A novel decentralized federated learning approach to train on globally distributed, poor quality, and protected private medical data.

Journal: Scientific reports
Published Date:

Abstract

Training on multiple diverse data sources is critical to ensure unbiased and generalizable AI. In healthcare, data privacy laws prohibit data from being moved outside the country of origin, preventing global medical datasets being centralized for AI training. Data-centric, cross-silo federated learning represents a pathway forward for training on distributed medical datasets. Existing approaches typically require updates to a training model to be transferred to a central server, potentially breaching data privacy laws unless the updates are sufficiently disguised or abstracted to prevent reconstruction of the dataset. Here we present a completely decentralized federated learning approach, using knowledge distillation, ensuring data privacy and protection. Each node operates independently without needing to access external data. AI accuracy using this approach is found to be comparable to centralized training, and when nodes comprise poor-quality data, which is common in healthcare, AI accuracy can exceed the performance of traditional centralized training.

Authors

  • T V Nguyen
    Presagen, Adelaide, SA, 5000, Australia. tuc@presagen.com.
  • M A Dakka
    Presagen, Adelaide, SA, 5000, Australia.
  • S M Diakiw
    Life Whisperer Diagnostics, Presagen Pty Ltd., Adelaide, SA 5000, Australia.
  • M D VerMilyea
    Ovation Fertility, Austin, TX, 78731, USA.
  • M Perugini
    Life Whisperer Diagnostics, Presagen Pty Ltd., Adelaide, SA 5000, Australia.
  • J M M Hall
    Life Whisperer Diagnostics, Presagen Pty Ltd., Adelaide, SA 5000, Australia.
  • D Perugini
    Life Whisperer Diagnostics, Presagen Pty Ltd., Adelaide, SA 5000, Australia.