An Evaluation of the Effect of App-Based Exercise Prescription Using Reinforcement Learning on Satisfaction and Exercise Intensity: Randomized Crossover Trial.
Cailbhe Doherty, Rory Lambe, Ben O'Grady, Diarmuid O'Reilly-Morgan, Barry Smyth, Aonghus Lawlor, Neil Hurley, Elias Tragos
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引用次数: 0
Abstract
Background: The increasing prevalence of sedentary lifestyles has prompted the development of innovative public health interventions, such as smartphone apps that deliver personalized exercise programs. The widespread availability of mobile technologies (eg, smartphone apps and wearable activity trackers) provides a cost-effective, scalable way to remotely deliver personalized exercise programs to users. Using machine learning (ML), specifically reinforcement learning (RL), may enhance user engagement and effectiveness of these programs by tailoring them to individual preferences and needs.
Objective: The primary aim was to investigate the impact of the Samsung-developed i80 BPM app, implementing ML for exercise prescription, on user satisfaction and exercise intensity among the general population. The secondary objective was to assess the effectiveness of ML-generated exercise programs for remote prescription of exercise to members of the public.
Methods: Participants were randomized to complete 3 exercise sessions per week for 12 weeks using the i80 BPM mobile app, crossing over weekly between intervention and control conditions. The intervention condition involved individualizing exercise sessions using RL, based on user preferences such as exercise difficulty, selection, and intensity, whereas under the control condition, exercise sessions were not individualized. Exercise intensity (measured by the 10-item Borg scale) and user satisfaction (measured by the 8-item version of the Physical Activity Enjoyment Scale) were recorded after the session.
Results: In total, 62 participants (27 male and 42 female participants; mean age 43, SD 13 years) completed 559 exercise sessions over 12 weeks (9 sessions per participant). Generalized estimating equations showed that participants were more likely to exercise at a higher intensity (intervention: mean intensity 5.82, 95% CI 5.59-6.05 and control: mean intensity 5.19, 95% CI 4.97-5.41) and report higher satisfaction (RL: mean satisfaction 4, 95% CI 3.9-4.1 and baseline: mean satisfaction 3.73, 95% CI 3.6-3.8) in the RL model condition.
Conclusions: The findings suggest that RL can effectively increase both the intensity with which people exercise and their enjoyment of the sessions, highlighting the potential of ML to enhance remote exercise interventions. This study underscores the benefits of personalized exercise prescriptions in increasing adherence and satisfaction, which are crucial for the long-term effectiveness of fitness programs. Further research is warranted to explore the long-term impacts and potential scalability of RL-enhanced exercise apps in diverse populations. This study contributes to the understanding of digital health interventions in exercise science, suggesting that personalized, app-based exercise prescriptions may be more effective than traditional, nonpersonalized methods. The integration of RL into exercise apps could significantly impact public health, particularly in enhancing engagement and reducing the global burden of physical inactivity.
背景:久坐不动的生活方式越来越普遍,促使了创新公共卫生干预措施的发展,例如提供个性化锻炼计划的智能手机应用程序。移动技术的广泛应用(如智能手机应用程序和可穿戴式活动追踪器)为用户远程提供个性化锻炼计划提供了一种经济、可扩展的方式。使用机器学习(ML),特别是强化学习(RL),可以根据个人偏好和需求定制这些程序,从而提高用户参与度和有效性。目的:主要目的是调查三星开发的i80 BPM应用程序对普通人群的用户满意度和运动强度的影响,该应用程序实现了运动处方的ML。第二个目标是评估机器学习生成的运动计划对公众远程运动处方的有效性。方法:参与者被随机分配到使用i80 BPM移动应用程序每周完成3次锻炼,持续12周,在干预和控制条件之间跨越每周。干预条件是根据用户偏好(如运动难度、选择和强度)使用强化学习对运动进行个性化,而在控制条件下,运动不进行个性化。运动强度(由10项博格量表测量)和用户满意度(由8项体育活动享受量表测量)在会议结束后被记录下来。结果:共纳入受试者62人(男27人,女42人);平均年龄43岁,SD 13岁)在12周内完成559次锻炼(每位参与者9次)。广义估计方程显示,在RL模型条件下,参与者更有可能以更高的强度进行运动(干预:平均强度5.82,95% CI 5.59-6.05,对照组:平均强度5.19,95% CI 4.97-5.41),并报告更高的满意度(RL:平均满意度4,95% CI 3.9-4.1,基线:平均满意度3.73,95% CI 3.6-3.8)。结论:研究结果表明,RL可以有效地增加人们锻炼的强度和他们对锻炼的享受,突出了ML增强远程锻炼干预的潜力。这项研究强调了个性化运动处方在提高坚持性和满意度方面的好处,这对健身计划的长期有效性至关重要。进一步的研究是有必要的,以探索长期影响和潜在的可扩展性的强化训练应用程序在不同的人群。这项研究有助于理解运动科学中的数字健康干预措施,表明个性化的、基于应用程序的运动处方可能比传统的、非个性化的方法更有效。将RL整合到锻炼应用程序中可以显著影响公众健康,特别是在提高参与度和减轻全球缺乏体育锻炼的负担方面。
期刊介绍:
JMIR mHealth and uHealth (JMU, ISSN 2291-5222) is a spin-off journal of JMIR, the leading eHealth journal (Impact Factor 2016: 5.175). JMIR mHealth and uHealth is indexed in PubMed, PubMed Central, and Science Citation Index Expanded (SCIE), and in June 2017 received a stunning inaugural Impact Factor of 4.636.
The journal focusses on health and biomedical applications in mobile and tablet computing, pervasive and ubiquitous computing, wearable computing and domotics.
JMIR mHealth and uHealth publishes since 2013 and was the first mhealth journal in Pubmed. It publishes even faster and has a broader scope with including papers which are more technical or more formative/developmental than what would be published in the Journal of Medical Internet Research.