基于脑电图数据的癫痫发作检测与预测的各种机器学习技术的比较分析

Hossam Elghamry, Mohamed S. Ghoneim, Aya Abo Haggag, M. Darweesh, T. Ismail
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引用次数: 2

摘要

癫痫发作是功能性脑功能障碍的结果,可影响患者的健康。在癫痫发作前预测癫痫发作有利于通过药物预防癫痫发作。脑电图(EEG)信号用于预测癫痫发作使用机器学习技术和特征提取。然而,脑电信号的去噪预处理和特征提取是影响预测时间和真正预测性能的两个重要问题。考虑到这一点,所提出的模型将为特征的预处理和提取提供显著的方法。所提出的模型可以检测各种大脑状态,并可以用于癫痫发作的检测和预测。使用EEG CHB-MIT数据集,对支持向量机(SVM)模型进行训练、测试和比较,单个患者的最佳真阳性率为91%,多个患者的最佳真阳性率为82%。SVM算法还与其他机器学习算法(如K-Nearest Neighbors (KNN))进行了比较,证明其效率更高,其真正百分比为82%,而KNN的真正百分比为80%。
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Comparative Analysis of Various Machine Learning Techniques for Epileptic Seizures Detection and Prediction Using EEG Data
Epileptic seizures occur as a result of functional brain dysfunction and can affect the health of the patient. Prediction of epileptic seizures before the onset is beneficial for the prevention of seizures through medication. Electroencephalograms (EEG) signals are used to predict epileptic seizures using machine learning techniques and feature extractions. Nevertheless, the pre-processing of EEG signals for noise removal and extraction of features are two significant problems that have an adverse effect on both anticipation time and true positive prediction performance. Considering this, the proposed model will provide remarkable methods for both pre-processing and extraction of features. The proposed model detects various brain states and accounts for both epileptic seizures detection and prediction. Using the EEG CHB-MIT dataset, the support vector machine (SVM) model was trained, tested, and compared, having a best true positive percentage of 91% for a single patient and 82% for multiple patients. The SVM algorithm was also compared to other machine learning algorithms such as K-Nearest Neighbors (KNN) proving to be more efficient with a true positive percentage of 82% than KNN with 80%.
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