This paper introduces the SurgT MICCAI 2022 challenge and its first results. 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, are provided. The participants were tasked with the development of algorithms to track a bounding box on each stereo endoscopic video. 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 challenge and are now available online. The teams were ranked according to their Expected Average Overlap (EAO) score, which is a weighted average of Intersection over Union (IoU) scores. The top team achieved an EAO score of 0.583 in the test subset. Tracking soft-tissue using unsupervised algorithms was found to be achievable. The dataset and benchmarking tool have been successfully created and made publicly available online. This challenge is expected to contribute to the development of autonomous robotic surgery, and other digital surgical technologies.
翻译:本文介绍了SurgT MICCAI 2022挑战及其初步结果,提出这项挑战有两个目的: (1) 为研究界建立第一个标准化基准,以评估软质跟踪器;(2) 由于缺乏附加说明的数据,鼓励开发不受监督的深层次学习方法; 提供了一套数据集,其中列有20个临床病例的157个立体内分层视频,以及立声摄像机校准参数; 参与者的任务是开发算法,跟踪每部立体内分层视频的捆绑盒; 在挑战结束时,对开发的方法进行了先前隐藏的测试子集的评估; 评估使用了专门为这一挑战制定的基准指标,现在可以在线查阅; 评估组按照预期平均超额(EAO)分排列了一组数据; 提供了一组20个临床病例的157个立体内分,以及立体校准参数; 高级团队在测试子集中取得了0.583分的EAO分; 发现,使用未经校正的算法跟踪软质问题; 在挑战结束时,对先前的测试组群集进行了评估; 该数据集和基准工具使用专门为这项自主性手术工具成功地创建并公开提供。