DocumentCode :
5271
Title :
SCoRS—A Method Based on Stability for Feature Selection and Mapping in Neuroimaging
Author :
Rondina, Jane M. ; Hahn, Tim ; de Oliveira, Leticia ; Marquand, Andre F. ; Dresler, Thomas ; Leitner, Thomas ; Fallgatter, Andreas J. ; Shawe-Taylor, John ; Mourao-Miranda, Janaina
Author_Institution :
Centre for Neuroimaging Sci., King´s Coll. London, London, UK
Volume :
33
Issue :
1
fYear :
2014
fDate :
Jan. 2014
Firstpage :
85
Lastpage :
98
Abstract :
Feature selection (FS) methods play two important roles in the context of neuroimaging based classification: potentially increase classification accuracy by eliminating irrelevant features from the model and facilitate interpretation by identifying sets of meaningful features that best discriminate the classes. Although the development of FS techniques specifically tuned for neuroimaging data is an active area of research, up to date most of the studies have focused on finding a subset of features that maximizes accuracy. However, maximizing accuracy does not guarantee reliable interpretation as similar accuracies can be obtained from distinct sets of features. In the current paper we propose a new approach for selecting features: SCoRS (survival count on random subsamples) based on a recently proposed Stability Selection theory. SCoRS relies on the idea of choosing relevant features that are stable under data perturbation. Data are perturbed by iteratively sub-sampling both features (subspaces) and examples. We demonstrate the potential of the proposed method in a clinical application to classify depressed patients versus healthy individuals based on functional magnetic resonance imaging data acquired during visualization of happy faces.
Keywords :
biomedical MRI; face recognition; feature selection; image classification; iterative methods; medical image processing; neurophysiology; random processes; SCoRS; data perturbation; face visualization; feature apping; feature selection methods; functional magnetic resonance imaging data; iterative subsampling; neuroimaging based classification; stability selection theory; survival count on random subsamples; Accuracy; Context; Educational institutions; Neuroimaging; Support vector machines; Training; Vegetation; Classification; classification accuracy; depression; faces visualization; feature selection; functional magnetic resonance imaging (fMRI); machine learning; multivariate mapping; regression; support vector machines;
fLanguage :
English
Journal_Title :
Medical Imaging, IEEE Transactions on
Publisher :
ieee
ISSN :
0278-0062
Type :
jour
DOI :
10.1109/TMI.2013.2281398
Filename :
6595571
Link To Document :
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