Embedding-Based Federated Learning with Runtime Governance for Iron Deficiency Prediction
Fan Zhang, Simon Deltadahl, Majid Lotfian Delouee, Daniel Kreuter, Joseph Taylor, Allerdien Visser, BloodCounts Consortium, James H. F. Rudd, Nicholas S. Gleadall, Suthesh Sivapalaratnam, Folkert Asselbergs, Martijn C. Schut, and Michael Roberts

TL;DR
This paper presents an embedding-based federated learning pipeline for iron deficiency prediction, deployed across diverse clinical environments, with personalized aggregation improving predictive performance.
Contribution
The study introduces a novel embedding-based FL approach with runtime governance and personalized aggregation for clinical iron deficiency prediction.
Findings
Personalized aggregation (FedMAP) improved ROC-AUC at both sites.
The approach reduced communication by using a frozen foundation model.
Deployment across real clinical environments demonstrated practical feasibility.
Abstract
Recent reviews find that the vast majority of published healthcare federated learning (FL) studies never reach real-world deployment. We developed an embedding-based FL pipeline for iron deficiency prediction from routine full blood count (FBC) data and deployed it across real institutional environments at Amsterdam University Medical Centre (AUMC) and NHS Blood and Transplant (NHSBT), two clinical environments that differ markedly in iron deficiency prevalence, ferritin distribution, and subject populations. A frozen domain-specific haematology foundation model, DeepCBC, performs site-local representation extraction, restricting federated training to a compact downstream classifier and substantially reducing recurrent communication relative to full-encoder federation. The two clinical datasets are structurally not independent and identically distributed (non-IID), with heterogeneity…
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