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Epidemic modeling with discrete-space scheduled walkers: extensions and research opportunities

机译:具有离散空间的预定步行者的流行病建模:扩展和研究机会

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Background This exploratory paper outlines an epidemic simulator built on an agent-based, data-driven model of the spread of a disease within an urban environment. An intent of the model is to provide insight into how a disease may reach a tipping point, spreading to an epidemic of uncontrollable proportions. Methods As a complement to analytical methods, simulation is arguably an effective means of gaining a better understanding of system-level disease dynamics within a population and offers greater utility in its modeling capabilities. Our investigation is based on this conjecture, supported by data-driven models that are reasonable, realistic and practical, in an attempt to demonstrate their efficacy in studying system-wide epidemic phenomena. An agent-based model (ABM) offers considerable flexibility in extending the study of the phenomena before, during and after an outbreak or catastrophe. Results An agent-based model was developed based on a paradigm of a 'discrete-space scheduled walker' (DSSW), modeling a medium-sized North American City of 650,000 discrete agents, built upon a conceptual framework of statistical reasoning (law of large numbers, statistical mechanics) as well as a correct-by-construction bias. The model addresses where, who, when and what elements, corresponding to network topography and agent characteristics, behaviours, and interactions upon that topography. The DSSW-ABM has an interface and associated scripts that allow for a variety of what-if scenarios modeling disease spread throughout the population, and for data to be collected and displayed via a web browser. Conclusion This exploratory paper also presents several research opportunities for exploiting data sources of a non-obvious and disparate nature for the purposes of epidemic modeling. There is an increasing amount and variety of data that will continue to contribute to the accuracy of agent-based models and improve their utility in modeling disease spread. The model developed here is well suited to diseases where there is not a predisposition for contraction within the population. One of the advantages of agent-based modeling is the ability to set up a rare event and develop policy as to how one may mitigate damages arising from it.
机译:背景技术这篇探索性论文概述了一种流行病模拟器,该模拟器基于基于代理的,数据驱动的城市环境中疾病传播模型。该模型的目的是提供洞察力,以了解疾病如何达到临界点,并蔓延至无法控制的比例。方法作为分析方法的补充,模拟可以说是一种有效的方法,可以使人们更好地了解人群中的系统级疾病动态,并在其建模能力方面提供更大的实用性。我们的调查基于这种推测,并以合理,现实和实用的数据驱动模型为支撑,以试图证明它们在研究全系统流行病中的功效。基于代理的模型(ABM)在扩展对暴发或灾难发生之前,之中和之后的现象的研究提供了很大的灵活性。结果基于“离散空间调度步行者”(DSSW)的范例,开发了基于代理的模型,该模型基于统计推理的概念框架(大法则),对65万离散代理的中型北美城市进行了建模。数字,统计力学)以及按构造正确的偏差。该模型解决了与网络拓扑和代理特征,行为以及在该拓扑上的交互相对应的位置,位置,时间和元素。 DSSW-ABM具有一个界面和相关的脚本,该脚本和脚本可以用于各种假设疾病建模,模拟疾病在整个人群中的传播,并允许通过Web浏览器收集和显示数据。结论该探索性论文还为流行病建模的目的提供了利用非显而易见和完全不同的数据源的若干研究机会。越来越多的数据和各种数据将继续有助于基于代理的模型的准确性并提高其在疾病传播建模中的效用。这里开发的模型非常适合人群中没有易患收缩疾病的疾病。基于代理的建模的优点之一是能够设置罕见事件并制定有关如何减轻事件造成的损害的策略。

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