Niemeijer Koen, Mestdagh Merijn, Verdonck Stijn, Meers Kristof, Kuppens Peter
Faculty of Psychology and Educational Sciences, Katholieke Universiteit Leuven, Leuven, Belgium.
JMIR Form Res. 2023 Mar 7;7:e43296. doi: 10.2196/43296.
The experience sampling methodology (ESM) has long been considered as the gold standard for gathering data in everyday life. In contrast, current smartphone technology enables us to acquire data that are much richer, more continuous, and unobtrusive than is possible via ESM. Although data obtained from smartphones, known as mobile sensing, can provide useful information, its stand-alone usefulness is limited when not combined with other sources of information such as data from ESM studies. Currently, there are few mobile apps available that allow researchers to combine the simultaneous collection of ESM and mobile sensing data. Furthermore, such apps focus mostly on passive data collection with only limited functionality for ESM data collection.
In this paper, we presented and evaluated the performance of m-Path Sense, a novel, full-fledged, and secure ESM platform with background mobile sensing capabilities.
To create an app with both ESM and mobile sensing capabilities, we combined m-Path, a versatile and user-friendly platform for ESM, with the Copenhagen Research Platform Mobile Sensing framework, a reactive cross-platform framework for digital phenotyping. We also developed an R package, named mpathsenser, which extracts raw data to an SQLite database and allows the user to link and inspect data from both sources. We conducted a 3-week pilot study in which we delivered ESM questionnaires while collecting mobile sensing data to evaluate the app's sampling reliability and perceived user experience. As m-Path is already widely used, the ease of use of the ESM system was not investigated.
Data from m-Path Sense were submitted by 104 participants, totaling 69.51 GB (430.43 GB after decompression) or approximately 37.50 files or 31.10 MB per participant per day. After binning accelerometer and gyroscope data to 1 value per second using summary statistics, the entire SQLite database contained 84,299,462 observations and was 18.30 GB in size. The reliability of sampling frequency in the pilot study was satisfactory for most sensors, based on the absolute number of collected observations. However, the relative coverage rate-the ratio between the actual and expected number of measurements-was below its target value. This could mostly be ascribed to gaps in the data caused by the operating system pushing away apps running in the background, which is a well-known issue in mobile sensing. Finally, some participants reported mild battery drain, which was not considered problematic for the assessed participants' perceived user experience.
To better study behavior in everyday life, we developed m-Path Sense, a fusion of both m-Path for ESM and Copenhagen Research Platform Mobile Sensing. Although reliable passive data collection with mobile phones remains challenging, it is a promising approach toward digital phenotyping when combined with ESM.
经验取样法(ESM)长期以来一直被视为收集日常生活数据的黄金标准。相比之下,当前的智能手机技术使我们能够获取比通过经验取样法更丰富、更连续且更不引人注意的数据。尽管从智能手机获取的数据(即移动传感数据)能提供有用信息,但如果不与其他信息源(如经验取样法研究的数据)相结合,其单独的用途是有限的。目前,很少有移动应用程序允许研究人员同时收集经验取样法和移动传感数据。此外,此类应用程序大多侧重于被动数据收集,经验取样法数据收集功能有限。
在本文中,我们展示并评估了m-Path Sense的性能,这是一个具有背景移动传感功能的新型、功能完备且安全的经验取样法平台。
为创建一个兼具经验取样法和移动传感功能的应用程序,我们将m-Path(一个通用且用户友好的经验取样法平台)与哥本哈根研究平台移动传感框架(一个用于数字表型分析的反应式跨平台框架)相结合。我们还开发了一个名为mpathsenser的R包,它将原始数据提取到SQLite数据库,并允许用户链接和检查来自两个数据源的数据。我们进行了一项为期3周的试点研究,在收集移动传感数据的同时发送经验取样法问卷,以评估该应用程序的采样可靠性和用户感知体验。由于m-Path已被广泛使用,因此未对经验取样法系统的易用性进行调查。
104名参与者提交了来自m-Path Sense的数据,总计69.51GB(解压后为430.43GB),即每位参与者每天约37.50个文件或31.10MB。使用汇总统计将加速度计和陀螺仪数据按每秒1个值进行分箱后,整个SQLite数据库包含84,299,462条观测数据,大小为18.30GB。基于收集到的观测数据的绝对数量,试点研究中大多数传感器的采样频率可靠性令人满意。然而,相对覆盖率(实际测量次数与预期测量次数之比)低于其目标值。这主要可归因于操作系统将后台运行的应用程序推开导致的数据间隙,这是移动传感中一个众所周知的问题。最后,一些参与者报告有轻微的电池电量消耗,但这对评估参与者的用户感知体验而言并非问题。
为了更好地研究日常生活中的行为,我们开发了m-Path Sense,它融合了用于经验取样法的m-Path和哥本哈根研究平台移动传感。尽管通过手机进行可靠的被动数据收集仍然具有挑战性,但与经验取样法相结合时,它是数字表型分析的一种有前景的方法。