOLOGY Mathematical Biosciences Pub Date : 2024-06-03 DOI:10.1016/j.mbs.2024.109226
Konstantinos Mamis , Mohammad Farazmand
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引用次数: 0

摘要

我们考虑的是接触率不确定的传染病分区模型。为了考虑不确定性,通常会在接触率中加入随机波动。白噪声是波动的典型选择,会导致对疾病严重性的严重低估。在这里,我们从对个体社会行为的合理假设出发,将接触建模为马尔可夫过程,并将人类社会活动中存在的时间相关性考虑在内。因此,我们证明了均值回复的奥恩斯坦-乌伦贝克(OU)过程是随机接触率的正确模型。我们用两个例子来证明我们的模型的意义:COVID-19 大流行病的易感人群-感染人群-易感人群(SIS)模型和易感人群-暴露人群-感染人群-移出人群(SEIR)模型,并将结果与约翰-霍普金斯大学数据库中现有的美国数据进行比较。我们特别注意到,这两种具有白噪声不确定性的分区模型都会发生转变,导致对疾病传播的系统性低估。与此相反,用 OU 过程建立接触率模型则能显著减少这种由噪声引起的不切实际的转变。对于 SIS 模型,我们对白噪声和相关噪声的静态概率密度进行了分析推导。这样,我们就能完整地描述该模型的渐近行为是其分岔参数(即基本繁殖数、噪声强度和相关时间)的函数。对于 SEIR 模型,由于其概率密度无法以封闭形式获得,我们采用蒙特卡罗模拟法研究了其转换过程。我们的建模方法可用于量化各种生物系统中的不确定参数。
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Modeling correlated uncertainties in stochastic compartmental models

We consider compartmental models of communicable disease with uncertain contact rates. Stochastic fluctuations are often added to the contact rate to account for uncertainties. White noise, which is the typical choice for the fluctuations, leads to significant underestimation of the disease severity. Here, starting from reasonable assumptions on the social behavior of individuals, we model the contacts as a Markov process which takes into account the temporal correlations present in human social activities. Consequently, we show that the mean-reverting Ornstein–Uhlenbeck (OU) process is the correct model for the stochastic contact rate. We demonstrate the implication of our model on two examples: a Susceptibles–Infected–Susceptibles (SIS) model and a Susceptibles–Exposed–Infected–Removed (SEIR) model of the COVID-19 pandemic and compare the results to the available US data from the Johns Hopkins University database. In particular, we observe that both compartmental models with white noise uncertainties undergo transitions that lead to the systematic underestimation of the spread of the disease. In contrast, modeling the contact rate with the OU process significantly hinders such unrealistic noise-induced transitions. For the SIS model, we derive its stationary probability density analytically, for both white and correlated noise. This allows us to give a complete description of the model’s asymptotic behavior as a function of its bifurcation parameters, i.e., the basic reproduction number, noise intensity, and correlation time. For the SEIR model, where the probability density is not available in closed form, we study the transitions using Monte Carlo simulations. Our modeling approach can be used to quantify uncertain parameters in a broad range of biological systems.

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来源期刊
Mathematical Biosciences
Mathematical Biosciences 生物-生物学
CiteScore
7.50
自引率
2.30%
发文量
67
审稿时长
18 days
期刊介绍: Mathematical Biosciences publishes work providing new concepts or new understanding of biological systems using mathematical models, or methodological articles likely to find application to multiple biological systems. Papers are expected to present a major research finding of broad significance for the biological sciences, or mathematical biology. Mathematical Biosciences welcomes original research articles, letters, reviews and perspectives.
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