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Instantaneous 3D EEG Signal Analysis Based on Empirical Mode Decomposition and the Hilbert–Huang Transform Applied to Depth of Anaesthesia

机译:基于经验模态分解和Hilbert-Huang变换的瞬时3D脑电信号分析应用于麻醉深度

摘要

Depth of anaesthesia (DoA) is an important measure for assessing the degree to which the central nervous system of a patient is depressed by a general anaesthetic agent, depending on the potency and concentration with which anaesthesia is administered during surgery. We can monitor the DoA by observing the patient’s electroencephalography (EEG) signals during the surgical procedure. Typically high frequency EEG signals indicates the patient is conscious, while low frequency signals mean the patient is in a general anaesthetic state. If the anaesthetist is able to observe the instantaneous frequency changes of the patient’s EEG signals during surgery this can help to better regulate and monitor DoA, reducing surgical and post-operative risks. This paper describes an approach towards the development of a 3D real-time visualization application which can show the instantaneous frequency and instantaneous amplitude of EEG simultaneously by using empirical mode decomposition (EMD) and the Hilbert–Huang transform (HHT). HHT uses the EMD method to decompose a signal into so-called intrinsic mode functions (IMFs). The Hilbert spectral analysis method is then used to obtain instantaneous frequency data. The HHT provides a new method of analyzing non-stationary and nonlinear time series data. We investigate this approach by analyzing EEG data collected from patients undergoing surgical procedures. The results show that the EEG differences between three distinct surgical stages computed by using sample entropy (SampEn) are consistent with the expected differences between these stages based on the bispectral index (BIS), which has been shown to be quantifiable measure of the effect of anaesthetics on the central nervous system. Also, the proposed filtering approach is more effective compared to the standard filtering method in filtering out signal noise resulting in more consistent results than those provided by the BIS. The proposed approach is therefore able to distinguish between key operational stages related to DoA, which is consistent with the clinical observations. SampEn can also be viewed as a useful index for evaluating and monitoring the DoA of a patient when used in combination with this approach.
机译:麻醉深度(DoA)是评估一般麻醉剂对患者中枢神经系统压抑程度的重要措施,具体取决于手术过程中麻醉的效力和浓度。我们可以通过在手术过程中观察患者的脑电图(EEG)信号来监控DoA。通常,高频EEG信号表示患者有意识,而低频信号表示患者处于全身麻醉状态。如果麻醉师能够在手术期间观察患者脑电信号的瞬时频率变化,则可以帮助更好地调节和监测DoA,从而降低手术和术后风险。本文介绍了一种开发3D实时可视化应用程序的方法,该方法可以通过使用经验模式分解(EMD)和希尔伯特-黄氏变换(HHT)同时显示EEG的瞬时频率和瞬时振幅。 HHT使用EMD方法将信号分解为所谓的固有模式函数(IMF)。然后,使用希尔伯特频谱分析方法来获取瞬时频率数据。 HHT提供了一种分析非平稳和非线性时间序列数据的新方法。我们通过分析从接受外科手术的患者收集的脑电数据来研究这种方法。结果表明,使用样本熵(SampEn)计算的三个不同手术阶段之间的EEG差异与基于双光谱指数(BIS)的这些阶段之间的预期差异相一致,这已被证明可量化地评估脑电图的效果。中枢神经系统麻醉药。同样,与标准滤波方法相比,所提出的滤波方法在滤除信号噪声方面比BIS提供的结果更一致,因此更为有效。因此,所提出的方法能够区分与DoA相关的关键操作阶段,这与临床观察结果一致。当与该方法结合使用时,SampEn也可以被视为评估和监测患者DoA的有用指标。

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