Suppr超能文献

移动健康应用程序中行为改变技术的实施:系统评价。

The Implementation of Behavior Change Techniques in mHealth Apps for Sleep: Systematic Review.

机构信息

Department of Psychological Sciences, University of California, Merced, CA, United States.

出版信息

JMIR Mhealth Uhealth. 2022 Apr 4;10(4):e33527. doi: 10.2196/33527.

Abstract

BACKGROUND

Mobile health (mHealth) apps targeting health behaviors using behavior change techniques (BCTs) have been successful in promoting healthy behaviors; however, their efficacy with sleep is unclear. Some work has shown success in promoting sleep through mHealth, whereas there have been reports that sleep apps can be adverse and lead to unhealthy obsessions with achieving perfect sleep.

OBJECTIVE

This study aims to report and describe the use of BCTs in mHealth apps for sleep with the following research questions: How many BCTs are used on average in sleep apps, and does this relate to their effectiveness on sleep outcomes? Are there specific BCTs used more or less often in sleep apps, and does this relate to their effectiveness on sleep outcomes? Does the effect of mHealth app interventions on sleep change when distinguishing between dimension and measurement of sleep?

METHODS

We conducted a systematic review following PRISMA (Preferred Reporting Items for Systematic Reviews and Meta-Analyses) guidelines to review articles on mHealth app interventions for sleep published between 2010 and 2020.

RESULTS

A total of 12 studies met the eligibility criteria. Most studies reported positive sleep outcomes, and there were no negative effects reported. Sleep quality was the most common dimension of sleep targeted. Subjective measures of sleep were used across all apps, whereas objective measures were often assessed but rarely reported as part of results. The average number of BCTs used was 7.67 (SD 2.32; range 3-11) of 16. Of the 12 studies, the most commonly used BCTs were feedback and monitoring (n=11, 92%), shaping knowledge (n=11, 92%), goals and planning (n=10, 83%), and antecedents (n=10, 83%), whereas the least common were scheduled consequences (n=0, 0%), self-belief (n=0, 0%), and covert learning (n=0, 0%). Most apps used a similar set of BCTs that unfortunately did not allow us to distinguish which BCTs were present when studies reported more positive outcomes.

CONCLUSIONS

Our study describes the peer-reviewed literature on sleep apps and provides a foundation for further examination and optimization of BCTs used in mHealth apps for sleep. We found strong evidence that mHealth apps are effective in improving sleep, and the potential reasons for the lack of adverse sleep outcome reporting are discussed. We found evidence that the type of BCTs used in mHealth apps for sleep differed from other health outcomes, although more research is needed to understand how BCTs can be implemented effectively to improve sleep using mHealth and the mechanisms of action through which they are effective (eg, self-efficacy, social norms, and attitudes).

摘要

背景

使用行为改变技术(BCT)针对健康行为的移动健康(mHealth)应用程序已成功促进了健康行为;然而,它们在睡眠方面的功效尚不清楚。一些研究表明,mHealth 可以成功促进睡眠,而也有报告称睡眠应用程序可能会产生不良影响,并导致人们对获得完美睡眠产生不健康的痴迷。

目的

本研究旨在报告和描述 mHealth 应用程序在睡眠方面使用行为改变技术的情况,并提出以下研究问题:睡眠应用程序平均使用了多少个 BCT,这与它们对睡眠结果的影响有关吗?睡眠应用程序中是否更频繁地使用了某些 BCT,这与它们对睡眠结果的影响有关吗?当区分睡眠的维度和测量时,mHealth 应用程序干预对睡眠的影响是否会改变?

方法

我们按照 PRISMA(系统评价和荟萃分析的首选报告项目)指南进行了系统评价,以审查 2010 年至 2020 年间发表的关于 mHealth 应用程序干预睡眠的文章。

结果

共有 12 项研究符合入选标准。大多数研究报告了积极的睡眠结果,没有报告负面效果。睡眠质量是最常见的睡眠维度。所有应用程序都使用主观的睡眠测量方法,而客观的测量方法通常也会进行评估,但很少作为结果的一部分进行报告。使用的 BCT 平均数量为 7.67(SD 2.32;范围 3-11),共 16 个。在这 12 项研究中,最常用的 BCT 是反馈和监测(n=11,92%)、塑造知识(n=11,92%)、目标和计划(n=10,83%)和前因(n=10,83%),而最不常用的是计划后果(n=0,0%)、自我信念(n=0,0%)和隐蔽学习(n=0,0%)。大多数应用程序使用了一组相似的 BCT,但不幸的是,当研究报告了更积极的结果时,我们无法区分哪些 BCT 存在。

结论

本研究描述了睡眠应用程序的同行评议文献,并为进一步检查和优化 mHealth 应用程序中用于睡眠的行为改变技术提供了基础。我们有强有力的证据表明,mHealth 应用程序在改善睡眠方面非常有效,并且讨论了缺乏不良睡眠结果报告的潜在原因。我们发现,mHealth 应用程序中用于睡眠的 BCT 类型与其他健康结果不同,尽管需要更多的研究来了解如何使用 mHealth 有效地实施 BCT 来改善睡眠,以及它们通过何种机制发挥作用(例如,自我效能、社会规范和态度)。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3367/9132368/bf220d373e34/mhealth_v10i4e33527_fig1.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验