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Surgical Activity Recognition in Robot-Assisted Radical Prostatectomy Using Deep Learning

机译:机器人辅助根治性前列腺癌根治术中的手术活动识别

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Adverse surgical outcomes are costly to patients and hospitals. Approaches to benchmark surgical care are often limited to gross measures across the entire procedure despite the performance of particular tasks being largely responsible for undesirable outcomes. In order to produce metrics from tasks as opposed to the whole procedure, methods to recognize automatically individual surgical tasks are needed. In this paper, we propose several approaches to recognize surgical activities in robot-assisted minimally invasive surgery using deep learning. We collected a clinical dataset of 100 robot-assisted radical prostatectomies (RARP) with 12 tasks each and propose 'RP-Net', a modified version of InceptionV3 model, for image based surgical activity recognition. We achieve an average precision of 80.9% and average recall of 76.7% across all tasks using RP-Net which out-performs all other RNN and CNN based models explored in this paper. Our results suggest that automatic surgical activity recognition during RARP is feasible and can be the foundation for advanced analytics.
机译:不利的手术结果对患者和医院而言代价高昂。尽管特定任务的执行在很大程度上导致不良后果,但基准外科护理的方法通常仅限于整个过程的总体措施。为了从任务而不是整个过程中产生度量,需要一种自动识别单个手术任务的方法。在本文中,我们提出了几种使用深度学习来识别机器人辅助微创手术中的手术活动的方法。我们收集了100个机器人辅助根治性前列腺切除术(RARP)的临床数据集,每个都有12个任务,并提出了基于图像的手术活动识别的“ RP-Net”(InceptionV3模型的修改版本)。使用RP-Net,我们在所有任务中的平均精度达到80.9%,平均召回率达到76.7%,其性能优于本文探讨的所有其他基于RNN和CNN的模型。我们的结果表明,RARP期间的自动手术活动识别是可行的,并且可以作为高级分析的基础。

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