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Quantifying the depth of anesthesia based on brain activity signal modeling

机译:基于脑活动信号建模量化麻醉深度

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Various methods of assessing the depth of anesthesia (DoA) and reducing intraoperative awareness during general anesthesia have been extensively studied in anesthesiology. However, most of the DoA monitors do not include brain activity signal modeling. Here, we propose a new algorithm termed the cortical activity index (CAI) based on the brain activity signals. In this study, we enrolled 32 patients who underwent laparoscopic cholecystectomy. Raw electroencephalography (EEG) signals were acquired at a sampling rate of 128 Hz using BIS-VISTA TM with standard bispectral index (BIS) sensors. All data were stored on a computer for further analysis. The similarities and difference among spectral entropy , the BIS, and CAI were analyzed. Pearson correlation coefficient between the BIS and CAI was 0.825. The result of fitting the semiparametric regression models is the method CAI estimate (?0.00995; P = .0341). It is the estimated difference in the mean of the dependent variable between method BIS and CAI. The CAI algorithm, a simple and intuitive algorithm based on brain activity signal modeling, suggests an intrinsic relationship between the DoA and the EEG waveform. We suggest that the CAI algorithm might be used to quantify the DoA.
机译:在麻醉学中已经广泛研究了评估麻醉深度(DOA)的深度和减少术中感知的各种方法。然而,大多数DOA监视器不包括大脑活动信号建模。在这里,我们提出了一种基于大脑活动信号称为皮质活动指数(CAI)的新算法。在这项研究中,我们注册了32名接受腹腔镜胆囊切除术的患者。使用标准双光谱指数(BIS)传感器的BIS-VISTA TM以128Hz的采样率获得原始脑电图(EEG)信号。所有数据都存储在计算机上,以进一步分析。分析了光谱熵,BIS和CAI之间的相似性和差异。 BIS和CAI之间的Pearson相关系数为0.825。拟合半甲基回归模型的结果是CAI估计的方法(?0.00995; p = .0341)。它是方法BIS和CAI之间的依赖变量的平均值的估计差异。 CAI算法,一种基于大脑活动信号建模的简单直观算法,表明了DOA和EEG波形之间的内在关系。我们建议CAI算法可用于量化DOA。

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