Biology – Quantitative Biology – Neurons and Cognition
Scientific paper
1998-06-16
Biology
Quantitative Biology
Neurons and Cognition
11 pages, 16 figures, pdf, submitted to Human Brain Mapping, color figures at http://stella.lanl.gov/bi.html. Originally submi
Scientific paper
We present a new approach to the electromagnetic inverse problem that explicitly addresses the ambiguity associated with its ill-posed character. Rather than calculating a single ``best'' solution according to some criterion, our approach produces a large number of likely solutions that both fit the data and any prior information that is used. While the range of the different likely results is representative of the ambiguity in the inverse problem even with prior information present, features that are common across a large number of the different solutions can be identified and are associated with a high degree of probability. This approach is implemented and quantified within the formalism of Bayesian inference which combines prior information with that from measurement in a common framework using a single measure. To demonstrate this approach, a general neural activation model is constructed that includes a variable number of extended regions of activation and can incorporate a great deal of prior information on neural current such as information on location, orientation, strength and spatial smoothness. Taken together, this activation model and the Bayesian inferential approach yield estimates of the probability distributions for the number, location, and extent of active regions. Both simulated MEG data and data from a visual evoked response experiment are used to demonstrate the capabilities of this approach.
George John S.
Schmidt David M.
Wood Charles
No associations
LandOfFree
Bayesian Inference Applied to the Electromagnetic Inverse Problem does not yet have a rating. At this time, there are no reviews or comments for this scientific paper.
If you have personal experience with Bayesian Inference Applied to the Electromagnetic Inverse Problem, we encourage you to share that experience with our LandOfFree.com community. Your opinion is very important and Bayesian Inference Applied to the Electromagnetic Inverse Problem will most certainly appreciate the feedback.
Profile ID: LFWR-SCP-O-364611