用图论方法对癫痫样间期电位进行分类

G Lantz , P Wahlberg , G Salomonsson , I Rosén
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引用次数: 8

摘要

目的:在癫痫发作的患者中,癫痫样活动来源的定位是有意义的。为了正确定位源,良好的信噪比是重要的,为了实现这一点,通常需要对几个癫痫样电位进行平均。在取平均值之前,对不同电位分布的癫痫样电位进行仔细分类是至关重要的。本研究的目的是探讨是否一个层次的,图论算法可以用于这种分类。方法:对4例患者50 ~ 100例不同表面分布的尖锐波,分别采用算法和目视迹检进行独立分类。作为对算法的独立评价,对每个锐波进行偶极子重建,并比较不同自动获取类别锐波的偶极子结果。结果:所有患者的自动分析结果与目测结果高度吻合。从自动分类中得到的不同类别的尖波之间的偶极子结果有明显的差异。结论:图论分类算法提供了一种可靠的癫痫样间期电位聚类方法,该方法可用于癫痫样间期电位定位前的预平均分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Categorization of interictal epileptiform potentials using a graph-theoretic method

Objectives: In patients with epileptic seizures, localization of the source of interictal epileptiform activity is of interest. For correct source localization, a favorable signal to noise ratio is important, and to achieve this, averaging of several epileptiform potentials is often necessary. Before averaging, a careful categorization of epileptiform potentials with different potential distributions is crucial. The aim of this study was to investigate whether a hierarchic, graph-theoretic algorithm could be used for this categorization.

Methods: In 4 patients, 50–100 sharp waves with different surface distributions were categorized independently with the algorithm, and by visual inspection of the traces. As an independent evaluation of the algorithm, a dipole reconstruction was performed for each sharp wave, and the dipole results for the sharp waves from the different automatically obtained categories were compared.

Results: All patients showed a high degree of correspondence between the results of the automatic analysis and the visual estimation. There were clear differences in dipole results between the sharp waves of the different categories obtained from the automatic categorization.

Conclusion: The results indicate that the graph-theoretic categorization algorithm provides a reliable clustering of interictal epileptiform potentials, and that the method may become a useful tool in the pre-averaging categorization of interictal epileptiform potentials prior to source localization.

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