Constrained Bayesian ICA for Brain Connectome Inference
@article{Donnat2019ConstrainedBI, title={Constrained Bayesian ICA for Brain Connectome Inference}, author={Claire Donnat and Leonardo Tozzi and Susan P. Holmes}, journal={arXiv: Applications}, year={2019} }
Brain connectomics is a developing field in neurosciences which strives to understand cognitive processes and psychiatric diseases through the analysis of interactions between brain regions. However, in the high-dimensional, low-sample, and noisy regimes that typically characterize fMRI data, the recovery of such interactions remains an ongoing challenge: how can we discover patterns of co-activity between brain regions that could then be associated to cognitive processes or psychiatric…
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