Transfer is a desired outcome of simulation-based training, yet evidence for how instructional design features promote transfer is lacking. In clinical reasoning, transfer is improved when trainees experience instruction integrating basic science explanations with clinical signs and symptoms. To test whether integrated instruction has similar effects in procedural skills (i.e., psychomotor skills) training, we studied the impact of instruction that integrates conceptual (why) and procedural (how) knowledge on the retention and transfer of simulation-based lumbar puncture (LP) skill. Medical students (N = 30) were randomized into two groups that accessed different instructional videos during a 60-min self-regulated training session. An unintegrated video provided procedural How instruction via step-by-step demonstrations of LP, and an integrated video provided the same How instruction with integrated conceptual Why explanations (e.g., anatomy) for key steps. Two blinded raters scored post-test, retention, and transfer performances using a global rating scale. Participants also completed written procedural and conceptual knowledge tests. We used simple mediation regression analyses to assess the total and indirect effects (mediated by conceptual knowledge) of integrated instruction on retention and transfer. Integrated instruction was associated with improved conceptual (p < .001) but not procedural knowledge test scores (p = .11). We found no total effect of group (p > .05). We did find a positive indirect group effect on skill retention (B = .93, p < .05) and transfer (B = .59, p < .05), mediated through participants improved conceptual knowledge. Integrated instruction may improve trainees' skill retention and transfer through gains in conceptual knowledge. Such integrated instruction may be an instructional design feature for simulation-based training aimed at improving transfer outcomes.
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Macromol Biosci
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Universidade Estadual de Campinas (UNICAMP), School of Chemical Engineering (FEQ), Albert Einstein Avenue, 500, Campinas, São Paulo, 13083-852, Brazil.
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Center for Natural Products Discovery (CNPD), School of Pharmacy and Biomolecular Sciences, Liverpool John Moores University, Liverpool L3 3AF, UK.
Despite the fact that life expectancies are increasing and the burden of infectious diseases is decreasing, global cancer incidence rates are on the rise. Cancer outcome metrics are dismal for low- and middle-income countries (LMICs), including sub-Saharan Africa, where adequate resources and infrastructure for cancer care and control are lacking. Nigeria, the most populous country in Africa, exemplifies the miserable situation.
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View Article and Find Full Text PDFHealth Sci Rep
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Department of Microbiology Dr D. Y. Patil Medical College, Hospital and Research Centre, Dr D. Y. Patil Vidyapeeth (Deemed-to-be-University) Pune Maharashtra India.
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