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Classification of EEG recordings by using fast independent component analysis and artificial neural network.

机译:使用快速独立成分分析和人工神经网络对脑电记录进行分类。

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摘要

Since there is no definite decisive factor evaluated by the experts, visual analysis of EEG signals in time domain may be inadequate. Routine clinical diagnosis requests to analysis of EEG signals. Therefore, a number of automation and computer techniques have been used for this aim. In this study we aim at designing a MLPNN classifier based on the Fast ICA that accurately identifies whether the associated subject is normal or epileptic. By analyzing a data set consisting of 100 normal and 100 epileptic EEG time series, we have found that the MLPNN classifier based on the Fast ICA achieved and sensitivity rate of 98%, and specificity rate of 90.5%. The results demonstrate that the testing performance of the neural network diagnostic system is found to be satisfactory and we think that this system can be used in clinical studies. Since the time series analysis of EEG signals is unsatisfactory and requires specialist clinicians to evaluate, this application brings objectivity to the evaluation of EEG signals.
机译:由于没有专家评估确定的决定性因素,因此对时域的脑电信号进行视觉分析可能不够充分。常规临床诊断要求分析脑电信号。因此,为此目的已经使用了许多自动化和计算机技术。在这项研究中,我们旨在基于快速ICA设计MLPNN分类器,以准确识别相关对象是正常还是癫痫。通过分析由100个正常和100个癫痫性脑电图时间序列组成的数据集,我们发现基于Fast ICA的MLPNN分类器实现了98%的敏感性和98.5%的特异性。结果表明神经网络诊断系统的测试性能令人满意,我们认为该系统可用于临床研究。由于EEG信号的时间序列分析不能令人满意,并且需要专业的临床医生进行评估,因此该应用为EEG信号的评估带来了客观性。

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