Overcoming data scarcity through multi-center federated learning for organs-at-risk segmentation in pediatric upper abdominal radiotherapy
Mianyong Ding, Maximilian Knoll, Semi Harrabi, Martine van Grotel, Annemieke S. Littooij, Max van Noesel, Jens-Peter Schenk, Marry M. van den Heuvel-Eibrink, Geert O. Janssens, Matteo Maspero

TL;DR
This study demonstrates that federated learning can effectively develop robust pediatric-specific organs-at-risk segmentation models across multiple centers, overcoming data scarcity and fragmentation issues.
Contribution
It is the first to evaluate federated learning for pediatric OAR segmentation across centers, showing improved cross-center robustness and performance stability.
Findings
Federated learning matched or exceeded local model performance for most organs.
FL improved cross-center segmentation robustness and reduced false positives.
Model performance was stable across different patient orientations.
Abstract
Deep learning-based organs/structures-at-risk(OARs) auto-contouring models can improve radiotherapy workflows, but models trained on adult data often underperform in pediatric patients. Developing robust pediatric-specific models is hindered by data scarcity and fragmentation across centers. Federated learning (FL) enables privacy-preserving collaborative training without the need for data sharing. We evaluated the feasibility and performance of FL for developing pediatric-specific OAR segmentation models across two European medical centers. Computed tomography (CT) images from pediatric patients from Utrecht and Heidelberg with a renal tumor or abdominal neuroblastoma were retrospectively collected and locally processed. An nnU-Net-based framework segmented 19 OARs using local and FL schemes. FL was implemented with secure weight exchange on a cloud storage across institutional…
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