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FedEFM: Federated Endovascular Foundation Model with Unseen Data

IEEE International Conference on Robotics and Automation (ICRA), 2025
28 January 2025
Tuong Khanh Long Do
Nghia Vu
Tudor Jianu
Baoru Huang
M. Vu
Jionglong Su
Erman Tjiputra
Quang-Dieu Tran
Te-Chuan Chiu
Anh Nguyen
ArXiv (abs)PDFHTML
Main:6 Pages
6 Figures
Bibliography:2 Pages
4 Tables
Abstract

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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