Harmonizing MR Images Across 100+ Scanners: Multi-Site Validation with Traveling Subjects and Real-World Protocols
Abstract
Reliable harmonization of heterogeneous magnetic resonance (MR) image datasets, especially those acquired in pragmatic clinical trials, is critical to advance multi-center neuroimaging studies and translational machine learning in healthcare. We present an enhanced and rigorously validated version of the HACA3 harmonization algorithm, which we refer to as HACA3$^+$, incorporating key methodological enhancements: (1) an improved artifact encoder to better isolate and mitigate image artifacts, (2) background and foreground-sensitive attention mechanisms to increase harmonization specificity, and (3) extensive training using data spanning 100+ scanners from 64 independent sites, providing a broader diversity of scanners than other harmonization methods. Our study focuses on four commonly acquired MR image contrasts (T1-weighted, T2-weighted, proton density, & fluid-attenuated inversion recovery), reflecting realistic clinical protocols. We perform inter-site harmonization experiments using traveling subjects to assess the generalization and robustness of the harmonization model. We compare the results of the publicly available version of HACA3 and our implementation, HACA3$^+$. Downstream relevance is further established through whole brain segmentation and image imputation. Finally, we justify each enhancement through an ablation experiment.
Cite
Text
Hays et al. "Harmonizing MR Images Across 100+ Scanners: Multi-Site Validation with Traveling Subjects and Real-World Protocols." Proceedings of The 9th International Conference on Medical Imaging with Deep Learning, 2026.Markdown
[Hays et al. "Harmonizing MR Images Across 100+ Scanners: Multi-Site Validation with Traveling Subjects and Real-World Protocols." Proceedings of The 9th International Conference on Medical Imaging with Deep Learning, 2026.](https://mlanthology.org/midl/2026/hays2026midl-harmonizing/)BibTeX
@inproceedings{hays2026midl-harmonizing,
title = {{Harmonizing MR Images Across 100+ Scanners: Multi-Site Validation with Traveling Subjects and Real-World Protocols}},
author = {Hays, Savannah P. and Zuo, Lianrui and Chaudhary, Muhammad Faizyab Ali and Bartz, Kathleen M. and Remedios, Samuel W. and Zhang, Jinwei and Zhuo, Jiachen and Bilgel, Murat and Saidha, Shiv and Mowry, Ellen M. and Newsome, Scott D. and Prince, Jerry L. and Dewey, Blake E. and Carass, Aaron},
booktitle = {Proceedings of The 9th International Conference on Medical Imaging with Deep Learning},
year = {2026},
pages = {4703-4721},
volume = {315},
url = {https://mlanthology.org/midl/2026/hays2026midl-harmonizing/}
}