Objective: To describe and validate a gynecologic laparoscopic-surgery training model.

Methods: The present prospective observational study was conducted at the Minimally Invasive Surgery Centre Jesús Usón, Cáceres, Spain, between January 2011 and June 2013. Novice gynecologists attended a 3-day course including simulation and animal training. Participants' were assessed before and after training using a virtual reality simulator; during training, gynecologists were timed and assessed using an Objective and Structured Assessment of Technical Skills score. The virtual reality simulator-assessed skills were eye-hand coordination, hand-hand coordination, and transference of objects. Participants were asked to rate various elements of the training program using a five-point scale.

Results: The study enrolled 21 gynecologists. Participants performed all tasks faster (P<0.001), using fewer movements (P<0.05 for left and right instruments), after receiving training. During participants' final animal and simulator training sessions, completion times were reduced (P<0.001) and assessment scores (P<0.001) increased for all techniques and tasks. Participants considered suturing to be the most useful aspect of the basic-skills training (4.95±0.22); animal training received a higher rating than simulator training for practicing new techniques (4.81±0.40 vs 4.05±0.86) and maintaining skills (4.76±0.54 vs 3.95±0.97).

Conclusion: Combining proficiency-based physical simulation and animal training models under expert guidance is an efficient model for improving basic and advanced laparoscopic skills. Suturing and animal models were the preferred training components.

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Source
http://dx.doi.org/10.1016/j.ijgo.2015.09.011DOI Listing

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