| Literature DB >> 25146374 |
Steve Majerus1, Nelson Cowan2, Frédéric Péters3, Laurens Van Calster3, Christophe Phillips4, Jessica Schrouff5.
Abstract
Recent studies suggest common neural substrates involved in verbal and visual working memory (WM), interpreted as reflecting shared attention-based, short-term retention mechanisms. We used a machine-learning approach to determine more directly the extent to which common neural patterns characterize retention in verbal WM and visual WM. Verbal WM was assessed via a standard delayed probe recognition task for letter sequences of variable length. Visual WM was assessed via a visual array WM task involving the maintenance of variable amounts of visual information in the focus of attention. We trained a classifier to distinguish neural activation patterns associated with high- and low-visual WM load and tested the ability of this classifier to predict verbal WM load (high-low) from their associated neural activation patterns, and vice versa. We observed significant between-task prediction of load effects during WM maintenance, in posterior parietal and superior frontal regions of the dorsal attention network; in contrast, between-task prediction in sensory processing cortices was restricted to the encoding stage. Furthermore, between-task prediction of load effects was strongest in those participants presenting the highest capacity for the visual WM task. This study provides novel evidence for common, attention-based neural patterns supporting verbal and visual WM.Entities:
Keywords: attention; fMRI; intraparietal sulcus; multivariate voxel pattern analysis; verbal; visual; working memory
Mesh:
Year: 2014 PMID: 25146374 PMCID: PMC4717284 DOI: 10.1093/cercor/bhu189
Source DB: PubMed Journal: Cereb Cortex ISSN: 1047-3211 Impact factor: 5.357