Implementing Neural Network and Multi resolution analysis in EEG signal for early detection of epilepsy

Sachin Shrestha, Rupesh Dahi Shrestha, Bhojraj Thapa
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引用次数: 3

Abstract

Epilepsy is a neurological disorder of brain and the electroencephalogram (EEG) signals are commonly used to detect the epileptic seizures, the result of abnormal electrical activity in the brain. This paper focuses on the analysis of EEG signal to detect the presence of the epileptic seizure prior to its occurrence. The result could aid the individual in the initiation of delay sensitive diagnostic, therapeutic and alerting procedures. The methodology involves the multi resolution analysis (MRA) of the EEG signals of epileptic patient. MRA is carried out using discrete wavelet transform with daubechies 8 as the mother wavelet. For EEG data, the database of MIT-BIH of seven patients with different cases of epileptic seizure was used. The result with one of the patients showed presence of a unique pattern during the spectral analysis of the signal over different bands. Hence, based on the first patient, similar region is selected with the other patients and the multi-resolution analysis along with the principal component analysis (PCA) for the dimension reduction is carried out. Finally, these are treated with neural network to perform the classification of the signal either the epilepsy is occurring or not. The final results showed 100% accuracy with the detection with the neural network however it uses a large amount of data for analysis. Thus, the same was tested with dimension reduction using PCA which reduced the average accuracy to 89.51%. All the results have been simulated within the Matlab environment.
应用神经网络和多分辨率分析对脑电图信号进行早期检测
癫痫是一种脑部神经系统疾病,脑电图(EEG)信号通常用于检测癫痫发作,这是大脑中异常电活动的结果。本文的重点是对脑电图信号进行分析,在癫痫发作前检测其是否存在。该结果可以帮助个体启动延迟敏感的诊断、治疗和警报程序。该方法包括对癫痫病人脑电图信号进行多分辨率分析。MRA采用离散小波变换进行,母小波为daubechies 8。脑电数据采用7例不同癫痫发作病例的MIT-BIH数据库。其中一名患者的结果显示,在不同波段的信号频谱分析中存在独特的模式。因此,在第一个患者的基础上,选择与其他患者相似的区域,并进行多分辨率分析和主成分分析(PCA)降维。最后,用神经网络对这些信号进行分类,判断癫痫是否发生。最终结果表明,神经网络检测的准确率为100%,但它使用了大量的数据进行分析。因此,使用PCA进行降维测试,将平均准确率降低到89.51%。所有结果都在Matlab环境中进行了仿真。
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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