用张量分解对癫痫和非癫痫事件进行分类

V. G. Kanas, E. Zacharaki, Evangelia Pippa, Vasiliki Tsirka, M. Koutroumanidis, V. Megalooikonomou
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引用次数: 4

摘要

对癫痫的误诊,即使是经验丰富的临床医生,也可能使患者暴露于具有潜在并发症的医疗程序和治疗中。此外,诊断延误(平均7至10年)在个人和人口层面造成经济负担。本文提出了一种基于多通道脑电图数据的癫痫性和非癫痫性事件的癫痫发作分类框架。与文献相关研究相比,本研究中,非癫痫类包括两种类型的阵发性意识丧失,即心因性非癫痫性发作(PNES)和血管迷走神经性晕厥(VVS)。脑电信号用频谱-空间-时间域表示。采用基于张量的方法提取签名特征,为分类模型提供信息。利用TUCKER分解学习特征空间原始高维域的本质,提取多线性判别子空间。在被试间交叉验证设置中,对11个被试的脑电epoch进行了分类模型评估,准确率达到96%。
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Classification of epileptic and non-epileptic events using tensor decomposition
Misdiagnosis of epilepsy, even by experienced clinicians, can cause exposure of patients to medical procedures and treatments with potential complications. Moreover, diagnostic delays (for 7 to 10 years on average) impose economic burden at individual and population levels. In this paper, a seizure classification framework of epileptic and non-epileptic events from multi-channel EEG data is proposed. In contrast to relevant studies found in the literature, in this study, the non-epileptic class consists of two types of paroxysmal episodes of loss of consciousness, namely the psychogenic non-epileptic seizure (PNES) and the vasovagal syncope (VVS). EEG signals are represented in the spectral-spatial-temporal domain. A tensor-based approach is employed to extract signature features to feed the classification models. TUCKER decomposition is applied to learn the essence of original, high-dimensional domain of feature space and extract a multilinear discriminative subspace. The classification models were evaluated on EEG epochs from 11 subjects in an inter-subject cross-validation setting and achieved an accuracy of 96%.
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