Identifying spatially overlapping local cortical networks with MEG
โ Scribed by Keith Kawabata Duncan; Avgis Hadjipapas; Sheng Li; Zoe Kourtzi; Andy Bagshaw; Gareth Barnes
- Book ID
- 102846161
- Publisher
- John Wiley and Sons
- Year
- 2009
- Tongue
- English
- Weight
- 881 KB
- Volume
- 31
- Category
- Article
- ISSN
- 1065-9471
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โฆ Synopsis
Abstract
Recent modelling studies (Hadjipapas et al. [2009]: Neuroimage 44:1290โ1303) have shown that it may be possible to distinguish between different neuronal populations on the basis of their macroscopically measured (EEG/MEG) mean field. We set out to test whether the different orientation columns contributing to a signal at a specific cortical location could be identified based on the measured MEG signal. We used 1.5deg square, static, obliquely oriented grating stimuli to generate sustained gamma oscillations in a focal region of primary visual cortex. We then used multivariate classifier methods to predict the orientation (left or right oblique) of the stimuli based purely on the timeโseries data from this one location. Both the single trial evoked response (0โ300 ms) and induced postโtransient power spectra (300โ2,300 ms, 20โ70 Hz band) due to the different stimuli were classifiable significantly above chance in 11/12 and 10/12 datasets respectively. Interestingly, stimulusโspecific information is preserved in the sustained part of the gamma oscillation, long after perception has occurred and all neuronal transients have decayed. Importantly, the classification of this induced oscillation was still possible even when the power spectra were rankโtransformed showing that the different underlying networks give rise to different characteristic temporal signatures. Hum Brain Mapp, 2010. ยฉ 2009 WileyโLiss, Inc.
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