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Extraction of Hierarchical Functional Connectivity Components in human brain using Adversarial Learning

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The estimation of sparse hierarchical components reflecting patterns of the brain's functional connectivity from rsfMRI data can contribute to our understanding of the brain's functional organization, and can lead to biomarkers of diseases. However, inter-scanner variations and other confounding factors pose a challenge to the robust and reproducible estimation of functionally-interpretable brain networks, and especially to reproducible biomarkers. Moreover, the brain is believed to be organized hierarchically, and hence single-scale decompositions miss this hierarchy. The paper aims to use current advancements in adversarial learning to estimate interpretable hierarchical patterns in the human brain using rsfMRI data, which are robust to "adversarial effects" such as inter-scanner variations. We write the estimation problem as a minimization problem and solve it using alternating updates. Extensive experiments on simulation and a real-world dataset show high reproducibility of the components compared to other well-known methods.

Dushyant Sahoo, Christos Davatzikos• 2021

Related benchmarks

TaskDatasetResultRank
Accuracy of componentsHierarchical simulated dataset (test)
Accuracy87.5
40
ReproducibilityReal fMRI dataset (split-sample)
Reproducibility0.737
40
Component estimationSimulated dataset one level
Accuracy87.5
28
ReproducibilitySimulated dataset k2 = 4
Reproducibility82.4
20
ReproducibilitySimulated dataset k2=6
Reproducibility82.8
20
Reproducibility Assessmentreal fMRI dataset (leave-one-site-out)
Reproducibility Score65.6
20
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