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The importance of modeling epileptic seizure dynamics as spatio-temporal patterns.

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posted on 2025-07-31, 16:00 authored by G Baier, M Goodfellow, PN Taylor, Y Wang, DJ Garry
The occurrence of seizures is the common feature across the spectrum of epileptic disorders. We describe how the use of mechanistic neural population models leads to novel insight into the dynamic mechanisms underlying two important types of epileptic seizures. We specifically stress the need for a spatio-temporal description of the rhythms to deal with the complexity of the pathophenotype. Adapted to functional and structural patient data, the macroscopic models may allow a patient-specific description of seizures and prediction of treatment outcome.

Funding

We thank British research councils EPSRC and BBSRC and the University of Manchester for financial support. We thank Kaspar Schindler, Ulrich Stephani, Hiltrud Muhle, Rainer Boor, Michael Siniatchkin, Fernando Lopes da Silva, and Gilles van Luijtelaar for discussions. EEG data are from the University Hospital Inselspital, Bern, Switzerland.

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Copyright © 2012 Baier, Goodfellow, Taylor, Wang and Garry. This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits use, distribution and reproduction in other forums, provided the original authors and source are credited and subject to any copyright notices concerning any third-party graphics etc.

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Published online Journal Article This is the final version of the article. Available from Frontiers Media via the DOI in this record.

Journal

Frontiers in Physiology

Publisher

Frontiers Media

Place published

Switzerland

Language

en

Citation

Vol. 3, pp. 281 -

Department

  • Mathematics and Statistics

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