A Multi-Atlas Labeling Approach for Identifying Subject-Specific Functional Regions of Interest.

The functional region of interest (fROI) approach has increasingly become a favored methodology in functional magnetic resonance imaging (fMRI) because it can circumvent inter-subject anatomical and functional variability, and thus increase the sensitivity and functional resolution of fMRI analyses....

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Main Authors: Lijie Huang, Guangfu Zhou, Zhaoguo Liu, Xiaobin Dang, Zetian Yang, Xiang-Zhen Kong, Xu Wang, Yiying Song, Zonglei Zhen, Jia Liu
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2016-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC4721956?pdf=render
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spelling doaj-dbab9e09d17948d59cda92142a10d3772020-11-25T01:56:27ZengPublic Library of Science (PLoS)PLoS ONE1932-62032016-01-01111e014686810.1371/journal.pone.0146868A Multi-Atlas Labeling Approach for Identifying Subject-Specific Functional Regions of Interest.Lijie HuangGuangfu ZhouZhaoguo LiuXiaobin DangZetian YangXiang-Zhen KongXu WangYiying SongZonglei ZhenJia LiuThe functional region of interest (fROI) approach has increasingly become a favored methodology in functional magnetic resonance imaging (fMRI) because it can circumvent inter-subject anatomical and functional variability, and thus increase the sensitivity and functional resolution of fMRI analyses. The standard fROI method requires human experts to meticulously examine and identify subject-specific fROIs within activation clusters. This process is time-consuming and heavily dependent on experts' knowledge. Several algorithmic approaches have been proposed for identifying subject-specific fROIs; however, these approaches cannot easily incorporate prior knowledge of inter-subject variability. In the present study, we improved the multi-atlas labeling approach for defining subject-specific fROIs. In particular, we used a classifier-based atlas-encoding scheme and an atlas selection procedure to account for the large spatial variability across subjects. Using a functional atlas database for face recognition, we showed that with these two features, our approach efficiently circumvented inter-subject anatomical and functional variability and thus improved labeling accuracy. Moreover, in comparison with a single-atlas approach, our multi-atlas labeling approach showed better performance in identifying subject-specific fROIs.http://europepmc.org/articles/PMC4721956?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Lijie Huang
Guangfu Zhou
Zhaoguo Liu
Xiaobin Dang
Zetian Yang
Xiang-Zhen Kong
Xu Wang
Yiying Song
Zonglei Zhen
Jia Liu
spellingShingle Lijie Huang
Guangfu Zhou
Zhaoguo Liu
Xiaobin Dang
Zetian Yang
Xiang-Zhen Kong
Xu Wang
Yiying Song
Zonglei Zhen
Jia Liu
A Multi-Atlas Labeling Approach for Identifying Subject-Specific Functional Regions of Interest.
PLoS ONE
author_facet Lijie Huang
Guangfu Zhou
Zhaoguo Liu
Xiaobin Dang
Zetian Yang
Xiang-Zhen Kong
Xu Wang
Yiying Song
Zonglei Zhen
Jia Liu
author_sort Lijie Huang
title A Multi-Atlas Labeling Approach for Identifying Subject-Specific Functional Regions of Interest.
title_short A Multi-Atlas Labeling Approach for Identifying Subject-Specific Functional Regions of Interest.
title_full A Multi-Atlas Labeling Approach for Identifying Subject-Specific Functional Regions of Interest.
title_fullStr A Multi-Atlas Labeling Approach for Identifying Subject-Specific Functional Regions of Interest.
title_full_unstemmed A Multi-Atlas Labeling Approach for Identifying Subject-Specific Functional Regions of Interest.
title_sort multi-atlas labeling approach for identifying subject-specific functional regions of interest.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2016-01-01
description The functional region of interest (fROI) approach has increasingly become a favored methodology in functional magnetic resonance imaging (fMRI) because it can circumvent inter-subject anatomical and functional variability, and thus increase the sensitivity and functional resolution of fMRI analyses. The standard fROI method requires human experts to meticulously examine and identify subject-specific fROIs within activation clusters. This process is time-consuming and heavily dependent on experts' knowledge. Several algorithmic approaches have been proposed for identifying subject-specific fROIs; however, these approaches cannot easily incorporate prior knowledge of inter-subject variability. In the present study, we improved the multi-atlas labeling approach for defining subject-specific fROIs. In particular, we used a classifier-based atlas-encoding scheme and an atlas selection procedure to account for the large spatial variability across subjects. Using a functional atlas database for face recognition, we showed that with these two features, our approach efficiently circumvented inter-subject anatomical and functional variability and thus improved labeling accuracy. Moreover, in comparison with a single-atlas approach, our multi-atlas labeling approach showed better performance in identifying subject-specific fROIs.
url http://europepmc.org/articles/PMC4721956?pdf=render
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