Surgical Action Triplet Detection by Mixed Supervised Learning of Instrument-Tissue Interactions

Saurav Sharma, C. Nwoye, D. Mutter, N. Padoy
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Abstract

Surgical action triplets describe instrument-tissue interactions as (instrument, verb, target) combinations, thereby supporting a detailed analysis of surgical scene activities and workflow. This work focuses on surgical action triplet detection, which is challenging but more precise than the traditional triplet recognition task as it consists of joint (1) localization of surgical instruments and (2) recognition of the surgical action triplet associated with every localized instrument. Triplet detection is highly complex due to the lack of spatial triplet annotation. We analyze how the amount of instrument spatial annotations affects triplet detection and observe that accurate instrument localization does not guarantee better triplet detection due to the risk of erroneous associations with the verbs and targets. To solve the two tasks, we propose MCIT-IG, a two-stage network, that stands for Multi-Class Instrument-aware Transformer-Interaction Graph. The MCIT stage of our network models per class embedding of the targets as additional features to reduce the risk of misassociating triplets. Furthermore, the IG stage constructs a bipartite dynamic graph to model the interaction between the instruments and targets, cast as the verbs. We utilize a mixed-supervised learning strategy that combines weak target presence labels for MCIT and pseudo triplet labels for IG to train our network. We observed that complementing minimal instrument spatial annotations with target embeddings results in better triplet detection. We evaluate our model on the CholecT50 dataset and show improved performance on both instrument localization and triplet detection, topping the leaderboard of the CholecTriplet challenge in MICCAI 2022.
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基于器械-组织相互作用的混合监督学习的手术动作三重态检测
手术动作三联体将器械与组织的相互作用描述为(器械、动作、靶标)组合,从而支持对手术场景活动和工作流程的详细分析。这项工作的重点是手术动作三联体检测,这是具有挑战性的,但比传统的三联体识别任务更精确,因为它包括联合(1)手术器械的定位和(2)识别与每个定位器械相关的手术动作三联体。由于缺乏空间三重态标注,三重态检测非常复杂。我们分析了仪器空间注释的数量如何影响三联体检测,并观察到准确的仪器定位并不能保证更好的三联体检测,因为存在与动词和目标错误关联的风险。为了解决这两个问题,我们提出了MCIT-IG,一个两阶段网络,代表多类仪器感知变压器交互图。我们的网络模型的MCIT阶段每个类嵌入的目标作为额外的特征,以减少错误关联的风险三元组。此外,IG阶段构建了一个二部动态图来建模工具和目标之间的交互,作为动词。我们使用混合监督学习策略,结合MCIT的弱目标存在标签和IG的伪三重标签来训练我们的网络。我们观察到,将最小的仪器空间注释与目标嵌入相补充,可以更好地检测三重态。我们在CholecT50数据集上评估了我们的模型,并在仪器定位和三重检测方面显示出改进的性能,在MICCAI 2022的CholecTriplet挑战中名列前茅。
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