| Literature DB >> 36028807 |
Kwan S Lee1, Balaji Natarajan2, Wei X Wong1, Wina Yousman1, Stefan Koester1, Iwan Nyotowidjojo1, Justin Z Lee3, Karl B Kern1, Deepak Acharya1, David Fortuin3, Olivia Hung1, Wolfram Voelker4, Julia H Indik5.
Abstract
INTRODUCTION: Simulation technology has an established role in teaching technical skills to cardiology fellows, but its impact on teaching trainees to interpret coronary angiographic (CA) images has not been systematically studied. The aim of this randomized controlled study was to test whether structured simulation training, in addition to traditional methods would improve CA image interpretation skills in a heterogeneous group of medical trainees.Entities:
Keywords: Clinical competence; Diagnostic angiography; Simulation training
Mesh:
Year: 2022 PMID: 36028807 PMCID: PMC9414435 DOI: 10.1186/s12909-022-03705-z
Source DB: PubMed Journal: BMC Med Educ ISSN: 1472-6920 Impact factor: 3.263
Fig. 1Flow diagram of simulation versus control to teach coronary angiographic interpretation skills. Subjects (medical students, residents, and fellows) were randomly assigned to simulation arm (mentored simulation training using a dedicated simulator with two-dimensional and three-dimensional virtual anatomic views and didactic teaching) versus control (didactic teaching alone with no simulation). Subjects underwent testing before and after training
Baseline characteristics
| Characteristic | Control group ( | Simulation group ( |
|---|---|---|
| Age (years) | 30 [29–31] | 31 [30–32] |
| Male gender | 60% [46–73] | 53% [39–66] |
| Play sports | 71% [59–83] | 55% [41–68] |
| Play musical instruments | 50% [36–64] | 40% [26–53] |
| Play video games | 48% [34–62] | 34% [21–47] |
| Right | 85% | 92% |
| Left | 8% | 0% |
| Mixed/ambidextrous | 8% | 8% |
| Visual | 46% | 60% |
| Auditory | 4% | 8% |
| Tactile | 17% | 13% |
| Read/Write | 31% | 19% |
| Med Student (YR 3&4) | 21% | 17% |
| PGY-1 Resident | 23% | 23% |
| PGY-2 Resident | 23% | 26% |
| PGY-3 Resident | 17% | 17% |
| PGY-4 CV Fellow | 6% | 8% |
| PGY-5 CV Fellow | 6% | 6% |
| PGY-6 CV Fellow | 4% | 4% |
| 1 (Not confident at all) | 12% | 11% |
| 2 (slightly confident) | 33% | 30% |
| 3 (somewhat confident) | 40% | 43% |
| 4 (fairly confident) | 15% | 13% |
| 5 (completely confident) | 0% | 2% |
| Novice | 29% | 32% |
| Beginner | 62% | 55% |
| Intermediate | 8% | 11% |
| Advanced | 2% | 2% |
| No | 73% | 59% |
| Somewhat | 11 (21%) | 21 (40%) |
| Yes | 3 (6%) | 1 (2%) |
Difference in test score after control or simulation training according to education group
| All Training Arms | Control ( | Simulation ( | |
|---|---|---|---|
| All education groups | 4.6 ± 4.0 | 3.8 ± 3.7 | 5.4 ± 4.2 |
| Medical Student ( | 4.1 ± 4.1 | 4.2 ± 4.5 | 4.0 ± 3.8 |
| Resident ( | 5.1 ± 4.0 | 3.5 ± 3.4 | 6.6 ± 4.0 |
| Fellow ( | 3.1 ± 3.8 | 4.4 ± 4.4 | 2.0 ± 3.1 |
a p = 0.04 for training arm
b p = 0.02 for interaction effect of training arm and education group, with residents showing the greatest positive impact of simulation
Fig. 2Pre- and Post-test scores by education status and training group. Line plots of pre- and post-test scores for medical students (top row), residents (middle row) and fellows (bottom row), by control group (left panel) and simulation group (right panel). Mean values of pre- and post-test scores shown in red