MoveMentor-examining the effectiveness of a machine learning and app-based digital assistant to increase physical activity in adults: protocol for a randomised controlled trial.

IF 2 4区 医学 Q3 MEDICINE, RESEARCH & EXPERIMENTAL
Trials Pub Date : 2025-07-01 DOI:10.1186/s13063-025-08926-3
Corneel Vandelanotte, Stewart Trost, Danya Hodgetts, Tasadduq Imam, M D Mamunur Rashid, Quyen G To, Carol Maher
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引用次数: 0

Abstract

Background: Physical inactivity is prevalent, leading to a high burden of disease and large healthcare costs. Thus, there is a need for affordable, effective and scalable interventions. However, interventions that are affordable and scalable are beset with modest effects and engagement. Interventions that integrate machine learning with real-time data to offer unprecedented levels of personalisation and customisation might offer solutions. The aim of this study is to conduct a randomised controlled trial to evaluate the effectiveness of a machine learning and app-based digital assistant to increase physical activity.

Methods: One hundred and ninety-eight participants will be recruited through Facebook advertisements and randomly allocated to an intervention or control group. Intervention participants will gain access to an app-based physical activity digital assistant that can learn and adapt in real-time to achieve high levels of personalisation and user engagement by virtue of applying a range of machine learning techniques (i.e. reinforcement learning, natural language processing and large language models). The digital assistant will interact with participants in 3 main ways: (1) educational conversations about physical activity; (2) just-in-time personalised in-app notifications ('nudges'), cues to action encouraging physical activity and (3) chat-based questions and answers about physical activity. Additionally, the app includes adaptive goal setting and an action planning tool. The control group will gain access to the intervention after the last assessment. Outcomes will be measured at baseline, 3 and 6 months. The primary outcome is device-measured (Axivity AX3) moderate-to-vigorous physical activity. Secondary outcomes include app engagement and retention, quality of life, depression, anxiety, stress, sitting time, sleep, workplace productivity, absenteeism, presenteeism and habit strength.

Discussion: The trial presents a unique opportunity to study the effectiveness of a new generation of digital interventions that use advanced machine learning methods to improve physical activity behaviour. By addressing the limitations of existing conversational agents, we aim to pave the way for more effective and adaptable interventions.

Trial registration: Australian New Zealand Clinical Trial Registry ACTRN12624000255583p. Registered on 14 March 2024. https://www.anzctr.org.au/Trial/Registration/TrialReview.aspx?id=387332 .

movementor -检查机器学习和基于应用程序的数字助理增加成年人身体活动的有效性:随机对照试验方案。
背景:缺乏身体活动是普遍存在的,这导致了疾病的高负担和巨大的医疗费用。因此,需要可负担得起、有效和可扩展的干预措施。然而,那些负担得起且可扩展的干预措施却受到影响不大、参与度不高的困扰。将机器学习与实时数据相结合,提供前所未有的个性化和定制化的干预措施可能会提供解决方案。这项研究的目的是进行一项随机对照试验,以评估机器学习和基于应用程序的数字助手增加身体活动的有效性。方法:198名参与者将通过Facebook广告招募,并随机分配到干预组或对照组。干预参与者将获得基于应用程序的体育活动数字助手的访问,该助手可以通过应用一系列机器学习技术(即强化学习,自然语言处理和大型语言模型)实时学习和适应,以实现高水平的个性化和用户参与度。数字助理将以三种主要方式与参与者互动:(1)关于体育活动的教育对话;(2)即时的个性化应用内通知(“轻推”),鼓励体育锻炼的行动提示;(3)基于聊天的体育锻炼问答。此外,该应用程序还包括自适应目标设定和行动计划工具。对照组将在最后一次评估后进入干预。将在基线、3个月和6个月时测量结果。主要结果是设备测量的(Axivity AX3)中度至剧烈的身体活动。次要结果包括应用粘性和留存率、生活质量、抑郁、焦虑、压力、坐着时间、睡眠、工作效率、缺勤、出勤和习惯强度。讨论:该试验提供了一个独特的机会来研究新一代数字干预措施的有效性,这些干预措施使用先进的机器学习方法来改善身体活动行为。通过解决现有会话代理的局限性,我们的目标是为更有效和适应性更强的干预铺平道路。试验注册:澳大利亚新西兰临床试验注册中心ACTRN12624000255583p。于2024年3月14日注册https://www.anzctr.org.au/Trial/Registration/TrialReview.aspx?id=387332。
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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来源期刊
Trials
Trials 医学-医学:研究与实验
CiteScore
3.80
自引率
4.00%
发文量
966
审稿时长
6 months
期刊介绍: Trials is an open access, peer-reviewed, online journal that will encompass all aspects of the performance and findings of randomized controlled trials. Trials will experiment with, and then refine, innovative approaches to improving communication about trials. We are keen to move beyond publishing traditional trial results articles (although these will be included). We believe this represents an exciting opportunity to advance the science and reporting of trials. Prior to 2006, Trials was published as Current Controlled Trials in Cardiovascular Medicine (CCTCVM). All published CCTCVM articles are available via the Trials website and citations to CCTCVM article URLs will continue to be supported.
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