SurgT challenge: Benchmark of Soft-Tissue Trackers for Robotic Surgery
Joao Cartucho, Alistair Weld, Samyakh Tukra, Haozheng Xu, Hiroki, Matsuzaki, Taiyo Ishikawa, Minjun Kwon, Yong Eun Jang, Kwang-Ju Kim, Gwang, Lee, Bizhe Bai, Lueder Kahrs, Lars Boecking, Simeon Allmendinger, Leopold, Muller, Yitong Zhang, Yueming Jin, Sophia Bano

TL;DR
This paper presents the SurgT challenge, establishing a standardized benchmark for soft-tissue tracking in robotic surgery and encouraging unsupervised deep learning methods, with results showing competitive performance of non-deep learning approaches.
Contribution
It introduces the first standardized benchmark dataset and evaluation metrics for soft-tissue tracking in robotic surgery, promoting development of unsupervised deep learning algorithms.
Findings
Deep learning methods achieved the highest EAO score of 0.617.
Non-deep learning methods remain competitive in soft-tissue tracking.
The benchmark dataset and evaluation tools are publicly available.
Abstract
This paper introduces the ``SurgT: Surgical Tracking" challenge which was organised in conjunction with MICCAI 2022. There were two purposes for the creation of this challenge: (1) the establishment of the first standardised benchmark for the research community to assess soft-tissue trackers; and (2) to encourage the development of unsupervised deep learning methods, given the lack of annotated data in surgery. A dataset of 157 stereo endoscopic videos from 20 clinical cases, along with stereo camera calibration parameters, have been provided. Participants were assigned the task of developing algorithms to track the movement of soft tissues, represented by bounding boxes, in stereo endoscopic videos. At the end of the challenge, the developed methods were assessed on a previously hidden test subset. This assessment uses benchmarking metrics that were purposely developed for this…
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Taxonomy
TopicsSurgical Simulation and Training · Augmented Reality Applications · Anatomy and Medical Technology
MethodsTest
