Brain graph synthesis by dual adversarial domain alignment and target graph prediction from a source graph.

Med Image Anal

BASIRA lab, Faculty of Computer and Informatics, Istanbul Technical University, Istanbul, Turkey; School of Science and Engineering, Computing, University of Dundee, UK. Electronic address:

Published: February 2021

AI Article Synopsis

  • Developing predictive intelligence in neuroscience can enhance the diagnosis of neurological disorders by generating multimodal medical data from limited inputs.
  • Existing deep learning models primarily focus on image data, leaving a gap in effectively managing geometrical data like brain graphs, especially in predicting target graphs from source graphs.
  • The proposed LG-DADA framework addresses challenges in domain alignment and data heterogeneity through manifold learning, adversarial learning of latent representations, and dual adversarial regularization, showing superior accuracy and visual quality in brain graph predictions compared to other methods.

Article Abstract

Developing predictive intelligence in neuroscience for learning how to generate multimodal medical data from a single modality can improve neurological disorder diagnosis with minimal data acquisition resources. Existing deep learning frameworks are mainly tailored for images, which might fail in handling geometric data (e.g., brain graphs). Specifically, predicting a target brain graph from a single source brain graph remains largely unexplored. Solving such problem is generally challenged with domain fracturecaused by the difference in distribution between source and target domains. Besides, solving the prediction and domain fracture independently might not be optimal for both tasks. To address these challenges, we unprecedentedly propose a Learning-guided Graph Dual Adversarial Domain Alignment (LG-DADA) framework for predicting a target brain graph from a source brain graph. The proposed LG-DADA is grounded in three fundamental contributions: (1) a source data pre-clustering step using manifold learning to firstly handle source data heterogeneity and secondly circumvent mode collapse in generative adversarial learning, (2) a domain alignment of source domain to the target domain by adversarially learning their latent representations, and (3) a dual adversarial regularization that jointly learns a source embedding of training and testing brain graphs using two discriminators and predict the training target graphs. Results on morphological brain graphs synthesis showed that our method produces better prediction accuracy and visual quality as compared to other graph synthesis methods.

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Source
http://dx.doi.org/10.1016/j.media.2020.101902DOI Listing

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