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Categorical and phenotypic image synthetic learning as an alternative to federated learning

Author

Listed:
  • Nghi C. D. Truong

    (University of Texas Southwestern Medical Center)

  • Chandan Ganesh Bangalore Yogananda

    (University of Texas Southwestern Medical Center)

  • Benjamin C. Wagner

    (University of Texas Southwestern Medical Center)

  • James M. Holcomb

    (University of Texas Southwestern Medical Center)

  • Divya D. Reddy

    (University of Texas Southwestern Medical Center)

  • Niloufar Saadat

    (University of Texas Southwestern Medical Center)

  • Jason Bowerman

    (University of Texas Southwestern Medical Center)

  • Kimmo J. Hatanpaa

    (University of Texas Southwestern Medical Center)

  • Toral R. Patel

    (University of Texas Southwestern Medical Center)

  • Baowei Fei

    (University of Texas Southwestern Medical Center
    University of Texas at Dallas)

  • Matthew D. Lee

    (NYU Grossman School of Medicine)

  • Rajan Jain

    (NYU Grossman School of Medicine
    NYU Grossman School of Medicine)

  • Richard J. Bruce

    (University of Wisconsin-Madison)

  • Ananth J. Madhuranthakam

    (Mayo Clinic)

  • Marco C. Pinho

    (University of Texas Southwestern Medical Center)

  • Joseph A. Maldjian

    (University of Texas Southwestern Medical Center)

Abstract

Multi-center collaborations are crucial in developing robust and generalizable machine learning models in medical imaging. Traditional methods, such as centralized data sharing or federated learning (FL), face challenges, including privacy issues, communication burdens, and synchronization complexities. We present CATegorical and PHenotypic Image SyntHetic learnING (CATphishing), an alternative to FL using Latent Diffusion Models (LDM) to generate synthetic multi-contrast three-dimensional magnetic resonance imaging data for downstream tasks, eliminating the need for raw data sharing or iterative inter-site communication. Each institution trains an LDM to capture site-specific data distributions, producing synthetic samples aggregated at a central server. We evaluate CATphishing using data from 2491 patients across seven institutions for isocitrate dehydrogenase mutation classification and three-class tumor-type classification. CATphishing achieves accuracy comparable to centralized training and FL, with synthetic data exhibiting high fidelity. This method addresses privacy, scalability, and communication challenges, offering a promising alternative for collaborative artificial intelligence development in medical imaging.

Suggested Citation

  • Nghi C. D. Truong & Chandan Ganesh Bangalore Yogananda & Benjamin C. Wagner & James M. Holcomb & Divya D. Reddy & Niloufar Saadat & Jason Bowerman & Kimmo J. Hatanpaa & Toral R. Patel & Baowei Fei & M, 2025. "Categorical and phenotypic image synthetic learning as an alternative to federated learning," Nature Communications, Nature, vol. 16(1), pages 1-11, December.
  • Handle: RePEc:nat:natcom:v:16:y:2025:i:1:d:10.1038_s41467-025-64385-z
    DOI: 10.1038/s41467-025-64385-z
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    References listed on IDEAS

    as
    1. Qi Chang & Zhennan Yan & Mu Zhou & Hui Qu & Xiaoxiao He & Han Zhang & Lohendran Baskaran & Subhi Al’Aref & Hongsheng Li & Shaoting Zhang & Dimitris N. Metaxas, 2023. "Publisher Correction: Mining multi-center heterogeneous medical data with distributed synthetic learning," Nature Communications, Nature, vol. 14(1), pages 1-1, December.
    2. Qi Chang & Zhennan Yan & Mu Zhou & Hui Qu & Xiaoxiao He & Han Zhang & Lohendran Baskaran & Subhi Al’Aref & Hongsheng Li & Shaoting Zhang & Dimitris N. Metaxas, 2023. "Mining multi-center heterogeneous medical data with distributed synthetic learning," Nature Communications, Nature, vol. 14(1), pages 1-16, December.
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