4.5 Article Proceedings Paper

Video-based surgical skill assessment using 3Dconvolutional neural networks

Journal

Publisher

SPRINGER HEIDELBERG
DOI: 10.1007/s11548-019-01995-1

Keywords

Surgical skill assessment; Objective skill evaluation; Technical surgical skill; Surgical motion; 3Dconvolutional neural network; Temporal segment network; Deep learning

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PurposeA profound education of novice surgeons is crucial to ensure that surgical interventions are effective and safe. One important aspect is the teaching of technical skills for minimally invasive or robot-assisted procedures. This includes the objective and preferably automatic assessment of surgical skill. Recent studies presented good results for automatic, objective skill evaluation by collecting and analyzing motion data such as trajectories of surgical instruments. However, obtaining the motion data generally requires additional equipment for instrument tracking or the availability of a robotic surgery system to capture kinematic data. In contrast, we investigate a method for automatic, objective skill assessment that requires video data only. This has the advantage that video can be collected effortlessly during minimally invasive and robot-assisted training scenarios.MethodsOur method builds on recent advances in deep learning-based video classification. Specifically, we propose to use an inflated 3DConvNet to classify snippets, i.e., stacks of a few consecutive frames, extracted from surgical video. The network is extended into a temporal segment network during training.ResultsWe evaluate the method on the publicly available JIGSAWS dataset, which consists of recordings of basic robot-assisted surgery tasks performed on a dry lab bench-top model. Our approach achieves high skill classification accuracies ranging from 95.1 to 100.0%.ConclusionsOur results demonstrate the feasibility of deep learning-based assessment of technical skill from surgical video. Notably, the 3DConvNet is able to learn meaningful patterns directly from the data, alleviating the need for manual feature engineering. Further evaluation will require more annotated data for training and testing.

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