Department of Electrical and Information Engineering, University of Oulu, Finland.
IEEE Trans Neural Syst Rehabil Eng. 2011 Apr;19(2):113-20. doi: 10.1109/TNSRE.2010.2098420. Epub 2010 Dec 10.
Increasing concentrations of anesthetics in the blood induce a continuum of neurophysiological changes, which reflect on the electroencephalogram (EEG). EEG-based depth of anesthesia assessment requires that the signal samples are correctly associated with the neurophysiological changes occurring at different anesthetic levels. A novel method is presented to estimate the phase of the continuum using the feature data extracted from EEG. The feature data calculated from EEG sequences corresponding to continuously deepening anesthesia are considered to form a one-dimensional nonlinear manifold in the multidimensional feature space. Utilizing a recently proposed algorithm, Isomap, the dimensionality of the feature data is reduced to achieve a one-dimensional embedding representing this manifold and thereby the continuum of neurophysiological changes during induction of anesthesia. The Isomap-based estimation is validated with data recorded from nine patients during induction of propofol anesthesia. The proposed method provides a novel approach to assess neurophysiological changes during anesthesia and offers potential for the development of more advanced systems for the depth of anesthesia monitoring.
随着血液中麻醉剂浓度的增加,会引起一系列神经生理变化,这反映在脑电图(EEG)上。基于脑电图的麻醉深度评估要求信号样本与不同麻醉水平下发生的神经生理变化正确相关。本文提出了一种新的方法,使用从 EEG 中提取的特征数据来估计连续体的相位。从对应于不断加深麻醉的 EEG 序列中计算出的特征数据被认为在多维特征空间中形成了一个一维非线性流形。利用最近提出的算法 Isomap,将特征数据的维数降低到实现一维嵌入,从而表示麻醉诱导期间神经生理变化的连续体。基于 Isomap 的估计方法通过来自九名患者在异丙酚麻醉诱导过程中记录的数据进行了验证。该方法为评估麻醉期间的神经生理变化提供了一种新方法,并为开发更先进的麻醉深度监测系统提供了潜力。