Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Intra-V1 functional networks predict observed stimuli

View through CrossRef
AbstractSeveral studies suggest that the pattern of co-fluctuations of neural activity within V1 (measured with fMRI) changes with variations in attention/perceptual organization of observed stimuli. Here we used multivariate pattern analysis of intra-V1 correlation matrices to predict the level and shape of the observed Navon letters. We examined the inter-individual stability of network topologies and then tested if they contained intra-individual information about stimulus shape or level that was tolerant to changes in the irrelevant feature. The inter-individual classification was accurate for all specific level and letter-shape tests. These results indicate that the association of V1 topologies and perceptual states is stable across participants. Intra-participant cross-classification of level (ignoring shape) was accurate but failed for shape (ignoring level). Cross-classification of stimulus level was more accurate when the stimulus-evoked response was suppressed in the fMRI time series and not present for correlations based on raw time series, stimulus-evoked beta-series, or simulations of the effects of eye movements measured in a control group. Furthermore, cross-classification weight maps evinced asymmetries of link strengths across the visual field that mirrored perceptual asymmetries. We hypothesize that feedback about level information drives the intra-V1 networks based on fMRI background activity. These intra-V1 networks can shed light on the neural basis of attention and perceptual organization.
Title: Intra-V1 functional networks predict observed stimuli
Description:
AbstractSeveral studies suggest that the pattern of co-fluctuations of neural activity within V1 (measured with fMRI) changes with variations in attention/perceptual organization of observed stimuli.
Here we used multivariate pattern analysis of intra-V1 correlation matrices to predict the level and shape of the observed Navon letters.
We examined the inter-individual stability of network topologies and then tested if they contained intra-individual information about stimulus shape or level that was tolerant to changes in the irrelevant feature.
The inter-individual classification was accurate for all specific level and letter-shape tests.
These results indicate that the association of V1 topologies and perceptual states is stable across participants.
Intra-participant cross-classification of level (ignoring shape) was accurate but failed for shape (ignoring level).
Cross-classification of stimulus level was more accurate when the stimulus-evoked response was suppressed in the fMRI time series and not present for correlations based on raw time series, stimulus-evoked beta-series, or simulations of the effects of eye movements measured in a control group.
Furthermore, cross-classification weight maps evinced asymmetries of link strengths across the visual field that mirrored perceptual asymmetries.
We hypothesize that feedback about level information drives the intra-V1 networks based on fMRI background activity.
These intra-V1 networks can shed light on the neural basis of attention and perceptual organization.

Related Results

Intra-V1 functional networks and classification of observed stimuli
Intra-V1 functional networks and classification of observed stimuli
IntroductionPrevious studies suggest that co-fluctuations in neural activity within V1 (measured with fMRI) carry information about observed stimuli, potentially reflecting various...
Gender Differences in Children's Expression and Control of Fantasy Aggression
Gender Differences in Children's Expression and Control of Fantasy Aggression
The purpose of this study was to examine: 1) possible gender differences in children's expression of aggression in story sequences; 2) possible gender differences in children's exp...
The contribution of stimulus frequency and attention to the N2 and P3 in Go/Nogo: A multilab replication and new analyses
The contribution of stimulus frequency and attention to the N2 and P3 in Go/Nogo: A multilab replication and new analyses
Numerous EEG studies have found that stimuli that require withholding a response (Nogo stimuli) elicit two scalp-recorded event-related potentials (ERPs), the frontal N2 and the fr...
Increased error rate and delayed response to negative emotional stimuli in antisaccade task in obsessive-compulsive disorder
Increased error rate and delayed response to negative emotional stimuli in antisaccade task in obsessive-compulsive disorder
AbstractAmple evidence links impaired inhibitory control, attentional distortions, emotional dysregulation, and obsessive-compulsive disorder (OCD). However, it remains unclear wha...
Mapping regional oral dryness
Mapping regional oral dryness
The Regional Oral Dryness Inventory (RODI), a newly developed questionnaire which quantifies the severity of dryness at various locations in the mouth. It was found that there is a...
Tramadol state-dependent memory: involvement of dorsal hippocampal muscarinic acetylcholine receptors
Tramadol state-dependent memory: involvement of dorsal hippocampal muscarinic acetylcholine receptors
The effects on tramadol state-dependent memory of bilateral intradorsal hippocampal (intra-CA1) injections of physostigmine, an acetylcholinesterase inhibitor, and atropine, a musc...
Synchronizability and eigenvalues of two-layer star networks
Synchronizability and eigenvalues of two-layer star networks
From the study of multilayer networks, scientists have found that the properties of the multilayer networks show great difference from those of the traditional complex networks. In...
Short- and long-term temporal network prediction based on network memory
Short- and long-term temporal network prediction based on network memory
Abstract Temporal networks like physical contact networks are networks whose topology changes over time. Predicting future temporal networks is crucial e.g., to forecast an...

Back to Top