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Decoding disparity categories in 3-dimensional images from fMRI data using functional connectivity patterns

机译:使用功能连通模式从FMRI数据解码三维图像中的差异类别

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摘要

Humans use binocular disparity to extract depth information from two-dimensional retinal images in a process called stereopsis. Previous studies usually introduce the standard univariate analysis to describe the correlation between disparity level and brain activity within a given brain region based on functional magnetic resonance imaging (fMRI) data. Recently, multivariate pattern analysis has been developed to extract activity patterns across multiple voxels for deciphering categories of binocular disparity. However, the functional connectivity (FC) of patterns based on regions of interest or voxels and their mapping onto disparity category perception remain unknown. The present study extracted functional connectivity patterns for three disparity conditions (crossed disparity, uncrossed disparity, and zero disparity) at distinct spatial scales to decode the binocular disparity. Results of 27 subjects' fMRI data demonstrate that FC features are more discriminatory than traditional voxel activity features in binocular disparity classification. The average binary classification of the whole brain and visual areas are respectively 87% and 79% at single subject level, and thus above the chance level (50%). Our research highlights the importance of exploring functional connectivity patterns to achieve a novel understanding of 3D image processing.
机译:人类使用双目视差来提取来自二维视网膜图像的深度信息,称为立体镜。之前的研究通常介绍标准的单变量分析,以描述基于功能磁共振成像(FMRI)数据的给定脑区域内的视差水平和大脑活动之间的相关性。最近,已经开发了多变量模式分析以提取多个体素的活动模式以解密双目视差的类别。然而,基于感兴趣区域或体素的模式的功能连接(FC)及其在差异类别感知上的映射仍然未知。本研究在不同的空间尺度下提取了三个差距条件(交叉差距,无交叉和零视差)以解码双目视差的功能连接模式。结果27个受试者的FMRI数据表明FC特征比双目视差分类中的传统体素活动特征更具歧视性。单个受试者水平的整个大脑和视觉区域的平均二进制分类分别为87%和79%,从而高于机会水平(50%)。我们的研究突出了探索功能连接模式以实现对3D图像处理的新理解的重要性。

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