| Literature DB >> 30424760 |
Sarah Larkins1,2,3, Karen Johnston4,5, John C Hogenbirk6, Sara Willems7, Salwa Elsanousi8, Marykutty Mammen9, Kaatje Van Roy7, Jehu Iputo10, Fortunato L Cristobal11, Jennene Greenhill12, Charlie Labarda13, Andre-Jacques Neusy14.
Abstract
BACKGROUND: Understanding the impact of selection and medical education on practice intentions and eventual practice is an essential component of training a fit-for-purpose health workforce distributed according to population need. Existing evidence comes largely from high-income settings and neglects contextual factors. This paper describes the practice intentions of entry and exit cohorts of medical students across low and high income settings and the correlation of student characteristics with these intentions.Entities:
Keywords: Health workforce; Learner characteristics; Medical education; Practice intention; Social accountability
Mesh:
Year: 2018 PMID: 30424760 PMCID: PMC6234627 DOI: 10.1186/s12909-018-1360-6
Source DB: PubMed Journal: BMC Med Educ ISSN: 1472-6920 Impact factor: 2.463
Context for THEnet schools participating in the THEnet Graduate Outcome Study
| School | Priority population | Graduate entry | Length of training | Program | Time of applying for specialty training |
|---|---|---|---|---|---|
| Ateneo de Zamboanga University School of Medicine (ADZU) | Rural underserved areas of Mindanao, Philippines | Yes (VI) | 4 | 50% community based | After PGY1b |
| Flinders University School of Medicine (FU) | Rural, remote, Aboriginal and Torres Strait Islander populations. | Yes (VI) | 4 | Parallel Rural Community Curriculum | After PGY1 |
| University of Gezira Faculty of Medicine | Rural underserved areas in Gezira | No (IV) | 5 | 25% curriculum community based, community oriented education | After PGY1 |
| Ghent University | Low socio-economic status, migrant population | No (I) | 7 | 6-year learning continuum on ethnic, gender and socio-economic diversity: basic competence training and 6 weeks course on social determinants of health (Y1), a one week community oriented primary care program (Y2), specialist courses on social determinants of health and diversity, further competency training, and several community/primary care based clinical internships (Y3–6). | End of year 6 |
| James Cook University (JCU) | Rural, remote, Aboriginal and Torres Strait Islander populations. | No (VI) | 6 | Entire program located in outer regional and rural settings with focus on priority health needs, 20 weeks training in rural and remote settings | After PGY1 |
| Northern Ontario School of Medicine (NOSM) | Rural, Indigenous, | Yes (V) | 4 | Year 1 and 2: 4 weeks and 8 weeks in Indigenous and rural communities, | Beginning of Year 4 of medical course (8 months prior to graduation) |
| University of the Philippines School of Health Sciences (UPSHS) | Rural underserved areas in the Philippines; | Yes (VI) | 5 | Multi-level entry stepladder curriculum | PGY1 |
| Walter Sisulu University Faculty of Health Sciences (WSU) | Rural underserved areas of Eastern Cape and KwaZulu Natal Provinces of South Africa | No (IV) | 6 | Rural experiences in Years 1–3 | Following 2 year internship and subsequent 1 year of community service. |
aPathway classification for medical education[31]
bPGY1 Postgraduate year one
Response rates for entry and exit questionnaires for THEnet schools
| Medical school | Respondents (Response rate %) | |
|---|---|---|
| Entry | Exit | |
| Ateneo de Zamboanga University, Philippines | 143/146 (97.9) | 76/85 (89.4) |
| Flinders University, Australia | 218/303 (71.9) | 71/145 (49.0) |
| Gezira University, Sudan | 570/888 (64.2) | 59/199 (29.6) |
| Ghent University, Belgium | 294/462 (63.6) | 165/271 (60.9) |
| James Cook University, Australia | 736/862 (85.4) | 278/654 (42.5) |
| Northern Ontario School of Medicine, Canada | 22/64 (34.4) | 8/63 (12.7) |
| Walter Sisulu University, South Africa | 563/616 (91.4) | 104/176 (59.1) |
| University of the Philippines, Philippines | 11/15 (73.3) | 28/32 (87.5) |
Demographic profile and background characteristics for all participating THEnet schools combined at entry and exit
| Mean age (SD) | Female | Lowest two quintiles of income (background) | Identify as underserved population | Neither parent attended university | Years of public schooling | Rural background 1-3a | |
|---|---|---|---|---|---|---|---|
| Entry | 1535/2556 | 475/1643 | 645/2303 | 515/2502 | 691/2250 | 825/1904 | |
| Exit | 492/786 | 142/617 | 118/704 | 131/783 | 370/779 | 216/538 | |
| OR at entry versus exit; | – | 0.90; | 1.36; | 1.93; | 1.29; | 0.49; | 1.14; |
aRural quintiles (1 = remote village, 2 = small rural town, 3 = large rural town) vs Urban quintiles (4 = major regional centre and 5 = major city or capital city). Respondents from Ghent University or those with primary school background in a country other than the country where they attended medical school were excluded from this variable. Most schools used population size to define quintiles; NOSM and UPSHS based quintiles on government socioeconomic classifications
Demographic profile and background characteristics for respondents at each THEnet school and all participating THEnet schools combined
| Ateneo de Zamboanga University | Flinders University | Gezira University | Ghent University | James Cook University | Northern Ontario School of Medicine | University of Philippines | Walter Sisulu University | THEnet schools combined | |
|---|---|---|---|---|---|---|---|---|---|
| n/N (%) | n/N (%) | n/N (%) | n/N (%) | n/N (%) | n/N (%) | n/N (%) | n/N (%) | n/N (%) | |
| Mean age | 23.20; 3.086 | 25.71; 5.744 | 19.48; 2.734 | 21.37; 3.657 | 20.30; 3.809 | 27.53; 5.716 | 28.81; 4.081 | 20.99; 4.498 | 21.26; 4.413 |
| Femalea | 144/219 (65.8) | 155/289 (53.6) | 360/629 (57.2) | 297/458 (64.8) | 634/1014 (62.5) | 23/30 (76.7) | 27/39 (69.2) | 387/664 (58.3) | 2027/3342 (60.7) |
| Lowest two quintiles for parent incomea | 33/160 (20.6) | 64/206 (31.1) | 78/385 (20.3) | 21/428 (4.9) | 141/589 (23.9) | 3/26 (11.5) | 10/34 (29.4) | 267/432 (61.8) | 617/2260 (27.3) |
| Neither parent attended universitya | 8/211 (3.7) | 37/284 (13.0) | 181/605 (29.9) | 36/451 (8.0) | 131/1009 (13.0) | 4/30 (13.3) | 5/38 (13.2) | 244/649 (37.6) | 646/3285 (19.7) |
| Identify as underserved groupa | 33/214 (15.4) | 10/255 (3.9) | 65/557 (11.7) | 64/433 (14.8) | 72/877 (8.2) | 12/18 (66.7) | 1/37 (2.7) | 506/616 (82.1) | 763/3007 (25.4) |
| Majority of primary school in remote village, small rural town, or large rural town (quintile 1–3)b | 36/215 (16.7) | 76/224 (33.9) | 113/502 (22.5) | Not applicable | 293/776 (37.8) | 7/30 (23.3) | 23/38 (60.5) | 493/657 (75.0) | 1041/2442 (42.6) |
aData were coded as missing if respondent did not give response, or chose option ‘don’t want to answer question’ or ‘unsure’
bRespondents from Ghent University or those with primary school background in a country other than the country where they attended medical school were excluded from this variable
Predictors of intention to work in a rural location where binary variable is rural versus urban locationa
| Number in unadjusted analysis | Unadjusted odds ratios | Adjusted odds ratios | |
|---|---|---|---|
| Age | 2686 | 1.02 (1.00–1.03; 0.071) | 1.00 (o.98–1.03;NS) |
| Female | 2724 | 1.29 (1.11–1.50; 0.001) | 0.81 (0.64–1.02; 0.07) |
| Income bottom two quintiles | 1752 | 2.13 (1.74–2.61; < 0.001) | 1.82 (1.42–2.35; < 0.001) |
| Identify as underserved group | 2442 | 1.92 (1.60–2.30; < 0.001) | 0.92 (0.70–1.22; NS) |
| Rural background (Quintiles 1, 2 and 3) | 2312 | 2.77 (2.34–3.29; < 0.001) | 2.03 (1.59–2.58; < 0.001) |
| Attend a regionally-based medical schoolc (ADZU, JCU and WSU) | 2660 | 1.60 (1.50–1.17; < 0.001) | 2.19 (1.69–2.84; < 0.001) |
aRural quintiles (1 = remote village, 2 = small rural town, 3 = large rural town) versus Urban quintiles (4 = major regional centre and 5 = major city or capital city). Excludes respondents from Ghent University
bAdjusted odds ratio excludes respondents from Ghent, NOSM and SHS
cClassification of regionally-based medical schools excluded NOSM and SHS on the grounds of insufficient sample size, and excluded Ghent due to differing concepts of rurality
Predictors of intention to work abroad where binary variable is “yes – intend to work abroad” and “No – don’t intend to work abroad”. (Unsure option removed from analysis)
| Number in unadjusted analysis | Unadjusted odds ratios | Adjusted odds ratios | |
|---|---|---|---|
| Age | 1829 | 0.91 (0.89–0.93; < 0.001) | 0.89 (0.85–0.92; < 0.001) |
| Female | 1853 | 1.12 (0.92–1.36; 0.251) | 1.03 (0.77–1.37; 0.848) |
| Income top two quintiles | 1223 | 2.83 (2.19–3.67; < 0.001) | 2.08 (1.52–2.85; < 0.001) |
| Does not identify as underserved group | 1669 | 3.03 (2.42–3.80; < 0.001) | 1.96 (1.42–2.72; < 0.001) |
| Urban background (Quintiles 4 and 5) | 1571 | 1.44 (1.18–1.77; < 0.001) | 1.41 (1.05–1.88; 0.020) |
Excludes respondents from Ghent University
Predictors of intention to work abroad at African and Filipino schools where binary variable is “yes – intend to work abroad” and “No – don’t intend to work abroad”. (Unsure option removed from analysis)
| Number in unadjusted analysis | Unadjusted odds ratios | Adjusted odds ratios | |
|---|---|---|---|
| Age | 1037 | 0.83 (0.80–0.86; < 0.001) | 0.82 (0.76–0.87; < 0.001) |
| Female | 1048 | 0.97 (0.76–1.24; 0.818) | 1.07 (0.74–1.55; 0.72) |
| Income top two quintiles | 709 | 3.39 (2.22–5.18; < 0.001) | 2.49 (1.50–4.13; < 0.001) |
| Does not identify as underserved group | 970 | 2.55 (1.95–3.32; < 0.001) | 1.66 (1.12–2.46; 0.012) |
| Urban background (Quintiles 4 and 5) | 942 | 1.73 (1.34–2.24; < 0.001) | 1.82 (1.23–2.68; 0.002) |
Fig. 1Intended practice discipline of respondents for entry and exit cohorts as a proportion of total respondents who answered this question (Entry n = 1766, Exit n = 716; Excludes response option ‘I don’t know’)