Title of article
Partial least squares for discrimination in fMRI data
Author/Authors
Andersen، نويسنده , , Anders H. and Rayens، نويسنده , , William S. and Liu، نويسنده , , Yushu and Smith، نويسنده , , Charles D.، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2012
Pages
7
From page
446
To page
452
Abstract
Multivariate methods for discrimination were used in the comparison of brain activation patterns between groups of cognitively normal women who are at either high or low Alzheimerʹs disease risk based on family history and apolipoprotein-E4 status. Linear discriminant analysis (LDA) was preceded by dimension reduction using principal component analysis (PCA), partial least squares (PLS) or a new oriented partial least squares (OrPLS) method. The aim was to identify a spatial pattern of functionally connected brain regions that was differentially expressed by the risk groups and yielded optimal classification accuracy. Multivariate dimension reduction is required prior to LDA when the data contain more feature variables than there are observations on individual subjects. Whereas PCA has been commonly used to identify covariance patterns in neuroimaging data, this approach only identifies gross variability and is not capable of distinguishing among-groups from within-groups variability. PLS and OrPLS provide a more focused dimension reduction by incorporating information on class structure and therefore lead to more parsimonious models for discrimination. Performance was evaluated in terms of the cross-validated misclassification rates. The results support the potential of using functional magnetic resonance imaging as an imaging biomarker or diagnostic tool to discriminate individuals with disease or high risk.
Keywords
Biomarker , Classification , Neuro , Pattern , Imaging , Alzheimerיs disease
Journal title
Magnetic Resonance Imaging
Serial Year
2012
Journal title
Magnetic Resonance Imaging
Record number
1833281
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