Predicting the negative conversion time of nonsevere COVID-19 patients using machine learning methods

被引:3
作者
Ye, Jiru [1 ]
Shao, Xiaonan [2 ]
Yang, Yong [3 ]
Zhu, Feng [4 ]
机构
[1] Soochow Univ, Affiliated Hosp 3, Dept Resp & Crit Care Med, Changzhou, Peoples R China
[2] Soochow Univ, Affiliated Hosp 3, Inst Clin Translat Nucl Med & Mol Imaging, Changzhou Clin Med Ctr,Dept Nucl Med, Changzhou, Peoples R China
[3] Soochow Univ, Affiliated Hosp 3, Dept Pediat, Changzhou 213003, Peoples R China
[4] Jiangnan Univ, Affiliated Wuxi Hosp 5, Wuxi Peoples Hosp 5, Dept Resp & Crit Care Med, Wuxi 214000, Peoples R China
关键词
COVID-19; machine learning; megative conversion time; omicrons; vaccination; VALIDATION; DURATION; VACCINES; NOMOGRAM;
D O I
10.1002/jmv.28747
中图分类号
Q93 [微生物学];
学科分类号
071005 ; 100705 ;
摘要
Based on the patient's clinical characteristics and laboratory indicators, different machine-learning methods were used to develop models for predicting the negative conversion time of nonsevere coronavirus disease 2019 (COVID-19) patients. A retrospective analysis was performed on 376 nonsevere COVID-19 patients admitted to Wuxi Fifth People's Hospital from May 2, 2022, to May 14, 2022. The patients were divided into training set (n = 309) and test set (n = 67). The clinical features and laboratory parameters of the patients were collected. In the training set, the least absolute shrinkage and selection operator (LASSO) was used to select predictive features and train six machine learning models: multiple linear regression (MLR), K-Nearest Neighbors Regression (KNNR), random forest regression (RFR), support vector machine regression (SVR), XGBoost regression (XGBR), and multilayer perceptron regression (MLPR). Seven best predictive features selected by LASSO included: age, gender, vaccination status, IgG, lymphocyte ratio, monocyte ratio, and lymphocyte count. The predictive performance of the models in the test set was MLPR > SVR > MLR > KNNR > XGBR > RFR, and MLPR had the strongest generalization performance, which is significantly better than SVR and MLR. In the MLPR model, vaccination status, IgG, lymphocyte count, and lymphocyte ratio were protective factors for negative conversion time; male gender, age, and monocyte ratio were risk factors. The top three features with the highest weights were vaccination status, gender, and IgG. Machine learning methods (especially MLPR) can effectively predict the negative conversion time of non-severe COVID-19 patients. It can help to rationally allocate limited medical resources and prevent disease transmission, especially during the Omicron pandemic.
引用
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页数:11
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