| Literature DB >> 28697744 |
Christopher M Wittich1, Anoop Agrawal2, David A Cook3, Andrew J Halvorsen4, Jayawant N Mandrekar5, Saima Chaudhry6, Denise M Dupras7, Amy S Oxentenko8, Thomas J Beckman3.
Abstract
BACKGROUND: E-learning-the use of Internet technologies to enhance knowledge and performance-has become a widely accepted instructional approach. Little is known about the current use of e-learning in postgraduate medical education. To determine utilization of e-learning by United States internal medicine residency programs, program director (PD) perceptions of e-learning, and associations between e-learning use and residency program characteristics.Entities:
Keywords: Electronic learning; Graduate medical education; Medical education; Program directors; Residency training
Mesh:
Year: 2017 PMID: 28697744 PMCID: PMC5504987 DOI: 10.1186/s12909-017-0953-9
Source DB: PubMed Journal: BMC Med Educ ISSN: 1472-6920 Impact factor: 2.463
Characteristics of responders and nonresponders to the 2015 association of program directors in internal medicine national survey (N = 368)
| Groupa | |||
|---|---|---|---|
| Program Characteristic | Responders | Nonresponders |
|
| PD tenure, y | 7.1 (6.6) | 7.2 (6.4) | .92b |
| Program type | .12c | ||
| Community-based, university-affiliated | 105 (49.1) | 85 (55.2) | |
| University-based | 85 (39.7) | 44 (28.6) | |
| Community-based | 20 (9.4) | 20 (13.0) | |
| Military-based | 4 (1.9) | 5 (3.3) | |
| Region | .07c | ||
| Northeast | 80 (37.4) | 45 (29.2) | |
| South | 54 (25.2) | 47 (30.5) | |
| Midwest | 45 (21.9) | 40 (26.0) | |
| West | 35 (16.4) | 19 (12.3) | |
| Other | 0 (0.0) | 3 (2.0) | |
| Program size, approved positions | 68.9 (40.2) | 64.9 (37.9) | .33b |
| ABIM certification examination program pass rate (2012–2014), % | 87.0 (8.0) | 85.4 (9.1) | .09b |
Abbreviations: ABIM American Board of Internal Medicine, PD program director
a Values are mean (SD) or No. of programs (%)
b Welch t test
c Fisher exact test
Fig. 1Use of synchronous or asynchronous electronic learning (e-learning) by internal medicine residency programs (N = 214)
Resources for electronic learning implementation (N = 214 responders)
| Resource | No. (%) |
|---|---|
| Program provision of mobile devices to residents | |
| No resource provided | 97 (45.3) |
| Stipend provided to purchase device | 50 (23.4) |
| iPad provided | 19 (8.9) |
| Smartphone provided | 18 (8.4) |
| iPad Mini provided | 14 (6.5) |
| Android tablet provided | 1 (0.5) |
| Program-owned devices available for use | 15 (7.0) |
| Program faculty development for e-learning | |
| No faculty development | 119 (55.6) |
| Available but insufficient | 64 (29.9) |
| Adequate | 24 (11.2) |
| Above average | 5 (2.3) |
| Robust development | 2 (0.9) |
| Budget to integrate e-learning into curricula | |
| No | 168 (78.5) |
| Yes | 46 (21.5) |
Associations between PD perceptions of electronic learning and PD characteristics (N = 214)
| PD Characteristic | No. (%) | PD Perception of E-Learning Score, Mean (SD) |
|
|---|---|---|---|
| Age | ( | .40 | |
| ≤ 50 years | 105 (50.5) | 3.48 (0.57) | |
| > 50 years | 103 (49.5) | 3.42 (0.51) | |
| Tenure | .81 | ||
| ≤ 4 years | 105 (49.1) | 3.43 (0.53) | |
| > 4 years | 109 (50.9) | 3.48 (0.56) | |
| Gender | ( | .003 | |
| Male | 129 (61.4) | 3.36 (0.55) | |
| Female | 81 (38.6) | 3.59 (0.48) | |
| Academic rank | ( | .75 | |
| None/Instructor | 9 (4.3) | 3.63 (0.49) | |
| Assistant Professor | 56 (26.8) | 3.44 (0.51) | |
| Associate Professor | 86 (41.1) | 3.45 (0.54) | |
| Full Professor | 58 (27.8) | 3.42 (0.57) | |
| Specialty | .12 | ||
| General internal medicine | 166 (77.6) | 3.48 (0.54) | |
| Medicine subspecialty | 48 (22.4) | 3.36 (0.54) |
Abbreviation: PD program director
a Calculated using multiple analysis of variance to adjust for all 5 PD characteristics simultaneously
Odds of using electronic learninga by internal medicine residency programsb
| Synchronous E-learning | Asynchronous E-learning | |||
|---|---|---|---|---|
| Characteristic | ORc (95% CI) |
| ORc (95% CI) |
|
| Program type | .01 | .01 | ||
| Community-based, university-affiliated | REF | REF | ||
| Community-based | 0.84 (0.09–7.89) | 3.96 (1.12–14.08) | ||
| University-based | 6.8 (1.9–24.7) | 3.3 (1.3–9.0) | ||
| Region | .61 | .01 | ||
| Northeast | REF | REF | ||
| West | 1.6 (0.3–8.0) | 0.6 (0.2–1.9) | ||
| South | 1.7 (0.5–5.6) | 0.9 (0.3–2.3) | ||
| Midwest | 2.3 (0.7–7.4) | 3.3 (1.3–8.1) | ||
| Budget for e-learning | .04 | .12 | ||
| Yes | 3.00 (1.04–8.68) | 1.95 (0.84–4.51) | ||
| No | REF | REF | ||
| Program size, ACGME-approved positions | 0.998 (0.981–1.014) | .77 | 0.995 (0.981–1.008) | .41 |
| ABIM program pass rate (2012–2014)d | 1.006 (0.943–1.073) | .86 | 0.981 (0.938–1.026) | .41 |
| Percentage of positions filled by international medical graduatese | 1.018 (1.001–1.035) | .04 | 0.998 (0.992–1.003) | .37 |
| Hospital size, bedsf | 1.001 (1.000–1.002) | .05 | 1.000 (0.999–1.001) | .61 |
| Program director perception of e-learning score | 1.06 (0.41–2.77) | .91 | 3.78 (1.80–7.96) | <.001 |
Abbreviations: ABIM American Board of Internal Medicine, ACGME Accreditation Council of Graduate Medical Education, OR odds ratio, REF reference group
a E-learning “use” was defined as use “somewhat often” or “very often”
b Military-based programs were excluded from this analysis because of limited respondents (4 of 214)
c OR calculated using a multiple logistic regression model adjusting for all characteristics simultaneously. For continuous measures, ORs are per each 1-unit increase in value
d Data on ABIM program pass rate was available for 200 programs
e Data on international medical graduates was available for 196 programs
f Data on hospital size was available for 194 programs