Bolpagni Marco, Pardini Susanna, Gabrielli Silvia
Human Inspired Technology Research Centre, University of Padova, Padova, Italy.
Digital Health Research, Center for Digital Health and Wellbeing, Fondazione Bruno Kessler, Trento, Italy.
Internet Interv. 2024 Sep 14;38:100775. doi: 10.1016/j.invent.2024.100775. eCollection 2024 Dec.
AI-powered Digital Therapeutics (DTx) hold potential for enhancing stress prevention by promoting the scalability of P5 Medicine, which may offer users coping skills and improved self-management of mental wellbeing. However, adoption rates remain low, often due to insufficient user and stakeholder involvement during the design phases.
This study explores the human-centered design potentials of SHIVA, a DTx integrating virtual reality and AI with the SelfHelp+ intervention, aiming to understand stakeholder views and expectations that could influence its adoption.
Using the SHIVA example, we detail design opportunities involving AI techniques for stress prevention across modeling, personalization, monitoring, and simulation dimensions. Workshops with 12 stakeholders-including target users, digital health designers, and mental health experts-addressed four key adoption aspects through peer interviews: AI data processing, wearable device roles, deployment scenarios, and the model's transparency, explainability, and accuracy.
Stakeholders perceived AI-based data processing as beneficial for personalized treatment in a secure, privacy-preserving environment. While wearables were deemed essential, concerns about compulsory use and VR headset costs were noted. Initial human facilitation was favored to enhance engagement and prevent dropouts. Transparency, explainability, and accuracy were highlighted as crucial for the stress detection model.
Stakeholders recognized AI-driven opportunities as crucial for SHIVA's adoption, facilitating personalized solutions tailored to user needs. Nonetheless, challenges persist in developing a transparent, explainable, and accurate stress detection model to ensure user engagement, adherence, and trust.
人工智能驱动的数字疗法(DTx)有望通过提升P5医学的可扩展性来加强压力预防,P5医学可为用户提供应对技能并改善心理健康的自我管理。然而,其采用率仍然很低,这通常是由于在设计阶段用户和利益相关者的参与不足。
本研究探讨了SHIVA的以人为本的设计潜力,SHIVA是一种将虚拟现实和人工智能与SelfHelp+干预相结合的数字疗法,旨在了解可能影响其采用的利益相关者的观点和期望。
以SHIVA为例,我们详细阐述了在建模、个性化、监测和模拟维度上涉及人工智能技术进行压力预防的设计机会。与12名利益相关者(包括目标用户、数字健康设计师和心理健康专家)举办的研讨会通过同行访谈探讨了四个关键的采用方面:人工智能数据处理、可穿戴设备的作用、部署场景以及模型的透明度、可解释性和准确性。
利益相关者认为基于人工智能的数据处理有利于在安全、保护隐私的环境中进行个性化治疗。虽然可穿戴设备被认为是必不可少的,但有人指出了对强制使用和虚拟现实头戴设备成本的担忧。最初倾向于人工引导以提高参与度并防止退出。透明度、可解释性和准确性被强调为压力检测模型的关键。
利益相关者认识到人工智能驱动的机会对于SHIVA的采用至关重要,有助于量身定制满足用户需求的个性化解决方案。尽管如此,在开发一个透明、可解释和准确的压力检测模型以确保用户参与度、依从性和信任方面,挑战仍然存在。