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Virtual Resilience, Real Consensus: Methodological Framework for a VR-Based Resilience Intervention Using a Modified

Martin Ernst1, Yvonne Prinzellner1, Nina Dalkner2

  • 1Centre for Digital Health and Social Innovation, University of Applied Sciences, St. Pölten.

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This summary is machine-generated.

This study details a modified Delphi method for co-developing virtual reality (VR) resilience training for nurses. The consensus-based approach integrated experts to prioritize content and strategies for digital health interventions.

Keywords:
Digital Health InterventionModified Delphi MethodResilience in NursingStakeholder Co-DesignVirtual Reality Training

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Area of Science:

  • Digital Health Interventions
  • Virtual Reality in Healthcare
  • Nursing Education

Background:

  • Developing digital health interventions requires robust methodologies for co-creation.
  • Virtual reality (VR) offers potential for innovative healthcare training.
  • The XR2esilience project focuses on VR-based resilience training for nurses.

Purpose of the Study:

  • To outline the methodological design and rationale for a modified Delphi study.
  • To support the early-phase co-development of digital health interventions.
  • To guide similar initiatives in participatory, consensus-driven digital health design.

Main Methods:

  • A modified Delphi study involving experts from nursing, psychology, education, and VR development.
  • A multi-round consensus process to prioritize content, implementation, and contextual factors.
  • Adaptation of the Delphi method for interdisciplinary collaboration and stakeholder integration.

Main Results:

  • Prioritization of content areas for VR resilience training.
  • Identification of effective implementation strategies.
  • Consideration of contextual factors for successful digital intervention design.

Conclusions:

  • The modified Delphi approach is effective for consensus-driven co-development of digital health interventions.
  • Interdisciplinary collaboration is crucial for designing effective VR-based healthcare training.
  • This methodology provides a framework for integrating technological innovation with participatory design in healthcare.