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    Using artificial intelligence-informed experience-based co-design (AI-EBCD) to create a virtual reality-based mindfulness application to reduce diabetes distress: protocol for a mixed-methods feasibility study

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    Authors
    Ghosal, S.
    Stanmore, E.
    Sturt, Jackie
    Bogosian, A.
    Woodcock, D.
    Zhang, M.
    Milne, N.
    Mubita, W.
    Robert, Glenn
    O'Connor, Siobhan
    Affiliation
    The Christie NHS Foundation Trust, Manchester, UK
    Issue Date
    2024
    
    Metadata
    Show full item record
    Abstract
    INTRODUCTION: People with type 2 diabetes can experience diabetes distress which can negatively affect health outcomes. Non-pharmacological interventions such as mindfulness can help address diabetes distress. However, face-to-face programmes can be constrained by cost, poor accessibility and lack of availability. Mobile apps for mindfulness may overcome these issues but evidence of their effectiveness is limited, and some have poor interface design with basic visualisations and feedback. METHODS AND ANALYSIS: Our study will explore using virtual reality (VR) as an immersive and interactive technology that could support mindfulness practice to help reduce diabetes distress. We will use a mixed-methods design to pilot a new co-design process called Artificial Intelligence-informed Experience-Based Co-Design. Phase 1 will identify and evaluate existing VR mindfulness apps, followed by interviews with mindfulness experts to gain their perspectives on practising mindfulness in virtual settings. This will be followed by a participatory design phase with a series of five co-design workshops where adults with type 2 diabetes will (1) discuss diabetes distress and learn about mindfulness, (2) evaluate commercially available VR mindfulness apps, (3) employ artistic methods to produce a personalised mindfulness experience, (4) create digital content for a virtual mindfulness experience via generative artificial intelligence tools and (5) prioritise key design features, functionality and content for a tailored VR mindfulness app. The final phase will focus on developing a bespoke VR mindfulness app and evaluating it with adults with type 2 diabetes using interviews, questionnaires and VR app analytics to determine if the new digital mental health intervention can help reduce diabetes distress and improve quality of life. ETHICS AND DISSEMINATION: We received ethical approval from The University of Manchester (2024-18262-32710 and 2024-21170-37093). Written informed consent will be obtained from all participants. Dissemination will include scientific publications and presentations, social media, knowledge translation events and educational resources for teaching students.
    Citation
    Ghosal S, Stanmore E, Sturt J, Bogosian A, Woodcock D, Zhang M, et al. Using Artificial Intelligence-informed Experience-Based Co-Design (AI-EBCD) to create a virtual reality-based mindfulness application to reduce diabetes distress: protocol for a mixed-methods feasibility study. BMJ open. 2024 Nov 28;14(11):e088576. PubMed PMID: 39613448. Pubmed Central PMCID: PMC11605828. Epub 2024/11/30. eng.
    Journal
    BMJ Open
    URI
    http://hdl.handle.net/10541/627348
    DOI
    10.1136/bmjopen-2024-088576
    PubMed ID
    39613448
    Additional Links
    https://dx.doi.org/10.1136/bmjopen-2024-088576
    Type
    Article
    Language
    en
    ae974a485f413a2113503eed53cd6c53
    10.1136/bmjopen-2024-088576
    Scopus Count
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    All Christie Publications

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