| Literature DB >> 19774476 |
Rashmi Kusurkar1, Cas Kruitwagen, Olle ten Cate, Gerda Croiset.
Abstract
The aim of this study was to determine the effects of selection, educational background, age and gender on strength of motivation to attend and pursue medical school. Graduate entry (GE) medical students (having Bachelor's degree in Life Sciences or related field) and Non-Graduate Entry (NGE) medical students (having only completed high school), were asked to fill out the Strength of Motivation for Medical School (SMMS) questionnaire at the start of medical school. The questionnaire measures the willingness of the medical students to pursue medical education even in the face of difficulty and sacrifice. GE students (59.64 ± 7.30) had higher strength of motivation as compared to NGE students (55.26 ± 8.33), so did females (57.05 ± 8.28) as compared to males (54.30 ± 8.08). 7.9% of the variance in the SMMS scores could be explained with the help of a linear regression model with age, gender and educational background/selection as predictor variables. Age was the single largest predictor. Maturity, taking developmental differences between sexes into account, was used as a predictor to correct for differences in the maturation of males and females. Still, the gender differences prevailed, though they were reduced. Pre-entrance educational background and selection also predicted the strength of motivation, but the effect of the two was confounded. Strength of motivation appears to be a dynamic entity, changing primarily with age and maturity and to a small extent with gender and experience.Entities:
Mesh:
Year: 2009 PMID: 19774476 PMCID: PMC2940046 DOI: 10.1007/s10459-009-9198-7
Source DB: PubMed Journal: Adv Health Sci Educ Theory Pract ISSN: 1382-4996 Impact factor: 3.853
Distribution of gender in the two groups
| Group | Males | Females | Total |
|---|---|---|---|
| Non graduate entry | 154 | 354 | 508 |
| Graduate entry | 46 | 92 | 138 |
| Total | 200 | 446 | 646 |
χ2 = 0.463, df = 1, P = 0.496
SMMS scores of NGE and GE students
| Group | N | Mean ± SD | Mean age in years |
|---|---|---|---|
| Non graduate entry | 508 | 55.26 ± 8.33 | 18.3 |
| Graduate entry | 138 | 59.64 ± 7.30 | 23.3 |
t = −5.618, P = 0.000
SMMS scores of male and female medical students, groups combined
| Gender | N | Mean ± SD |
|---|---|---|
| Males | 200 | 54.30 ± 8.08 |
| Females | 446 | 57.05 ± 8.28 |
t = 3.927, P = 0.000
SMMS scores of male and female medical students, separate groups
| Group | Males | Females | t |
|
|---|---|---|---|---|
| Non-graduate entry | 53.23 ± 7.84 | 56.15 ± 8.39 | −3.783 | 0.000 |
| Graduate entry | 57.91 ± 7.93 | 60.51 ± 6.84 | −1.992 | 0.048 |
Cohen’s effect size (NGE) = 0.360, Cohen’s effect size (GE) = 0.351
Fig. 1Scatter plot of age versus SMMS score in the GE group
Fig. 2Scatter plot of age versus SMMS score NGE group
Model 1 of linear regression analysis
| Model 1 | Adjusted R2 | Standard error of the estimate |
|---|---|---|
| Age | 0.039 | 8.15 |
Age Gender | 0.067 | 8.02 |
Age Gender Background | 0.074 | 7.99 |
Model 2 of linear regression analysis (age replaced by maturity)
| Model 2 | Adjusted R2 | Standard error of the estimate |
|---|---|---|
| Maturity | 0.061 | 8.06 |
Maturity Gender | 0.071 | 8.02 |
Maturity Gender Background | 0.079 | 7.99 |