Content and structure of ward rounds focusing interprofessional collaboration on an internal medicine ward: An observational study of interprofessional collaboration

Ella Källén, Stephanie Nimström,Kristina Rosengren

Nordic Journal of Nursing Research(2021)

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摘要
Ward rounds are crucial for the exchange of information among healthcare professionals to achieve joint planning and shared decision-making in healthcare to enhance patient safety. The aim of this study was to describe the content and structure of ward rounds focusing on interprofessional collaboration on an internal medicine ward at a university hospital in Western Sweden. An inductive qualitative approach was used to explore 13 participatory observations of ward rounds (sitting/team rounds). Qualitative content analysis was used. The analysis revealed one category, titled interprofessional teamwork, that utilises all available resources, which consisted of three subcategories: usefulness of specialist competencies, collaboration for patient safety, and leading healthcare to achieve goal fulfilment. It was also found that the participating specialists’ competencies were not being optimally used before patients were discharged from the hospital. Therefore, communication and leadership skills were revealed as ways to improve interprofessional teamwork to achieve goal fulfilment and patient safety regarding care and treatment issues on the ward. We found that reversing the order of ward rounds to start with the sitting round followed by the team round (i.e. hybrid distance participation methods), with the same ward round leader who has skills in leadership and interprofessional teamwork, could eliminate the need for healthcare providers to repeat questions and tasks (i.e. double work) on their ward rounds. Second, patient involvement is grounded in collaboration, and can be emphasised through person-centred care to facilitate patient safety during hospital stays.
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关键词
interprofessional collaboration,internal medicine ward,ward rounds
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