Department of Cardiovascular Surgery, The Affiliated Hospital of Southwest Medical University, Luzhou, 646000, Sichuan, China.
Department of Anesthesiology, The Affiliated Traditional Chinese Medicine Hospital of Southwest Medical University, Luzhou, 646000, Sichuan, China.
Comput Biol Med. 2024 Feb;169:107818. doi: 10.1016/j.compbiomed.2023.107818. Epub 2023 Dec 12.
Postoperative delirium (POD) is a common postoperative complication in elderly patients, especially those undergoing cardiac surgery, which seriously affects the short- and long-term prognosis of patients. Early identification of risk factors for the development of POD can help improve the perioperative management of surgical patients. In the present study, five machine learning models were developed to predict patients at high risk of delirium after cardiac surgery and their performance was compared.
A total of 367 patients who underwent cardiac surgery were retrospectively included in this study. Using single-factor analysis, 21 risk factors for POD were selected for inclusion in machine learning. The dataset was divided using 10-fold cross-validation for model training and testing. Five machine learning models (random forest (RF), support vector machine (SVM), radial based kernel neural network (RBFNN), K-nearest neighbour (KNN), and Kernel ridge regression (KRR)) were compared using area under the receiver operating characteristic curve (AUC-ROC), accuracy (ACC), sensitivity (SN), specificity (SPE), and Matthews coefficient (MCC).
Among 367 patients, 105 patients developed POD, the incidence of delirium was 28.6 %. Among the five ML models, RF had the best performance in ACC (87.99 %), SN (69.27 %), SPE (95.38 %), MCC (70.00 %) and AUC (0.9202), which was far superior to the other four models.
Delirium is common in patients after cardiac surgery. This analysis confirms the importance of the computational ML models in predicting the occurrence of delirium after cardiac surgery, especially the outstanding performance of the RF model, which has practical clinical applications for early identification of patients at risk of developing POD.
术后谵妄(POD)是老年患者,尤其是接受心脏手术的患者常见的术后并发症,严重影响患者的短期和长期预后。早期识别 POD 发生的危险因素有助于改善手术患者的围手术期管理。在本研究中,开发了 5 种机器学习模型来预测心脏手术后发生谵妄的高危患者,并比较了它们的性能。
回顾性纳入 367 例接受心脏手术的患者。采用单因素分析,选择 21 个 POD 危险因素纳入机器学习。使用 10 折交叉验证对数据集进行模型训练和测试。使用受试者工作特征曲线下面积(AUC-ROC)、准确性(ACC)、敏感度(SN)、特异度(SPE)和马修斯相关系数(MCC)比较 5 种机器学习模型(随机森林(RF)、支持向量机(SVM)、径向基核神经网络(RBFNN)、K-最近邻(KNN)和核岭回归(KRR))。
在 367 例患者中,105 例发生 POD,谵妄发生率为 28.6%。在 5 种 ML 模型中,RF 在 ACC(87.99%)、SN(69.27%)、SPE(95.38%)、MCC(70.00%)和 AUC(0.9202)方面表现最佳,明显优于其他四种模型。
心脏手术后患者谵妄很常见。本分析证实了计算 ML 模型在预测心脏手术后谵妄发生中的重要性,尤其是 RF 模型的出色表现,对早期识别发生 POD 的高危患者具有实际的临床应用价值。