Annu Int Conf IEEE Eng Med Biol Soc. 2017 Jul;2017:3206-3211. doi: 10.1109/EMBC.2017.8037539.
Automated real time seizure detection is difficult since detection sensitivity, false detection rate and seizure onset detection latency need to be considered simultaneously. Traditional pattern recognition and classification system usually suffers huge performance variation due to patient specificity and algorithm inadaptability. To address this problem, we propose a two stage seizure detection system which integrates off-line channel selection and feature selection before the construction of the final model. This system allows patient specific channel selection and flexible feature set extraction for individual patient, so that a more compact and reliable model could be developed. Employing the two stage scheme not only decreases hardware cost in signal readout and feature extraction, but also remarkably improves detection sensitivity and reduces false detections. Mutual information based method is used for channel selection, while Random Forests and nonlinear SVM-RFE are evaluated for feature selection. The whole system achieves a mean detection latency of 6 seconds and a false detection rate of 0.356 per hour. Based on the test dataset, the sensitivity is found to 74.2% by sample or 98.4% by record with only two detection misses. Our design is also hardware-friendly, which could be implemented as a single chip closed loop neural modulation system.
自动实时癫痫发作检测很困难,因为需要同时考虑检测灵敏度、误检率和癫痫发作起始检测延迟。传统的模式识别和分类系统通常会因患者特异性和算法适应性差而出现巨大的性能差异。为了解决这个问题,我们提出了一种两阶段癫痫发作检测系统,该系统在构建最终模型之前集成了离线通道选择和特征选择。该系统允许针对个体患者进行特定于患者的通道选择和灵活的特征集提取,从而可以开发出更紧凑、更可靠的模型。采用两阶段方案不仅降低了信号读出和特征提取的硬件成本,还显著提高了检测灵敏度并减少了误检。基于互信息的方法用于通道选择,而随机森林和非线性支持向量机递归特征消除法用于特征选择评估。整个系统的平均检测延迟为6秒,每小时误检率为0.356。基于测试数据集,按样本计算灵敏度为74.2%,按记录计算为98.4%,仅有两次检测遗漏。我们的设计对硬件也很友好,可以实现为单芯片闭环神经调制系统。