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基于主成分分析的频率算法用于早期癫痫发作检测。

Early Seizure Detection by Applying Frequency-Based Algorithm Derived from the Principal Component Analysis.

作者信息

Lee Jiseon, Park Junhee, Yang Sejung, Kim Hani, Choi Yun Seo, Kim Hyeon Jin, Lee Hyang Woon, Lee Byung-Uk

机构信息

Department of Electronics Engineering, Ewha Womans University College of EngineeringSeoul, South Korea.

Department of Neurology, Ewha Medical Research Institute, Ewha Womans University School of MedicineSeoul, South Korea.

出版信息

Front Neuroinform. 2017 Aug 17;11:52. doi: 10.3389/fninf.2017.00052. eCollection 2017.

Abstract

The use of automatic electrical stimulation in response to early seizure detection has been introduced as a new treatment for intractable epilepsy. For the effective application of this method as a successful treatment, improving the accuracy of the early seizure detection is crucial. In this paper, we proposed the application of a frequency-based algorithm derived from principal component analysis (PCA), and demonstrated improved efficacy for early seizure detection in a pilocarpine-induced epilepsy rat model. A total of 100 ictal electroencephalographs (EEG) during spontaneous recurrent seizures from 11 epileptic rats were finally included for the analysis. PCA was applied to the covariance matrix of a conventional EEG frequency band signal. Two PCA results were compared: one from the initial segment of seizures (5 sec of seizure onset) and the other from the whole segment of seizures. In order to compare the accuracy, we obtained the specific threshold satisfying the target performance from the training set, and compared the False Positive (FP), False Negative (FN), and Latency (Lat) of the PCA based feature derived from the initial segment of seizures to the other six features in the testing set. The PCA based feature derived from the initial segment of seizures performed significantly better than other features with a 1.40% FP, zero FN, and 0.14 s Lat. These results demonstrated that the proposed frequency-based feature from PCA that captures the characteristics of the initial phase of seizure was effective for early detection of seizures. Experiments with rat ictal EEGs showed an improved early seizure detection rate with PCA applied to the covariance of the initial 5 s segment of visual seizure onset instead of using the whole seizure segment or other conventional frequency bands.

摘要

自动电刺激用于早期癫痫发作检测已作为一种难治性癫痫的新疗法被引入。为了有效应用该方法并取得成功治疗效果,提高早期癫痫发作检测的准确性至关重要。在本文中,我们提出了一种基于主成分分析(PCA)的频率算法的应用,并在匹鲁卡品诱导的癫痫大鼠模型中证明了其在早期癫痫发作检测方面的疗效得到改善。最终纳入了11只癫痫大鼠自发反复癫痫发作期间的100次发作期脑电图(EEG)进行分析。将PCA应用于传统EEG频段信号的协方差矩阵。比较了两个PCA结果:一个来自癫痫发作的初始段(发作开始后5秒),另一个来自癫痫发作的整个段。为了比较准确性,我们从训练集中获得了满足目标性能的特定阈值,并将癫痫发作初始段得出的基于PCA的特征的误报(FP)、漏报(FN)和潜伏期(Lat)与测试集中的其他六个特征进行比较。从癫痫发作初始段得出的基于PCA的特征表现明显优于其他特征,FP为1.40%,FN为零,Lat为0.14秒。这些结果表明,所提出的基于PCA的频率特征能够捕捉癫痫发作初始阶段的特征,对癫痫发作的早期检测有效。对大鼠发作期EEG的实验表明,将PCA应用于视觉癫痫发作开始初始5秒段的协方差,而不是使用整个癫痫发作段或其他传统频段,可提高癫痫发作早期检测率。

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