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Emulating a System Dynamics Model with Agent-Based Models: A Methodological Case Study in Simulation of Diabetes Progression

机译:用基于代理的模型模拟系统动力学模型:糖尿病进展模拟中的方法论案例研究

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An agent-based simulation model hierarchy emulating disease states and behaviors critical to progression of diabetes type 2 was designed and implemented in the DEVS framework. This model was built to approximately reproduce some essential findings that were previously reported for a rather complex model of diabetes progression. Our models are translations of basicelements of this previously reported system dynamics model of diabetes. The system dynamics model, which mimics diabetes progression over an aggregated US population, was disaggregated and reconstructed bottom-up at the individual (agent) level. Four levels of model complexity were defined in order to systematically evaluate which parameters are needed to mimic outputs of the system dynamics model. The four estimated models attempted to replicate stock counts representing disease states in the system dynamics model while estimating impacts of an elderliness factor, obesity factor and health-related behavioral parameters. Health-related behavior was modeled as a simple realization of the Theory of Planned Behavior, a joint function of individual attitude and diffusion of social norms that spread over each agent’s social network. Although the most complex agent-based simulation model contained 31 adjustable parameters, all models were considerably less complex than the system dynamics model which required numerous time series inputs to make its predictions. All three elaborations of the baseline model provided significantly improved fits to the output of the system dynamics model, although behavioral factors appeared to contribute more than the elderliness factor. The results illustrate a promising approach to translate complex system dynamics models into agent-based model alternatives that are both conceptually simpler and capable of capturing main effects of complex local agent-agent interactions.
机译:在DEVS框架中设计并实现了一个基于代理的仿真模型层次结构,该模型模拟了对2型糖尿病的进展至关重要的疾病状态和行为。建立该模型的目的是大致复制一些先前报道的关于糖尿病发展相当复杂模型的基本发现。我们的模型是该先前报道的糖尿病系统动力学模型的基本元素的翻译。系统动力学模型模拟了整个美国人口的糖尿病进展,并在个人(代理人)层次上进行了分解和自下而上的重构。定义了四个级别的模型复杂度,以便系统地评估模拟系统动力学模型的输出所需的参数。四个估计模型试图在系统动力学模型中复制代表疾病状态的存货数量,同时估计老年人因素,肥胖因素和健康相关行为参数的影响。与健康相关的行为被建模为“计划行为理论”的简单实现,该行为是个人态度和分散在每个代理人社交网络中的社会规范的传播的联合功能。尽管最复杂的基于主体的仿真模型包含31个可调参数,但是所有模型都比系统动力学模型复杂得多,后者需要大量时间序列输入才能进行预测。基线模型的所有三个方面都为系统动力学模型的输出提供了显着改善的拟合度,尽管行为因素似乎比老年人因素更重要。结果说明了一种将复杂的系统动力学模型转换为基于代理的模型替代方案的有前途的方法,这些替代方案在概念上更简单并且能够捕获复杂的本地代理-代理交互的主要影响。

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