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- Title
Network Communications Flexibly Predict Visual Contents That Enhance Representations for Faster Visual Categorization.
- Authors
Yuening Yan; Jiayu Zhan; Ince, Robin A. A.; Schyns, Philippe G.
- Abstract
Models of visual cognition generally assume that brain networks predict the contents of a stimulus to facilitate its subsequent categorization. However, understanding prediction and categorization at a network level has remained challenging, partly because we need to reverse engineer their information processing mechanisms from the dynamic neural signals. Here, we used connectivity measures that can isolate the communications of a specific content to reconstruct these network mechanisms in each individual participant (N = 11, both sexes). Each was cued to the spatial location (left vs right) and contents [low spatial frequency (LSF) vs high spatial frequency (HSF)] of a predicted Gabor stimulus that they then categorized. Using each participant’s concurrently measured MEG, we reconstructed networks that predict and categorize LSF versus HSF contents for behavior. We found that predicted contents flexibly propagate top down from temporal to lateralized occipital cortex, depending on task demands, under supervisory control of prefrontal cortex. When they reach lateralized occipital cortex, predictions enhance the bottom-up LSF versus HSF representations of the stimulus, all the way from occipital-ventral-parietal to premotor cortex, in turn producing faster categorization behavior. Importantly, content communications are subsets (i.e., 55–75%) of the signal-to-signal communications typically measured between brain regions. Hence, our study isolates functional networks that process the information of cognitive functions.
- Subjects
TELECOMMUNICATION systems; LARGE-scale brain networks; SUPERVISORY control systems; PREFRONTAL cortex; REVERSE engineering; PREMOTOR cortex
- Publication
Journal of Neuroscience, 2023, Vol 43, Issue 29, p5391
- ISSN
0270-6474
- Publication type
Article
- DOI
10.1523/JNEUROSCI.0156-23.2023