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Independent component analysis for human epileptic spikes extraction

机译:用于人类癫痫尖峰提取的独立成分分析

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In recent years, blind source separation (BSS) by independent component analysis (ICA) has been drawing much attention because of its potential applications in signal processing such as in speech recognition systems, telecommunication and medical signal processing. In this paper, two algorithms of independent component analysis (fixed-point ICA and natural gradient-flexible ICA) were adopted to extract human epileptic spikes from interferential signals. Experiment results show that epileptic spikes can be extracted from noise successfully. The kurtosis of the epileptic component signal separated is much better than that of other noisy signals. It shows that ICA is an effective tool to extract epileptic spikes from patients' electroencephalogram and shows promising application to assist physicians to diagnose epilepsy and estimate the epileptogenic region in clinic.
机译:近年来,通过独立成分分析(ICA)进行盲源分离(BSS)受到了广泛的关注,因为其在信号处理中的潜在应用,例如语音识别系统,电信和医学信号处理。本文采用两种独立成分分析算法(定点ICA和自然梯度柔韧性ICA)从干扰信号中提取人类癫痫发作峰。实验结果表明,可以成功地从噪声中提取出癫痫尖峰。分离的癫痫成分信号的峰度比其他噪声信号的峰度好得多。它表明,ICA是从患者脑电图中提取癫痫发作的有效工具,并且在帮助医生诊断癫痫和评估临床上的致癫痫区域方面显示出广阔的应用前景。

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