Jeong Harim, Yoo Joo Hun, Goh Michelle, Song Hayeon
Department of Interaction Science, SungKyunKwan University, Seoul, South Korea.
Department of Artificial Intelligence, SungKyunKwan University, Suwon, South Korea.
Front Digit Health. 2024 Jan 29;6:1287340. doi: 10.3389/fdgth.2024.1287340. eCollection 2024.
Digital Therapeutics (DTx) are experiencing rapid advancements within mobile and mental healthcare sectors, with their ubiquity and enhanced accessibility setting them apart as uniquely effective solutions. In this evolving context, our research focuses on deep breathing, a vital technique in mental health management, aiming to optimize its application in DTx mobile platforms. Based on well-founded theories, we introduced a gamified and affordance-driven design, facilitating intuitive breath control. To enhance user engagement, we deployed the Mel Frequency Cepstral Coefficient (MFCC)-driven personalized machine learning method for accurate biofeedback visualization. To assess our design, we enlisted 70 participants, segregating them into a control and an intervention group. We evaluated Heart Rate Variability (HRV) metrics and collated user experience feedback. A key finding of our research is the stabilization of the Standard Deviation of the NN Interval (SDNN) within Heart Rate Variability (HRV), which is critical for stress reduction and overall health improvement. Our intervention group observed a pronounced stabilization in SDNN, indicating significant stress alleviation compared to the control group. This finding underscores the practical impact of our DTx solution in managing stress and promoting mental health. Furthermore, in the assessment of our intervention cohort, we observed a significant increase in perceived enjoyment, with a notable 22% higher score and 10.69% increase in positive attitudes toward the application compared to the control group. These metrics underscore our DTx solution's effectiveness in improving user engagement and fostering a positive disposition toward digital therapeutic efficacy. Although current technology poses challenges in seamlessly incorporating machine learning into mobile platforms, our model demonstrated superior effectiveness and user experience compared to existing solutions. We believe this result demonstrates the potential of our user-centric machine learning techniques, such as gamified and affordance-based approaches with MFCC, which could contribute significantly to the field of mobile mental healthcare.
数字疗法(DTx)在移动和心理健康领域正经历快速发展,其无处不在且易于获取的特点使其成为独特有效的解决方案。在这一不断演变的背景下,我们的研究聚焦于深呼吸,这是心理健康管理中的一项重要技术,旨在优化其在DTx移动平台中的应用。基于坚实的理论,我们引入了一种游戏化且受可供性驱动的设计,以促进直观的呼吸控制。为提高用户参与度,我们采用了基于梅尔频率倒谱系数(MFCC)的个性化机器学习方法来进行准确的生物反馈可视化。为评估我们的设计,我们招募了70名参与者,将他们分为对照组和干预组。我们评估了心率变异性(HRV)指标并整理了用户体验反馈。我们研究的一个关键发现是心率变异性(HRV)中NN间期标准差(SDNN)的稳定,这对减轻压力和改善整体健康至关重要。我们的干预组观察到SDNN有显著稳定,表明与对照组相比压力明显减轻。这一发现凸显了我们的DTx解决方案在管理压力和促进心理健康方面的实际影响。此外,在对我们干预队列的评估中,我们观察到感知愉悦度显著增加,与对照组相比,对该应用的评分显著高出22%,积极态度增加了10.69%。这些指标凸显了我们的DTx解决方案在提高用户参与度和培养对数字疗法疗效的积极态度方面的有效性。尽管当前技术在将机器学习无缝集成到移动平台方面存在挑战,但与现有解决方案相比,我们的模型展示了卓越的有效性和用户体验。我们相信这一结果展示了我们以用户为中心的机器学习技术的潜力,例如带有MFCC的游戏化和基于可供性的方法,这可能会对移动心理健康护理领域做出重大贡献。