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Automated seizure diagnosis system based on feature extraction and channel selection using EEG signals

机译:基于特征提取和频道选择的自动癫痫发作诊断系统使用EEG信号

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Seizure is an abnormal electrical activity of the brain. Neurologists can diagnose the seizure using several methods such as neurological examination, blood tests, computerized tomography (CT), magnetic resonance imaging (MRI) and electroencephalogram (EEG). Medical data, such as the EEG signal, usually includes a number of features and attributes that do not contains important information. This paper proposes an automatic seizure classification system based on extracting the most significant EEG features for seizure diagnosis. The proposed algorithm consists of five steps. The first step is the channel selection to minimize dimensionality by selecting the most affected channels using the variance parameter. The second step is the feature extraction to extract the most relevant features, 11 features, from the selected channels. The third step is to average the 11 features extracted from each channel. Next, the fourth step is the classification of the average features using the classification step. Finally, cross-validation and testing the proposed algorithm by dividing the dataset into training and testing sets. This paper presents a comparative study of seven classifiers. These classifiers were tested using two different methods: random case testing and continuous case testing. In the random case process, the KNN classifier had greater precision, specificity, positive predictability than the other classifiers. Still, the ensemble classifier had a higher sensitivity and a lower miss-rate (2.3%) than the other classifiers. For the continuous case test method, the ensemble classifier had higher metric parameters than the other classifiers. In addition, the ensemble classifier was able to detect all seizure cases without any mistake.
机译:癫痫发作是大脑的异常电活动。神经根学家可以使用几种方法诊断癫痫发作,例如神经检查,血液测试,计算机断层扫描(CT),磁共振成像(MRI)和脑电图(EEG)。诸如EEG信号的医疗数据通常包括许多不包含重要信息的特征和属性。本文提出了一种基于提取癫痫发作诊断最重要的EEG特征的自动癫痫发作系统。所提出的算法包括五个步骤。第一步是通过使用方差参数选择最大受影响的信道来最小化维度的频道选择。第二步是从所选通道提取最相关的特征,11个功能的特征提取。第三步是从每个通道提取的11个特征。接下来,第四步是使用分类步骤的平均特征的分类。最后,通过将数据集分成训练和测试集来实现交叉验证和测试所提出的算法。本文呈现了七分类机的比较研究。使用两种不同的方法测试这些分类器:随机案例测试和连续案例测试。在随机案例过程中,KNN分类器具有比其他分类器更高的精度,特异性,阳性可预测性。尽管如此,集合分类器的灵敏度越高,比其他分类器更低的错过率(2.3%)。对于连续案例测试方法,集合分类器比其他分类器更高的度量参数。此外,整体分类器能够在没有任何错误的情况下检测所有癫痫发作案例。

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