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Deep Neural Networks Predict Remaining Surgery Duration from Cholecystectomy Videos

机译:深度神经网络可从胆囊切除术视频中预测剩余手术时间

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For every hospital, it is desirable to fully utilize its operating room (OR) capacity. Inaccurate planning of OR occupancy impacts patient comfort, safety and financial turnover of the hospital. A source of suboptimal scheduling often lies in the incorrect estimation of the surgery duration, which may vary significantly due to the diversity of patient conditions, surgeon skills and intraoperative situations. We propose automatic methods to estimate the remaining surgery duration in real-time by using only the image feed from the endoscopic camera and no other sensor. These approaches are based on neural networks designed to learn the workflow of an endoscopic procedure. We train and evaluate our models on a large dataset of 120 endoscopic cholecystectomies. Results show the strong benefits of these approaches when surgeries last longer than usual and promise practical improvements in OR management.
机译:对于每家医院,都希望充分利用其手术室(OR)的容量。手术室占用的不正确计划会影响患者的舒适度,安全性和医院的财务周转率。次优计划的来源通常在于对手术持续时间的错误估计,由于患者状况,外科医生技能和术中情况的多样性,估计时间可能会发生很大变化。我们提出了一种自动方法,可以仅通过使用内窥镜摄像机提供的图像而不使用其他传感器来实时估算剩余的手术时间。这些方法基于旨在学习内窥镜检查流程的神经网络。我们在120个内窥镜胆囊切除术的大型数据集上训练和评估我们的模型。结果显示,当手术的持续时间比平时更长时,这些方法将带来巨大的好处,并有望在手术室管理方面带来切实的改善。

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