Graph network analysis of immediate motor-learning induced changes in resting state BOLD

Recent studies have demonstrated that following learning tasks, changes in the resting state activity of the brain shape regional connections in functionally specific circuits. Here we expand on these findings by comparing changes induced in the resting state immediately following four motor tasks....

Full description

Bibliographic Details
Main Authors: Saber eSami, R Chris Miall
Format: Article
Language:English
Published: Frontiers Media S.A. 2013-05-01
Series:Frontiers in Human Neuroscience
Subjects:
Online Access:http://journal.frontiersin.org/Journal/10.3389/fnhum.2013.00166/full
id doaj-b5a61a4ca11543f3a8178775575d21e6
record_format Article
spelling doaj-b5a61a4ca11543f3a8178775575d21e62020-11-25T02:42:31ZengFrontiers Media S.A.Frontiers in Human Neuroscience1662-51612013-05-01710.3389/fnhum.2013.0016644454Graph network analysis of immediate motor-learning induced changes in resting state BOLDSaber eSami0R Chris Miall1University of BirminghamUniversity of BirminghamRecent studies have demonstrated that following learning tasks, changes in the resting state activity of the brain shape regional connections in functionally specific circuits. Here we expand on these findings by comparing changes induced in the resting state immediately following four motor tasks. Two groups of participants performed a visuo-motor joystick task with one group adapting to a transformed relationship between joystick and cursor. Two other groups were trained in either explicit or implicit procedural sequence learning. Resting state BOLD data were collected immediately before and after the tasks. We then used graph theory-based approaches that include statistical measures of functional integration and segregation to characterise changes in biologically plausible brain connectivity networks within each group. Our results demonstrate that motor learning reorganizes resting brain networks with an increase in local information transfer, as indicated by local efficiency measures that affect the brain's small world network architecture. This was particularly apparent when comparing two distinct forms of explicit motor learning: procedural learning and the joystick learning task. Both groups showed notable increases in local efficiency. However changes in local efficiency in the inferior frontal and cerebellar regions also distinguishes between the two learning tasks. Additional graph analytic measures on the "non-learning" visuo-motor performance task revealed reversed topological patterns in comparison with the three learning tasks. These findings underscore the utility of graph-based network analysis as a novel means to compare both regional and global changes in functional brain connectivity in the resting state following motor learning tasks.http://journal.frontiersin.org/Journal/10.3389/fnhum.2013.00166/fullfMRImotor learningresting statecomplex networksgraph analysis
collection DOAJ
language English
format Article
sources DOAJ
author Saber eSami
R Chris Miall
spellingShingle Saber eSami
R Chris Miall
Graph network analysis of immediate motor-learning induced changes in resting state BOLD
Frontiers in Human Neuroscience
fMRI
motor learning
resting state
complex networks
graph analysis
author_facet Saber eSami
R Chris Miall
author_sort Saber eSami
title Graph network analysis of immediate motor-learning induced changes in resting state BOLD
title_short Graph network analysis of immediate motor-learning induced changes in resting state BOLD
title_full Graph network analysis of immediate motor-learning induced changes in resting state BOLD
title_fullStr Graph network analysis of immediate motor-learning induced changes in resting state BOLD
title_full_unstemmed Graph network analysis of immediate motor-learning induced changes in resting state BOLD
title_sort graph network analysis of immediate motor-learning induced changes in resting state bold
publisher Frontiers Media S.A.
series Frontiers in Human Neuroscience
issn 1662-5161
publishDate 2013-05-01
description Recent studies have demonstrated that following learning tasks, changes in the resting state activity of the brain shape regional connections in functionally specific circuits. Here we expand on these findings by comparing changes induced in the resting state immediately following four motor tasks. Two groups of participants performed a visuo-motor joystick task with one group adapting to a transformed relationship between joystick and cursor. Two other groups were trained in either explicit or implicit procedural sequence learning. Resting state BOLD data were collected immediately before and after the tasks. We then used graph theory-based approaches that include statistical measures of functional integration and segregation to characterise changes in biologically plausible brain connectivity networks within each group. Our results demonstrate that motor learning reorganizes resting brain networks with an increase in local information transfer, as indicated by local efficiency measures that affect the brain's small world network architecture. This was particularly apparent when comparing two distinct forms of explicit motor learning: procedural learning and the joystick learning task. Both groups showed notable increases in local efficiency. However changes in local efficiency in the inferior frontal and cerebellar regions also distinguishes between the two learning tasks. Additional graph analytic measures on the "non-learning" visuo-motor performance task revealed reversed topological patterns in comparison with the three learning tasks. These findings underscore the utility of graph-based network analysis as a novel means to compare both regional and global changes in functional brain connectivity in the resting state following motor learning tasks.
topic fMRI
motor learning
resting state
complex networks
graph analysis
url http://journal.frontiersin.org/Journal/10.3389/fnhum.2013.00166/full
work_keys_str_mv AT saberesami graphnetworkanalysisofimmediatemotorlearninginducedchangesinrestingstatebold
AT rchrismiall graphnetworkanalysisofimmediatemotorlearninginducedchangesinrestingstatebold
_version_ 1724773271540334592