TL;DR
This paper introduces a segmentation-renormalized deep feature modulation framework for unpaired image harmonization in medical imaging, improving consistency across sites while preserving anatomical details.
Contribution
It proposes replacing affine normalization with segmentation-conditioned feature modulation in GANs to enhance image harmonization without paired data.
Findings
Outperforms recent baselines in image quality metrics
Improves downstream segmentation accuracy
Enhances robustness to perturbations and attacks
Abstract
Deep networks are now ubiquitous in large-scale multi-center imaging studies. However, the direct aggregation of images across sites is contraindicated for downstream statistical and deep learning-based image analysis due to inconsistent contrast, resolution, and noise. To this end, in the absence of paired data, variations of Cycle-consistent Generative Adversarial Networks have been used to harmonize image sets between a source and target domain. Importantly, these methods are prone to instability, contrast inversion, intractable manipulation of pathology, and steganographic mappings which limit their reliable adoption in real-world medical imaging. In this work, based on an underlying assumption that morphological shape is consistent across imaging sites, we propose a segmentation-renormalized image translation framework to reduce inter-scanner heterogeneity while preserving…
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