Prognostic Model of COVID-19 Severity and Survival among Hospitalized Patients Using Machine Learning Techniques.

Ivano Lodato, Aditya Varna Iyer, Isaac Zachary To, Zhong-Yuan Lai, Helen Shuk-Ying Chan, Winnie Suk-Wai Leung, Tommy Hing-Cheung Tang, Victor Kai-Lam Cheung, Tak-Chiu Wu, George Wing-Yiu Ng
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引用次数: 4

Abstract

We conducted a statistical study and developed a machine learning model to triage COVID-19 patients affected during the height of the COVID-19 pandemic in Hong Kong based on their medical records and test results (features) collected during their hospitalization. The correlation between the values of these features is studied against discharge status and disease severity as a preliminary step to identify those features with a more pronounced effect on the patient outcome. Once identified, they constitute the inputs of four machine learning models, Decision Tree, Random Forest, Gradient and RUSBoosting, which predict both the Mortality and Severity associated with the disease. We test the accuracy of the models when the number of input features is varied, demonstrating their stability; i.e., the models are already highly predictive when run over a core set of (6) features. We show that Random Forest and Gradient Boosting classifiers are highly accurate in predicting patients' Mortality (average accuracy ∼99%) as well as categorize patients (average accuracy ∼91%) into four distinct risk classes (Severity of COVID-19 infection). Our methodical and broad approach combines statistical insights with various machine learning models, which paves the way forward in the AI-assisted triage and prognosis of COVID-19 cases, which is potentially generalizable to other seasonal flus.

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基于机器学习技术的住院患者COVID-19严重程度和生存预后模型
我们进行了统计研究,并开发了一个机器学习模型,根据住院期间收集的医疗记录和检测结果(特征)对香港COVID-19大流行高峰期感染的COVID-19患者进行分类。研究这些特征值与出院状态和疾病严重程度之间的相关性,作为初步步骤,以确定对患者预后有更明显影响的特征。一旦确定,它们构成四个机器学习模型的输入,决策树,随机森林,梯度和RUSBoosting,预测与疾病相关的死亡率和严重程度。当输入特征的数量变化时,我们测试了模型的准确性,证明了它们的稳定性;也就是说,当运行在一组核心特征上时,这些模型已经具有很高的预测性。我们发现随机森林和梯度增强分类器在预测患者死亡率(平均准确率~ 99%)以及将患者分类(平均准确率~ 91%)分为四个不同的风险类别(COVID-19感染的严重程度)方面非常准确。我们系统而广泛的方法将统计见解与各种机器学习模型相结合,为COVID-19病例的人工智能辅助分类和预后铺平了道路,这可能推广到其他季节性流感。
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