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      Hand Movement Direction Decoded from MEG and EEG

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          Abstract

          Brain activity can be used as a control signal for brain–machine interfaces (BMIs). A powerful and widely acknowledged BMI approach, so far only applied in invasive recording techniques, uses neuronal signals related to limb movements for equivalent, multidimensional control of an external effector. Here, we investigated whether this approach is also applicable for noninvasive recording techniques. To this end, we recorded whole-head MEG during center-out movements with the hand and found significant power modulation of MEG activity between rest and movement in three frequency bands: an increase for ≤7 Hz (low-frequency band) and 62–87 Hz (high-γ band) and a decrease for 10–30 Hz (β band) during movement. Movement directions could be inferred on a single-trial basis from the low-pass filtered MEG activity as well as from power modulations in the low-frequency band, but not from the β and high-γ bands. Using sensors above the motor area, we obtained a surprisingly high decoding accuracy of 67% on average across subjects. Decoding accuracy started to rise significantly above chance level before movement onset. Based on simultaneous MEG and EEG recordings, we show that the inference of movement direction works equally well for both recording techniques. In summary, our results show that neuronal activity associated with different movements of the same effector can be distinguished by means of noninvasive recordings and might, thus, be used to drive a noninvasive BMI.

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          Author and article information

          Journal
          J Neurosci
          J. Neurosci
          jneuro
          jneurosci
          J. Neurosci
          The Journal of Neuroscience
          Society for Neuroscience
          0270-6474
          1529-2401
          23 January 2008
          : 28
          : 4
          : 1000-1008
          Affiliations
          [1] 1Institute of Medical Psychology and Behavioral Neurobiology, University of Tübingen, 72076 Tübingen, Germany,
          [2] 2Institute of Biology I,
          [3] 3Bernstein Center for Computational Neuroscience, and
          [4] 4Institute of Biology III, Albert-Ludwigs-University, 79104 Freiburg, Germany, and
          [5] 5Department of Obstetrics and Gynecology, University of Arkansas for Medical Sciences, Little Rock, Arkansas 72205
          Author notes
          Correspondence should be addressed to Stephan Waldert, Institute of Biology I, University of Freiburg, Hauptstrasse 1, 79104 Freiburg, Germany. waldert@ 123456bccn.uni-freiburg.de
          Article
          PMC6671004 PMC6671004 6671004 3311164
          10.1523/JNEUROSCI.5171-07.2008
          6671004
          18216207
          d58c4ed7-1f2f-412c-8ed0-9d163f6f3031
          Copyright © 2008 Society for Neuroscience 0270-6474/08/281000-09$15.00/0
          History
          : 29 August 2007
          : 13 December 2007
          Categories
          Articles
          Behavioral/Systems/Cognitive

          motor cortex,hand movement,decoding,BMI,EEG,MEG
          motor cortex, hand movement, decoding, BMI, EEG, MEG

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