基于自适应通道选择和预测周期选择的长期脑电图患者特异性癫痫发作预测

Qun Wang, Yajing Wang, Zhiwen Liu, Yuan-yuan Piao, Tao Yu
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引用次数: 1

摘要

为了提高癫痫发作预测的准确性,提出了一种基于患者特异性的癫痫发作预测算法。每个通道通过4s个窗口重叠2s个窗口提取时频特征和空间特征。从癫痫发作前1小时开始,通过预期选择连续10分钟的样本,与间期相比,实现了最大的线性可分性。将弹性网选择的有效特征和自适应贪婪选择的有效通道输入到支持向量机中。该算法在麻省理工学院头皮脑电图数据库和首都医科大学宣武医院采集的脑电图数据库上进行了测试。该算法在MIT数据库中灵敏度为94.61%,假阳性率为0.1484/h;在宣武医院数据库中灵敏度为95.14%,假阳性率为0.1312/h。结果表明,该算法具有较高的灵敏度和较低的误报率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Patient Specific Seizure Prediction in Long Term EEG based on Adaptive Channel Selection and Preictal Period Selection
A novel algorithm for seizure prediction based on patient specific manner was proposed to improve the accuracy of epilepsy prediction. Time-frequency features and spatial features were extracted from each channel by 4s windows with 2s overlap. A continuous 10-min sample was selected from 1h before seizure onset by preictal period selection, which achieved maximum linear separability compared with inter ictal period. The effective features selected by elastic net and effective channels selected adaptively in greedy manner were input into SVM. The algorithm is tested on MIT scalp EEG database and the database collected in Xuanwu Hospital Capital Medical University. The algorithm can achieve a sensitivity of 94.61% and a false positive rate of 0.1484/h in MIT database, and a sensitivity of 95.14% and a false positive rate of 0.1312/h in Xuanwu Hospital database. The results show that the algorithm in this paper has higher sensitivity and lower false positive rate.
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