Basic and Molecular Epidemiology of Gastrointestinal Disorders Research Center, Research Institute for Gastroenterology and Liver Diseases, Shahid Beheshti University of Medical Sciences, Tehran, Iran.
Department of Surgery, Center for Surgery and Public Health, Brigham and Women's Hospital, Harvard Medical School and Harvard T.H Chan School of Public Health, Boston, MA, USA.
Sci Rep. 2023 Feb 10;13(1):2399. doi: 10.1038/s41598-023-28943-z.
We aimed to propose a mortality risk prediction model using on-admission clinical and laboratory predictors. We used a dataset of confirmed COVID-19 patients admitted to three general hospitals in Tehran. Clinical and laboratory values were gathered on admission. Six different machine learning models and two feature selection methods were used to assess the risk of in-hospital mortality. The proposed model was selected using the area under the receiver operator curve (AUC). Furthermore, a dataset from an additional hospital was used for external validation. 5320 hospitalized COVID-19 patients were enrolled in the study, with a mortality rate of 17.24% (N = 917). Among 82 features, ten laboratories and 27 clinical features were selected by LASSO. All methods showed acceptable performance (AUC > 80%), except for K-nearest neighbor. Our proposed deep neural network on features selected by LASSO showed AUC scores of 83.4% and 82.8% in internal and external validation, respectively. Furthermore, our imputer worked efficiently when two out of ten laboratory parameters were missing (AUC = 81.8%). We worked intimately with healthcare professionals to provide a tool that can solve real-world needs. Our model confirmed the potential of machine learning methods for use in clinical practice as a decision-support system.
我们旨在提出一种基于入院时临床和实验室预测因素的死亡率风险预测模型。我们使用了来自德黑兰三家综合医院的确诊 COVID-19 患者数据集。入院时收集了临床和实验室值。使用了六种不同的机器学习模型和两种特征选择方法来评估住院死亡率风险。使用接收者操作特征曲线(AUC)下面积选择提出的模型。此外,还使用了来自另一家医院的数据集进行外部验证。本研究共纳入了 5320 名住院 COVID-19 患者,死亡率为 17.24%(N=917)。在 82 个特征中,LASSO 选择了 10 个实验室和 27 个临床特征。除了 K-最近邻法外,所有方法的表现均尚可(AUC>80%)。我们提出的基于 LASSO 选择特征的深度神经网络在内部和外部验证中的 AUC 评分为 83.4%和 82.8%。此外,当十个实验室参数中有两个缺失时,我们的插补器的效果非常好(AUC=81.8%)。我们与医疗保健专业人员密切合作,提供了一种能够满足实际需求的工具。我们的模型证实了机器学习方法在临床实践中作为决策支持系统的应用潜力。