Author:
Idesis Sebastian,Allegra Michele,Vohryzek Jakub,Sanz Perl Yonatan,Faskowitz Joshua,Sporns Olaf,Corbetta Maurizio,Deco Gustavo
Abstract
AbstractLarge-scale brain networks reveal structural connections as well as functional synchronization between distinct regions of the brain. The latter, referred to as functional connectivity (FC), can be derived from neuroimaging techniques such as functional magnetic resonance imaging (fMRI). FC studies have shown that brain networks are severely disrupted by stroke. However, since FC data are usually large and high-dimensional, extracting clinically useful information from this vast amount of data is still a great challenge, and our understanding of the functional consequences of stroke remains limited. Here, we propose a dimensionality reduction approach to simplify the analysis of this complex neural data. By using autoencoders, we find a low-dimensional representation encoding the fMRI data which preserves the typical FC anomalies known to be present in stroke patients. By employing the latent representations emerging from the autoencoders, we enhanced patients’ diagnostics and severity classification. Furthermore, we showed how low-dimensional representation increased the accuracy of recovery prediction.
Funder
EU-project euSNN
Horizon EU ERC Synergy Grant
Fondazione Cassa di Risparmio di Padova e Rovigo
NEUROCONN
EYEMOVINSTROKE
Spanish national research project
Publisher
Springer Science and Business Media LLC
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