SpaRG: Sparsely Reconstructed Graphs for Generalizable fMRI Analysis
Camila Gonz\'alez, Yanis Miraoui, Yiran Fan, Ehsan Adeli, Kilian M., Pohl

TL;DR
SpaRG introduces a sparsification-based deep learning approach for rs-fMRI analysis that enhances interpretability and generalization across different data acquisition sites by focusing on highly informative connections.
Contribution
It proposes a novel end-to-end method combining sparsification, VAE, and classification to improve cross-site generalization in fMRI analysis.
Findings
Uses only 1% of connections for high accuracy
Improves cross-site classification performance
Effective with limited labeled data
Abstract
Deep learning can help uncover patterns in resting-state functional Magnetic Resonance Imaging (rs-fMRI) associated with psychiatric disorders and personal traits. Yet the problem of interpreting deep learning findings is rarely more evident than in fMRI analyses, as the data is sensitive to scanning effects and inherently difficult to visualize. We propose a simple approach to mitigate these challenges grounded on sparsification and self-supervision. Instead of extracting post-hoc feature attributions to uncover functional connections that are important to the target task, we identify a small subset of highly informative connections during training and occlude the rest. To this end, we jointly train a (1) sparse input mask, (2) variational autoencoder (VAE), and (3) downstream classifier in an end-to-end fashion. While we need a portion of labeled samples to train the classifier, we…
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Taxonomy
TopicsFunctional Brain Connectivity Studies · Medical Image Segmentation Techniques · Advanced MRI Techniques and Applications
