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新冠疫情期间住院风险的个性化分层:一种机器学习方法。

Personalized stratification of hospitalization risk amidst COVID-19: A machine learning approach.

作者信息

Lam Carson, Calvert Jacob, Siefkas Anna, Barnes Gina, Pellegrini Emily, Green-Saxena Abigail, Hoffman Jana, Mao Qingqing, Das Ritankar

机构信息

Dascena, Inc., Houston, TX, United States.

出版信息

Health Policy Technol. 2021 Sep;10(3):100554. doi: 10.1016/j.hlpt.2021.100554. Epub 2021 Aug 4.

Abstract

In the wake of COVID-19, the United States (U.S.) developed a three stage plan to outline the parameters to determine when states may reopen businesses and ease travel restrictions. The guidelines also identify subpopulations of Americans deemed to be at high risk for severe disease should they contract COVID-19. These guidelines were based on population level demographics, rather than individual-level risk factors. As such, they may misidentify individuals at high risk for severe illness, and may therefore be of limited use in decisions surrounding resource allocation to vulnerable populations. The objective of this study was to evaluate a machine learning algorithm for prediction of serious illness due to COVID-19 using inpatient data collected from electronic health records. The algorithm was trained to identify patients for whom a diagnosis of COVID-19 was likely to result in hospitalization, and compared against four U.S. policy-based criteria: and . This algorithm identified 80% of patients at risk for hospitalization due to COVID-19, versus 62% identified by government guidelines. The algorithm also achieved a high specificity of 95%, outperforming government guidelines. This algorithm may identify individuals likely to require hospitalization should they contract COVID-19. This information may be useful to guide vaccine distribution, anticipate hospital resource needs, and assist health care policymakers to make care decisions in a more principled manner.

摘要

在新冠疫情之后,美国制定了一项三阶段计划,概述了确定各州何时可以重新开放企业并放宽旅行限制的参数。这些指导方针还确定了被认为在感染新冠病毒后患重病风险较高的美国亚人群体。这些指导方针基于人口层面的人口统计学数据,而非个人层面的风险因素。因此,它们可能会错误识别患重病风险较高的个体,因此在围绕向弱势群体分配资源的决策中可能用途有限。本研究的目的是使用从电子健康记录中收集的住院患者数据,评估一种用于预测新冠病毒所致重症的机器学习算法。该算法经过训练,以识别那些感染新冠病毒后可能需要住院治疗的患者,并与四项基于美国政策的标准进行比较。该算法识别出80%有因新冠病毒住院风险的患者,而政府指导方针识别出的比例为62%。该算法还实现了95%的高特异性,优于政府指导方针。该算法可以识别出感染新冠病毒后可能需要住院治疗的个体。这些信息可能有助于指导疫苗分发、预测医院资源需求,并协助医疗保健政策制定者更有原则地做出护理决策。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0869/8333026/734478cf466e/gr1_lrg.jpg

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