FedAgain: A Trust-Based and Robust Federated Learning Strategy for an Automated Kidney Stone Identification in Ureteroscopy
arXiv cs.AI / 3/23/2026
💬 OpinionModels & Research
Key Points
- FedAgain is a trust-based federated learning strategy designed to improve robustness and generalization for automated kidney stone identification from endoscopic images across multiple institutions while preserving data privacy.
- It introduces a dual trust mechanism that combines benchmark reliability and model divergence to dynamically weight client contributions, reducing the impact of noisy or adversarial updates.
- The approach is evaluated on five datasets, including MNIST, CIFAR-10, two private kidney stone datasets, and MyStone, and it outperforms standard federated learning baselines under non-IID and corrupted-client scenarios.
- FedAgain aims to enable reliable, privacy-preserving, and clinically deployable federated AI for medical imaging.
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