Abstract

BackgroundSmartphone location data can be used for observational health studies (to determine participant exposure or behavior) or to deliver a location-based health intervention. However, missing location data are more common when using smartphones compared to when using research-grade location trackers. Missing location data can affect study validity and intervention safety.ObjectiveThe objective of this study was to investigate the distribution of missing location data and its predictors to inform design, analysis, and interpretation of future smartphone (observational and interventional) studies.MethodsWe analyzed hourly smartphone location data collected from 9665 research participants on 488,400 participant days in a national smartphone study investigating the association between weather conditions and chronic pain in the United Kingdom. We used a generalized mixed-effects linear model with logistic regression to identify whether a successfully recorded geolocation was associated with the time of day, participants’ time in study, operating system, time since previous survey completion, participant age, sex, and weather sensitivity.ResultsFor most participants, the app collected a median of 2 out of a maximum of 24 locations (1760/9665, 18.2% of participants), no location data (1664/9665, 17.2%), or complete location data (1575/9665, 16.3%). The median locations per day differed by the operating system: participants with an Android phone most often had complete data (a median of 24/24 locations) whereas iPhone users most often had a median of 2 out of 24 locations. The odds of a successfully recorded location for Android phones were 22.91 times higher than those for iPhones (95% CI 19.53-26.87). The odds of a successfully recorded location were lower during weekends (odds ratio [OR] 0.94, 95% CI 0.94-0.95) and nights (OR 0.37, 95% CI 0.37-0.38), if time in study was longer (OR 0.99 per additional day in study, 95% CI 0.99-1.00), and if a participant had not used the app recently (OR 0.96 per additional day since last survey entry, 95% CI 0.96-0.96). Participant age and sex did not predict missing location data.ConclusionsThe predictors of missing location data reported in our study could inform app settings and user instructions for future smartphone (observational and interventional) studies. These predictors have implications for analysis methods to deal with missing location data, such as imputation of missing values or case-only analysis. Health studies using smartphones for data collection should assess context-specific consequences of high missing data, especially among iPhone users, during the night and for disengaged participants.

Highlights

  • Smartphones offer opportunities to collect sensor data frequently from people’s daily lives and to determine their exposures or behaviors

  • The odds of a successfully recorded location for Android phones were 22.91 times higher than those for iPhones

  • The odds of a successfully recorded location were lower during weekends and nights, if time in study was longer, and if a participant had not used the app recently

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Summary

Introduction

Smartphones offer opportunities to collect sensor data frequently from people’s daily lives and to determine their exposures or behaviors. Smartphone location data can be collected frequently (eg, daily, hourly, continuously) over sustained periods of time [1] Studies have used these data to quantify exposure to weather [2,3], air pollution [4], vicinity to tobacco outlets [5], or to deliver context-aware messages when participants visited health facilities [6,7]. In large-scale epidemiological studies, location data are often collected for longer periods, less frequently, and from participants’ own smartphones In these cases, missing data are more common than when using research-grade location trackers [4,10,11]. In observational research studies, missing data can result in the loss of power, selection bias, and misclassification of participants’ exposure or behavior [12] In trials, it could hamper safe and effective delivery of context-aware interventions that rely on location data [13]. Missing location data can affect study validity and intervention safety

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