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MEG and EEG data fusion: Simultaneous localisation of face-evoked responses
Authors:
HENSON, R.N., MOUCHLIANITIS, E. & Friston, K.J.
Reference:
Neuroimage, 47(2), 581-589
Year of publication:
2009
CBU number:
6985
Abstract:
We present an empirical Bayesian scheme for distributed multimodal inversion of electromagnetic forward
models of EEG and MEG signals.We used a generative model with common source activity and separate error
components for each modality. Under this scheme, the weightings of error for each modality, relative to
source components, are estimated automatically from the data, by optimising the model-evidence. This
obviates the need for arbitrary user-defined weightings. To evaluate the scheme, we acquired three types of
data simultaneously from twelve participants: total magnetic flux (as recorded by 102 magnetometers),
orthogonal in-plane gradients of the magnetic field (as recorded by 204 planar gradiometers) and voltage
differences in the electrical field (recorded by 70 electrodes). We assessed the relative precision of each
sensor-type in terms of signal-to-noise ratio (SNR); using empirical sample variances and optimised
estimators from the generative model. We then compared the localisation of face-evoked responses, using
each modality separately, with that obtained by their “fusion” under the common generative model. Finally,
we quantified the conditional precisions of the source estimates using their posterior covariance, confirming
that EEG can improve MEG-based source reconstructions.
URL:
MRC Cognition and Brain Sciences Unit

