基于阶段相关随机模型的流行病传播直接统计建模

Q3 Mathematics
K. Loginov, N. Pertsev
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引用次数: 4

摘要

提出了流行病在某一地区传播的随机阶段依赖模型。该模型以连续离散随机过程的形式编写,该过程考虑了个体通过传染病不同阶段的过程。在该模型的框架内,该区域的人口按照免疫、临床、流行病学和人口标准以个人队列的形式表示。所有小队组成两个街区。属于第一块队列的个体在固定队列中被认为是不可区分的,并且具有相同类型的参数描述。属于第二组队列的个体在进入特定队列的时间和在该队列中停留的时间方面彼此不同。提出了一种基于蒙特卡罗方法的个体群体动态统计建模算法。对个体队列动力学进行了数值研究,以反映个体之间感染传播的不同变体。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Direct Statistical Modeling of Spread of Epidemic Based On a Stage-Dependent Stochastic Model
A stochastic stage-dependent model of spread of an epidemic in a certain region is presented. The model is written in the form of a continuous-discrete random process that takes into account the passage of individuals through various stages of an infectious disease. Within the framework of the model, the population of the region is represented in the form of cohorts of individuals, structured according to immunological, clinical, epidemiological and demographic criteria. All cohorts make up two blocks. Individuals belonging to the cohorts of the first block are considered indistinguishable within a fixed cohort and have the same type of parametric description. Individuals belonging to the cohorts of the second block differ from each other by the time of admission to a particular cohort and by the time of stay in this cohort. An algorithm for statistical modeling of the dynamics of cohorts of individuals based on the Monte Carlo method is developed. A numerical study of the dynamics of cohorts of individuals was conducted for sets of parameters reflecting different variants of transmission of infection between individuals.
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来源期刊
Mathematical Biology and Bioinformatics
Mathematical Biology and Bioinformatics Mathematics-Applied Mathematics
CiteScore
1.10
自引率
0.00%
发文量
13
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