术前脑电图和患者特征预测术中爆发抑制。

International journal of neural systems Pub Date : 2025-06-01 Epub Date: 2025-04-16 DOI:10.1142/S0129065725500339
Jingyi He, Joël M H Karel, Marcus L F Janssen, Erik D Gommer, Catherine J Vossen, Enrique Hortal
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引用次数: 0

摘要

突发抑制(BS)是在全身麻醉患者中观察到的一种脑电图(EEG)模式。BS的发生与术后谵妄、恢复时间延长、术后死亡率增加等不良结局相关。BS的检测和预测有助于加快对患者病情的评估,优化麻醉给药,提高患者安全。本研究探讨了术中脑电图自动检测BS和术前脑电图信号和患者特征预测BS的潜力。对在马斯特里赫特大学医学中心接受颈动脉内膜切除术的287例患者的数据集进行了分析。使用麻省理工学院的T. Zhan开发的EEG工具箱对BS进行自动检测/标注,同时使用5个机器学习分类器根据术前数据预测BS的发生。基于脑电图专家手工注释的160例患者(关于是否存在BS),自动检测工具的准确率为0.75。对于BS预测任务,评估了120例患者的初始子集,表现一般,其中k -最近邻([公式:见文本])分类器获得了最佳结果,准确率为0.72。随后的实验表明,增加患者数量(通过使用詹工具箱注释未标记的实例),应用SMOTE来平衡训练集,丰富特征集是有益的。最后的实验证明了显著的改进,随机森林和梯度增强优于其他分类器,实现了0.86的准确率和0.94的ROC-AUC。患者特征,包括麻醉剂类型、症状、年龄、平均绝对θ波功率、平均绝对θ波功率和认知障碍,通过xAI方法确定为可能提示BS易感性的重要特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Intraoperative Burst Suppression Using Preoperative EEG and Patient Characteristics.

Burst suppression (BS) is an electroencephalogram (EEG) pattern observed in patients undergoing general anesthesia. The occurrence of BS is associated with adverse outcomes such as postoperative delirium, extended recovery time, and increased postoperative mortality. The detection and prediction of BS can help expedite the evaluation of patient conditions, optimize anesthesia administration, and improve patient safety. This study explores the potential for automatic BS detection using intraoperative EEG and BS prediction using preoperative EEG signals and patient characteristics. A dataset comprising 287 patients who underwent carotid endarterectomy procedures at Maastricht University Medical Center+ was analyzed. An EEG toolbox developed by T. Zhan at the Massachusetts Institute of Technology was utilized for the automatic detection/annotation of BS, while five machine learning classifiers were employed to predict BS occurrence using preoperative data. Based on the 160 patients manually annotated by EEG experts (regarding the presence or absence of BS), the automatic detection tool demonstrated an accuracy of 0.75. For the BS prediction task, an initial subset of 120 patients was evaluated, showing modest performance, with the K-nearest neighbors ([Formula: see text]) classifier achieving the best results, with an accuracy of 0.72. Subsequent experiments indicated that increasing the number of patients (by using Zhan's Toolbox to annotate the unlabeled instances), applying SMOTE to balance the training set, and enriching the feature set was beneficial. The final experiment demonstrated a significant improvement, with Random Forest and Gradient Boosting outperforming other classifiers, achieving an accuracy of 0.86 and ROC-AUC of 0.94. Patient characteristics, including type of anesthetic agents, symptoms, age, mean absolute delta power, mean absolute theta power, and cognitive impairment, were identified by an xAI method as important features potentially indicating the predisposition to experience BS.

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