Abstracts

DYNAMICAL CHANGES IN THE RAT CHRONIC LIMBIC EPILEPSY MODEL

Abstract number : 2.060
Submission category :
Year : 2004
Submission ID : 4583
Source : www.aesnet.org
Presentation date : 12/2/2004 12:00:00 AM
Published date : Dec 1, 2004, 06:00 AM

Authors :
1,8Sandeep P. Nair, 2,8Deng-Shan Shiau, 6Wendy M. Norman, 6Dustyn Shenk, 4,8Wichai Suharitdamrong, 7Leon D. Iasemidis, 1,4Panos M. Pardalos, 1,2,3,5,6,8J. Chris Sackel

We have previously reported seizure prediction in human temporal lobe epilepsy (TLE) using Short Term Lyapunov Exponent (STL[sub]max[/sub]) and Average Angular Frequency ([Omega]) with a sensitivity of 80% (Iasemidis et al, 2003). These results have prompted us to apply the same techniques to a rat chronic limbic epilepsy (CLE) model described by Lothman et al.(1990). The present study tests the hypothesis that similar dynamical changes exist in the CLE model. Thirty, 2-hr epoch data sets from 6 CLE rats (mean seizure duration 74[plusmn]20 sec), each containing a grade 5 seizure and continuous intracranial EEG beginning 1 hr before the seizure were analyzed. Teager energy is calculated iteratively every 5-second epoch for each electrode and a detection is determined at an adaptive fixed threshold. Coherence is calculated for every 4-sec non-overlapping epoch for each electrode pair. Ictal and interictal periods were compared to estimate the change in synchronization between channels at seizure onset. STL[sub]max[/sub] measures the dynamical chaoticity of a signal and [Omega] measures how fast the local state of a system changes on average and are estimated for every 10.24-second interval. T-index, a statistical measure is used to quantify the convergence or divergence of STL[sub]max[/sub] and [Omega] before and after a seizure. Data analysis showed an abrupt increase in the energy profile of each channel and a significant increase in coherence values in multiple frequency bands between the area of ictal onset and other sites during a seizure. Nonlinear analysis shows multiple transient drops in STL[sub]max[/sub] values during the pre-ictal period followed by a significant drop during the ictal period. [Omega] values show transient peaks during the pre-ictal period followed by a significant peak during the ictal period. The channel corresponding to the stimulated side of the hippocampus had a consistently lower value of STL[sub]max[/sub] and a higher value of [Omega] compared to other channels. A convergence among electrode sites was also observed in both STL[sub]max[/sub] and [Omega] values (low T-index) before a seizure. Results suggest that linear and non linear analysis can detect the dynamical change that precedes and accompanies seizures in rat CLE model. Furthermore, convergence in non-linear measures suggest that it is possible to identify the preictal transition. Thus, the rat CLE model may serve as a tool to further develop seizure prediction algorithms and implement real time closed-loop intervention techniques. (Supported by NIH grant R01EB002089, Children[apos]s Miracle Network, University of Florida Division of Sponsored Research and Department of Veterans Affairs)