Who Will Succeed in Dental School? Predictors of dental school performance

dc.contributor.advisorHallam, Jennifer
dc.contributor.advisorManogue, Michael
dc.contributor.advisorNicholls, Gail
dc.contributor.authorAlsharafi, Eman Mohammed A
dc.date.accessioned2023-07-03T10:41:11Z
dc.date.available2023-07-03T10:41:11Z
dc.date.issued2023-06-05
dc.description.abstractBackground: Selection of students with the highest potential of success is a very challenging process because selection is carried out among a highly academically qualified pool of applicants exceeding the number of places available. Additionally, evidence about the incremental and predictive validity of admission assessments and personal attributes assessed at admission is limited. Objectives: To address this, a systematic review for evidence of the predictive validity of selection methods was completed, the incremental and predictive validity of admission assessments and whether any of the assessments are biased towards or against certain individuals were then investigated. Methods: This was a retrospective cohort study using data of four cohorts at the University of Leeds, School of Dentistry. Data analysis included univariate and multivariate analysis. Outcome measures included academic and clinical performance. Predictor measures included personal statement, BMAT and MMI scores in addition to the socio-demographic characteristics of participants. Results: Hierarchical regression models revealed that BMAT was the only admission assessment that contributed significantly in increasing the variance. Sections 3 and 2 were the most predictive. Additionally, MMI and BMAT significantly predicted on course 3rd to 5th year clinical practice and 2nd to 3rd year academic scores. Empathy, communication, insight and presentation stations were the most predictive of students’ performance. None of the admission assessments showed evidence of bias against gender, widening participation or ethnic groups. Conclusion: The findings demonstrated evidence of incremental and predictive validity of BMAT as an admission test. They also revealed the necessity to re-evaluate the MMI structure, particularly the skills assessed and the tasks used to assess them, to improve its validity. The research has also highlighted the need to identify and provide appropriate support to individuals at greater risk of low performance and the necessity for adequate admissions data management at the University to facilitate future studies.
dc.format.extent350
dc.identifier.urihttps://hdl.handle.net/20.500.14154/68478
dc.language.isoen
dc.subjectUndergraduate dental students
dc.subjectapplicants
dc.subjectcandidates
dc.subjectPredictors
dc.subjectforecasting
dc.subjectadmission assessments
dc.subjectadmission tests
dc.subjectadmission criteria
dc.subjectadmission requirements
dc.subjectskills
dc.subjectcognitive ability
dc.subjectnon-cognitive skills
dc.subjectsoft skills
dc.subjectpersonality
dc.subjectaptitude tests
dc.subjectpersonal attributes
dc.subjectundergraduate performance
dc.subjectundergraduate dental students
dc.subjectinterviews
dc.subjectMMI
dc.subjectmultiple mini interview
dc.subjectpreadmission academic records
dc.subjectpersonal statements
dc.subjectclinical performance
dc.subjectmotor skills
dc.subjectpsychomotor performance
dc.subjectprofessional behaviour
dc.subjectprofessionalism
dc.subjectacademic performance
dc.subjectfailure
dc.subjectsuccess
dc.subjectoutcome
dc.subjectachievement
dc.subjectpredictive validity
dc.subjectincremental validity.
dc.titleWho Will Succeed in Dental School? Predictors of dental school performance
dc.typeThesis
sdl.degree.departmentFaculty of Medicine and Health,
sdl.degree.disciplineSchool of Dentistry, Dental Education
sdl.degree.grantorThe University of Leeds
sdl.degree.nameDoctor of Philosophy

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