Structural Connectome Harmonization Using Deep Learning: The Strength of Graph Neural Networks
Jagruti Patel, Thomas A. W. Bolton, Mikkel Sch\"ottner, Anjali Tarun, Sebastien Tourbier, Yasser Alem\`an-G\`omez, Jonas Richiardi, Patric Hagmann

TL;DR
This paper introduces a deep learning framework using graph neural networks for harmonizing structural connectomes across different sites without needing detailed metadata, improving the preservation of topological features and individual differences.
Contribution
It proposes a novel site-conditioned deep harmonization method employing graph neural networks that does not require metadata or traveling subjects, outperforming traditional methods in preserving connectome topology.
Findings
Graph AE best preserves topological structure and individual differences.
Deep learning models outperform linear regression in structure-aware harmonization.
LR achieves higher numerical performance but lacks applicability without detailed metadata.
Abstract
Small sample sizes in neuroimaging in general, and in structural connectome (SC) studies in particular limit the development of reliable biomarkers for neurological and psychiatric disorders - such as Alzheimer's disease and schizophrenia - by reducing statistical power, reliability, and generalizability. Large-scale multi-site studies have exist, but they have acquisition-related biases due to scanner heterogeneity, compromising imaging consistency and downstream analyses. While existing SC harmonization methods - such as linear regression (LR), ComBat, and deep learning techniques - mitigate these biases, they often rely on detailed metadata, traveling subjects (TS), or overlook the graph-topology of SCs. To address these limitations, we propose a site-conditioned deep harmonization framework that harmonizes SCs across diverse acquisition sites without requiring metadata or TS that we…
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Taxonomy
TopicsFunctional Brain Connectivity Studies · Advanced Graph Neural Networks · Topological and Geometric Data Analysis
