基于信号分解的体素选择框架用于fMRI脑活动分类

S. V. Raut, D. M. Yadav
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引用次数: 0

摘要

提出了一种基于经验平均曲线分解(EMCD)和互信息(MI)的体素选择框架的功能磁共振成像信号分析方法。在此之前,fMRI信号分析要么使用经验平均曲线分解(EMCD)模型,要么使用体素选择对原始fMRI信号进行分析。第一种方法进行信号分解,使体素选择过程变得容易,而后一种方法进行相关体素(或特征)的选择。我们的方法增加了这两个优点,其中通过使用经验均值分解原始fMRI信号来考虑频率分量,并从EMCD信号中选择体素。所提出的方法被用于预测神经反应。在公开的6个被试的fMRI数据中进行了实验,并与现有的分解模型和体素选择框架进行了比较。对比结果表明了所提方法的优越性。
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Voxel selection framework with signal decomposition for fMRI based brain activity classification
This paper presents an fMRI signal analysis methodology using Empirical mean curve decomposition (EMCD) and mutual information (MI) based voxel selection framework. Previously, the fMRI signal analysis has been carried out either using empirical mean curve decomposition (EMCD) model or voxel selection on raw fMRI signal. The first methodology does signal decomposition that makes voxel selection process easy while the latter methodology does selection of relevant voxels (or features). Both these advantages are added by our methodology in which the frequency component is considered by decomposing the raw fMRI signal using Empirical mean and the voxels are selected from EMCD signal. The proposed methodologies are adopted for predicting the neural response. Experimentations are carried out in the openly available fMRI data of six subjects and comparisons are made with existing decomposition model and voxel selection framework. The comparative results demonstrate the superiority of the proposed methodology.
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