An automated approach using region-based convolutional neural networks successfully localized surgical tools in laparoscopic videos and outperformed existing methods for tool presence detection.
Surgical skill assessment
Region-based convolutional neural networks vs Existing methods
Tool presence detection and spatial localization
Five billion people in the world lack access to quality surgical care. Surgeon skill varies dramatically, and many surgical patients suffer complications and avoidable harm. Improving surgical training and feedback would help to reduce the rate of complications-half of which have been shown to be preventable. To do this, it is essential to assess operative skill, a process that currently requires experts and is manual, time consuming, and subjective. In this work, we introduce an approach to automatically assess surgeon performance by tracking and analyzing tool movements in surgical videos, leveraging region-based convolutional neural networks. In order to study this problem, we also introduce a new dataset, m2cai16-tool-locations, which extends the m2cai16-tool dataset with spatial bounds of tools. While previous methods have addressed tool presence detection, ours is the first to not only detect presence but also spatially localize surgical tools in real-world laparoscopic surgical videos. We show that our method both effectively detects the spatial bounds of tools as well as significantly outperforms existing methods on tool presence detection. We further demonstrate the ability of our method to assess surgical quality through analysis of tool usage patterns, movement range, and economy of motion.
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Amy Jin
University of Cambridge
Serena Yeung
University of British Columbia
Jeffrey K. Jopling
Johns Hopkins University
Stanford University
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Jin et al. (Thu,) conducted a other in Surgical skill assessment. Region-based convolutional neural networks vs. Existing methods was evaluated on Tool presence detection and spatial localization. An automated approach using region-based convolutional neural networks successfully localized surgical tools in laparoscopic videos and outperformed existing methods for tool presence detection.
synapsesocial.com/papers/6a1776233aabde875b128fb6 — DOI: https://doi.org/10.1109/wacv.2018.00081
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