Literature DB >> 10949055

Striatum forever, despite sequence learning variability: a random effect analysis of PET data.

P Peigneux1, P Maquet, T Meulemans, A Destrebecqz, S Laureys, C Degueldre, G Delfiore, J Aerts, A Luxen, G Franck, M Van der Linden, A Cleeremans.   

Abstract

This PET study is concerned with the what, where, and how of implicit sequence learning. In contrast with previous studies imaging the serial reaction time (SRT) task, the sequence of successive locations was determined by a probabilistic finite-state grammar. The implicit acquisition of statistical relationships between serially ordered elements (i.e., what) was studied scan by scan, aiming to evidence the brain areas (i.e., where) specifically involved in the implicit processing of this core component of sequential higher-order knowledge. As behavioural results demonstrate between- and within-subjects variability in the implicit acquisition of sequential knowledge through practice, functional PET data were modelled using a random-effect model analysis (i.e., how) to account for both sources of behavioural variability. First, two mean condition images were created per subject depending on the presence or not of implicit sequential knowledge at the time of each of the 12 scans. Next, direct comparison of these mean condition images provided the brain areas involved in sequential knowledge processing. Using this approach, we have shown that the striatum is involved in more than simple pairwise associations and that it has the capacity to process higher-order knowledge. We suggest that the striatum is not only involved in the implicit automatization of serial information through prefrontal cortex-caudate nucleus networks, but also that it plays a significant role for the selection of the most appropriate responses in the context created by both the current and previous stimuli, thus contributing to better efficiency and faster response preparation in the SRT task.

Mesh:

Year:  2000        PMID: 10949055      PMCID: PMC6871789          DOI: 10.1002/1097-0193(200008)10:4<179::aid-hbm30>3.0.co;2-h

Source DB:  PubMed          Journal:  Hum Brain Mapp        ISSN: 1065-9471            Impact factor:   5.038


  40 in total

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2.  Exploration of implicit artificial grammar learning in Parkinson's disease.

Authors:  P Peigneux; T Meulemans; M Van der Linden; E Salmon; H Petit
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9.  Role of the striatum, cerebellum and frontal lobes in the automatization of a repeated visuomotor sequence of movements.

Authors:  J Doyon; R Laforce; G Bouchard; D Gaudreau; J Roy; M Poirier; P J Bédard; F Bédard; J P Bouchard
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10.  Procedural learning in Parkinson's disease and cerebellar degeneration.

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  36 in total

1.  Cognitive procedural learning in patients with fronto-striatal lesions.

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3.  Conditional routing of information to the cortex: a model of the basal ganglia's role in cognitive coordination.

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4.  The neural correlates of implicit and explicit sequence learning: Interacting networks revealed by the process dissociation procedure.

Authors:  Arnaud Destrebecqz; Philippe Peigneux; Steven Laureys; Christian Degueldre; Guy Del Fiore; Joël Aerts; André Luxen; Martial Van Der Linden; Axel Cleeremans; Pierre Maquet
Journal:  Learn Mem       Date:  2005-09-15       Impact factor: 2.460

5.  Disentangling perceptual from motor implicit sequence learning with a serial color-matching task.

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6.  Hippocampal contribution to early and later stages of implicit motor sequence learning.

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7.  The neural basis of implicit learning of task-irrelevant Chinese tonal sequence.

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Review 8.  Neurocognitive basis of implicit learning of sequential structure and its relation to language processing.

Authors:  Christopher M Conway; David B Pisoni
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9.  The neural correlates of statistical learning in a word segmentation task: An fMRI study.

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10.  Recurrent boosting effects of short inactivity delays on performance: an ERPs study.

Authors:  Remy Schmitz; Manuel Schabus; Fabien Perrin; André Luxen; Pierre Maquet; Philippe Peigneux
Journal:  BMC Res Notes       Date:  2009-08-26
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