基于支持向量机的患者特异性癫痫发作预测

Abdalla Gabara, Retaj Yousri, Darine Hamdy, Michael H. Zakhari, H. Mostafa
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引用次数: 6

摘要

在过去的几十年里,人们对分析癫痫患者的脑电图信号越来越感兴趣,以便将其与癫痫发作联系起来。之前发表的研究论文探索了通过机器学习和深度学习模型(如支持向量机和卷积神经网络)利用脑电图信号检测和预测癫痫发作的可能技术。这项工作的目的是建立实用的硬件可实现的机器学习分类器,能够在癫痫发作之前以高灵敏度和准确性预测癫痫发作。提出的分类方法是为每个患者去除特定的通道,从脑电信号中提取特征,为每个患者选择最佳的特征组合,最后对选择的SVM分类器进行相应的训练。评估所提出的分类技术的性能对所选患者的准确率超过95%产生了有希望的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Patient Specific Epileptic Seizures Prediction based on Support Vector Machine
Throughout the last decades there has been an increasing interest in analyzing the EEG signals of epilepsy patients in order to relate it to epilepsy seizure onsets. Previous research papers were published exploring the possible techniques to utilize the EEG signals for detecting and predicting seizure onsets through Machine Learning and Deep Learning models, such as Support Vector Machines and Convolutional Neural Networks. The aim of this work is to build practical hardware-implementable Machine Learning classifiers capable of predicting the seizure onsets prior to their occurrences with high sensitivity and accuracy. The classification method proposed involves removing certain channels for each patient, extracting the features from the EEG signal, selecting the best feature combination for each patient, and finally training the selected SVM classifier accordingly. Evaluating the performance of the proposed classification technique yields promising results for the selected patients with accuracies exceeding 95%.
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