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📄 Abstract
Abstract: While foundation models (FMs) offer strong potential for AI-based dementia
diagnosis, their integration into federated learning (FL) systems remains
underexplored. In this benchmarking study, we systematically evaluate the
impact of key design choices: classification head architecture, fine-tuning
strategy, and aggregation method, on the performance and efficiency of
federated FM tuning using brain MRI data. Using a large multi-cohort dataset,
we find that the architecture of the classification head substantially
influences performance, freezing the FM encoder achieves comparable results to
full fine-tuning, and advanced aggregation methods outperform standard
federated averaging. Our results offer practical insights for deploying FMs in
decentralized clinical settings and highlight trade-offs that should guide
future method development.