A Genetic algorithm based feature selection technique for classification of multiple-subject fMRI data

I. Accamma, H. N. Suma, M. Dakshayini
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引用次数: 3

Abstract

Functional Magnetic Resonance Imaging (fMRI) is a neuroimaging technique used to capture images of brain activity. These images have high spatial resolution and hence are very high dimensional. Each scan consists of more than one hundred thousand voxels. All of the scanned voxels are not activated for every stimulus. Therefore, finding the informative voxels with respect to stimulus becomes a prerequisite for any machine learning solution using fMRI data. The specific problem attempted to be solved in this paper is that of decoding cognitive states from multiple-subject fMRI data. Decoding multiple-subject data is challenging owing to the difference in the shape and size of the brain of different subjects. A Genetic algorithm based technique is proposed here for selection of voxels that capture commonality across subjects. Some popular feature selection techniques are compared against Genetic algorithms. It is observed that feature selection using Genetic algorithms perform consistently and predictably better than other techniques.
基于遗传算法的多主体fMRI数据分类特征选择技术
功能磁共振成像(fMRI)是一种用于捕捉大脑活动图像的神经成像技术。这些图像具有很高的空间分辨率,因此具有非常高的维度。每次扫描包含超过10万体素。并非所有的扫描体素对每个刺激都被激活。因此,找到关于刺激的信息体素成为使用fMRI数据的任何机器学习解决方案的先决条件。本文试图解决的具体问题是从多主体fMRI数据中解码认知状态。由于不同受试者大脑的形状和大小不同,解码多受试者数据具有挑战性。这里提出了一种基于遗传算法的技术,用于选择捕获跨主题共性的体素。将一些流行的特征选择技术与遗传算法进行了比较。观察到,使用遗传算法进行特征选择的一致性和可预测性优于其他技术。
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