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Id 2485
Author Bierbooms J.; Feijt M.A.; IJsselsteijn W.A.; Bongers I.M.B.
Title Design of a Game-Based Training Environment to Enhance Mental Health Care Professionals' Skills in Using e-Mental Health: Multiple Methods User Requirements Analysis
Reference

Bierbooms J.; Feijt M.A.; IJsselsteijn W.A.; Bongers I.M.B. Design of a Game-Based Training Environment to Enhance Mental Health Care Professionals' Skills in Using e-Mental Health: Multiple Methods User Requirements Analysis,JMIR Serious Games 10 3

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Link to article https://www.scopus.com/inward/record.uri?eid=2-s2.0-85135880596&doi=10.2196%2f34700&partnerID=40&md5=64a67d85859669da8aba3507f4246bba
Abstract Background: A major factor hampering the adoption of technology in mental health care is a lack of knowledge and skills. Serious gaming offers a potentially effective strategy to enhance the skills needed through experiencing and learning-by-doing in a playful way. However, serious gaming solutions are not widely available for mental health care. Therefore, the development of a game-based training environment in mental health care was pursued in a design project. The first step in such a design project is to identify user requirements that should be met. Objective: This study aims to deliver user requirements that inform the design of a game-based training environment for mental health care professionals. This environment aims to support mental health care professionals' knowledge and skill enhancement regarding the use of e-mental health (eMH); for example, video calling, mobile apps, web-based treatment modules, and techniques such as virtual or augmented reality. Methods: We used an exploratory multiple methods design consisting of a web-based questionnaire, co-design sessions, and interviews. To ensure a good representation of the target user group, professionals from various disciplines within mental health care were included in the research. The multiple methods design facilitates a broad view of user needs and in-depth knowledge of specific design requirements. We describe the protocol for this research project in a protocol paper published in the JMIR Research Protocols in February 2021. Results: The user requirements analysis revealed three types of users for the envisioned game-based training environment: mental health care professionals who want to learn about the basic possibilities of eMH, mental health care professionals who want to develop their eMH skills to the next level, and mental health care professionals who want to experiment with new technologies. This reflects the diversity of needs that were identified, as well as the need to develop a diversity of suitable scenarios in the environment. User requirements analysis shows that the focus of a training environment should be on increasing knowledge about the possibilities of eMH, focusing on experiencing the benefits in particular situations, and building confidence in using eMH in a therapeutic setting. This requires careful consideration of the suitable game characteristics. Conclusions: Improvement of mental health care professionals' skills in eMH requires an environment that is user driven and flexible, and simultaneously incorporates contextual factors that are relevant for its implementation in practice. This user requirements analysis contributes to the understanding of the issues that should be considered in the development of a game-based training environment. This shows that there are multiple and diverse learning needs among mental health care professionals. Various client populations, services, and situations demand various options for training. © Joyce Bierbooms, Milou A Feijt, Wijnand A IJsselsteijn, Inge M B Bongers.

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