基于时间约束聚类的癫痫状态分割

Kang Lin, Yu Qi, Shaozhe Feng, Qi Lian, Gang Pan, Yueming Wang
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引用次数: 0

摘要

癫痫发作自动识别在癫痫评估中起着重要的作用。现有的方法大多将癫痫识别视为分类问题,依赖于标记训练集。然而,标记癫痫发作是非常昂贵的,并且每个人的癫痫发作数据特别有限,基于分类器的方法通常在使用中不切实际。聚类方法可以从未标记的数据中学习到有用的信息,但对于高噪声的癫痫信号,聚类方法可能导致结果不稳定。在本文中,我们提出使用高斯时间约束k-介质方法进行癫痫状态分割。利用时间信息可以有效抑制噪声,实现鲁棒的聚类性能。此外,提出了一种描述时间完整性和一致性的有符号总变分(STV)准则,用于时间约束聚类评价。实验结果表明,与现有方法相比,具有高斯时间约束的k-medoids方法在F1-score和STV上都取得了最好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Epileptic State Segmentation with Temporal-Constrained Clustering
Automatic seizure identification plays an important role in epilepsy evaluation. Most existing methods regard seizure identification as a classification problem and rely on labelled training set. However, labelling seizure onset is very expensive and seizure data for each individual is especially limited, classifier-based methods are usually impractical in use. Clustering methods could learn useful information from unlabelled data, while they may lead to unstable results given epileptic signals with high noises. In this paper, we propose to use Gaussian temporal-constrained k-medoids method for seizure state segmentation. Using temporal information, the noises could be effectively suppressed and robust clustering performance is achieved. Besides, a new criterion called signed total variation (STV) which describes temporal integrity and consistency is proposed for temporal-constrained clustering evaluation. Experimental results show that, compared with the existing methods, the k-medoids method with Gaussian temporal constraint achieves the best results on both F1-score and STV.
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