Background: Chest tube insertion is required for most cases of traumatic pneumothorax. However, this procedure entails risks of potentially life-threatening complications. A "surgical" approach is widely recommended to minimize these risks. Simulation-based education has previously been used in surgical chest tube insertion, but not been subjected to rigorous evaluation.
Methods: The primary objective was to evaluate the success rate of surgical chest tube insertion in a task trainer (previously published). Secondary objectives were to assess performance with a performance assessment scale (previously designed), to measure the time of insertion, and to seek out a correlation between the learner's status, experience, and performance and success rate. Participants were surveyed for realism of the model and satisfaction; 65 participants (18 residents, 47 senior physicians) were randomized into SIM+ or SIM- groups. Both groups received didactic lessons. The SIM+ group was assigned deliberate practice on the model under supervision. Both groups were assessed on the model 1 month later.
Results: There was no difference between the SIM+ ( = 34) and SIM- ( = 31) groups regarding status ( = 0.44) or previous surgical insertion ( = 0.12). Success rate was 97 % (SIM+) and 58 % (SIM-), = 0.0002. Performance score was 16.29 ± 1.82 (SIM+) and 11.39 ± 3.67 (SIM-), = 3.13 × 10. SIM+ presented shorter dissection time than SIM- ( = 0.047), but procedure time was similar ( = 0.71). Status or experience was not correlated with success rate, performance score, procedure time, or dissection time. SIM+ gained more self-confidence, judged the model more realistic, and were more satisfied than SIM-.
Conclusions: Simulation-based education significantly improved the success rate and performance of surgical chest tube insertion on a traumatic pneumothorax model.
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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC5806468 | PMC |
http://dx.doi.org/10.1186/s41077-016-0021-2 | DOI Listing |
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