Predicting Criticality in COVID-19 Patients

Roger A. Hallman, Anjali Chikkula, T. Prioleau
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引用次数: 4

Abstract

The COVID-19 pandemic has infected millions of people around the world, spreading rapidly and causing a flood of patients that risk overwhelming clinical facilities. Whether in urban or rural areas, hospitals have limited resources and personnel to treat critical infections in intensive care units, which must be allocated effectively. To assist clinical staff in deciding which patients are in the greatest need of critical care, we develop a predictive model based on a publicly-available data set that is rich in clinical markers. We perform statistical analysis to determine which clinical markers strongly correlate with hospital admission, semi-intensive care, and intensive care for COVID-19 patients. We create a predictive model that will assist clinical personnel in determining COVID-19 patient prognosis. Additionally, we take a step towards a global framework for COVID-19 prognosis prediction by incorporating statistical data for geographically and ethnically diverse COVID--19 patient sets into our own model. To the best of our knowledge, this is the first model which does not exclusively utilize local data.
预测COVID-19患者的危重性
COVID-19大流行已经感染了全球数百万人,传播迅速,导致患者大量涌入,有可能使临床设施不堪重负。无论是在城市还是农村地区,医院在重症监护病房治疗重症感染的资源和人员有限,必须有效分配。为了帮助临床工作人员决定哪些患者最需要重症监护,我们基于丰富的临床标志物的公开数据集开发了一个预测模型。我们进行统计分析,以确定哪些临床指标与COVID-19患者住院、半重症监护和重症监护密切相关。我们创建了一个预测模型,帮助临床人员确定COVID-19患者的预后。此外,通过将地理和种族不同的COVID-19患者集的统计数据纳入我们自己的模型,我们朝着构建COVID-19预后预测的全球框架迈出了一步。据我们所知,这是第一个不完全利用本地数据的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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