NENCMay 3, 2014

Spatial Neural Networks and their Functional Samples: Similarities and Differences

arXiv:1405.0573v11 citations
Originality Incremental advance
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This work addresses the challenge of linking microscopic neural structure to mesoscopic functional dynamics in computational neuroscience, with potential applications in clinical brain imaging analysis.

The authors tackled the problem of estimating structural properties of spatial neural networks from functional network samples derived from brain imaging data, showing that under specific sample size and edge density conditions, several network measurements can be precisely estimated from functional observations.

Models of neural networks have proven their utility in the development of learning algorithms in computer science and in the theoretical study of brain dynamics in computational neuroscience. We propose in this paper a spatial neural network model to analyze the important class of functional networks, which are commonly employed in computational studies of clinical brain imaging time series. We developed a simulation framework inspired by multichannel brain surface recordings (more specifically, EEG -- electroencephalogram) in order to link the mesoscopic network dynamics (represented by sampled functional networks) and the microscopic network structure (represented by an integrate-and-fire neural network located in a 3D space -- hence the term spatial neural network). Functional networks are obtained by computing pairwise correlations between time-series of mesoscopic electric potential dynamics, which allows the construction of a graph where each node represents one time-series. The spatial neural network model is central in this study in the sense that it allowed us to characterize sampled functional networks in terms of what features they are able to reproduce from the underlying spatial network. Our modeling approach shows that, in specific conditions of sample size and edge density, it is possible to precisely estimate several network measurements of spatial networks by just observing functional samples.

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