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COVID-19 医疗需求预测:亚利桑那州。

COVID-19 healthcare demand projections: Arizona.

机构信息

School of Computing, Informatics and Decision Systems Engineering, Arizona State University, Tempe, AZ, United States of America.

School of Human Evolution and Social Change, Arizona State University, Tempe, AZ, United States of America.

出版信息

PLoS One. 2020 Dec 2;15(12):e0242588. doi: 10.1371/journal.pone.0242588. eCollection 2020.

DOI:10.1371/journal.pone.0242588
PMID:33264308
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC7710107/
Abstract

Beginning in March 2020, the United States emerged as the global epicenter for COVID-19 cases with little to guide policy response in the absence of extensive data available for reliable epidemiological modeling in the early phases of the pandemic. In the ensuing weeks, American jurisdictions attempted to manage disease spread on a regional basis using non-pharmaceutical interventions (i.e., social distancing), as uneven disease burden across the expansive geography of the United States exerted different implications for policy management in different regions. While Arizona policymakers relied initially on state-by-state national modeling projections from different groups outside of the state, we sought to create a state-specific model using a mathematical framework that ties disease surveillance with the future burden on Arizona's healthcare system. Our framework uses a compartmental system dynamics model using a SEIRD framework that accounts for multiple types of disease manifestations for the COVID-19 infection, as well as the observed time delay in epidemiological findings following public policy enactments. We use a compartment initialization logic coupled with a fitting technique to construct projections for key metrics to guide public health policy, including exposures, infections, hospitalizations, and deaths under a variety of social reopening scenarios. Our approach makes use of X-factor fitting and backcasting methods to construct meaningful and reliable models with minimal available data in order to provide timely policy guidance in the early phases of a pandemic.

摘要

自 2020 年 3 月以来,美国成为全球 COVID-19 病例的中心,但由于大流行早期缺乏广泛的数据可用于可靠的流行病学建模,几乎没有指导政策应对的依据。在接下来的几周里,美国各司法管辖区试图在区域基础上管理疾病传播,使用非药物干预措施(即社交距离),因为美国广阔地理区域的疾病负担不均,对不同地区的政策管理产生了不同的影响。虽然亚利桑那州的政策制定者最初依赖于不同州的州外团体提供的逐州国家建模预测,但我们试图使用一种数学框架创建一个特定于州的模型,该框架将疾病监测与亚利桑那州医疗保健系统未来的负担联系起来。我们的框架使用了一种基于 SEIRD 框架的隔室系统动力学模型,该模型考虑了 COVID-19 感染的多种疾病表现形式,以及在实施公共政策后观察到的流行病学发现的时间延迟。我们使用隔室初始化逻辑和拟合技术来构建关键指标的预测,以指导公共卫生政策,包括在各种社会重新开放情景下的暴露、感染、住院和死亡。我们的方法利用 X 因子拟合和回溯方法,在可用数据最少的情况下构建有意义且可靠的模型,以便在大流行的早期阶段提供及时的政策指导。

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