Measuring Readiness for Self-Directed Learning in Medical Undergraduates

ADVANCES IN MEDICAL EDUCATION AND PRACTICE(2022)

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摘要
Purpose: To measure the readiness for self-directed learning in medical students for the evaluation of self-directed learning in the study population. Materials and Methods: The survey was conducted in undergraduate students. The instrument used was Fisher's readiness scale comprising of self-management, desire for learning, and self-control domains. The data were analyzed by Mann-Whitney U-test and bivariate and partial correlations. The results were compared with the reported ones. Results: Total students surveyed were 300. Of these, 96 responded - 73 (76%) of preclinical and 23 (24%) of clinical classes. The mean readiness score was 124. The mean domains' scores for self-management, desire for learning, and self-control were 38, 38, and 48, respectively. The preclinical group had a mean score of 122 for readiness, 37 for self-management and desire for learning each, and 48 for self-control. The clinical group's scores were 129, 40, and 49, respectively. Preclinical and clinical groups differed significantly in self-management domain (P = 0.03). The difference was not significant in desire for learning (P = 0.08), self-control domains (P = 0.40) and readiness score (P = 0.12). The domains of self-control and desire for learning had a positive correlation if self-management was controlled, and self-control and self-management had a positive correlation if desire for learning was controlled (P < 0.05). Conclusion: The measurement of readiness for self-directed learning helps in knowing the true value of self-directed learning in a particular setting. Relatively lower scores in our study mean self-directed learning alone cannot be relied upon to achieve optimum students' learning. There is also a need for implementing strategies that will help students in improving their readiness for independent learning.
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关键词
self-directed learning, readiness for self-directed learning
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