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A machine learning application for epileptic seizure detection

机译:癫痫发作检测的机器学习申请

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Electroencephalography can be treated as an electrophysiological method that can be used to monitor the electrical activity of the brain. Having EEG signal as an aid, there are innumerable diseases that can be detected. Epilepsy is one such disease that can be easily encountered with the abnormalities in the EEG signal. Epilepsy is a condition that affects many people, rendering it the most common neurological disorder after stroke. However it is still difficult to detect some subtle but critical changes in an EEG signal. In this paper we are designing an automated system (classifier) that classifies the recorded EEG signal into Normal, Interictal and Ictal cases. The automation is achieved by extracting various features that include statistical data in the transformed domain using Wavelet and Hilbert techniques. Also the approximate entropy of the sub-bands are included. Now having known the range of the values, each of the features is given a rank. These features are used to enhance the differences between the three cases. Classifier performance is evaluated in terms of its accuracy, specificity and sensitivity. This automated classifier can classify the EEG signal into the desirable cases and has found out its way in biomedical applications by simply repudiating the conventional methods.
机译:脑电图可以作为一种电生理方法治疗,可用于监测大脑的电活性。具有EEG信号作为助剂,可以检测到无数疾病。癫痫是一种这种疾病,可以很容易地遇到EEG信号的异常。癫痫是一种影响许多人的病症,使其成为中风最常见的神经系统疾病。然而,在脑电图中仍然难以检测到一些微妙但临界变化。在本文中,我们正在设计一个自动化系统(分类器),该系统将记录的EEG信号分类为正常,交流和ICTAL病例。通过提取使用小波和希尔伯特技术在变换域中包含统计数据的各种特征来实现自动化。还包括子带的近似熵。现在已经知道值的范围,每个功能都被给出了一个等级。这些功能用于增强三种情况之间的差异。根据其准确性,特异性和灵敏度来评估分类器性能。这种自动分类器可以将EEG信号分类为所需的情况,并通过简单地拒绝传统方法来发现其在生物医学应用中的方式。

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