Deep Anatomical Federated Network (Dafne): An Open Client-Server Framework for Continuous, Collaborative Improvement of Deep Learning-based Medical Image Segmentation.

Journal: Radiology. Artificial intelligence
Published Date:

Abstract

Purpose To present and evaluate Dafne (deep anatomical federated network), a freely available decentralized, collaborative deep learning system for the semantic segmentation of radiologic images through federated incremental learning. Materials and Methods Dafne is free software with a client-server architecture. The client side is an advanced user interface that applies the deep learning models stored on the server to the user's data and allows the user to check and refine the prediction. Incremental learning is then performed on the client's side and sent back to the server, where it is integrated into the root model. Dafne was evaluated locally by assessing the performance gain across model generations on 38 MRI datasets of the lower legs and through the analysis of real-world usage statistics (639 use cases). Results Dafne demonstrated a statistical improvement in the accuracy of semantic segmentation over time (average increase of the Dice similarity coefficient by 0.007 points per generation on the local validation set, < .001). Qualitatively, the models showed enhanced performance on various radiologic image types, including those not present in the initial training sets, indicating good model generalizability. Conclusion Dafne showed improvement in segmentation quality over time, demonstrating potential for learning and generalization. Segmentation, Muscular, Open Client-Server Framework © RSNA, 2025.

Authors

  • Francesco Santini
    Division of Radiological Physics, Department of Radiology, University Hospital Basel, Basel, Switzerland.
  • Jakob Wasserthal
    Clinic of Radiology and Nuclear Medicine, University Hospital Basel, Petersgraben 4, 4031, Basel, Switzerland.
  • Abramo Agosti
    Department of Mathematics, University of Pavia, Pavia, Italy.
  • Xeni Deligianni
    Division of Radiological Physics, Department of Radiology, University Hospital Basel, Basel, Switzerland.
  • Kevin R Keene
    Department of Neurology, Leiden University Medical Center, Leiden, the Netherlands.
  • Hermien E Kan
    C.J. Gorter MRI Center, Department of Radiology, Leiden University Medical Center, Leiden, The Netherlands.
  • Stefan Sommer
  • Fengdan Wang
    Department of Radiology, Peking Union Medical College Hospital, Beijing, China.
  • Claudia Weidensteiner
    Basel Muscle MRI, Department of Biomedical Engineering, University of Basel, Basel, Switzerland.
  • Giulia Manco
    Istituti Clinici Scientifici Maugeri IRCCS, Servizio di Diagnostica per Immagini, Istituto di Montescano, Pavia, Italy.
  • Matteo Paoletti
    Advanced Imaging and Radiomics Center, Neuroradiology Department, IRCCS Mondino Foundation, Pavia, Italy.
  • Valentina Mazzoli
    Department of Radiology, Stanford University, Palo Alto, California, USA.
  • Arjun Desai
    Department of Radiology, Stanford University, Stanford, Calif.
  • Anna Pichiecchio
    Advanced Imaging and Radiomics Center, Neuroradiology Department, IRCCS Mondino Foundation, Pavia, Italy.