Objectives: To explore the feasibility and effectiveness of guided practice using a low-cost laparoscopic trainer on the development of laparoscopic skills by surgeons in a resource-poor setting.
Design: This was a prospective trial involving a pretest/posttest single-sample design. Study participants completed a background survey and pretest on the 5 McGill Inanimate System for Training and Evaluation of Laparoscopic Skills (MISTELS) tasks using a simulator developed and validated by researchers from the University of California, San Francisco. On completion of a 3-month guided practice course, participants were again tested on the MISTELS tasks and completed an exit survey.
Setting: The Muhimbili University of Health and Allied Sciences in Dar es Salaam, Tanzania.
Participants: Fourteen Tanzanian surgery residents and specialists completed the study.
Results: Most of the subjects were surgical residents (64.3%). Only 2 participants (14.2%) had previous laparoscopic training, and baseline laparoscopic surgical experience was limited to intraoperative observation only. Study subjects practiced the MISTELS tasks for an average of 8.67 hours (range: 4.75-15.25) over the 3-month course. On the posttest, participants improved significantly in performance of each of the MISTELS tasks (p < 0.001). Total scores on the tasks increased from 24 ± 44 on the pretest to 384 ± 49 on the posttest (p < 0.001). All study participants were satisfied with the course, found the training personally valuable, and felt that their laparoscopic skills had improved on completion of the training.
Conclusions: We have demonstrated the feasibility and effectiveness of training with a low-cost laparoscopic trainer box in Tanzania. Study participants achieved impressive posttest scores on the 5 MISTELS tasks with minimal baseline laparoscopic exposure. We feel that guided training by an expert was key in ensuring correct technique during practice sessions.
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http://dx.doi.org/10.1016/j.jsurg.2013.06.005 | DOI Listing |
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