López Leonardo, Burguerner Germán, Giovanini Leonardo
Research Center for Signals, Systems and Computational Intelligence, Universidad Nacional del Litoral, Ruta Nacional No 168 - Km 472,4, Santa Fe, Argentina.
BMC Res Notes. 2014 Apr 12;7:234. doi: 10.1186/1756-0500-7-234.
The spread of an infectious disease is determined by biological and social factors. Models based on cellular automata are adequate to describe such natural systems consisting of a massive collection of simple interacting objects. They characterize the time evolution of the global system as the emergent behaviour resulting from the interaction of the objects, whose behaviour is defined through a set of simple rules that encode the individual behaviour and the transmission dynamic.
An epidemic is characterized trough an individual-based-model built upon cellular automata. In the proposed model, each individual of the population is represented by a cell of the automata. This way of modeling an epidemic situation allows to individually define the characteristic of each individual, establish different scenarios and implement control strategies.
A cellular automata model to study the time evolution of a heterogeneous populations through the various stages of disease was proposed, allowing the inclusion of individual heterogeneity, geographical characteristics and social factors that determine the dynamic of the desease. Different assumptions made to built the classical model were evaluated, leading to following results: i) for low contact rate (like in quarantine process or low density population areas) the number of infective individuals is lower than other areas where the contact rate is higher, and ii) for different initial spacial distributions of infected individuals different epidemic dynamics are obtained due to its influence on the transition rate and the reproductive ratio of disease.
The contact rate and spatial distributions have a central role in the spread of a disease. For low density populations the spread is very low and the number of infected individuals is lower than in highly populated areas. The spacial distribution of the population and the disease focus as well as the geographical characteristic of the area play a central role in the dynamics of the desease.
传染病的传播由生物和社会因素决定。基于细胞自动机的模型足以描述由大量简单相互作用对象组成的此类自然系统。它们将全球系统的时间演化表征为由对象相互作用产生的涌现行为,这些对象的行为通过一组编码个体行为和传播动态的简单规则来定义。
通过基于细胞自动机构建的个体模型来表征流行病。在所提出的模型中,人群中的每个个体由自动机的一个细胞表示。这种对疫情情况进行建模的方式允许单独定义每个个体的特征、建立不同的情景并实施控制策略。
提出了一个细胞自动机模型,用于研究异质人群在疾病各个阶段的时间演化,该模型允许纳入决定疾病动态的个体异质性、地理特征和社会因素。对构建经典模型所做的不同假设进行了评估,得出以下结果:i)对于低接触率(如在检疫过程或低密度人口地区),感染个体的数量低于接触率较高的其他地区;ii)由于感染个体的不同初始空间分布对疾病的传播率和繁殖率有影响,会获得不同的疫情动态。
接触率和空间分布在疾病传播中起着核心作用。对于低密度人群,传播非常低,感染个体数量低于人口密集地区。人群的空间分布、疾病焦点以及该地区的地理特征在疾病动态中起着核心作用。