评估应用程序推荐和持续参与的数字表型:队列研究。

IF 2 Q3 HEALTH CARE SCIENCES & SERVICES JMIR Formative Research Pub Date : 2024-11-19 DOI:10.2196/62725
Bridget Dwyer, Matthew Flathers, James Burns, Jane Mikkelson, Elana Perlmutter, Kelly Chen, Nanik Ram, John Torous
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引用次数: 0

摘要

背景:心理健康应用程序的低参与度继续限制其影响力。通过确保患者使用的应用程序最适合他们的心理健康需求,帮助患者匹配合适应用程序的新方法可能会提高参与度:本研究旨在试验如何利用智能手机传感器的数据来推断症状、行为和功能结果的数字表型,从而将患者与心理健康应用程序相匹配,并提高参与度:使用 mindLAMP 应用程序(贝斯以色列女执事医疗中心)收集数字表型数据 1 周后,参与者被随机分配到数字表型组,根据这些数据接受反馈和建议,从 4 个预先确定的心理健康应用程序(与情绪、焦虑、睡眠和健身有关)中选择一个;或分配到对照组,选择相同的应用程序,但不接受任何反馈或建议。所有参与者均使用所选应用程序 4 周,并记录了大量参与度指标,包括客观筛选时间测量、自我报告参与度测量和数字工作联盟量表得分:共有 82 名参与者参加了研究,其中 17 人(21%)退出了数字表型分析组,18 人(22%)退出了对照组。两组参与者中,很少有人选择或被推荐使用失眠或健身应用程序。大多数人(39/47,83%)使用了抑郁或焦虑应用程序。以客观屏幕时间和数字工作联盟量表得分衡量的参与度在数字表型组中更高。自我报告的应用程序使用指标与客观指标之间没有相关性。定性结果强调了习惯养成对持续使用应用程序的重要性:结论:研究结果表明,数字表型应用推荐是可行的,并且可以提高参与度。这种方法除了适用于本试验中选定的 4 款应用程序外,还适用于其他应用程序,而且在实际使用中也很实用,因为本研究是在没有任何补偿或外部激励的情况下进行的,而补偿或外部激励可能会使结果产生偏差。数字表型技术的进步可能会使这种应用推荐方法更加个性化,从而引起更大的兴趣。
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Assessing Digital Phenotyping for App Recommendations and Sustained Engagement: Cohort Study.

Background: Low engagement with mental health apps continues to limit their impact. New approaches to help match patients to the right app may increase engagement by ensuring the app they are using is best suited to their mental health needs.

Objective: This study aims to pilot how digital phenotyping, using data from smartphone sensors to infer symptom, behavioral, and functional outcomes, could be used to match people to mental health apps and potentially increase engagement.

Methods: After 1 week of collecting digital phenotyping data with the mindLAMP app (Beth Israel Deaconess Medical Center), participants were randomly assigned to the digital phenotyping arm, receiving feedback and recommendations based on those data to select 1 of 4 predetermined mental health apps (related to mood, anxiety, sleep, and fitness), or the control arm, selecting the same apps but without any feedback or recommendations. All participants used their selected app for 4 weeks with numerous metrics of engagement recorded, including objective screentime measures, self-reported engagement measures, and Digital Working Alliance Inventory scores.

Results: A total of 82 participants enrolled in the study; 17 (21%) dropped out of the digital phenotyping arm and 18 (22%) dropped out from the control arm. Across both groups, few participants chose or were recommended the insomnia or fitness app. The majority (39/47, 83%) used a depression or anxiety app. Engagement as measured by objective screen time and Digital Working Alliance Inventory scores were higher in the digital phenotyping arm. There was no correlation between self-reported and objective metrics of app use. Qualitative results highlighted the importance of habit formation in sustained app use.

Conclusions: The results suggest that digital phenotyping app recommendation is feasible and may increase engagement. This approach is generalizable to other apps beyond the 4 apps selected for use in this pilot, and practical for real-world use given that the study was conducted without any compensation or external incentives that may have biased results. Advances in digital phenotyping will likely make this method of app recommendation more personalized and thus of even greater interest.

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来源期刊
JMIR Formative Research
JMIR Formative Research Medicine-Medicine (miscellaneous)
CiteScore
2.70
自引率
9.10%
发文量
579
审稿时长
12 weeks
期刊最新文献
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