基于小波变换和多重分形分析的生物医学脑电信号分析

D. Easwaramoorthy, R. Uthayakumar
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引用次数: 35

摘要

分形分析是脑电图等生物医学信号非线性分析中发展较好的理论。脑电信号本质上是多尺度分形,即多重分形。因此,广义分形维数(GFD)等多重分形度量可以作为计算癫痫患者生物医学信号的紊乱程度、复杂性、不规则性和混沌性的有用工具。我们组织了一种从健康受试者和癫痫患者的脑电图数据中检测癫痫发作的新方案。该方案基于脑电信号的GFD和离散小波变换(DWT)分析。首先利用DWT将脑电信号分解为近似系数和细节系数,然后计算原始脑电信号的GFD值、近似系数和细节系数。在健康和癫痫脑电图的GFD值之间发现了显着差异,表明我们检测癫痫发作的准确性很高。不采用小波变换作为预处理步骤,检测率很低。通过图形和统计工具论证了所提出的思想。因此,基于GFD的多重分形分析和基于DWT的小波分解是癫痫患者疾病状态的有力检测器和指示器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of biomedical EEG signals using Wavelet Transforms and Multifractal Analysis
Fractal Analysis is the well developed theory in the Non-linear Analysis of Biomedical Signals such as Electroencephalogram (EEG). EEG signal is essentially multi scale fractal, i.e. Multifractal. Therefore Multifractal measures such as Generalized Fractal Dimensions (GFD), could be a useful tool to compute the degree of disorders, complexity, irregularity and chaotic nature of the Biomedical Signals of the Epileptic patients. We organized a novel scheme for detecting epileptic seizures from EEG data recorded from Healthy subjects and Epileptic patients. The scheme was based on GFD and the Discrete Wavelet Transform (DWT) analysis of EEG signals. First EEG signals were decomposed into approximation and detail coefficients using DWT and then GFD values of the original EEGs, approximation and detail coefficients were computed. Significant differences were found between the GFD values of the Healthy and Epileptic EEGs showing us to detect seizures with high accuracy. Without DWT as preprocessing step, it was shown that the detection rate is very less. The proposed idea was demonstrated through the graphical and statistical tools. Hence we conclude that the Multifractal Analysis based on GFD and the Wavelet Decomposition through DWT are the strong detectors and indicators of the state of illness of the Epileptic Patients.
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