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📄 Abstract
Abstract: 3D brain MRI studies often examine subtle morphometric differences between
cohorts that are hard to detect visually. Given the high cost of MRI
acquisition, these studies could greatly benefit from image syntheses,
particularly counterfactual image generation, as seen in other domains, such as
computer vision. However, counterfactual models struggle to produce
anatomically plausible MRIs due to the lack of explicit inductive biases to
preserve fine-grained anatomical details. This shortcoming arises from the
training of the models aiming to optimize for the overall appearance of the
images (e.g., via cross-entropy) rather than preserving subtle, yet medically
relevant, local variations across subjects. To preserve subtle variations, we
propose to explicitly integrate anatomical constraints on a voxel-level as
prior into a generative diffusion framework. Called Probabilistic Causal Graph
Model (PCGM), the approach captures anatomical constraints via a probabilistic
graph module and translates those constraints into spatial binary masks of
regions where subtle variations occur. The masks (encoded by a 3D extension of
ControlNet) constrain a novel counterfactual denoising UNet, whose encodings
are then transferred into high-quality brain MRIs via our 3D diffusion decoder.
Extensive experiments on multiple datasets demonstrate that PCGM generates
structural brain MRIs of higher quality than several baseline approaches.
Furthermore, we show for the first time that brain measurements extracted from
counterfactuals (generated by PCGM) replicate the subtle effects of a disease
on cortical brain regions previously reported in the neuroscience literature.
This achievement is an important milestone in the use of synthetic MRIs in
studies investigating subtle morphological differences.