IGUANe: a 3D generalizable CycleGAN for multicenter harmonization of brain MR images
- URL: http://arxiv.org/abs/2402.03227v4
- Date: Thu, 14 Nov 2024 14:11:57 GMT
- Title: IGUANe: a 3D generalizable CycleGAN for multicenter harmonization of brain MR images
- Authors: Vincent Roca, Grégory Kuchcinski, Jean-Pierre Pruvo, Dorian Manouvriez, Renaud Lopes,
- Abstract summary: Deep learning methods for image translation have emerged as a solution for harmonizing MR images across sites.
In this study, we introduce IGUANe, an original 3D model that leverages the strengths of domain translation.
The framework based on domain pairs enables the implementation of sampling strategies that prevent confusion between site-related and biological variabilities.
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- Abstract: In MRI studies, the aggregation of imaging data from multiple acquisition sites enhances sample size but may introduce site-related variabilities that hinder consistency in subsequent analyses. Deep learning methods for image translation have emerged as a solution for harmonizing MR images across sites. In this study, we introduce IGUANe (Image Generation with Unified Adversarial Networks), an original 3D model that leverages the strengths of domain translation and straightforward application of style transfer methods for multicenter brain MR image harmonization. IGUANe extends CycleGAN by integrating an arbitrary number of domains for training through a many-to-one architecture. The framework based on domain pairs enables the implementation of sampling strategies that prevent confusion between site-related and biological variabilities. During inference, the model can be applied to any image, even from an unknown acquisition site, making it a universal generator for harmonization. Trained on a dataset comprising T1-weighted images from 11 different scanners, IGUANe was evaluated on data from unseen sites. The assessments included the transformation of MR images with traveling subjects, the preservation of pairwise distances between MR images within domains, the evolution of volumetric patterns related to age and Alzheimer$'$s disease (AD), and the performance in age regression and patient classification tasks. Comparisons with other harmonization and normalization methods suggest that IGUANe better preserves individual information in MR images and is more suitable for maintaining and reinforcing variabilities related to age and AD. Future studies may further assess IGUANe in other multicenter contexts, either using the same model or retraining it for applications to different image modalities. IGUANe is available at https://github.com/RocaVincent/iguane_harmonization.git.
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