Algorithmic Analysis of Clinical and Neuropsychological Data in Localization-Related Epilepsy

Masoud Latifi-Navid, K. Elisevich, H. Soltanian-Zadeh
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引用次数: 3

Abstract

The current study examines algorithmic approaches for the analysis of clinical and neuropsychological attributes in localization-related epilepsy (LRE), specifically, their impact in the selection of patients for surgical consideration. Both electrographic and imaging data are excluded here to concentrate upon the initial clinical presentation and the varied elements of the seizure history, ictal semiology, risk and seizure-precipitating factors and physical findings in addition to several features of the neuropsychological profile including various parameters of cognition and both speech and memory lateralization. The data was accrued in a database of temporal lobe epilepsy patients and accessible in the public domain (HBIDS). Six algorithms comprising feature selection, clustering and classification approaches were used. The Correlation-Based Feature Selection (CFS) and the Classifier Subset Evaluator (CSE) with the Genetic Algorithm (GA) search tool and ReliefF Attribute Evaluation approaches provided for feature selection, the Expectation Maximization (EM) Class Clustering and Incremental Conceptual Clustering (COBWEB) provided data clustering and the Multilayer Perceptron (MLP) Classifier was the classification tool at all stages of the study. The Engel Classification was used as an output of classifier for surgical success. Attributes demonstrating the highest correlation with outcome class and the least intercorrelation with each other, according to CFS, were selected. These were then ranked using ReliefF and the top rankings chosen. The best attribute combination for each cluster was found by the MLP. COBWEB provided the best results showing an association of 56\% with Engel class. An algorithmic approach to the study of LRE is feasible with current findings supporting the need for correlative electrographic and imaging data and a greater archival population. Â
定位相关性癫痫的临床和神经心理学数据的算法分析
目前的研究探讨了定位相关性癫痫(LRE)的临床和神经心理学属性分析的算法方法,特别是它们对选择手术患者的影响。这里排除了电图和成像数据,集中于最初的临床表现和癫痫发作史的各种因素,危象符号学,风险和癫痫诱发因素以及物理发现,此外还有神经心理学的一些特征,包括认知的各种参数以及言语和记忆的偏侧化。数据积累在颞叶癫痫患者数据库中,并可在公共领域(HBIDS)访问。采用了六种算法,包括特征选择、聚类和分类方法。基于关联的特征选择(CFS)和基于遗传算法(GA)搜索工具和ReliefF属性评估方法的分类器子集评估器(CSE)提供特征选择,期望最大化(EM)类聚类和增量概念聚类(COBWEB)提供数据聚类,多层感知器(MLP)分类器是研究各个阶段的分类工具。恩格尔分类被用作手术成功分类器的输出。根据CFS,选择与结果类别相关性最高的属性和相互相关性最小的属性。然后使用ReliefF对它们进行排名,并选出最高排名。通过MLP找到每个聚类的最佳属性组合。COBWEB提供了最好的结果,与Engel类的关联度为56%。目前的研究结果支持相关的电图和成像数据以及更大的档案人口的需求,因此采用算法方法研究LRE是可行的。一个
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