Two different approaches to small sample size - a common problem in MRI-based studies

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This publication doesn't include Institute of Computer Science. It includes Faculty of Medicine. Official publication website can be found on muni.cz.
Authors

JANOUŠOVÁ Eva SCHWARZ Daniel KAŠPÁREK Tomáš

Year of publication 2010
Type Conference abstract
MU Faculty or unit

Faculty of Medicine

Citation
Description Recently, the small sample size problem and huge image data have often been discussed in MRI-based studies. Two methods for data reduction are compared here and further modified to solve classification of 3-D MRI data sets in the schizophrenia research. The results show that PCA based on covariance matrix of patients (pPCA) is more suitable for large MRI data reduction than 2DPCA. The results also indicate that deformation images are more appropriate for classification than GM density images.
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