Attribute Assignment to a Synthetic Population in Support of Agent-Based Disease Modeling.

James C Cajka, Philip C Cooley, William D Wheaton
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引用次数: 32

Abstract

Communicable-disease transmission models are useful for the testing of prevention and intervention strategies. Agent-based models (ABMs) represent a new and important class of the many types of disease transmission models in use. Agent-based disease models benefit from their ability to assign disease transmission probabilities based on characteristics shared by individual agents. These shared characteristics allow ABMs to apply transmission probabilities when agents come together in geographic space. Modeling these types of social interactions requires data, and the results of the model largely depend on the quality of these input data. We initially generated a synthetic population for the United States, in support of the Models of Infectious Disease Agent Study. Subsequently, we created shared characteristics to use in ABMs. The specific goals for this task were to assign the appropriately aged populations to schools, workplaces, and public transit. Each goal presented its own challenges and problems; therefore, we used different techniques to create each type of shared characteristic. These shared characteristics have allowed disease models to more realistically predict the spread of disease, both spatially and temporally.

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支持基于主体的疾病建模的合成群体属性分配。
传染病传播模型对检验预防和干预策略是有用的。基于智能体的疾病传播模型(ABMs)是目前正在使用的多种疾病传播模型中一个新的重要类别。基于主体的疾病模型受益于其基于个体主体共享的特征分配疾病传播概率的能力。这些共享的特征允许ABMs应用当agent在地理空间中聚集在一起时的传播概率。对这些类型的社会互动进行建模需要数据,而模型的结果在很大程度上取决于这些输入数据的质量。我们最初为美国生成了一个合成种群,以支持传染病病原体模型研究。随后,我们创建了在abm中使用的共享特征。这项任务的具体目标是将适当年龄的人口分配到学校、工作场所和公共交通中。每个目标都有自己的挑战和问题;因此,我们使用不同的技术来创建每种类型的共享特征。这些共同特征使疾病模型能够更现实地预测疾病在空间和时间上的传播。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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