基于临床血液检测数据的机器学习模型预测COVID-19

H. N, R. S
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摘要

2019冠状病毒病(COVID-19)全球大流行造成了严重问题,威胁到许多人的生命。为了有效地防治这种疾病,对感染者进行早期和精确的筛查至关重要。该研究使用的血液检测数据包括1736个实例和35个特征,这些数据是从圣拉斐尔医院急诊科收治的患者中收集的。为了预测患者的COVID-19, RT-PCR检测被广泛使用。一旦确定患者存在COVID-19,患者应联系医疗保健专业人员以确定病毒的严重程度,并应提供适当的医疗和支持性护理。应密切监测病人的病情,以确保他们的健康状况正在改善,并发现可能出现的任何并发症。为此,从患者身上采集的血液测试样本将有助于诊断他的病情和病毒的严重程度。在这项工作中,一种被称为递归特征消除(RFE)的特征选择技术被用来找出与患者中COVID-19存在高度相关的最优特征集。然后将使用RFE获得的特征应用于机器学习模型,使用随机森林分类器获得最佳结果,准确率为89%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of COVID-19 using Machine Learning Models based on Clinical Blood Test Data
The global pandemic of Coronavirus Disease 2019 (COVID-19) has caused serious problems and threatened the lives of many people. To effectively com-bat the disease, early and precise screening of infected individuals is essential. The study uses blood test data which comprises 1736 instances and 35 features that have been collected from the patients who were admitted to the emergency department at the San Raffaele Hospital. For predicting COVID-19 in patients, RT-PCR tests a-re widely used. Once a patient has been identified with the presence of COVID-19, the patient should approach a healthcare professional to determine the severity of the virus and appropriate medical treatment and supportive care should be provided. The patient’s condition should be closely monitored to ensure that their health is improving and to detect any complica-tions that may arise. For this purpose, blood test samples taken from the patient will help to diagnose his condition and the severity of the virus. In this work, a feature selection technique known as Recursive Feature Elimination (RFE) has been used to find out the optimal set of features that are highly related to the existence of COVID-19 in patients. The features obtained using RFE are then applied with a machine learning model and the best results are achieved using a Random Forest classifier with an accuracy of 89%.
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