| Literature DB >> 26608836 |
Anja Rogausch1,2, Christine Beyeler3, Stephanie Montagne4, Patrick Jucker-Kupper5, Christoph Berendonk6, Sören Huwendiek7, Armin Gemperli8,9, Wolfgang Himmel10.
Abstract
BACKGROUND: In contrast to objective structured clinical examinations (OSCEs), mini-clinical evaluation exercises (mini-CEXs) take place at the clinical workplace. As both mini-CEXs and OSCEs assess clinical skills, but within different contexts, this study aims at analyzing to which degree students' mini-CEX scores can be predicted by their recent OSCE scores and/or context characteristics.Entities:
Mesh:
Year: 2015 PMID: 26608836 PMCID: PMC4658793 DOI: 10.1186/s12909-015-0490-3
Source DB: PubMed Journal: BMC Med Educ ISSN: 1472-6920 Impact factor: 2.463
Fig. 1Example of the mini-CEX checklist
Fig. 2Boxplot of mean trainers’ scores regarding each of domains and ‘overall’ scores of the mini-CEX
Fig. 3Mean scores of the OSCE in relation to ‘overall’ (black bullets) and ‘domain’ mini-CEX scores (grey bullets)
Characteristics of clinics, trainers, tasks, observation and feedback during mini-clinical evaluation exercises (mini-CEX)
| Clinic size | ‘small’ | 29 clinics with |
| ‘medium-sized’ | 10 clinics with | |
| ‘large’ | 6 clinics with | |
| Trainers | residents | 54 % of the mini-CEX ( |
| senior physicians | 36 % of the mini-CEX ( | |
| heads of department | 9 % of the mini-CEX ( | |
| no information | 1 % of the mini-CEX ( | |
| Task complexity | ‘low complexity’ | 9 % of the mini-CEX ( |
| ‘medium complexity’ | 65 % of the mini-CEX ( | |
| ‘high complexity’ | 17 % of the mini-CEX ( | |
| no information | 9 % of the mini-CEX ( | |
| Duration | of observation | Median = 15 min |
| of feedback | Median = 5 min |
aFor a total of 1773 mini-CEX after exclusion of one student with 10 mini-CEX (outlier)
Estimated regression coefficients for the prediction of trainers’ ‘overall‘mini-CEX scores, including random effects
| Estimated regression coefficients (and 95 % confidence intervals) | ||
|---|---|---|
| Predictor | Single predictors | Multifactorial model |
| Clinic size | ||
| Small vs. large |
| |
| Medium vs. large | −0.25 (−0.53, −0.012) | −0.17 (−0.42, 0.077); DF = 17 |
| Trainers’ function | ||
| Resident vs. head of department |
| |
| Senior physician vs. head of department | 0.10 (−0.17, 0.37) | 0.12 (−0.18, 0.42); DF = 453 |
| Students’ gender | ||
| Male vs. female | −0.09 (−0.21, 0.026) | −0.062 (−0.20, 0.074); DF = 138 |
| Assessment characteristics | ||
| Low vs. high complexity | ||
| Medium vs. high complexity | −0.059 (−0.18, 0.067) | −0.081 (−0.21, 0.052); DF =1015 |
| Students’ clinical skills (OSCE) | ||
| Low vs. high performers | −0.19 (−0.39, 0.014) | −0.15 (−0.36, 0.063); DF = 132 |
| Medium vs. high performers | −0.15 (−0.29, 0.0021) | −0.13 (−0.28, 0.021); DF = 132 |
Predictors remaining significant in the multifactorial model are reported in bold
DF degrees of freedom
*p < 0.05
**p < 0.01
***p < 0.001
Estimated regression coefficients for the prediction of trainers’ mean ‘domain‘mini-CEX scores, including random effects
| Estimated regression coefficients (and 95 % confidence intervals) | ||
|---|---|---|
| Predictor | Single predictors | Multifactorial model |
| Clinic size | ||
| Small vs. large | ||
| Medium vs. large | −0.24 (−0.52, 0.031) | −.20 (−0.47, .069); DF = 19 |
| Trainers’ function | ||
| Resident vs. head of department |
| |
| Senior physician vs. head of department | 0.18 (−0.080, 0.44) | 0.19 (−0.096, 0.48); DF = 449 |
| Students’ gender | ||
| Male vs. female | −0.11 (−0.22, 0.001) | −0.051 (−0.18, 0.079); DF = 144 |
| Students’ clinical skills (OSCE) | ||
| Low vs. high performers | −0.15 (−0.35, 0.038) | −0.13 (−0.33, 0.078); DF = 139 |
| Medium vs. high performers | ||
Predictors remaining significant in the multifactorial model are reported in bold
DF degrees of freedom
*p < 0.05
**p < 0.01
***p < 0.001