Utilization of machine-learning models to accurately predict the risk for critical COVID-19

被引:0
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作者
Dan Assaf
Ya’ara Gutman
Yair Neuman
Gad Segal
Sharon Amit
Shiraz Gefen-Halevi
Noya Shilo
Avi Epstein
Ronit Mor-Cohen
Asaf Biber
Galia Rahav
Itzchak Levy
Amit Tirosh
机构
[1] Tel Aviv University,Sackler Faculty of Medicine
[2] The Chaim Sheba Medical Center,Surgery C Department
[3] The Chaim Sheba Medical Center,Corona Department and Internal Medicine “T”
[4] The Chaim Sheba Medical Center,Clinical Microbiology Laboratory
[5] The Chaim Sheba Medical Center,Corona Intensive Care Unit
[6] The Chaim Sheba Medical Center,Department of Emergency Medicine
[7] The Chaim Sheba Medical Center,Endocrine Oncology Bioinformatics Lab
[8] Tel Aviv University,Infectious Diseases Unit
[9] The Chaim Sheba Medical Center,The Department of Cognitive and Brain Sciences
[10] Ben-Gurion University of the Negev,undefined
来源
关键词
COVID-19; Prediction; Risk stratification; Machine learning; Disease severity;
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学科分类号
摘要
Among patients with Coronavirus disease (COVID-19), the ability to identify patients at risk for deterioration during their hospital stay is essential for effective patient allocation and management. To predict patient risk for critical COVID-19 based on status at admission using machine-learning models. Retrospective study based on a database of tertiary medical center with designated departments for patients with COVID-19. Patients with severe COVID-19 at admission, based on low oxygen saturation, low partial arterial oxygen pressure, were excluded. The primary outcome was risk for critical disease, defined as mechanical ventilation, multi-organ failure, admission to the ICU, and/or death. Three different machine-learning models were used to predict patient deterioration and compared to currently suggested predictors and to the APACHEII risk-prediction score. Among 6995 patients evaluated, 162 were hospitalized with non-severe COVID-19, of them, 25 (15.4%) patients deteriorated to critical COVID-19. Machine-learning models outperformed the all other parameters, including the APACHE II score (ROC AUC of 0.92 vs. 0.79, respectively), reaching 88.0% sensitivity, 92.7% specificity and 92.0% accuracy in predicting critical COVID-19. The most contributory variables to the models were APACHE II score, white blood cell count, time from symptoms to admission, oxygen saturation and blood lymphocytes count. Machine-learning models demonstrated high efficacy in predicting critical COVID-19 compared to the most efficacious tools available. Hence, artificial intelligence may be applied for accurate risk prediction of patients with COVID-19, to optimize patients triage and in-hospital allocation, better prioritization of medical resources and improved overall management of the COVID-19 pandemic.
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页码:1435 / 1443
页数:8
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