Transient spectral events in resting state MEG predict individual task responses
Citation
R. Becker, D. Vidaurre, A.J. Quinn, R.G. Abeysuriya, O. Parker Jones, S. Jbabdi, M.W. Woolrich. Transient spectral events in resting state MEG predict individual task responses. NeuroImage 215 (2020) 116818
Abstract
Even in response to simple tasks such as hand movement, human brain activity shows remarkable inter-subject
variability. Recently, it has been shown that individual spatial variability in fMRI task responses can be predicted
from measurements collected at rest; suggesting that the spatial variability is a stable feature, inherent to
the individual’s brain. However, it is not clear if this is also true for individual variability in the spatio-spectral
content of oscillatory brain activity. Here, we show using MEG (N ¼ 89) that we can predict the spatial and
spectral content of an individual’s task response using features estimated from the individual’s resting MEG data.
This works by learning when transient spectral ‘bursts’ or events in the resting state tend to reoccur in the task
responses. We applied our method to motor, working memory and language comprehension tasks. All task
conditions were predicted significantly above chance. Finally, we found a systematic relationship between genetic
similarity (e.g. unrelated subjects vs. twins) and predictability. Our approach can predict individual differences in
brain activity and suggests a link between transient spectral events in task and rest that can be captured at the
level of individuals.
Description
Open Access
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