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针对超重或肥胖儿童及其父母的 Aim2Be 移动健康干预措施:揭示数字表型的以人为中心分析。

The Aim2Be mHealth Intervention for Children With Overweight or Obesity and Their Parents: Person-Centered Analyses to Uncover Digital Phenotypes.

机构信息

School of Population and Public Health, University of British Columbia, BC Children's Hospital Research Institute, Vancouver, BC, Canada.

School of Nutrition Sciences, Faculty of Health Sciences, The University of Ottawa., Ottawa, ON, Canada.

出版信息

J Med Internet Res. 2022 Jun 22;24(6):e35285. doi: 10.2196/35285.

Abstract

BACKGROUND

Despite the growing number of mobile health (mHealth) interventions targeting childhood obesity, few studies have characterized user typologies derived from individuals' patterns of interactions with specific app features (digital phenotypes).

OBJECTIVE

This study aims to identify digital phenotypes among 214 parent-child dyads who used the Aim2Be mHealth app as part of a randomized controlled trial conducted between 2019 and 2020, and explores whether participants' characteristics and health outcomes differed across phenotypes.

METHODS

Latent class analysis was used to identify distinct parent and child phenotypes based on their use of the app's behavioral, gamified, and social features over 3 months. Multinomial logistic regression models were used to assess whether the phenotypes differed by demographic characteristics. Covariate-adjusted mixed-effect models evaluated changes in BMI z scores (zBMI), diet, physical activity, and screen time across phenotypes.

RESULTS

Among parents, 5 digital phenotypes were identified: socially engaged (35/214, 16.3%), independently engaged (18/214, 8.4%) (socially and independently engaged parents are those who used mainly the social or the behavioral features of the app, respectively), fully engaged (26/214, 12.1%), partially engaged (32/214, 15%), and unengaged (103/214, 48.1%) users. Married parents were more likely to be fullyengaged than independently engaged (P=.02) or unengaged (P=.01) users. Socially engaged parents were older than fullyengaged (P=.02) and unengaged (P=.01) parents. The latent class analysis revealed 4 phenotypes among children: fully engaged (32/214, 15%), partially engaged (61/214, 28.5%), dabblers (42/214, 19.6%), and unengaged (79/214, 36.9%) users. Fully engaged children were younger than dabblers (P=.04) and unengaged (P=.003) children. Dabblers lived in higher-income households than fully and partiallyengaged children (P=.03 and P=.047, respectively). Fully engaged children were more likely to have fully engaged (P<.001) and partiallyengaged (P<.001) parents than unengaged children. Compared with unengaged children, fully and partiallyengaged children had decreased total sugar (P=.006 and P=.004, respectively) and energy intake (P=.03 and P=.04, respectively) after 3 months of app use. Partially engaged children also had decreased sugary beverage intake compared with unengaged children (P=.03). Similarly, children with fully engaged parents had decreased zBMI, whereas children with unengaged parents had increased zBMI over time (P=.005). Finally, children with independently engaged parents had decreased caloric intake, whereas children with unengaged parents had increased caloric intake over time (P=.02).

CONCLUSIONS

Full parent-child engagement is critical for the success of mHealth interventions. Further research is needed to understand program design elements that can affect participants' engagement in supporting behavior change.

TRIAL REGISTRATION

ClinicalTrials.gov NCT03651284; https://clinicaltrials.gov/ct2/show/NCT03651284.

INTERNATIONAL REGISTERED REPORT IDENTIFIER (IRRID): RR2-10.1186/s13063-020-4080-2.

摘要

背景

尽管针对儿童肥胖的移动健康(mHealth)干预措施越来越多,但很少有研究描述过从个体与特定应用程序功能(数字表型)的交互模式中得出的用户类型。

目的

本研究旨在通过使用 Aim2Be mHealth 应用程序的 214 对父母-子女对,识别数字表型,该研究于 2019 年至 2020 年期间进行了一项随机对照试验,并探讨了参与者的特征和健康结果是否因表型不同而有所不同。

方法

使用潜在类别分析,根据父母和儿童在 3 个月内使用应用程序的行为、游戏化和社交功能的情况,确定不同的父母和儿童表型。使用多项逻辑回归模型评估表型是否因人口统计学特征而不同。在调整协变量的混合效应模型中,评估了在不同表型中 BMI z 分数(zBMI)、饮食、身体活动和屏幕时间的变化。

结果

在父母中,确定了 5 种数字表型:社交活跃(35/214,16.3%)、独立活跃(18/214,8.4%)(社交活跃和独立活跃的父母分别主要使用应用程序的社交或行为功能)、完全活跃(26/214,12.1%)、部分活跃(32/214,15%)和不活跃(103/214,48.1%)用户。已婚父母比独立活跃(P=.02)或不活跃(P=.01)的用户更有可能是完全活跃的。社交活跃的父母比完全活跃(P=.02)和不活跃(P=.01)的父母年龄更大。潜在类别分析显示,儿童有 4 种表型:完全活跃(32/214,15%)、部分活跃(61/214,28.5%)、涉猎者(42/214,19.6%)和不活跃(79/214,36.9%)用户。完全活跃的儿童比涉猎者(P=.04)和不活跃的儿童(P=.003)年龄更小。涉猎者的家庭收入高于完全活跃和部分活跃的儿童(P=.03 和 P=.047,分别)。完全活跃的儿童比不活跃的儿童更有可能有完全活跃(P<.001)和部分活跃(P<.001)的父母。与不活跃的儿童相比,完全活跃和部分活跃的儿童在使用应用程序 3 个月后,总糖(P=.006 和 P=.004,分别)和能量摄入(P=.03 和 P=.04,分别)均减少。与不活跃的儿童相比,部分活跃的儿童摄入的含糖饮料也减少(P=.03)。同样,有完全活跃父母的儿童的 zBMI 降低,而有不活跃父母的儿童的 zBMI 随时间增加(P=.005)。最后,有独立活跃父母的儿童的热量摄入减少,而有不活跃父母的儿童的热量摄入随时间增加(P=.02)。

结论

父母和子女的完全参与对 mHealth 干预的成功至关重要。需要进一步研究以了解可能影响参与者参与支持行为改变的方案设计要素。

试验注册

ClinicalTrials.gov NCT03651284;https://clinicaltrials.gov/ct2/show/NCT03651284。

国际注册报告标识符(IRRID):RR2-10.1186/s13063-020-4080-2。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/edac/9221987/da47384ea3ed/jmir_v24i6e35285_fig1.jpg

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