Statements in which the resource exists as a subject.
PredicateObject
rdf:type
lifeskim:mentions
pubmed:issue
2
pubmed:dateCreated
2010-4-19
pubmed:abstractText
Multivariate pattern recognition methods are increasingly being used to identify multiregional brain activity patterns that collectively discriminate one cognitive condition or experimental group from another, using fMRI data. The performance of these methods is often limited because the number of regions considered in the analysis of fMRI data is large compared to the number of observations (trials or participants). Existing methods that aim to tackle this dimensionality problem are less than optimal because they either over-fit the data or are computationally intractable. Here, we describe a novel method based on logistic regression using a combination of L1 and L2 norm regularization that more accurately estimates discriminative brain regions across multiple conditions or groups. The L1 norm, computed using a fast estimation procedure, ensures a fast, sparse and generalizable solution; the L2 norm ensures that correlated brain regions are included in the resulting solution, a critical aspect of fMRI data analysis often overlooked by existing methods. We first evaluate the performance of our method on simulated data and then examine its effectiveness in discriminating between well-matched music and speech stimuli. We also compared our procedures with other methods which use either L1-norm regularization alone or support vector machine-based feature elimination. On simulated data, our methods performed significantly better than existing methods across a wide range of contrast-to-noise ratios and feature prevalence rates. On experimental fMRI data, our methods were more effective in selectively isolating a distributed fronto-temporal network that distinguished between brain regions known to be involved in speech and music processing. These findings suggest that our method is not only computationally efficient, but it also achieves the twin objectives of identifying relevant discriminative brain regions and accurately classifying fMRI data.
pubmed:grant
pubmed:commentsCorrections
http://linkedlifedata.com/resource/pubmed/commentcorrection/20188193-12377169, http://linkedlifedata.com/resource/pubmed/commentcorrection/20188193-12482084, http://linkedlifedata.com/resource/pubmed/commentcorrection/20188193-12507948, http://linkedlifedata.com/resource/pubmed/commentcorrection/20188193-12814577, http://linkedlifedata.com/resource/pubmed/commentcorrection/20188193-14683718, http://linkedlifedata.com/resource/pubmed/commentcorrection/20188193-15852013, http://linkedlifedata.com/resource/pubmed/commentcorrection/20188193-15895428, http://linkedlifedata.com/resource/pubmed/commentcorrection/20188193-15943426, http://linkedlifedata.com/resource/pubmed/commentcorrection/20188193-16275139, http://linkedlifedata.com/resource/pubmed/commentcorrection/20188193-16537458, http://linkedlifedata.com/resource/pubmed/commentcorrection/20188193-16928852, http://linkedlifedata.com/resource/pubmed/commentcorrection/20188193-17010645, http://linkedlifedata.com/resource/pubmed/commentcorrection/20188193-17291759, http://linkedlifedata.com/resource/pubmed/commentcorrection/20188193-18598768, http://linkedlifedata.com/resource/pubmed/commentcorrection/20188193-18672070, http://linkedlifedata.com/resource/pubmed/commentcorrection/20188193-18793733, http://linkedlifedata.com/resource/pubmed/commentcorrection/20188193-18988858, http://linkedlifedata.com/resource/pubmed/commentcorrection/20188193-19070668, http://linkedlifedata.com/resource/pubmed/commentcorrection/20188193-19144586, http://linkedlifedata.com/resource/pubmed/commentcorrection/20188193-8699946, http://linkedlifedata.com/resource/pubmed/commentcorrection/20188193-9498591
pubmed:language
eng
pubmed:journal
pubmed:citationSubset
IM
pubmed:status
MEDLINE
pubmed:month
Jun
pubmed:issn
1095-9572
pubmed:author
pubmed:copyrightInfo
Copyright 2010 Elsevier Inc. All rights reserved.
pubmed:issnType
Electronic
pubmed:volume
51
pubmed:owner
NLM
pubmed:authorsComplete
Y
pubmed:pagination
752-64
pubmed:dateRevised
2011-7-28
pubmed:meshHeading
pubmed:year
2010
pubmed:articleTitle
Sparse logistic regression for whole-brain classification of fMRI data.
pubmed:affiliation
Department of Psychiatry and Behavioral Sciences, Stanford University School of Medicine, Stanford, CA 94305, USA. sryali@stanford.edu
pubmed:publicationType
Journal Article, Research Support, U.S. Gov't, Non-P.H.S., Research Support, Non-U.S. Gov't, Research Support, N.I.H., Extramural