Acker Leah, Ha Christine, Zhou Junhong, Manor Brad, Giattino Charles M, Roberts Ken, Berger Miles, Wright Mary Cooter, Colon-Emeric Cathleen, Devinney Michael, Au Sandra, Woldorff Marty G, Lipsitz Lewis A, Whitson Heather E
Department of Anesthesiology, Duke University School of Medicine, Durham, NC, United States.
Duke Center for the Study of Aging and Human Development, Duke University School of Medicine, Durham, NC, United States.
Front Syst Neurosci. 2021 Nov 10;15:718769. doi: 10.3389/fnsys.2021.718769. eCollection 2021.
Physiologic signals such as the electroencephalogram (EEG) demonstrate irregular behaviors due to the interaction of multiple control processes operating over different time scales. The complexity of this behavior can be quantified using multi-scale entropy (MSE). High physiologic complexity denotes health, and a loss of complexity can predict adverse outcomes. Since postoperative delirium is particularly hard to predict, we investigated whether the complexity of preoperative and intraoperative frontal EEG signals could predict postoperative delirium and its endophenotype, inattention. To calculate MSE, the sample entropy of EEG recordings was computed at different time scales, then plotted against scale; complexity is the total area under the curve. MSE of frontal EEG recordings was computed in 50 patients ≥ age 60 before and during surgery. Average MSE was higher intra-operatively than pre-operatively ( = 0.0003). However, intraoperative EEG MSE was lower than preoperative MSE at smaller scales, but higher at larger scales (interaction < 0.001), creating a crossover point where, by definition, preoperative, and intraoperative MSE curves met. Overall, EEG complexity was not associated with delirium or attention. In 42/50 patients with single crossover points, the scale at which the intraoperative and preoperative entropy curves crossed showed an inverse relationship with delirium-severity score change (Spearman ρ = -0.31, = 0.054). Thus, average EEG complexity increases intra-operatively in older adults, but is scale dependent. The scale at which preoperative and intraoperative complexity is equal (i.e., the crossover point) may predict delirium. Future studies should assess whether the crossover point represents changes in neural control mechanisms that predispose patients to postoperative delirium.
诸如脑电图(EEG)等生理信号由于在不同时间尺度上运行的多个控制过程之间的相互作用而表现出不规则行为。这种行为的复杂性可以使用多尺度熵(MSE)进行量化。高生理复杂性表示健康,而复杂性的丧失可以预测不良后果。由于术后谵妄特别难以预测,我们研究了术前和术中额叶EEG信号的复杂性是否可以预测术后谵妄及其内表型——注意力不集中。为了计算MSE,在不同时间尺度上计算EEG记录的样本熵,然后绘制与尺度的关系图;复杂性是曲线下的总面积。对50名年龄≥60岁的患者在手术前和手术期间的额叶EEG记录进行了MSE计算。术中平均MSE高于术前( = 0.0003)。然而,术中EEG的MSE在较小尺度上低于术前MSE,但在较大尺度上更高(交互作用<0.001),从而产生了一个交叉点,根据定义,术前和术中的MSE曲线在此处相交。总体而言,EEG复杂性与谵妄或注意力无关。在42/50例有单个交叉点的患者中,术中与术前熵曲线交叉的尺度与谵妄严重程度评分变化呈负相关(Spearman ρ = -0.31, = 0.054)。因此,老年人术中EEG平均复杂性增加,但与尺度有关。术前和术中复杂性相等的尺度(即交叉点)可能预测谵妄。未来的研究应评估交叉点是否代表使患者易患术后谵妄的神经控制机制的变化。