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An exploratory data analysis method for identifying brain regions and frequencies of interest from large-scale neural recordings

Authors :
Pierre Sacré
Macauley S. Breault
Sridevi V. Sarma
John T. Gale
Jorge Gonzalez-Martinez
Source :
Journal of Computational Neuroscience. 46:3-17
Publication Year :
2018
Publisher :
Springer Science and Business Media LLC, 2018.

Abstract

High-resolution whole brain recordings have the potential to uncover unknown functionality but also present the challenge of how to find such associations between brain and behavior when presented with a large number of regions and spectral frequencies. In this paper, we propose an exploratory data analysis method that sorts through a massive quantity of multivariate neural recordings to quickly extract a subset of brain regions and frequencies that encode behavior. This approach combines existing tools and exploits low-rank approximation of matrices without a priori selection of regions and frequency bands for analysis. In detail, the spectral content of neural activity across all frequencies of each recording contact is computed and represented as a matrix. Then, the rank-1 approximation of the matrix is computed using singular value decomposition and the associated singular vectors are extracted. The temporal singular vector, which captures the salient features of the spectrogram, is then correlated to the trial-varying behavioral signal. The distribution of correlations for each brain region is efficiently computed and used to find a subset of regions and frequency bands of interest for further examination. As an illustration, we apply this approach to a data set of local field potentials collected using stereoelectroencephalography from a human subject performing a reaching task. Using the proposed procedure, we produced a comprehensive set of brain regions and frequencies related to our specific behavior. We demonstrate how this tool can produce preliminary results that capture neural patterns related to behavior and aid in formulating data-driven hypotheses, hence reducing the time it takes for any scientist to transition from the exploratory to the confirmatory phase.

Details

ISSN :
15736873 and 09295313
Volume :
46
Database :
OpenAIRE
Journal :
Journal of Computational Neuroscience
Accession number :
edsair.doi.dedup.....781bd635c61bfec505f4483f5567ac73
Full Text :
https://doi.org/10.1007/s10827-018-0705-9