心理学
自治
能力(人力资源)
自决论
医疗保健
跨专业教育
药店
感知
透视图(图形)
医学教育
社会心理学
应用心理学
护理部
医学
政治学
法学
神经科学
人工智能
计算机科学
经济
经济增长
作者
Fraide A. Ganotice,Harinder Gill,John Tai Chun Fung,Janet K. T. Wong,George L. Tipoe
摘要
Objectives In response to the observations that interprofessional education (IPE) is seemingly atheoretical or under-theorised, this quantitative research seeks to uncover students’ motivational mechanisms which could explain their behavioural and collaborative outcomes using self-determination theory (SDT). While SDT has been studied in various contexts, its applicability to IPE remains underexplored. This study aims to integrate a new perspective in understanding students’ motivation in IPE by exploring how the fulfilment of a need for sense of autonomy, competence and relatedness is linked to desirable IPE outcomes. Methods Utilising quantitative methods, we involved 255 health care students in Hong Kong from the medical, nursing and pharmacy disciplines enrolled in IPE anticoagulation therapy module. They were invited to respond to the Psychological Need Satisfaction Questionnaire and other measures as part of the post-test. Results Sense of autonomy emerged as the strongest positive predictor of behavioural (collective dedication, behavioural engagement) and collaboration outcomes (team effectiveness, goal achievement). There were no significant program-level differences across these outcomes except for behavioural engagement for which nursing students had a higher perception than medicine students. Conclusions We were able to demonstrate that SDT is a meaningful framework in understanding behavioural and collaboration outcomes in IPE. The major theoretical contribution of this study refers to the ability of students’ motivation to explain variance in their behavioural outcomes. That is, sense of autonomy consistently predicted team effectiveness, collective dedication, behavioural engagement and goal achievement. Autonomous motivation among a sample of health care students can explain behavioural outcomes. Theoretical, methodological and practical implications are discussed.
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