Computer Assisted Medical Interventions (CAMI), German Cancer Research Center, Im Neuenheimer Feld 223, 69120, Heidelberg, Germany; University of Heidelberg, Germany, Seminarstraße 2, 69117 Heidelberg, Germany.
Computer Assisted Medical Interventions (CAMI), German Cancer Research Center, Im Neuenheimer Feld 223, 69120, Heidelberg, Germany; University of Heidelberg, Germany, Seminarstraße 2, 69117 Heidelberg, Germany.
Med Image Anal. 2021 May;70:101920. doi: 10.1016/j.media.2020.101920. Epub 2020 Nov 28.
Intraoperative tracking of laparoscopic instruments is often a prerequisite for computer and robotic-assisted interventions. While numerous methods for detecting, segmenting and tracking of medical instruments based on endoscopic video images have been proposed in the literature, key limitations remain to be addressed: Firstly, robustness, that is, the reliable performance of state-of-the-art methods when run on challenging images (e.g. in the presence of blood, smoke or motion artifacts). Secondly, generalization; algorithms trained for a specific intervention in a specific hospital should generalize to other interventions or institutions. In an effort to promote solutions for these limitations, we organized the Robust Medical Instrument Segmentation (ROBUST-MIS) challenge as an international benchmarking competition with a specific focus on the robustness and generalization capabilities of algorithms. For the first time in the field of endoscopic image processing, our challenge included a task on binary segmentation and also addressed multi-instance detection and segmentation. The challenge was based on a surgical data set comprising 10,040 annotated images acquired from a total of 30 surgical procedures from three different types of surgery. The validation of the competing methods for the three tasks (binary segmentation, multi-instance detection and multi-instance segmentation) was performed in three different stages with an increasing domain gap between the training and the test data. The results confirm the initial hypothesis, namely that algorithm performance degrades with an increasing domain gap. While the average detection and segmentation quality of the best-performing algorithms is high, future research should concentrate on detection and segmentation of small, crossing, moving and transparent instrument(s) (parts).
腹腔镜器械的术中跟踪通常是计算机和机器人辅助干预的前提。尽管文献中已经提出了许多基于内窥镜视频图像的检测、分割和跟踪医学器械的方法,但仍存在一些关键的局限性需要解决:首先是鲁棒性,即最先进的方法在处理具有挑战性的图像(例如存在血液、烟雾或运动伪影时)时的可靠性能。其次是泛化性;在特定医院针对特定干预训练的算法应该能够推广到其他干预或机构。为了解决这些局限性,我们组织了 Robust Medical Instrument Segmentation(ROBUST-MIS)挑战赛,作为一项具有国际影响力的基准竞赛,特别关注算法的鲁棒性和泛化能力。在内窥镜图像处理领域,我们的挑战赛首次包括了二进制分割任务,并且还解决了多实例检测和分割问题。该挑战赛基于一个手术数据集,其中包含从三种不同类型的手术中总共 30 个手术过程中获取的 10,040 张带注释的图像。在三个不同的阶段,对三种任务(二进制分割、多实例检测和多实例分割)的竞争方法进行了验证,即训练数据和测试数据之间的域差距不断增大。结果证实了最初的假设,即算法性能随域差距的增加而下降。虽然性能最好的算法的平均检测和分割质量很高,但未来的研究应集中在小、交叉、移动和透明器械(部分)的检测和分割上。