npj Digital Medicine (Jun 2024)

Capturing relationships between suturing sub-skills to improve automatic suturing assessment

  • Zijun Cui,
  • Runzhuo Ma,
  • Cherine H. Yang,
  • Anand Malpani,
  • Timothy N. Chu,
  • Ahmed Ghazi,
  • John W. Davis,
  • Brian J. Miles,
  • Clayton Lau,
  • Yan Liu,
  • Andrew J. Hung

DOI
https://doi.org/10.1038/s41746-024-01143-3
Journal volume & issue
Vol. 7, no. 1
pp. 1 – 10

Abstract

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Abstract Suturing skill scores have demonstrated strong predictive capabilities for patient functional recovery. The suturing can be broken down into several substep components, including needle repositioning, needle entry angle, etc. Artificial intelligence (AI) systems have been explored to automate suturing skill scoring. Traditional approaches to skill assessment typically focus on evaluating individual sub-skills required for particular substeps in isolation. However, surgical procedures require the integration and coordination of multiple sub-skills to achieve successful outcomes. Significant associations among the technical sub-skill have been established by existing studies. In this paper, we propose a framework for joint skill assessment that takes into account the interconnected nature of sub-skills required in surgery. The prior known relationships among sub-skills are firstly identified. Our proposed AI system is then empowered by the prior known relationships to perform the suturing skill scoring for each sub-skill domain simultaneously. Our approach can effectively improve skill assessment performance through the prior known relationships among sub-skills. Through the proposed approach to joint skill assessment, we aspire to enhance the evaluation of surgical proficiency and ultimately improve patient outcomes in surgery.