2022
DOI: 10.1007/s00464-022-09509-y
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Developing artificial intelligence models for medical student suturing and knot-tying video-based assessment and coaching

Abstract: Background Early introduction and distributed learning have been shown to improve student comfort with basic requisite suturing skills. The need for more frequent and directed feedback, however, remains an enduring concern for both remote and in-person training. A previous in-person curriculum for our second-year medical students transitioning to clerkships was adapted to an at-home video-based assessment model due to the social distancing implications of COVID-19. We aimed to develop an Artificial Intelligenc… Show more

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Cited by 16 publications
(10 citation statements)
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“…In addition, more evidence must be collected for both AIBA and EBA to support the use of scores to guide entrustment decisions where the relation to measures such as clinical performance should be investigated. Following previous validity reports on AI assessments, accuracy, precision, sensitivity and F1‐score were reported in this study to support the scoring inference 42,43 . However, in accordance with contemporary guidelines for trustworthy AI in medicine, 44 our study emphasises the importance of reporting validity threats in terms of robustness and explainability.…”
Section: Discussionsupporting
confidence: 83%
See 1 more Smart Citation
“…In addition, more evidence must be collected for both AIBA and EBA to support the use of scores to guide entrustment decisions where the relation to measures such as clinical performance should be investigated. Following previous validity reports on AI assessments, accuracy, precision, sensitivity and F1‐score were reported in this study to support the scoring inference 42,43 . However, in accordance with contemporary guidelines for trustworthy AI in medicine, 44 our study emphasises the importance of reporting validity threats in terms of robustness and explainability.…”
Section: Discussionsupporting
confidence: 83%
“…Following previous validity reports on AI assessments, accuracy, precision, sensitivity and F1-score were reported in this study to support the scoring inference. 42,43 However, in accordance with contemporary guidelines for trustworthy AI in medicine, 44 our study emphasises the importance of reporting validity threats in terms of robustness and explainability.…”
Section: Discussionsupporting
confidence: 70%
“…Another approach is pre-training of laparoscopic psychomotor kills [47], visual force feedback [48], and the use of a knot-tying board with the measurements of the vertical and lateral forces exerted [49]. Also noteworthy is the importance that a trainer cannot be replaced by a video [50], that telementoring and training onsite are equally effective [51], that video registration and artificial intelligence can help in the evaluation of trainees [52], and the importance of the mental image of knots [53] and of fatigue [54]. Ideally, a surgeon should demonstrate minimal skills and knowledge before operating on women, and a structural pre-training [40] and assessing the knot security of 50 to 100 knots with a dynamometer might be a straightforward and reproducible way to evaluate this.…”
Section: Discussionmentioning
confidence: 99%
“…Two hundred sixteen suturing and knot-tying videos were used to train the models. The accuracy of the instrument holding and the knot-tying model was 89% with an F-1 score of 74% and 91% with an F-1 score of 54%, respectively (11). Generally, the accessibility and flexibility of ML methods have resulted in various successful applications in medical education and assessment (12)(13)(14)(15).…”
Section: System-oriented Practicementioning
confidence: 99%