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The utility of adaptive eLearning data in predicting dental students’ learning performance in a blended learning course

OBJECTIVES: To examine the impact of dental students’ usage patterns within an adaptive learning platform (ALP), using ALP-related indicators, on their final exam performance. METHODS: Track usage data from the ALP, combined with demographic and academic data including age, gender, pre- and post-tes...

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Detalles Bibliográficos
Autores principales: Alwadei, Farhan H., Brown, Blasé P., Alwadei, Saleh H., Harris, Ilene B., Alwadei, Abdurahman H.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: IJME 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10693956/
https://www.ncbi.nlm.nih.gov/pubmed/37812181
http://dx.doi.org/10.5116/ijme.64f6.e3db
Descripción
Sumario:OBJECTIVES: To examine the impact of dental students’ usage patterns within an adaptive learning platform (ALP), using ALP-related indicators, on their final exam performance. METHODS: Track usage data from the ALP, combined with demographic and academic data including age, gender, pre- and post-test scores, and cumulative grade point average (GPA) were retrospectively collected from 115 second-year dental students enrolled in a blended learning review course. Learning performance was measured by post-test scores. Data were analyzed using correlation coefficients and linear regression tests. RESULTS: The ALP-related variables (without controlling for background demographics and academic data) accounted for 29.6% of student final exam performance (R(2)=0.296, F((10,104))=4.37, p=0.000). Positive significant ALP-related predictors of post-test scores were improvement after activities (β=0.507, t((104))=2.101, p=0.038), timely completed objectives (β=0.391, t((104))=2.418, p=0.017), and number of revisions (β=0.127, t((104))=3.240, p=0.002). Number of total activities, regardless of learning improvement, negatively predicted post-test scores (β= -0.088, t((104))=-4.447, p=0.000). The significant R(2) change following the addition of gender, GPA, and pre-test score (R(2)=0.689, F((13, 101))=17.24, p=0.000), indicated that these predictors explained an additional 39% of the variance in student performance beyond that explained by ALP-related variables, which were no longer significant. Inclusion of cumulative GPA and pre-test scores showed to be the strongest and only predictors of post-test scores (β=18.708, t((101))=4.815, p=0.038) and (β=0.449, t((101))=6.513, p=0.038), respectively. CONCLUSIONS: Track ALP-related data can be valuable indicators of learning behavior. Careful and contextual analysis of ALP data can guide future studies to examine practical and scalable interventions.