Epileptic seizures represent abnormal periods of increased excitation and synchronized bursting of large networks of neurons. While various in vitro models for epilepsy have provided important insights into cellular, synaptic, and local network behavior, additional models are needed to understand recurrent bursting in more characteristic large neural networks. Unfortunately intact animal models have significant limitations for these studies. In contrast, model neural networks offer a number of distinct advantages for studies of large network behavior, including the ability to exactly model and monitor specific neuronal assemblies with known structure, connectivity and membrane properties. Such model neural networks are now being developed and utilized to study recurrent bursting and seizure propagation. Using reduced compartment neurons based on modified Av-Ron Rinzel equations, networks can be assembled that can simulate recurrent bursting behavior and seizure propagation. Modeling is greatly facilitated by distributed computing with computer clusters, allowing for studies on network arrays of 10 6 or more neurons. Since recurrent seizures produce changes in intrinsic neuronal connectivity, the influences of these changes will be studied through specific models with varying connectivity. The ability to disrupt or terminate this bursting behavior with external excitatory stimuli will be modeled and characterized. The importance of feedback loops in burst termination and the specific parameters of external stimulation that optimize burst termination or disruption will be defined. Both discrete external excitatory pulses and low level external excitatory stimulation will be studied. Brain stimulation for the amelioration or control of epileptic seizures in humans is attracting considerable and growing interest. Unfortunately the optimal parameters for favorable modulation by external excitatory stimulation are not well understood and the applications at present use somewhat arbitrary parameters. The studies proposed here may provide important insights into the important criteria responsible for burst generating in large neuronal arrays. From these results the parameters for application of excitatory stimulation for reduction of repetitive bursting in these models networks can be addressed. Hopefully these insights can be applied to devices useful to patients with uncontrolled epilepsy.

Agency
National Institute of Health (NIH)
Institute
National Institute of Neurological Disorders and Stroke (NINDS)
Type
Research Project (R01)
Project #
5R01NS038958-08
Application #
6943056
Study Section
Special Emphasis Panel (ZRG1-BDCN-1 (01))
Program Officer
Stewart, Randall R
Project Start
1999-07-01
Project End
2007-08-31
Budget Start
2005-09-01
Budget End
2007-08-31
Support Year
8
Fiscal Year
2005
Total Cost
$310,650
Indirect Cost
Name
Johns Hopkins University
Department
Neurology
Type
Schools of Medicine
DUNS #
001910777
City
Baltimore
State
MD
Country
United States
Zip Code
21218
Anderson, William S; Kudela, Pawel; Weinberg, Seth et al. (2009) Phase-dependent stimulation effects on bursting activity in a neural network cortical simulation. Epilepsy Res 84:42-55
Anderson, William S; Kudela, Pawel; Cho, Jounhong et al. (2007) Studies of stimulus parameters for seizure disruption using neural network simulations. Biol Cybern 97:173-94
Zygierewicz, J; Mazurkiewicz, J; Durka, P J et al. (2006) Estimation of short-time cross-correlation between frequency bands of event related EEG. J Neurosci Methods 157:294-302
Yang, K-H; Franaszczuk, Piotr J; Bergey, Gregory K (2005) Inhibition modifies the effects of slow calcium-activated potassium channels on epileptiform activity in a neuronal network model. Biol Cybern 92:71-81
Kudela, Pawel; Franaszczuk, Piotr J; Bergey, Gregory K (2003) Changing excitation and inhibition in simulated neural networks: effects on induced bursting behavior. Biol Cybern 88:276-85
Yang, Keun-Hang; Franaszczuk, Piotr J; Bergey, Gregory K (2003) The influences of somatic and dendritic inhibition on bursting patterns in a neuronal circuit model. Biol Cybern 89:242-53
Franaszczuk, Piotr J; Kudela, Pawel; Bergey, Gregory K (2003) External excitatory stimuli can terminate bursting in neural network models. Epilepsy Res 53:65-80
Kudela, Pawel; Franaszczuk, Piotr J; Bergey, Gregory K (2003) Reduction of intracellular calcium removal rate can explain changes in seizure dynamics: studies in neuronal network models. Epilepsy Res 57:95-109