Federated prediction for scalable and privacy-preserved knowledge-based planning in radiotherapy
Journal:
arXiv
Published Date:
May 20, 2025
Abstract
Background: Deep learning has potential to improve the efficiency and
consistency of radiation therapy planning, but clinical adoption is hindered by
the limited model generalizability due to data scarcity and heterogeneity among
institutions. Although aggregating data from different institutions could
alleviate this problem, data sharing is a practical challenge due to concerns
about patient data privacy and other technical obstacles. Purpose: This work
aims to address this dilemma by developing FedKBP+, a comprehensive federated
learning (FL) platform for predictive tasks in real-world applications in
radiotherapy treatment planning. Methods: We implemented a unified
communication stack based on Google Remote Procedure Call (gRPC) to support
communication between participants whether located on the same workstation or
distributed across multiple workstations. In addition to supporting the
centralized FL strategies commonly available in existing open-source
frameworks, FedKBP+ also provides a fully decentralized FL model where
participants directly exchange model weights to each other through Peer-to-Peer
communication. We evaluated FedKBP+ on three predictive tasks using
scale-attention network (SA-Net) as the predictive model. Conclusions: Our
results demonstrate that FedKBP+ is highly effective, efficient and robust,
showing great potential as a federated learning platform for radiation therapy.