2014
DOI: 10.1186/1756-0500-7-234
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Addressing population heterogeneity and distribution in epidemics models using a cellular automata approach

Abstract: BackgroundThe 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.MethodsAn epidemic is… Show more

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Cited by 20 publications
(13 citation statements)
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References 36 publications
(34 reference statements)
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“…Due to spatial clustering and limits to the social network, the transmission of the strain is self-limiting-that is, it has lower probability to spread to different parts of the city depending on specific characteristics of who is infected (travel patterns, employment, use of public transportation, etc). Some studies build on the argument that infectious disease transmission is a function of biological and social factors [29][30][31]. To understand how they are transmitted requires understanding both processes.…”
Section: Discussionmentioning
confidence: 99%
“…Due to spatial clustering and limits to the social network, the transmission of the strain is self-limiting-that is, it has lower probability to spread to different parts of the city depending on specific characteristics of who is infected (travel patterns, employment, use of public transportation, etc). Some studies build on the argument that infectious disease transmission is a function of biological and social factors [29][30][31]. To understand how they are transmitted requires understanding both processes.…”
Section: Discussionmentioning
confidence: 99%
“…基于SI模型, 利用元胞 自动机来模拟云南省栎树猝死病菌的时空扩散. 将 [29,30] . 对初始条件, 即初始时哪些元胞的状态为1, 因中国尚未发生SOD, 可随机假定有限个元胞已染 病, 剩余元胞状态为0; 对边界条件, 因下一时刻元 胞状态由自身与邻居状态决定, 故在元胞空间边缘 加 上 空 值 边界 , 使 所 有元 胞 都 分 布在 系 统 内 部 [31] .…”
Section: Suddenoakdeathorg)unclassified
“…There is a wide range of applications of cellular automata in several fields such as Computer science, Biology, Bioinformatics, Cryptography, and Engineering (see, for example, ). Of special interest are the mathematical models based on cellular automata devoted to the study and simulation of seismicity (see and references therein), the spreading of infectious diseases , and forest fire propagation .…”
Section: Mathematical Models For Simulating the Malware Propagationmentioning
confidence: 99%