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CathAction: A Benchmark for Endovascular Intervention Understanding

23 August 2024
Baoru Huang
Tuan Vo
Chayun Kongtongvattana
G. Dagnino
Dennis Kundrat
Wenqiang Chi
Mohamed E. M. K. Abdelaziz
Trevor M. Y. Kwok
Tudor Jianu
Tuong Khanh Long Do
Hieu Le
Minh Nguyen
Hoan Nguyen
Erman Tjiputra
Quang-Dieu Tran
Jianyang Xie
Yanda Meng
Binod Bhattarai
Zhaorui Tan
Hongbin Liu
Hong Seng Gan
Wei Wang
Xi Yang
Qiufeng Wang
Jionglong Su
Kaizhu Huang
Angelos Stefanidis
Min Guo
Bo Du
Rong Tao
M. Vu
G. Zheng
Yalin Zheng
Francisco Vasconcelos
Danail Stoyanov
Daniel Elson
Ferdinando Rodriguez y Baena
Anh Nguyen
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Abstract

Real-time visual feedback from catheterization analysis is crucial for enhancing surgical safety and efficiency during endovascular interventions. However, existing datasets are often limited to specific tasks, small scale, and lack the comprehensive annotations necessary for broader endovascular intervention understanding. To tackle these limitations, we introduce CathAction, a large-scale dataset for catheterization understanding. Our CathAction dataset encompasses approximately 500,000 annotated frames for catheterization action understanding and collision detection, and 25,000 ground truth masks for catheter and guidewire segmentation. For each task, we benchmark recent related works in the field. We further discuss the challenges of endovascular intentions compared to traditional computer vision tasks and point out open research questions. We hope that CathAction will facilitate the development of endovascular intervention understanding methods that can be applied to real-world applications. The dataset is available at https://airvlab.github.io/cathaction/.

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