Predicting the Need for ICU Admission in COVID-19 Patients Using XGBoost
作者机构:College of Computer and Information SciencesJouf UniversitySakakaKSA Faculty of EngineeringAl Azhar UniversityCairoEgypt Faculty of Mathematical and Computer SciencesUniversity of GeziraWad MadaniSudan Faculty of MedicineAl Azhar UniversityCairoEgypt College of MedicineShaqra UniversityKSA
出 版 物:《Computers, Materials & Continua》 (计算机、材料和连续体(英文))
年 卷 期:2021年第69卷第11期
页 面:2077-2092页
核心收录:
学科分类:0831[工学-生物医学工程(可授工学、理学、医学学位)] 0808[工学-电气工程] 0809[工学-电子科学与技术(可授工学、理学学位)] 08[工学] 0805[工学-材料科学与工程(可授工学、理学学位)] 0701[理学-数学] 0812[工学-计算机科学与技术(可授工学、理学学位)] 0801[工学-力学(可授工学、理学学位)]
主 题:COVID-19 ICU admission XGBoost
摘 要:It is important to determine early on which patients require ICU admissions in managing COVID-19 especially when medical resources are limited.Delay in ICU admissions is associated with negative outcomes such as mortality and cost.Therefore,early identification of patients with a high risk of respiratory failure can prevent complications,enhance risk stratification,and improve the outcomes of severely-ill hospitalized patients.In this paper,we develop a model that uses the characteristics and information collected at the time of patients’admissions and during their early period of hospitalization to accurately predict whether they will need ICU admissions.We use the data explained and organized in a window-based manner by the Sírio-Libanês hospital team(published on Kaggle).Preprocessing is applied,including imputation,cleaning,and feature selection.In the cleaning process,we remove zero-variance,redundant,and/or highly correlated(measured by the Pearson correlation coefficient)features.We use Extreme Gradient Boosting(XGBoost)with early stopping as a predictor in our developed model.We run the experiment in four stages starting from the features of Window 1 in Stage 1 and then incrementally add the features of Windows 2–4 in Stages 2–4 respectively.We achieve AUCs of 0.73,0.92,0.95,and 0.97 in those four stages.