为 COVID-19 情景预测提供分层免疫和有效传播性的数据驱动机制框架

IF 3 3区 医学 Q2 INFECTIOUS DISEASES
Przemyslaw Porebski , Srinivasan Venkatramanan , Aniruddha Adiga , Brian Klahn , Benjamin Hurt , Mandy L. Wilson , Jiangzhuo Chen , Anil Vullikanti , Madhav Marathe , Bryan Lewis
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引用次数: 0

摘要

在 COVID-19 应对期间,基于情景的建模框架已被广泛用于支持美国州和联邦层面的决策。虽然定制模型可用于支持一次性研究,但在不断变化的大流行条件下持续更新预测需要一个强大、集成和适应性强的框架。在本文中,我们将介绍一个这样的框架--UVA-adaptive,该框架的建立是为了支持与疾病预防控制中心协调的情景建模中心(SMH)的多轮工作,以及在 COVID-19 应对期间向弗吉尼亚卫生部(VDH)和美国国防部提供的每周/双周预测。UVA-adaptive 基于现有的元种群框架 PatchSim,采用校准机制,以可调整的有效传播率作为情景定义的基础,同时纳入病例发生率、血清流行率、变异特征和疫苗接种率等实时数据集。在整个大流行期间,我们的框架不断发展,纳入了可用的数据源,并进行了扩展,以捕捉多种毒株和人群异质性免疫的复杂性。在此,我们介绍了用于最近预测 SMH 和 VDH 的模型版本,描述了校准和预测框架,并证明校准后的传播性与病原体的演变以及相关的社会动态相关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data-driven mechanistic framework with stratified immunity and effective transmissibility for COVID-19 scenario projections

Scenario-based modeling frameworks have been widely used to support policy-making at state and federal levels in the United States during the COVID-19 response. While custom-built models can be used to support one-off studies, sustained updates to projections under changing pandemic conditions requires a robust, integrated, and adaptive framework. In this paper, we describe one such framework, UVA-adaptive, that was built to support the CDC-aligned Scenario Modeling Hub (SMH) across multiple rounds, as well as weekly/biweekly projections to Virginia Department of Health (VDH) and US Department of Defense during the COVID-19 response. Building upon an existing metapopulation framework, PatchSim, UVA-adaptive uses a calibration mechanism relying on adjustable effective transmissibility as a basis for scenario definition while also incorporating real-time datasets on case incidence, seroprevalence, variant characteristics, and vaccine uptake. Through the pandemic, our framework evolved by incorporating available data sources and was extended to capture complexities of multiple strains and heterogeneous immunity of the population. Here we present the version of the model that was used for the recent projections for SMH and VDH, describe the calibration and projection framework, and demonstrate that the calibrated transmissibility correlates with the evolution of the pathogen as well as associated societal dynamics.

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来源期刊
Epidemics
Epidemics INFECTIOUS DISEASES-
CiteScore
6.00
自引率
7.90%
发文量
92
审稿时长
140 days
期刊介绍: Epidemics publishes papers on infectious disease dynamics in the broadest sense. Its scope covers both within-host dynamics of infectious agents and dynamics at the population level, particularly the interaction between the two. Areas of emphasis include: spread, transmission, persistence, implications and population dynamics of infectious diseases; population and public health as well as policy aspects of control and prevention; dynamics at the individual level; interaction with the environment, ecology and evolution of infectious diseases, as well as population genetics of infectious agents.
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