用定向传递函数研究大脑半球间癫痫发作流的二维聚类方法

E. B. Assi, M. Sawan, D. K. Nguyen, S. Rihana
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引用次数: 9

摘要

由于电活动在整个大脑中传播的速度很快,确定癫痫发作的起源往往具有挑战性。定向传递函数(DTF)已被提出并被验证为一种定量方法来确定癫痫发作活动的流动。在这项工作中,从DTF矩阵中提取流出和流入特征,并将其用作Kmeans无监督聚类方法的输入。结果表明,所提出的方法能够自动识别癫痫发作活动的源和汇,以及区分一次发电机和二次发电机。这种区别可能会导致更有针对性的手术切除。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A 2D clustering approach investigating inter-hemispheric seizure flow by means of a Directed Transfer Function
Determination of seizure origin is often challenging due to the rapid speed at which electrical activity propagates throughout the brain. The Directed Transfer Function (DTF) has been proposed and validated as a quantitative approach to determine the flow of seizure activity. In this work, outflow and inflow features are extracted from the DTF matrix and used as inputs to a Kmeans unsupervised clustering approach. Results demonstrate the ability of the proposed methodology in automatically identifying sources and sinks of seizure activity as well as discriminating primary from secondary generators. Such distinction could lead to more tailored surgical resections.
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