| Literature DB >> 31703687 |
Felizian Kühbeck1, Pascal O Berberat2, Stefan Engelhardt1, Antonio Sarikas3.
Abstract
BACKGROUND: Learning analytics aims to improve learning outcomes through the systematic measurement and analysis of learning-related data. However, which parameters have the highest predictive power for academic performance remains to be elucidated. The aim of this study was to investigate the correlation of different online assessment parameters with summative exam performance in undergraduate medical education of pharmacology.Entities:
Keywords: Computer-assisted assessment; Gender differences; Online assessment; Pharmacology; Prediction; Summative assessments; Undergraduate education; Written assessment
Mesh:
Year: 2019 PMID: 31703687 PMCID: PMC6842254 DOI: 10.1186/s12909-019-1814-5
Source DB: PubMed Journal: BMC Med Educ ISSN: 1472-6920 Impact factor: 2.463
Fig. 1Experimental setting and timeline. A mixed-methods design of quantitative studies (McPeer data mining and self-evaluation questionnaires) was employed during an undergraduate pharmacology course at Technical University of Munich, Germany. The course consisted of a 24-day teaching period with daily lectures and twice-weekly seminars, followed by a 12-day self-study period and a final written exam
Fig. 2Flow chart of study design. Of 393 first-year medical students enrolled in a general pharmacology course at Technical University of Munich, Germany, 224 (57%) participated in the study
Descriptive statistics and bivariate correlation of different online assessment parameters with summative exam results
| Parameter | Mean (± SE) | Median | Bivariate correlation | |
|---|---|---|---|---|
| Number of logins | 10.01 (± 7.01) | 9 [5;14] | 0.01 | 0.893 |
| Total questions | 813.82 (± 378.41) | 701 [532;945] | 0.02 | 0.813 |
| Total score | 75.45% (± 9.18) | 76 [69;82] | 0.71 | < 0.001 |
| Score first attempt | 70.24% (± 10.14) | 71 [64;77] | 0.72 | < 0.001 |
| Total time | 4.99 h (± 1.83) | 5 [4;6] | - 0.05 | 0.465 |
| Time per question | 25.71 s (± 1.73) | 26 [25;27] | - 0.18 | 0.006 |
Multiple regression analysis. A stepwise forward variable selection algorithm was applied and “number of logins”, “total questions” and “total time” was removed from the final model. The parameters “total score”, “score first attempt” and “time per question” were included in the final model
| Variable | Effect change | SE | t-value | r-square | |
|---|---|---|---|---|---|
| Score first attempt | 0.67 | 0.11 | 6.03 | 0.52 | < 0.0000001 |
| Time per question | −1.56 | 0.33 | −4.75 | 0.05 | 0.000004 |
| Total score | 0.34 | 0.12 | 2.73 | 0.014 | 0.007 |
Fig. 3Pre- and post-intervention assessment of self-perceived pharmacology competency. Online questionnaires were displayed at first login to McPeer (1. rating, preintervention) and 24 h before the final exam. A 5-point Likert-scale (1 = “insecure” to 5 = “secure”) was used. a Box plots showing mean, first and third quartile with whiskers representing the 5 and 95% percentile, n = 224. *** = P < 0.001 (t-test). b Differences between pairs of self-assessments (Likert Δ) as calculated by sign-tests before and after use of McPeer. n = 224