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      • Department of Electrical and Electronics Engineering
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      A specificity-preserving generative model for federated MRI translation

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      Author(s)
      Dalmaz, Onat
      Mirza, Usama
      Elmas, Gökberk
      Özbey, Muzaffer
      Dar, Salman U. H
      Çukur, Tolga
      Editor
      Albarqouni, Shadi
      Bakas, Spyridon
      Bano, Sophia
      Cardoso, M. Jorge
      Khanal, Bishesh
      Landman, Bennett
      Li, Xiaoxiao
      Date
      2022-10-07
      Source Title
      Distributed, Collaborative, and Federated Learning, and Affordable AI and Healthcare for Resource Diverse Global Health
      Publisher
      Springer Cham
      Volume
      13573
      Pages
      79 - 88
      Language
      English
      Type
      Conference Paper
      Item Usage Stats
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      8
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      Series
      Lecture Notes in Computer Science;
      Abstract
      MRI translation models learn a mapping from an acquired source contrast to an unavailable target contrast. Collaboration between institutes is essential to train translation models that can generalize across diverse datasets. That said, aggregating all imaging data and training a centralized model poses privacy problems. Recently, federated learning (FL) has emerged as a collaboration framework that enables decentralized training to avoid sharing of imaging data. However, FL-trained translation models can deteriorate by the inherent heterogeneity in the distribution of MRI data. To improve reliability against domain shifts, here we introduce a novel specificity-preserving FL method for MRI contrast translation. The proposed approach is based on an adversarial model that adaptively normalizes the feature maps across the generator based on site-specific latent variables. Comprehensive FL experiments were conducted on multi-site datasets to show the effectiveness of the proposed approach against prior federated methods in MRI contrast translation.
      Keywords
      Federated learning
      Heterogeneity
      MRI
      Site-specificity
      Translation
      Permalink
      http://hdl.handle.net/11693/111386
      Published Version (Please cite this version)
      https://doi.org/10.1007/978-3-031-18523-6_8
      Collections
      • Department of Electrical and Electronics Engineering 4011
      • National Magnetic Resonance Research Center (UMRAM) 301
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