Non-isomorphic Inter-modality Graph Alignment and Synthesis for Holistic Brain Mapping
Islem Mhiri, Ahmed Nebli, Mohamed Ali Mahjoub, Islem Rekik

TL;DR
This paper introduces IMANGraphNet, a novel framework for inter-modality, non-isomorphic brain graph synthesis that predicts target brain graphs from source graphs with different structures, improving holistic brain mapping.
Contribution
The paper proposes a new graph generative adversarial network that handles non-isomorphic graphs across modalities, with a novel loss function and autoencoder for distribution matching.
Findings
IMANGraphNet outperforms existing methods in predicting functional from morphological brain graphs.
The framework effectively handles graphs with different node sizes and topologies.
Results demonstrate improved accuracy in holistic brain mapping applications.
Abstract
Brain graph synthesis marked a new era for predicting a target brain graph from a source one without incurring the high acquisition cost and processing time of neuroimaging data. However, existing multi-modal graph synthesis frameworks have several limitations. First, they mainly focus on generating graphs from the same domain (intra-modality), overlooking the rich multimodal representations of brain connectivity (inter-modality). Second, they can only handle isomorphic graph generation tasks, limiting their generalizability to synthesizing target graphs with a different node size and topological structure from those of the source one. More importantly, both target and source domains might have different distributions, which causes a domain fracture between them (i.e., distribution misalignment). To address such challenges, we propose an inter-modality aligner of non-isomorphic graphs…
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Taxonomy
TopicsFunctional Brain Connectivity Studies · Advanced Graph Neural Networks · Health, Environment, Cognitive Aging
