HACA3: A Unified Approach for Multi-site MR Image Harmonization
Lianrui Zuo, Yihao Liu, Yuan Xue, Blake E. Dewey, Samuel W. Remedios,, Savannah P. Hays, Murat Bilgel, Ellen M. Mowry, Scott D. Newsome, Peter A., Calabresi, Susan M. Resnick, Jerry L. Prince, Aaron Carass

TL;DR
HACA3 is a novel MR image harmonization method that effectively handles anatomical differences, artifacts, and varying contrast sets, demonstrating superior performance across diverse datasets and downstream applications.
Contribution
HACA3 introduces an anatomy-aware, artifact-robust harmonization approach that works with any set of MR contrasts, improving over existing methods' limitations.
Findings
Achieves state-of-the-art harmonization performance
Robust to imaging artifacts and contrast variations
Enhances downstream tasks like lesion segmentation
Abstract
The lack of standardization is a prominent issue in magnetic resonance (MR) imaging. This often causes undesired contrast variations in the acquired images due to differences in hardware and acquisition parameters. In recent years, image synthesis-based MR harmonization with disentanglement has been proposed to compensate for the undesired contrast variations. Despite the success of existing methods, we argue that three major improvements can be made. First, most existing methods are built upon the assumption that multi-contrast MR images of the same subject share the same anatomy. This assumption is questionable, since different MR contrasts are specialized to highlight different anatomical features. Second, these methods often require a fixed set of MR contrasts for training (e.g., both T1-weighted and T2-weighted images), limiting their applicability. Lastly, existing methods are…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · Medical Imaging Techniques and Applications · Medical Image Segmentation Techniques
