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Using machine learning to identify key subject categories predicting the pre-clerkship and clerkship performance: 8-year cohort study
1
Zitationen
12
Autoren
2024
Jahr
Abstract
Clerkship performance was predicted by selected subjects or combination of different subject categories in the pre-med and basic medical science stages. The demonstrated predictive ability of subjects or categories in the medical program may facilitate students' understanding of how these subjects or categories of the medical program relate to their performance in the clerkship to enhance their preparedness for the clerkship.
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