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Measuring the hypnotic depth of anaesthesia based on the EEG signal using combined wavelet transform, eigenvector and normalisation techniques

机译:结合小波变换,特征向量和归一化技术基于EEG信号测量麻醉的催眠深度

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摘要

This paper presents a new index to measure the hypnotic depth of anaesthesia (DoA) using EEG signals. This index is derived from applying combined Wavelet transform, eigenvector and normalisation techniques. The eigenvector method is first applied to build a feature function for six levels of coefficients in a discrete wavelet transform (DWT). The best Daubechies wavelet and their ranking value . p are optimally determined to identify different states of anaesthesia. A statistic normalisation process is then carried out to re-scale data and compute the hypnotic depth of anaesthesia. Finally, a new function ZDoA is proposed to compute a DoA index which corresponds one of the five depths of anaesthesia states to very deep anaesthesia, deep anaesthesia, moderate anaesthesia, light anaesthesia and awake. Simulation results based on real anaesthetised EEGs demonstrate that the new index generally parallels the BIS index. In particular, the ZDoA index is often faster than the BIS index to react to the transition period between consciousness and unconsciousness for this data set. A Bland-Altman plot indicates a 95.23% agreement between the ZDoA and BIS indices. The ZDoA trend is responsive, and its movement is consistent with the clinically observed and recorded changes of the patients.
机译:本文提出了一种使用EEG信号测量麻醉的催眠深度(DoA)的新指标。该指数是通过应用组合的小波变换,特征向量和归一化技术得出的。首先使用特征向量方法来为离散小波变换(DWT)中的六级系数构建特征函数。最佳Daubechies小波及其排序价值。最佳确定p以识别不同的麻醉状态。然后执行统计归一化过程以重新缩放数据并计算麻醉的催眠深度。最后,提出了一个新的函数ZDoA来计算DoA指数,该指数对应于五种麻醉状态的深度之一,分别对应于非常深的麻醉,深麻醉,中度麻醉,轻度麻醉和清醒。基于实际麻醉的脑电图的模拟结果表明,新指数通常与BIS指数相似。特别是,对于该数据集,ZDoA索引通常比BIS索引快,以应对有意识和无意识之间的过渡期。 Bland-Altman图表明ZDoA和BIS指数之间的一致性为95.23%。 ZDoA趋势是响应性的,其运动与临床观察和记录的患者变化一致。

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