Journal article

Evaluating subject specific preprocessing choices in multisubject fMRI data sets using data-driven performance metrics

ME Shaw, SC Strother, M Gavrilescu, K Podzebenko, A Waites, J Watson, J Anderson, G Jackson, G Egan

Neuroimage | ACADEMIC PRESS INC ELSEVIER SCIENCE | Published : 2003

Abstract

This study investigated the possible benefit of subject specific optimization of preprocessing strategies in functional magnetic resonance imaging (fMRI) experiments. The optimization was performed using the data-driven performance metrics developed recently [Neuroimage 15 (2002), 747]. We applied numerous preprocessing strategies and a multivariate statistical analysis to each of the 20 subjects in our two example fMRI data sets. We found that the optimal preprocessing strategy varied, in general, from subject to subject. For example, in one data set, optimum smoothing levels varied from 16 mm (4 subjects), 10 mm (5 subjects), to no smoothing at all (1 subject). This strongly suggests that ..

View full abstract

University of Melbourne Researchers