Ovcharenko Evgeny, Kutikhin Anton, Gruzdeva Olga, Kuzmina Anastasia, Slesareva Tamara, Brusina Elena, Kudasheva Svetlana, Bondarenko Tatiana, Kuzmenko Svetlana, Osyaev Nikolay, Ivannikova Natalia, Vavin Grigory, Moses Vadim, Danilov Viacheslav, Komossky Egor, Klyshnikov Kirill
Department of Experimental Medicine, Research Institute for Complex Issues of Cardiovascular Diseases, 6 Sosnovy Boulevard, 650002 Kemerovo, Russia.
Department of Epidemiology, Kemerovo State Medical University, 22a Voroshilova Street, 650056 Kemerovo, Russia.
J Cardiovasc Dev Dis. 2023 Jan 23;10(2):39. doi: 10.3390/jcdd10020039.
Here, we performed a multicenter, age- and sex-matched study to compare the efficiency of various machine learning algorithms in the prediction of COVID-19 fatal outcomes and to develop sensitive, specific, and robust artificial intelligence tools for the prompt triage of patients with severe COVID-19 in the intensive care unit setting. In a challenge against other established machine learning algorithms (decision trees, random forests, extra trees, neural networks, k-nearest neighbors, and gradient boosting: XGBoost, LightGBM, and CatBoost) and multivariate logistic regression as a reference, neural networks demonstrated the highest sensitivity, sufficient specificity, and excellent robustness. Further, neural networks based on coronary artery disease/chronic heart failure, stage 3-5 chronic kidney disease, blood urea nitrogen, and C-reactive protein as the predictors exceeded 90% sensitivity and 80% specificity, reaching AUROC of 0.866 at primary cross-validation and 0.849 at secondary cross-validation on virtual samples generated by the bootstrapping procedure. These results underscore the impact of cardiovascular and renal comorbidities in the context of thrombotic complications characteristic of severe COVID-19. As aforementioned predictors can be obtained from the case histories or are inexpensive to be measured at admission to the intensive care unit, we suggest this predictor composition is useful for the triage of critically ill COVID-19 patients.
在此,我们开展了一项多中心、年龄和性别匹配的研究,以比较各种机器学习算法在预测新冠病毒病(COVID-19)致命结局方面的效率,并开发灵敏、特异且稳健的人工智能工具,用于在重症监护病房环境中对重症COVID-19患者进行快速分诊。在与其他既定的机器学习算法(决策树、随机森林、极端随机树、神经网络、k近邻以及梯度提升:XGBoost、LightGBM和CatBoost)以及作为参照的多变量逻辑回归进行的较量中,神经网络表现出最高的灵敏度、足够的特异性和出色的稳健性。此外,以冠状动脉疾病/慢性心力衰竭、3 - 5期慢性肾脏病、血尿素氮和C反应蛋白作为预测指标的神经网络,灵敏度超过90%,特异性达到80%,在通过自助法程序生成的虚拟样本上,初次交叉验证时的受试者工作特征曲线下面积(AUROC)为0.866,二次交叉验证时为0.849。这些结果凸显了在重症COVID-19特有的血栓形成并发症背景下心血管和肾脏合并症的影响。由于上述预测指标可从病历中获取,或在重症监护病房入院时测量成本较低,我们认为这种预测指标组合对危重症COVID-19患者的分诊有用。