论文标题

基于深度学习的计算机愿景,以识别和对机器人辅助手术中的缝合手势进行分类

Deep learning-based computer vision to recognize and classify suturing gestures in robot-assisted surgery

论文作者

Luongo, Francisco, Hakim, Ryan, Nguyen, Jessica H., Anandkumar, Animashree, Hung, Andrew J

论文摘要

我们以前的工作将缝合手势的分类法归类为在机器人根治性前列腺切除术的囊泡吻合术中与组织撕裂和患者结局有关的分类法。本文中,我们训练基于学习的计算机视觉(CV),以自动化缝合手势的识别和分类,以进行针头驾驶尝试。使用两个独立的评估者,我们手动注释了实时缝合视频剪辑,以标记时间点和手势。识别(2395个视频)和分类(511个视频)数据集被编译以训练简历模型,分别产生两类和五类标签预测。针对每个帧的原始RGB像素以及光流的输入,对网络进行了训练。每种型号均经过80/20火车/测试拆分的培训。在这项研究中,所有模型均能够可靠地预测手势(识别,AUC:0.88)的存在以及手势的类型(分类,AUC:0.87),其可能性高于机会水平。对于手势识别和分类数据集,我们没有观察到反复分类模型选择(LSTM与Convlstm)对性能的影响。我们的结果表明,CV能够识别不仅可以识别缝合作用的功能,而且可以区分缝合手势的不同分类。这证明了利用深度学习CV来实现手术技能评估的未来自动化的潜力。

Our previous work classified a taxonomy of suturing gestures during a vesicourethral anastomosis of robotic radical prostatectomy in association with tissue tears and patient outcomes. Herein, we train deep-learning based computer vision (CV) to automate the identification and classification of suturing gestures for needle driving attempts. Using two independent raters, we manually annotated live suturing video clips to label timepoints and gestures. Identification (2395 videos) and classification (511 videos) datasets were compiled to train CV models to produce two- and five-class label predictions, respectively. Networks were trained on inputs of raw RGB pixels as well as optical flow for each frame. Each model was trained on 80/20 train/test splits. In this study, all models were able to reliably predict either the presence of a gesture (identification, AUC: 0.88) as well as the type of gesture (classification, AUC: 0.87) at significantly above chance levels. For both gesture identification and classification datasets, we observed no effect of recurrent classification model choice (LSTM vs. convLSTM) on performance. Our results demonstrate CV's ability to recognize features that not only can identify the action of suturing but also distinguish between different classifications of suturing gestures. This demonstrates the potential to utilize deep learning CV towards future automation of surgical skill assessment.

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