The "MIcro-Surgical Anastomose Workflow recognition on training sessions" (MISAW) challenge provided a data set of 27 sequences of micro-surgical anastomosis on artificial blood vessels. This data set was composed of videos, kinematics, and workflow annotations described at three different granularity levels: phase, step, and activity. The participants were given the option to use kinematic data and videos to develop workflow recognition models. Four tasks were proposed to the participants: three of them were related to the recognition of surgical workflow at three different granularity levels, while the last one addressed the recognition of all granularity levels in the same model. One ranking was made for each task. We used the average application-dependent balanced accuracy (AD-Accuracy) as the evaluation metric. This takes unbalanced classes into account and it is more clinically relevant than a frame-by-frame score. Six teams, including a non-competing team, participated in at least one task. All models employed deep learning models, such as CNN or RNN. The best models achieved more than 95% AD-Accuracy for phase recognition, 80% for step recognition, 60% for activity recognition, and 75% for all granularity levels. For high levels of granularity (i.e., phases and steps), the best models had a recognition rate that may be sufficient for applications such as prediction of remaining surgical time or resource management. However, for activities, the recognition rate was still low for applications that can be employed clinically. The MISAW data set is publicly available to encourage further research in surgical workflow recognition. It can be found at www.synapse.org/MISAW
翻译:“MICRO-Survical Anastomose Anastomose 工作流识别” 挑战提供了一组由人工血管血管微外科解剖的27个序列组成的数据集。 该数据集由三个不同的颗粒层次描述的视频、 运动和工作流程说明组成: 阶段、 步骤和活动。 参与者可以选择使用运动数据和视频来开发工作流程识别模型。 向参与者提出了四项任务: 其中三项任务与在三个不同的颗粒度层面的外科工作流程识别有关, 最后一个任务涉及在同一模型中确认所有颗粒性水平的临床应用。 每项任务都分一个等级。 我们使用基于平均应用的平衡精度( AD- Acurectical) 和工作流程说明, 分为三个阶段: 阶段: 阶段、 阶段、 级、 级、 级 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、 级、