An Assessment Tool to Provide Targeted Feedback to Robotic Surgical Trainees: Development and Validation of the End-to-End Assessment of Suturing Expertise (EASE)
Taseen F. Haque, Alvin Hui, Jonathan You, Runzhuo Ma, Jessica H. Nguyen, Xiaomeng Lei, Steven Cen, Monish Aron, Justin Collins, Hooman Djaladat, Ahmed Ghazi, Kenneth A. Yates, Andre L. Abreu, Siamak Daneshmand, Mihir Desai, Alvin C. Goh, Jim C. Hu, Amir H. Lebastchi, Thomas S. Lendvay, James Porter
- 发表年份
- 2022
- 引用次数
- 19
摘要
Purpose:\nTo create a suturing skills assessment tool that comprehensively defines criteria around relevant sub-skills of suturing and to confirm its validity.\n\nMaterials and Methods:\n5 expert surgeons and an educational psychologist participated in a cognitive task analysis (CTA) to deconstruct robotic suturing into an exhaustive list of technical skill domains and sub-skill descriptions. Using the Delphi methodology, each CTA element was systematically reviewed by a multi-institutional panel of 16 surgical educators and implemented in the final product when content validity index (CVI) reached ≥0.80. In the subsequent validation phase, 3 blinded reviewers independently scored 8 training videos and 39 vesicourethral anastomoses (VUA) using EASE; 10 VUA were also scored using Robotic Anastomosis Competency Evaluation (RACE), a previously validated, but simplified suturing assessment tool. Inter-rater reliability was measured with intra-class correlation (ICC) for normally distributed values and prevalence-adjusted bias-adjusted Kappa (PABAK) for skewed distributions. Expert (≥100 prior robotic cases) and trainee (<100 cases) EASE scores from the non-training cases were compared using a generalized linear mixed model.\n\nResults:\nAfter two rounds of Delphi process, panelists agreed on 7 domains, 18 sub-skills, and 57 detailed sub-skill descriptions with CVI ≥ 0.80. Inter-rater reliability was moderately high (ICC median: 0.69, range: 0.51-0.97; PABAK: 0.77, 0.62-0.97). Multiple EASE sub-skill scores were able to distinguish surgeon experience. The Spearman’s rho correlation between overall EASE and RACE scores was 0.635 (p=0.003).\n\nConclusions:\nThrough a rigorous CTA and Delphi process, we have developed EASE, whose suturing sub-skills can distinguish surgeon experience while maintaining rater reliability.
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