Epileptic Focus Localization Based on iEEG by Using Positive Unlabeled (PU) Learning

Xuyang Zhao, Toshihisa Tanaka, Wanzeng Kong, Qibin Zhao, Jianting Cao, H. Sugano, Noboru Yoshida
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引用次数: 6

Abstract

Epilepsy is a chronic disorder of the brain. Intracranial electroencephalogram (iEEG) recorded from cortex is the most popular measurement for not only the diagnosis of epilepsy, but also the focus localization that is crucial for the surgery. In recent years, the machine learning methods have been rapidly developed and applied successfully to various real world problems. Given sufficient number of samples, the powerful deep learning methods can achieve high performance for epileptic focus localization. However, it is a challenging task to obtain large amount of labeled iEEG regarding focal/non-focal channels, since the annotations must be performed by multiple clinical experts through visual judgment on the long term iEEG signals. In order to reduce the necessary number of labeled training samples, we introduce the positive unlabeled (PU) learning method for classification of focal and non-focal epileptic iEEG signals. The proposed method enables us to learn a binary classifier by using small amount of labeled data containing only one class (i.e., focal signals) and unlabeled data containing two classes (i.e., focal and non-focal signals), which greatly reduces the workload of clinical experts for annotations. Experimental results on Bern dataset and iEEG recorded from Juntendo University Hospital demonstrate the effectiveness of our method.
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基于正性无标记学习的iEEG癫痫病灶定位
癫痫是一种脑部慢性疾病。大脑皮层的颅内脑电图(iEEG)不仅是诊断癫痫最常用的测量方法,而且是对手术至关重要的病灶定位。近年来,机器学习方法得到了迅速发展,并成功地应用于各种现实世界的问题。在样本数量足够的情况下,强大的深度学习方法可以实现癫痫病灶定位的高性能。然而,获得大量关于焦/非焦通道的标记脑电图是一项具有挑战性的任务,因为注释必须由多名临床专家通过对长期脑电图信号的视觉判断来完成。为了减少必要的标记训练样本数量,我们引入了正无标记学习方法对局灶性和非局灶性癫痫脑电图信号进行分类。所提出的方法使我们能够使用少量仅包含一类(即焦点信号)的标记数据和包含两类(即焦点和非焦点信号)的未标记数据来学习二分类器,从而大大减少了临床专家的注释工作量。在Bern数据集和Juntendo大学医院记录的iEEG上的实验结果证明了我们的方法的有效性。
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