Open-Source Physiological Computing Framework using Heart Rate Variability in Mobile Virtual Reality Applications

Luis Quintero, P. Papapetrou, J. Muñoz
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引用次数: 2

Abstract

Electronic and mobile health technologies are posed as a tool that can promote self-care and extend coverage to bridge the gap in accessibility to mental care services between low-and high-income communities. However, the current technology-based mental health interventions use systems that are either cumbersome, expensive or require specialized knowledge to be operated. This paper describes the open-source framework PARE-VR, which provides heart rate variability (HRV) analysis to mobile virtual reality (VR) applications. It further outlines the advantages of the presented architecture as an initial step to provide more scalable mental health therapies in comparison to current technical setups; and as an approach with the capability to merge physiological data and artificial intelligence agents to provide computing systems with user understanding and adaptive functionalities. Furthermore, PARE-VR is evaluated with a feasibility study using a specific relaxation exercise with slow-paced breathing. The aim of the study is to get insights of the system performance, its capability to detect HRV metrics in real-time, as well as to identify changes between normal and slow-paced breathing using the HRV data. Preliminary results of the study, with the participation of eleven volunteers, showed high engagement of users towards the VR activity, and demonstrated technical potentialities of the framework to create physiological computing systems using mobile VR and wearable smartwatches for scalable health interventions. Several insights and recommendations were concluded from the study for enhancing the HRV analysis in real-time and conducting future similar studies.
在移动虚拟现实应用中使用心率变异性的开源生理计算框架
电子和移动卫生技术被认为是一种可以促进自我保健和扩大覆盖面的工具,以弥合低收入和高收入社区在获得精神保健服务方面的差距。然而,目前以技术为基础的精神卫生干预措施使用的系统要么笨重、昂贵,要么需要专业知识才能操作。本文介绍了开源框架PARE-VR,该框架为移动虚拟现实(VR)应用提供心率变异性(HRV)分析。它进一步概述了与目前的技术设置相比,所提出的架构作为提供更可扩展的心理健康治疗的第一步的优势;作为一种能够将生理数据和人工智能结合起来的方法,为计算系统提供用户理解和自适应功能。此外,通过使用慢节奏呼吸的特定放松练习来评估PARE-VR的可行性研究。该研究的目的是深入了解系统性能,实时检测HRV指标的能力,以及利用HRV数据识别正常呼吸和慢速呼吸之间的变化。在11名志愿者的参与下,该研究的初步结果显示,用户对虚拟现实活动的参与度很高,并展示了该框架的技术潜力,可以使用移动虚拟现实和可穿戴智能手表创建可扩展健康干预的生理计算系统。从研究中得出了一些见解和建议,以加强实时HRV分析并开展未来的类似研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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