Literature DB >> 14523069

Differential cortical and subcortical activations in learning rotations and gains for reaching: a PET study.

John W Krakauer1, Maria-Felice Ghilardi, Marc Mentis, Anna Barnes, Milana Veytsman, David Eidelberg, Claude Ghez.   

Abstract

Previous studies suggest that horizontal reaching movements are planned vectorially with independent specification of direction and extent. The transformation from visual to hand-centered coordinates requires the learning of a task-specific reference frame and scaling factor. We studied learning of a novel reference frame by imposing a screen-cursor rotation and learning of a scaling factor by imposing a novel gain. Previous work demonstrates that rotation and gain learning have different time courses and patterns of generalization. Here we used PET to identify and compare brain areas activated during rotation and gain learning, with a baseline motor-execution task as the subtracted control. Previous work has shown that the time courses of rotation and gain adaptation have a short rapid phase followed by a longer slow phase. We therefore also sought to compare activations associated with the rapid and slower phases of adaptation. We isolated the rapid phase by alternating opposite values of the rotation or gain every 16 movements. The rapid phase of rotation adaptation activated the preSMA. More complete adaptation to the rotation activated right ventral premotor cortex, right posterior parietal cortex, and the left lateral cerebellum. The rapid phase of gain learning only activated subcortical structures: bilateral putamen and left cerebellum. More complete gain learning failed to show any significant activation. We conclude that the time course of rotation adaptation is paralleled by a frontoparietal shift in activated cortical regions. In contrast, early gain adaptation involves only subcortical structures, which we suggest reflects a more automatic process of contextual recalibration of a scaling factor.

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Year:  2003        PMID: 14523069     DOI: 10.1152/jn.00675.2003

Source DB:  PubMed          Journal:  J Neurophysiol        ISSN: 0022-3077            Impact factor:   2.714


  111 in total

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7.  Intermittent visuomotor processing in the human cerebellum, parietal cortex, and premotor cortex.

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8.  Acquisition and generalization of visuomotor transformations by nonhuman primates.

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Journal:  Exp Brain Res       Date:  2004-10-05       Impact factor: 1.972

9.  Neural Signatures of Prediction Errors in a Decision-Making Task Are Modulated by Action Execution Failures.

Authors:  Samuel D McDougle; Peter A Butcher; Darius E Parvin; Fasial Mushtaq; Yael Niv; Richard B Ivry; Jordan A Taylor
Journal:  Curr Biol       Date:  2019-05-02       Impact factor: 10.834

Review 10.  Neural correlates of motor learning, transfer of learning, and learning to learn.

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