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Charting epilepsy by searching for intelligence in network space with the help of evolving autonomous agents
Authors:Elan L Ohayon  Stiliyan Kalitzin  Piotr Suffczynski  Frank Y Jin  Paul W Tsang  Donald S Borrett  W McIntyre Burnham  Hon C Kwan
Institution:University of Toronto Epilepsy Research Program, Institute of Medical Science, Medical Sciences Building, University of Toronto, Ont., Canada. ohayon@chass.utoronto.ca
Abstract:The problem of demarcating neural network space is formidable. A simple fully connected recurrent network of five units (binary activations, synaptic weight resolution of 10) has 3.2 *10(26) possible initial states. The problem increases drastically with scaling. Here we consider three complementary approaches to help direct the exploration to distinguish epileptic from healthy networks. 1] First, we perform a gross mapping of the space of five-unit continuous recurrent networks using randomized weights and initial activations. The majority of weight patterns (>70%) were found to result in neural assemblies exhibiting periodic limit-cycle oscillatory behavior. 2] Next we examine the activation space of non-periodic networks demonstrating that the emergence of paroxysmal activity does not require changes in connectivity. 3] The next challenge is to focus the search of network space to identify networks with more complex dynamics. Here we rely on a major available indicator critical to clinical assessment but largely ignored by epilepsy modelers, namely: behavioral states. To this end, we connected the above network layout to an external robot in which interactive states were evolved. The first random generation showed a distribution in line with approach 1]. That is, the predominate phenotypes were fixed-point or oscillatory with seizure-like motor output. As evolution progressed the profile changed markedly. Within 20 generations the entire population was able to navigate a simple environment with all individuals exhibiting multiply-stable behaviors with no cases of default locked limit-cycle oscillatory motor behavior. The resultant population may thus afford us a view of the architectural principles demarcating healthy biological networks from the pathological. The approach has an advantage over other epilepsy modeling techniques in providing a way to clarify whether observed dynamics or suggested therapies are pointing to computational viability or dead space.
Keywords:Seizures  Autism  Synchrony  Graph theory  Close return  Recurrent neural network  Robot  Artificial life  Computer modeling  Genetic algorithm  Self-organization
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