Department of Anaesthesiology, School of Medicine, University of Auckland, Private Bag 92019, Auckland, 1142, New Zealand.
Department of Mechanical and Mechatronics Engineering, University of Auckland, Auckland, 1142, New Zealand.
J Clin Monit Comput. 2024 Apr;38(2):363-371. doi: 10.1007/s10877-023-01054-w. Epub 2023 Jul 13.
Support-vector machines (SVMs) can potentially improve patient monitoring during nitrous oxide anaesthesia. By elucidating the effects of low-dose nitrous oxide on the power spectra of multi-channel EEG recordings, we quantified the degree to which these effects generalise across participants. In this single-blind, cross-over study, 32-channel EEG was recorded from 12 healthy participants exposed to 0, 20, 30 and 40% end-tidal nitrous oxide. Features of the delta-, theta-, alpha- and beta-band power were used within a 12-fold, participant-wise cross-validation framework to train and test two SVMs: (1) binary SVM classifying EEG during 0 or 40% exposure (chance = 50%); (2) multi-class SVM classifying EEG during 0, 20, 30 or 40% exposure (chance = 25%). Both the binary (accuracy 92%) and the multi-class (accuracy 52%) SVMs classified EEG recordings at rates significantly better than chance (p < 0.001 and p = 0.01, respectively). To determine the relative importance of frequency band features for classification accuracy, we systematically removed features before re-training and re-testing the SVMs. This showed the relative importance of decreased delta power and the frontal region. SVM classification identified that the most important effects of nitrous oxide were found in the delta band in the frontal electrodes that was consistent between participants. Furthermore, support-vector classification of nitrous oxide dosage is a promising method that might be used to improve patient monitoring during nitrous oxide anaesthesia.
支持向量机(SVMs)有可能改善氧化亚氮麻醉期间的患者监测。通过阐明低剂量氧化亚氮对多通道脑电图记录的功率谱的影响,我们量化了这些影响在参与者之间的普遍性程度。在这项单盲、交叉研究中,12 名健康参与者接受了 0、20、30 和 40%呼气末氧化亚氮暴露,记录了 32 通道脑电图。在 12 倍、参与者特异性交叉验证框架内,使用 delta、theta、alpha 和 beta 波段功率特征来训练和测试两个 SVM:(1) 二进制 SVM,分类 0 或 40%暴露期间的脑电图(机会 = 50%);(2) 多类 SVM,分类 0、20、30 或 40%暴露期间的脑电图(机会 = 25%)。二进制(准确率 92%)和多类(准确率 52%)SVM 对脑电图记录的分类率均显著优于机会水平(p < 0.001 和 p = 0.01,分别)。为了确定频率带特征对分类准确率的相对重要性,我们在重新训练和重新测试 SVM 之前系统地删除了特征。这表明 delta 功率降低和额区的相对重要性。SVM 分类确定,氧化亚氮的最重要影响是在额部电极的 delta 波段,这在参与者之间是一致的。此外,氧化亚氮剂量的支持向量分类是一种很有前途的方法,可能用于改善氧化亚氮麻醉期间的患者监测。