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arxiv: 2311.05838 · v1 · pith:NZFNZWYFnew · submitted 2023-11-10 · 💻 cs.RO

Towards Interpretable Motion-level Skill Assessment in Robotic Surgery

classification 💻 cs.RO
keywords motionprimitivesinversesurgicalassessmentgesturesskillinterpretable
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Purpose: We study the relationship between surgical gestures and motion primitives in dry-lab surgical exercises towards a deeper understanding of surgical activity at fine-grained levels and interpretable feedback in skill assessment. Methods: We analyze the motion primitive sequences of gestures in the JIGSAWS dataset and identify inverse motion primitives in those sequences. Inverse motion primitives are defined as sequential actions on the same object by the same tool that effectively negate each other. We also examine the correlation between surgical skills (measured by GRS scores) and the number and total durations of inverse motion primitives in the dry-lab trials of Suturing, Needle Passing, and Knot Tying tasks. Results: We find that the sequence of motion primitives used to perform gestures can help detect labeling errors in surgical gestures. Inverse motion primitives are often used as recovery actions to correct the position or orientation of objects or may be indicative of other issues such as with depth perception. The number and total durations of inverse motion primitives in trials are also strongly correlated with lower GRS scores in the Suturing and Knot Tying tasks. Conclusion: The sequence and pattern of motion primitives could be used to provide interpretable feedback in surgical skill assessment. Combined with an action recognition model, the explainability of automated skill assessment can be improved by showing video clips of the inverse motion primitives of inefficient or problematic movements.

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Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. Real-Time Multimodal Activity-Aware Error Detection in Robot-Assisted Surgery

    cs.RO 2026-06 unverdicted novelty 5.0

    Multimodal framework with activity prompting and kinematics integration improves error detection F1 by up to 5% on JIGSAWS and 16.6% on SAR-RARP50 over baselines.