基于agent的局部COVID-19干预决策仿真

Jason Starr, Morgan P. Kain
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引用次数: 0

摘要

-疾病模型是指导卫生组织在COVID-19大流行期间选择适当干预措施的有用资源。然而,目前大多数模型模拟的是全国/州范围内的疾病传播,缺乏对城镇或县等地区的特异性。因此,尽管各地在许多重要因素(人口密度、年龄统计和疫苗接种率)上存在差异,但在整个州都制定了一刀切的政策。为促进地方一级的卫生行动,有必要为个别地方量身定制模式。本研究利用NetLogo建立了一种新的基于agent的疾病模型,用于模拟局部COVID-19疾病动态。个体代理代表群体中的每个成员,其个体特征(疫苗接种状态、年龄等)符合模型输入(疫苗接种率、年龄分布等)。这些因素之间的相互作用产生模型输出,其中包括预测的感染和死亡。该模型使用纽约州威彻斯特县州和地方卫生机构的数据进行了验证(准确率为84.2%)。利用该模型,本研究旨在回答以下问题:哪些局部因素影响COVID-19疫情严重程度和干预效果?为此,我们对三个局部变量(疫苗接种率、年龄分布、采取的干预措施)进行了敏感性分析,并对美国四个不同县的局部模拟进行了比较。从研究结果来看,疫苗接种率、年龄分布和干预措施对地区间的风险水平差异有显著影响,高风险地区比低风险地区受干预的影响更大。地方政府可以使用这个模型来做出与健康相关的决定,并创建了一个网站(www.localcovidmodel.org)供模型访问。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Agent-Based Simulation for Localized COVID-19 Intervention Decision
- Disease models have been a helpful resource which have guided health organizations in choosing appropriate interventions during the COVID-19 pandemic. However, most current models simulate disease spread on a countrywide/statewide level, lacking specificity for localities such as towns or counties. As a result, one-size-fits-all policies are being instituted for entire states despite localities being heterogeneous in many important factors (population density, age demographics, and vaccination rate). Models tailored to individual localities are necessary to facilitate local level health action. In this research, a novel agent-based disease model was created using NetLogo to simulate localized COVID-19 disease dynamics. Individual agents represent each member of a population, and their individual traits (vaccination status, age, etc.) conform to the model input (vaccination rate, age distribution, etc.). Interactions between these agents produce the model outputs, which include predicted infections and deaths. The model was validated using data from state and local health agencies for Westchester County, NY (84.2% accuracy). Using the model, this research aims to answer the following question: what local factors affect COVID-19 outbreak severity and intervention impact? To accomplish this, a sensitivity analysis was conducted for three local variables (vaccination rate, age distribution, intervention applied) and a comparison of locality simulation was conducted for four different U.S. counties. From the results attained, this research concluded that vaccination rate, age distribution, and intervention applied in a locality all contribute significantly to risk level differences between localities, and that higher risk localities are impacted harder by interventions than those with lower risk. Localities can use this model to make health related decisions, and a website (www.localcovidmodel.org) has been created for model access.
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