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Short Reports

Interprofessional practice and learning in a youth mental health service: A case study using network analysis

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Pages 512-514 | Received 31 Jan 2014, Accepted 31 Dec 2014, Published online: 27 Jan 2015
 

Abstract

Few studies have examined interprofessional practice (IPP) from a mental health service perspective. This study applied a mixed-method approach to examine the IPP and learning occurring in a youth mental health service in Tasmania, Australia. The aims of the study were to investigate the extent to which staff were networked, how collaboratively they practiced and supported student learning, and to elicit the organisation’s strengths and opportunities regarding IPP and learning. Six data sets were collected: pre- and post-test readiness for interprofessional learning surveys, Social Network survey, organisational readiness for IPP and learning checklist, “talking wall” role clarification activity, and observations of participants working through a clinical case study. Participants (n = 19) were well-networked and demonstrated a patient-centred approach. Results confirmed participants’ positive attitudes to IPP and learning and identified ways to strengthen the organisation’s interprofessional capability. This mixed-method approach could assist others to investigate IPP and learning.

Declaration of interest

The authors report no conflicts of interest. The authors alone are responsible for the writing and content of this article.

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