Rennert Lior, Ma Zichen
Clemson University.
Colgate University.
Res Sq. 2023 Jul 11:rs.3.rs-3116880. doi: 10.21203/rs.3.rs-3116880/v1.
Institutions have an enhanced ability to implement tailored mitigation measures during infectious disease outbreaks. However, macro-level predictive models are inefficient for guiding institutional decision-making due to uncertainty in local-level model input parameters. We present an institutional-level modeling toolkit used to inform prediction, resource procurement and allocation, and policy implementation at Clemson University throughout the Covid-19 pandemic. Through incorporating real-time estimation of disease surveillance and epidemiological measures based on institutional data, we argue this approach helps minimize uncertainties in input parameters presented in the broader literature and increases prediction accuracy. We demonstrate this through case studies at Clemson and other university settings during the Omicron BA.1 and BA.4/BA.5 variant surges. The input parameters of our toolkit are easily adaptable to other institutional settings during future health emergencies. This methodological approach has potential to improve public health response through increasing the capability of institutions to make data-informed decisions that better prioritize the health and safety of their communities while minimizing operational disruptions.
各机构在传染病暴发期间实施量身定制的缓解措施的能力有所增强。然而,由于地方层面模型输入参数存在不确定性,宏观层面的预测模型在指导机构决策方面效率低下。我们展示了一个机构层面的建模工具包,该工具包在整个新冠疫情期间用于为克莱姆森大学的预测、资源采购与分配以及政策实施提供信息。通过纳入基于机构数据的疾病监测和流行病学措施的实时估计,我们认为这种方法有助于将更广泛文献中呈现的输入参数的不确定性降至最低,并提高预测准确性。我们通过克莱姆森大学以及其他大学在奥密克戎BA.1和BA.4/BA.5变种激增期间的案例研究来证明这一点。我们工具包的输入参数在未来卫生紧急情况期间很容易适用于其他机构环境。这种方法有潜力通过提高机构做出基于数据的决策的能力来改善公共卫生应对,这些决策能更好地优先保障其社区的健康和安全,同时将运营干扰降至最低。