Conceptual analysis of epilepsy classification using probabilistic mixture models

S. Prabhakar, H. Rajaguru
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引用次数: 14

Abstract

In the past two decades, the Electroencephalograph (EEG) dependent Brain Computer Interface (BCI) for analyzing and detecting the mental disorders especially epilepsy has triggered a lot of research interest in both biomedical industrial side and academia. The main ingredient of EEG dependent BCI are preprocessing of EEG signals, feature extraction of EEG signals and classification of EEG signals. Very rich and useful information about the electrical activities of the brain is provided by the EEG. The amplitude and frequency varies in the EEG signal when various mental tasks are executed. Due to the lengthy nature of the EEG data, computing it becomes quite hectic. Therefore in this paper, the dimensions of the lengthy EEG recorded data is reduced with the help of Principal Component Analysis (PCA), Expectation Maximization Based Principal Component Analysis (EM-PCA), Singular Value Decomposition (SVD) and Power Spectral Density (PSD). After reducing the dimensions, the new obtained dimensionally reduced values are classified to get the epilepsy risk level from EEG signals with the help of a probabilistic model called Gaussian Mixture Model (GMM). The result analysis is performed with the benchmark terms like Performance Index, Accuracy, Quality Value and Time Delay. The most promising result in this study shows that when PSD is implemented as a dimensionality reduction technique and when classified with GMM, an average high accuracy of 97.46% is attained along with an average Performance Index of 94.69%.
基于概率混合模型的癫痫分类概念分析
近二十年来,脑机接口(BCI)在分析和检测精神障碍特别是癫痫方面的应用引起了生物医学产业界和学术界的广泛关注。脑电信号依赖脑机接口的主要组成部分是脑电信号预处理、脑电信号特征提取和脑电信号分类。脑电图提供了关于大脑电活动的非常丰富和有用的信息。在执行各种脑力任务时,脑电图信号的幅度和频率会发生变化。由于脑电图数据的冗长性质,计算它变得相当忙碌。为此,本文采用主成分分析(PCA)、基于期望最大化的主成分分析(EM-PCA)、奇异值分解(SVD)和功率谱密度(PSD)等方法对长EEG记录数据进行降维。将降维后得到的新降维值进行分类,利用高斯混合模型(Gaussian Mixture model, GMM)从脑电信号中得到癫痫风险等级。使用性能指数、准确性、质量值和时间延迟等基准术语执行结果分析。本研究最有希望的结果是,当PSD作为降维技术实现时,当使用GMM分类时,平均准确率达到97.46%,平均性能指数达到94.69%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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