Department of Artificial Intelligence, The Catholic University of Korea, Bucheon, Republic of Korea.
Department of Trauma Surgery, Jeju Regional Trauma Center, Cheju Halla General Hospital, Jeju, Republic of Korea.
J Med Internet Res. 2021 Apr 19;23(4):e27060. doi: 10.2196/27060.
The number of deaths from COVID-19 continues to surge worldwide. In particular, if a patient's condition is sufficiently severe to require invasive ventilation, it is more likely to lead to death than to recovery.
The goal of our study was to analyze the factors related to COVID-19 severity in patients and to develop an artificial intelligence (AI) model to predict the severity of COVID-19 at an early stage.
We developed an AI model that predicts severity based on data from 5601 COVID-19 patients from all national and regional hospitals across South Korea as of April 2020. The clinical severity of COVID-19 was divided into two categories: low and high severity. The condition of patients in the low-severity group corresponded to no limit of activity, oxygen support with nasal prong or facial mask, and noninvasive ventilation. The condition of patients in the high-severity group corresponded to invasive ventilation, multi-organ failure with extracorporeal membrane oxygenation required, and death. For the AI model input, we used 37 variables from the medical records, including basic patient information, a physical index, initial examination findings, clinical findings, comorbid diseases, and general blood test results at an early stage. Feature importance analysis was performed with AdaBoost, random forest, and eXtreme Gradient Boosting (XGBoost); the AI model for predicting COVID-19 severity among patients was developed with a 5-layer deep neural network (DNN) with the 20 most important features, which were selected based on ranked feature importance analysis of 37 features from the comprehensive data set. The selection procedure was performed using sensitivity, specificity, accuracy, balanced accuracy, and area under the curve (AUC).
We found that age was the most important factor for predicting disease severity, followed by lymphocyte level, platelet count, and shortness of breath or dyspnea. Our proposed 5-layer DNN with the 20 most important features provided high sensitivity (90.2%), specificity (90.4%), accuracy (90.4%), balanced accuracy (90.3%), and AUC (0.96).
Our proposed AI model with the selected features was able to predict the severity of COVID-19 accurately. We also made a web application so that anyone can access the model. We believe that sharing the AI model with the public will be helpful in validating and improving its performance.
全球范围内,COVID-19 的死亡人数仍在持续飙升。特别是,如果患者的病情严重到需要进行有创性通气,那么死亡的可能性要高于康复。
本研究旨在分析与 COVID-19 患者病情严重程度相关的因素,并开发一种人工智能(AI)模型,以便在早期预测 COVID-19 的严重程度。
我们开发了一种基于截至 2020 年 4 月韩国所有国立和地区医院 5601 例 COVID-19 患者数据的 AI 模型,来预测严重程度。COVID-19 的临床严重程度分为两类:低严重程度和高严重程度。低严重程度组患者的情况对应于活动不受限制、使用鼻插管或面罩吸氧以及非侵入性通气。高严重程度组患者的情况对应于有创通气、需要体外膜氧合的多器官衰竭以及死亡。对于 AI 模型输入,我们使用了来自病历的 37 个变量,包括基本患者信息、身体指数、初始检查结果、临床发现、合并症以及早期的一般血液检查结果。使用 AdaBoost、随机森林和极端梯度提升(XGBoost)进行特征重要性分析;使用基于综合数据集的 37 个特征的排名特征重要性分析选择的 20 个最重要特征,通过 5 层深度神经网络(DNN)开发预测 COVID-19 患者严重程度的 AI 模型。选择过程基于敏感性、特异性、准确性、平衡准确性和曲线下面积(AUC)。
我们发现年龄是预测疾病严重程度的最重要因素,其次是淋巴细胞水平、血小板计数以及呼吸急促或呼吸困难。我们提出的 5 层 DNN 结合 20 个最重要特征,提供了高敏感性(90.2%)、特异性(90.4%)、准确性(90.4%)、平衡准确性(90.3%)和 AUC(0.96)。
我们提出的基于选定特征的 AI 模型能够准确预测 COVID-19 的严重程度。我们还开发了一个网络应用程序,以便任何人都可以访问该模型。我们相信,与公众分享 AI 模型将有助于验证和改进其性能。