Institute of Population Health Sciences, National Health Research Institutes, Miaoli, Taiwan.
Department of Psychiatry, National Taiwan University Hospital, Taipei, Taiwan.
JMIR Mhealth Uhealth. 2020 Nov 26;8(11):e16309. doi: 10.2196/16309.
A mobile app generates passive data, such as GPS data traces, without any direct involvement from the user. These passive data have transformed the manner of traditional assessments that require active participation from the user. Passive data collection is one of the most important core techniques for mobile health development because it may promote user retention, which is a unique characteristic of a software medical device.
The primary aim of this study was to quantify user retention for the "Staff Hours" app using survival analysis. The secondary aim was to compare user retention between passive data and active data, as well as factors associated with the survival rates of user retention.
We developed an app called "Staff Hours" to automatically calculate users' work hours through GPS data (passive data). "Staff Hours" not only continuously collects these passive data but also sends an 11-item mental health survey to users monthly (active data). We applied survival analysis to compare user retention in the collection of passive and active data among 342 office workers from the "Staff Hours" database. We also compared user retention on Android and iOS platforms and examined the moderators of user retention.
A total of 342 volunteers (224 men; mean age 33.8 years, SD 7.0 years) were included in this study. Passive data had higher user retention than active data (P=.011). In addition, user retention for passive data collected via Android devices was higher than that for iOS devices (P=.015). Trainee physicians had higher user retention for the collection of active data than trainees from other occupations, whereas no significant differences between these two groups were observed for the collection of passive data (P=.700).
Our findings demonstrated that passive data collected via Android devices had the best user retention for this app that records GPS-based work hours.
移动应用会生成被动数据,例如 GPS 数据轨迹,而无需用户的直接参与。这些被动数据改变了传统评估方式,因为传统评估需要用户的积极参与。被动数据收集是移动健康发展的最重要核心技术之一,因为它可能会提高用户留存率,这是软件医疗设备的独特特征。
本研究的主要目的是使用生存分析来量化“工作时间”应用程序的用户留存率。次要目的是比较被动数据和主动数据的用户留存率,以及与用户留存率生存率相关的因素。
我们开发了一个名为“工作时间”的应用程序,通过 GPS 数据(被动数据)自动计算用户的工作时间。“工作时间”不仅会持续收集这些被动数据,还会每月向用户发送 11 项心理健康调查(主动数据)。我们在“工作时间”数据库中的 342 名上班族中应用生存分析来比较被动和主动数据的用户留存率。我们还比较了 Android 和 iOS 平台上的用户留存率,并检查了用户留存率的调节因素。
共有 342 名志愿者(224 名男性;平均年龄 33.8 岁,标准差 7.0 岁)参与了本研究。与主动数据相比,被动数据的用户留存率更高(P=.011)。此外,通过 Android 设备收集的被动数据的用户留存率高于通过 iOS 设备收集的被动数据(P=.015)。与其他职业的受训者相比,实习医生在收集主动数据方面的用户留存率更高,而在收集被动数据方面,这两个群体之间没有显著差异(P=.700)。
我们的研究结果表明,对于记录基于 GPS 的工作时间的这款应用程序,通过 Android 设备收集的被动数据具有最佳的用户留存率。