Department of Marketing and Business Analytics, San Jose State University, San Jose, CA.
School of Operations Research and Information Engineering, and Cornell Institute for Disease and Disaster Preparedness, Cornell University, Ithaca, NY.
Disaster Med Public Health Prep. 2022 Feb;16(1):390-397. doi: 10.1017/dmp.2020.332. Epub 2020 Sep 10.
Health system preparedness for coronavirus disease (COVID-19) includes projecting the number and timing of cases requiring various types of treatment. Several tools were developed to assist in this planning process. This review highlights models that project both caseload and hospital capacity requirements over time.
We systematically reviewed the medical and engineering literature according to Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) guidelines. We completed searches using PubMed, EMBASE, ISI Web of Science, Google Scholar, and the Google search engine.
The search strategy identified 690 articles. For a detailed review, we selected 6 models that met our predefined criteria. Half of the models did not include age-stratified parameters, and only 1 included the option to represent a second wave. Hospital patient flow was simplified in all models; however, some considered more complex patient pathways. One model included fatality ratios with length of stay (LOS) adjustments for survivors versus those who die, and accommodated different LOS for critical care patients with or without a ventilator.
The results of our study provide information to physicians, hospital administrators, emergency response personnel, and governmental agencies on available models for preparing scenario-based plans for responding to the COVID-19 or similar type of outbreak.
冠状病毒病(COVID-19)的卫生系统准备工作包括预测需要各种类型治疗的病例数量和时间。为此开发了几种工具来协助这一规划过程。本综述重点介绍了随时间推移预测病例量和医院容量需求的模型。
我们根据系统评价和荟萃分析的首选报告项目(PRISMA)指南对医学和工程文献进行了系统回顾。我们使用 PubMed、EMBASE、ISI Web of Science、Google Scholar 和 Google 搜索引擎完成了搜索。
搜索策略确定了 690 篇文章。为了进行详细审查,我们选择了符合我们预定义标准的 6 个模型。其中一半的模型没有包括年龄分层参数,只有 1 个模型包括表示第二波的选项。所有模型都简化了医院患者流程;然而,有些模型考虑了更复杂的患者路径。一个模型包括病死率和幸存者与死亡者的住院时间(LOS)调整,以及为有或没有呼吸机的重症监护患者提供不同的 LOS。
我们的研究结果为医生、医院管理人员、应急响应人员和政府机构提供了有关现有模型的信息,这些模型可用于制定基于情景的计划,以应对 COVID-19 或类似类型的疫情。