A Target-Free Harmonization Method for MRI
Minjun Kim (1), Dong Ju Mun (1), Hwihun Jeong (2), Hangyeol Park (1), Haechang Lee (1), Se Young Chun (1), and Jongho Lee (1) ((1) Department of Electrical, Computer Engineering, Seoul National University, Seoul, Republic of Korea, (2) Department of Psychiatry, Brigham

TL;DR
This paper introduces TgtFreeHarmony, a privacy-preserving MRI harmonization method that aligns source images to target styles without needing target data, improving downstream task performance.
Contribution
It proposes a novel target-free MRI harmonization framework using style manifold search and Bayesian optimization, addressing privacy concerns and practical deployment limitations.
Findings
Effective harmonization improves brain tissue segmentation accuracy.
Eliminates need for target domain data, enabling privacy-preserving deployment.
Demonstrates robustness across multiple institutions.
Abstract
In MRI, variations in scan parameters, sequence, or hardware can lead to discrepancies in image appearance, even for the same subject. These inconsistencies, known as domain shifts, can hinder image analysis and degrade the performance of deep learning models trained on data from specific target domains. MRI image harmonization aims to address these issues by aligning source domain images to the target domain images while preserving biological information such as anatomical structures. However, most existing harmonization approaches require access to both source and target domain data in training or test time. This dependence induces data sharing between institutions, raising concerns about patient privacy and substantially limiting the harmonization approaches that can be practically deployed in clinical settings. To overcome these limitations, we introduce TgtFreeHarmony, the…
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