论文标题
使用神经网络和小波变换比较基于EEG的癫痫诊断
Comparison of EEG based epilepsy diagnosis using neural networks and wavelet transform
论文作者
论文摘要
癫痫是以复发性和无法控制的癫痫发作为特征的常见神经系统疾病之一,严重影响了患者的生命。在许多情况下,脑电图信号可以提供有关可用于诊断癫痫的人脑活动的重要生理信息。但是,对大量脑电图信号的目视检查非常耗时,通常会导致医生诊断的不一致。大脑信号异常的定量可以表明脑状况和病理,因此脑电图(EEG)信号在诊断癫痫中起关键作用。在本文中,已经尝试创建单个指令来诊断癫痫,该指令由两个步骤组成。在第一步中,设计了一个低通滤波器来预处理数据,并设计了三个单独的中通滤波器,用于不同的频带和多层神经网络。在第二步中,小波变换技术用于处理数据。特别是,本文提出了一个多层感知神经网络分类器,用于诊断癫痫病,这需要正常的数据和癫痫数据以进行教育,但是该分类器可以识别正常的疾病,癫痫,甚至在教育实例中教授的其他疾病。同样,使用脑电图信号的值已通过两种方式进行了评估:使用小波变换和不使用小波变换。最后,评估结果表明,对改善癫痫数据功能的使用或不使用小波转换的影响因素相对均匀,但最终表明,perceptron多层神经网络的使用可以为专家提供更高的精度系数。
Epilepsy is one of the common neurological disorders characterized by recurrent and uncontrollable seizures, which seriously affect the life of patients. In many cases, electroencephalograms signal can provide important physiological information about the activity of the human brain which can be used to diagnose epilepsy. However, visual inspection of a large number of electroencephalogram signals is very time-consuming and can often lead to inconsistencies in physicians' diagnoses. Quantification of abnormalities in brain signals can indicate brain conditions and pathology so the electroencephalogram (EEG) signal plays a key role in the diagnosis of epilepsy. In this article, an attempt has been made to create a single instruction for diagnosing epilepsy, which consists of two steps. In the first step, a low-pass filter was used to preprocess the data and three separate mid-pass filters for different frequency bands and a multilayer neural network were designed. In the second step, the wavelet transform technique was used to process data. In particular, this paper proposes a multilayer perceptron neural network classifier for the diagnosis of epilepsy, that requires normal data and epilepsy data for education, but this classifier can recognize normal disorders, epilepsy, and even other disorders taught in educational examples. Also, the value of using electroencephalogram signal has been evaluated in two ways: using wavelet transform and non-using wavelet transform. Finally, the evaluation results indicate a relatively uniform impact factor on the use or non-use of wavelet transform on the improvement of epilepsy data functions, but in the end, it was shown that the use of perceptron multilayer neural network can provide a higher accuracy coefficient for experts.