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Equitable modelling of brain imaging by counterfactual augmentation with morphologically constrained 3D deep generative models

Guilherme Pombo, Robert Gray, M. Jorge Cardoso, Sébastien Ourselin, Geraint Rees, John Ashburner, Parashkev Nachev

2022Medical Image Analysis43 citationsDOIOpen Access PDF

Abstract

We describe CounterSynth, a conditional generative model of diffeomorphic deformations that induce label-driven, biologically plausible changes in volumetric brain images. The model is intended to synthesise counterfactual training data augmentations for downstream discriminative modelling tasks where fidelity is limited by data imbalance, distributional instability, confounding, or underspecification, and exhibits inequitable performance across distinct subpopulations. Focusing on demographic attributes, we evaluate the quality of synthesised counterfactuals with voxel-based morphometry, classification and regression of the conditioning attributes, and the Fréchet inception distance. Examining downstream discriminative performance in the context of engineered demographic imbalance and confounding, we use UK Biobank and OASIS magnetic resonance imaging data to benchmark CounterSynth augmentation against current solutions to these problems. We achieve state-of-the-art improvements, both in overall fidelity and equity. The source code for CounterSynth is available at https://github.com/guilherme-pombo/CounterSynth.

Topics & Concepts

Counterfactual thinkingDiscriminative modelComputer scienceArtificial intelligenceGenerative modelMachine learningContext (archaeology)Counterfactual conditionalFidelityGenerative grammarPsychologyGeographyArchaeologySocial psychologyTelecommunicationsGenerative Adversarial Networks and Image SynthesisMachine Learning in HealthcareAI in cancer detection
Equitable modelling of brain imaging by counterfactual augmentation with morphologically constrained 3D deep generative models | Litcius