Video and Accelerometer-Based Motion Analysis for Automated Surgical Skills Assessment
Aneeq Zia, Yachna Sharma, Vinay Bettadapura, Eric L. Sarin, Irfan, Essa

TL;DR
This paper introduces a novel automated surgical skills assessment method using multi-modal video and accelerometer data, with entropy-based features outperforming existing techniques and enhancing training efficiency.
Contribution
It presents a new entropy-based feature set for assessing surgical skills from video and accelerometer data, demonstrating superior performance over prior methods.
Findings
Entropy features outperform state-of-the-art methods on video data.
Fusion of video and accelerometer data improves assessment accuracy.
Method achieves high accuracy in automated surgical skills evaluation.
Abstract
Purpose: Basic surgical skills of suturing and knot tying are an essential part of medical training. Having an automated system for surgical skills assessment could help save experts time and improve training efficiency. There have been some recent attempts at automated surgical skills assessment using either video analysis or acceleration data. In this paper, we present a novel approach for automated assessment of OSATS based surgical skills and provide an analysis of different features on multi-modal data (video and accelerometer data). Methods: We conduct the largest study, to the best of our knowledge, for basic surgical skills assessment on a dataset that contained video and accelerometer data for suturing and knot-tying tasks. We introduce "entropy based" features - Approximate Entropy (ApEn) and Cross-Approximate Entropy (XApEn), which quantify the amount of predictability and…
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Taxonomy
TopicsSurgical Simulation and Training · Anatomy and Medical Technology · Augmented Reality Applications
