A Genetic Algorithm for the selection of structural MRI features for classification of Mild Cognitive Impairment and Alzheimer's Disease

Alexander Luke Spedding, G. D. Fatta, M. Cannataro
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引用次数: 9

Abstract

This work investigates the problem of feature selection in neuroimaging features from structural MRI brain images for the classification of subjects as healthy controls, suffering from Mild Cognitive Impairment or Alzheimer's Disease. A Genetic Algorithm wrapper method for feature selection is adopted in conjunction with a Support Vector Machine classifier. In very large feature sets, feature selection is found to be redundant as the accuracy is often worsened when compared to an Support Vector Machine with no feature selection. However, when just the hippocampal subfields are used, feature selection shows a significant improvement of the classification accuracy. Three-class Support Vector Machines and two-class Support Vector Machines combined with weighted voting are also compared with the former and found more useful. The highest accuracy achieved at classifying the test data was 65.5% using a genetic algorithm for feature selection with a three-class Support Vector Machine classifier.
一种用于轻度认知障碍和阿尔茨海默病分类的结构MRI特征选择遗传算法
本研究探讨了结构MRI脑图像中神经成像特征的特征选择问题,用于将受试者分类为健康对照、轻度认知障碍或阿尔茨海默病。结合支持向量机分类器,采用遗传算法包装方法进行特征选择。在非常大的特征集中,特征选择被发现是冗余的,因为与没有特征选择的支持向量机相比,准确度往往会下降。然而,当只使用海马子区时,特征选择显示出显著的分类精度提高。三类支持向量机和两类支持向量机结合加权投票与前者比较,发现前者更有用。使用遗传算法与三类支持向量机分类器进行特征选择,对测试数据进行分类的最高准确率为65.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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