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Classification of FMRI patterns-A study of the language network segregation in pediatric localization related epilepsy

机译:功能磁共振成像模式的分类-儿童定位相关性癫痫的语言网络隔离研究

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摘要

This article describes a pattern classification algorithm for pediatric epilepsy using fMRI language-related activation maps. 122 fMRI datasets from a control group (64) and localization related epilepsy patients (58) provided by five children's hospitals were used. Each subject performed an auditory description decision task. Using the artificial data as training data, incremental Principal Component Analysis was used in order to generate the feature space while overcoming memory requirements of large datasets. The nearest-neighbor classifier (NNC) and the distance-based fuzzy classifier (DFC) were used to perform group separation into left dominant, right dominant, bilateral, and others. The results show no effect of age, age at seizure onset, seizure duration, or seizure etiology on group separation. Two sets of parameters were significant for group separation, the patient vs. control populations and handedness. Of the 122 real datasets, 90 subjects gave the same classification results across all the methods (three raters, LI, bootstrap LI, NNC, and DFC). For the remaining datasets, 18 cases for the IPCA-NNC and 21 cases for the IPCA-DFC agreed with the majority of the five classification results (three visual ratings and two LI results). Kappa values vary from 0.59 to 0.73 for NNC and 0.61 to 0.75 for DFC, which indicate good agreement between NNC or DFC with traditional methods. The proposed method as designed can serve as an alternative method to corroborate existing LI and visual rating classification methods and to resolve some of the cases near the boundaries in between categories.
机译:本文介绍了一种使用fMRI语言相关激活图的小儿癫痫的模式分类算法。使用了五个儿童医院提供的122个来自对照组的fMRI数据集(64)和与定位相关的癫痫患者(58)。每个受试者执行听觉描述决策任务。使用人工数据作为训练数据,使用增量主成分分析法来生成特征空间,同时克服大型数据集的内存需求。最近邻分类器(NNC)和基于距离的模糊分类器(DFC)用于将组分为左优势,右优势,双边等。结果显示年龄,发作发作的年龄,发作持续时间或发作病因学对组分离没有影响。两组参数对于组分离非常重要,即患者与对照人群以及惯用性。在122个真实数据集中,有90个受试者在所有方法(三个评估者,LI,自举LI,NNC和DFC)中给出了相同的分类结果。对于其余的数据集,IPCA-NNC的18例和IPCA-DFC的21例与五个分类结果中的大多数(三个视觉评级和两个LI结果)一致。 NNC的Kappa值从0.59到0.73,DFC的Kappa值从0.61到0.75,这表明NNC或DFC与传统方法之间的一致性很好。设计的提议方法可以用作替代方法,以证实现有的LI和视觉评级分类方法,并解决类别之间边界附近的一些情况。

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