NCQMMLOct 24, 2013

Sparse Predictive Structure of Deconvolved Functional Brain Networks

arXiv:1310.6547v1
Originality Incremental advance
AI Analysis

This work addresses the challenge of noisy and correlated brain network analysis for neuroscience researchers, offering an incremental improvement in decoding accuracy.

The authors tackled the problem of distinguishing real from spurious correlations in brain networks to identify differences between experimental conditions, proposing a pipeline that uses deconvolution and sparse classification to decode covert attention direction from MEG data, outperforming typical methods.

The functional and structural representation of the brain as a complex network is marked by the fact that the comparison of noisy and intrinsically correlated high-dimensional structures between experimental conditions or groups shuns typical mass univariate methods. Furthermore most network estimation methods cannot distinguish between real and spurious correlation arising from the convolution due to nodes' interaction, which thus introduces additional noise in the data. We propose a machine learning pipeline aimed at identifying multivariate differences between brain networks associated to different experimental conditions. The pipeline (1) leverages the deconvolved individual contribution of each edge and (2) maps the task into a sparse classification problem in order to construct the associated "sparse deconvolved predictive network", i.e., a graph with the same nodes of those compared but whose edge weights are defined by their relevance for out of sample predictions in classification. We present an application of the proposed method by decoding the covert attention direction (left or right) based on the single-trial functional connectivity matrix extracted from high-frequency magnetoencephalography (MEG) data. Our results demonstrate how network deconvolution matched with sparse classification methods outperforms typical approaches for MEG decoding.

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