An energy efficient real-time seizure detection method in rats with spontaneous temporal lobe epilepsy

Yu-Lin Wang, Sheng-Fu Liang, Fu-Zen Shaw, Y. Huang, Yin-Lin Chen
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引用次数: 3

Abstract

The presence of an on-line seizure detection system could drive an antiepileptic stimulator in real time to suppress seizure generation and to enhance the patients' safety and quality of life. In this paper, the continuous long-term EEGs of three Wistar rats with spontaneous temporal lobe seizure were analyzed. We proposed the development of an energy efficient real-time seizure detection method that employs a hierarchical architecture. The first stage was used to fast detect the seizure-like EEG segment, and a classifier was utilized in the second stage for final confirmation. Only when a suspected seizure segment is found, the second stage is activated. With 2-staged architecture, it saved about 99.4% computation energy in the experiment. Therefore, it is useful to improve the longevity of the closed-loop seizure control system. Three classifiers, linear discriminant analysis (LDA), quadratic discriminant analysis (QDA) and support vector machine (SVM), were applied for comparison. From the experimental results, three classifiers yielded the comparable performances. However, considering of the trade-off between detection performances and power consumption, LDA which yielded the 100% detection rate, 0.22 FP/hr, and 1.69 s detection latency is suggested for a portable closed-loop seizure controller.
自发性颞叶癫痫大鼠能量高效实时检测方法
在线癫痫检测系统的存在可以实时驱动抗癫痫刺激器来抑制癫痫发作的产生,从而提高患者的安全和生活质量。本文对3只Wistar大鼠自发性颞叶癫痫的连续长期脑电图进行了分析。我们提出了一种采用分层结构的节能实时癫痫检测方法。第一阶段用于快速检测癫痫样脑电片段,第二阶段使用分类器进行最终确认。只有当发现可疑的癫痫片段时,第二阶段才会被激活。该算法采用两阶段架构,在实验中节省了99.4%的计算能量。因此,提高闭环癫痫控制系统的使用寿命是有益的。采用线性判别分析(LDA)、二次判别分析(QDA)和支持向量机(SVM)三种分类器进行比较。从实验结果来看,三种分类器的性能相当。然而,考虑到检测性能和功耗之间的权衡,建议LDA产生100%的检测率,0.22 FP/hr和1.69 s的检测延迟。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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