CVJan 28, 2025

FedEFM: Federated Endovascular Foundation Model with Unseen Data

arXiv:2501.16992v13 citationsh-index: 12ICRA
Originality Incremental advance
AI Analysis

This work addresses data sharing and segmentation accuracy issues in endovascular surgery, with incremental improvements in a domain-specific context.

The paper tackles the challenge of training a foundation model for endovascular surgery segmentation with limited labeled data and privacy constraints by proposing a federated learning method with knowledge distillation, achieving new state-of-the-art results.

In endovascular surgery, the precise identification of catheters and guidewires in X-ray images is essential for reducing intervention risks. However, accurately segmenting catheter and guidewire structures is challenging due to the limited availability of labeled data. Foundation models offer a promising solution by enabling the collection of similar domain data to train models whose weights can be fine-tuned for downstream tasks. Nonetheless, large-scale data collection for training is constrained by the necessity of maintaining patient privacy. This paper proposes a new method to train a foundation model in a decentralized federated learning setting for endovascular intervention. To ensure the feasibility of the training, we tackle the unseen data issue using differentiable Earth Mover's Distance within a knowledge distillation framework. Once trained, our foundation model's weights provide valuable initialization for downstream tasks, thereby enhancing task-specific performance. Intensive experiments show that our approach achieves new state-of-the-art results, contributing to advancements in endovascular intervention and robotic-assisted endovascular surgery, while addressing the critical issue of data sharing in the medical domain.

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