Deep Cross-Modality and Resolution Graph Integration for Universal Brain Connectivity Mapping and Augmentation
Ece Cinar, Sinem Elif Haseki, Alaa Bessadok, Islem Rekik

TL;DR
This paper introduces M2GraphIntegrator, a novel framework that unifies diverse brain connectomes across modalities and resolutions into a central, biologically sound connectional brain template, enabling improved data augmentation and analysis.
Contribution
It presents the first multimodal, multiresolution graph integration method that creates a universal brain template, enhancing connectome analysis and data generation capabilities.
Findings
Outperforms benchmarks in reconstruction quality
Generates realistic multimodal brain graphs
Ensures topological and biological soundness
Abstract
The connectional brain template (CBT) captures the shared traits across all individuals of a given population of brain connectomes, thereby acting as a fingerprint. Estimating a CBT from a population where brain graphs are derived from diverse neuroimaging modalities (e.g., functional and structural) and at different resolutions (i.e., number of nodes) remains a formidable challenge to solve. Such network integration task allows for learning a rich and universal representation of the brain connectivity across varying modalities and resolutions. The resulting CBT can be substantially used to generate entirely new multimodal brain connectomes, which can boost the learning of the downs-stream tasks such as brain state classification. Here, we propose the Multimodal Multiresolution Brain Graph Integrator Network (i.e., M2GraphIntegrator), the first multimodal multiresolution graph…
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Taxonomy
TopicsFunctional Brain Connectivity Studies · Health, Environment, Cognitive Aging · EEG and Brain-Computer Interfaces
