Cargando…

A Sparse Representation-Based Algorithm for Pattern Localization in Brain Imaging Data Analysis

Considering the two-class classification problem in brain imaging data analysis, we propose a sparse representation-based multi-variate pattern analysis (MVPA) algorithm to localize brain activation patterns corresponding to different stimulus classes/brain states respectively. Feature selection can...

Descripción completa

Detalles Bibliográficos
Autores principales: Li, Yuanqing, Long, Jinyi, He, Lin, Lu, Haidong, Gu, Zhenghui, Sun, Pei
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2012
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3515601/
https://www.ncbi.nlm.nih.gov/pubmed/23227167
http://dx.doi.org/10.1371/journal.pone.0050332
_version_ 1782252218215301120
author Li, Yuanqing
Long, Jinyi
He, Lin
Lu, Haidong
Gu, Zhenghui
Sun, Pei
author_facet Li, Yuanqing
Long, Jinyi
He, Lin
Lu, Haidong
Gu, Zhenghui
Sun, Pei
author_sort Li, Yuanqing
collection PubMed
description Considering the two-class classification problem in brain imaging data analysis, we propose a sparse representation-based multi-variate pattern analysis (MVPA) algorithm to localize brain activation patterns corresponding to different stimulus classes/brain states respectively. Feature selection can be modeled as a sparse representation (or sparse regression) problem. Such technique has been successfully applied to voxel selection in fMRI data analysis. However, single selection based on sparse representation or other methods is prone to obtain a subset of the most informative features rather than all. Herein, our proposed algorithm recursively eliminates informative features selected by a sparse regression method until the decoding accuracy based on the remaining features drops to a threshold close to chance level. In this way, the resultant feature set including all the identified features is expected to involve all the informative features for discrimination. According to the signs of the sparse regression weights, these selected features are separated into two sets corresponding to two stimulus classes/brain states. Next, in order to remove irrelevant/noisy features in the two selected feature sets, we perform a nonparametric permutation test at the individual subject level or the group level. In data analysis, we verified our algorithm with a toy data set and an intrinsic signal optical imaging data set. The results show that our algorithm has accurately localized two class-related patterns. As an application example, we used our algorithm on a functional magnetic resonance imaging (fMRI) data set. Two sets of informative voxels, corresponding to two semantic categories (i.e., “old people” and “young people”), respectively, are obtained in the human brain.
format Online
Article
Text
id pubmed-3515601
institution National Center for Biotechnology Information
language English
publishDate 2012
publisher Public Library of Science
record_format MEDLINE/PubMed
spelling pubmed-35156012012-12-07 A Sparse Representation-Based Algorithm for Pattern Localization in Brain Imaging Data Analysis Li, Yuanqing Long, Jinyi He, Lin Lu, Haidong Gu, Zhenghui Sun, Pei PLoS One Research Article Considering the two-class classification problem in brain imaging data analysis, we propose a sparse representation-based multi-variate pattern analysis (MVPA) algorithm to localize brain activation patterns corresponding to different stimulus classes/brain states respectively. Feature selection can be modeled as a sparse representation (or sparse regression) problem. Such technique has been successfully applied to voxel selection in fMRI data analysis. However, single selection based on sparse representation or other methods is prone to obtain a subset of the most informative features rather than all. Herein, our proposed algorithm recursively eliminates informative features selected by a sparse regression method until the decoding accuracy based on the remaining features drops to a threshold close to chance level. In this way, the resultant feature set including all the identified features is expected to involve all the informative features for discrimination. According to the signs of the sparse regression weights, these selected features are separated into two sets corresponding to two stimulus classes/brain states. Next, in order to remove irrelevant/noisy features in the two selected feature sets, we perform a nonparametric permutation test at the individual subject level or the group level. In data analysis, we verified our algorithm with a toy data set and an intrinsic signal optical imaging data set. The results show that our algorithm has accurately localized two class-related patterns. As an application example, we used our algorithm on a functional magnetic resonance imaging (fMRI) data set. Two sets of informative voxels, corresponding to two semantic categories (i.e., “old people” and “young people”), respectively, are obtained in the human brain. Public Library of Science 2012-12-05 /pmc/articles/PMC3515601/ /pubmed/23227167 http://dx.doi.org/10.1371/journal.pone.0050332 Text en © 2012 Li et al http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
Li, Yuanqing
Long, Jinyi
He, Lin
Lu, Haidong
Gu, Zhenghui
Sun, Pei
A Sparse Representation-Based Algorithm for Pattern Localization in Brain Imaging Data Analysis
title A Sparse Representation-Based Algorithm for Pattern Localization in Brain Imaging Data Analysis
title_full A Sparse Representation-Based Algorithm for Pattern Localization in Brain Imaging Data Analysis
title_fullStr A Sparse Representation-Based Algorithm for Pattern Localization in Brain Imaging Data Analysis
title_full_unstemmed A Sparse Representation-Based Algorithm for Pattern Localization in Brain Imaging Data Analysis
title_short A Sparse Representation-Based Algorithm for Pattern Localization in Brain Imaging Data Analysis
title_sort sparse representation-based algorithm for pattern localization in brain imaging data analysis
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3515601/
https://www.ncbi.nlm.nih.gov/pubmed/23227167
http://dx.doi.org/10.1371/journal.pone.0050332
work_keys_str_mv AT liyuanqing asparserepresentationbasedalgorithmforpatternlocalizationinbrainimagingdataanalysis
AT longjinyi asparserepresentationbasedalgorithmforpatternlocalizationinbrainimagingdataanalysis
AT helin asparserepresentationbasedalgorithmforpatternlocalizationinbrainimagingdataanalysis
AT luhaidong asparserepresentationbasedalgorithmforpatternlocalizationinbrainimagingdataanalysis
AT guzhenghui asparserepresentationbasedalgorithmforpatternlocalizationinbrainimagingdataanalysis
AT sunpei asparserepresentationbasedalgorithmforpatternlocalizationinbrainimagingdataanalysis
AT liyuanqing sparserepresentationbasedalgorithmforpatternlocalizationinbrainimagingdataanalysis
AT longjinyi sparserepresentationbasedalgorithmforpatternlocalizationinbrainimagingdataanalysis
AT helin sparserepresentationbasedalgorithmforpatternlocalizationinbrainimagingdataanalysis
AT luhaidong sparserepresentationbasedalgorithmforpatternlocalizationinbrainimagingdataanalysis
AT guzhenghui sparserepresentationbasedalgorithmforpatternlocalizationinbrainimagingdataanalysis
AT sunpei sparserepresentationbasedalgorithmforpatternlocalizationinbrainimagingdataanalysis