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Despite the proliferation of educational programmes in Health Informatics (HI) worldwide, there is limited knowledge regarding students' preferences and learning strategies in HI courses. To address this gap, we conducted a study to gather and analyse data from three HI courses. Employing the Motivated Strategies for Learning Questionnaire (MSLQ) and theories of deep and surface learning, we designed a questionnaire to collect data. The analysis of students' responses indicates that machine learning emerges as one of the most interesting topics, while certain topics such as data wrangling of genomics data were more challenging for students. Students expressed a preference for sequential learning. They exhibited multimodal tendencies regarding the type of learning resources, with tendency to prefer learning resources that have more visual contents. In all three courses, learners reported using deep learning strategy rather than surface learning, yet they appear to struggle with employing organisation, elaboration, and peer learning tactics. This study provides valuable insights into HI education, offering recommendations for educators, learners, and researchers to enhance HI education.

More information Original publication

DOI

10.3233/SHTI240710

Type

Conference paper

Publication Date

2024-08-22T00:00:00+00:00

Volume

316

Pages

1540 - 1544

Total pages

4

Keywords

Health informatics, Learning preference, Learning strategy, Medical education, Medical Informatics, Humans, Surveys and Questionnaires, Self Report, Learning, Curriculum, Machine Learning, Male