Journal of Medical Internet Research (Aug 2015)

App Usage Factor: A Simple Metric to Compare the Population Impact of Mobile Medical Apps

  • Lewis, Thomas Lorchan,
  • Wyatt, Jeremy C

DOI
https://doi.org/10.2196/jmir.4284
Journal volume & issue
Vol. 17, no. 8
p. e200

Abstract

Read online

BackgroundOne factor when assessing the quality of mobile apps is quantifying the impact of a given app on a population. There is currently no metric which can be used to compare the population impact of a mobile app across different health care disciplines. ObjectiveThe objective of this study is to create a novel metric to characterize the impact of a mobile app on a population. MethodsWe developed the simple novel metric, app usage factor (AUF), defined as the logarithm of the product of the number of active users of a mobile app with the median number of daily uses of the app. The behavior of this metric was modeled using simulated modeling in Python, a general-purpose programming language. Three simulations were conducted to explore the temporal and numerical stability of our metric and a simulated app ecosystem model using a simulated dataset of 20,000 apps. ResultsSimulations confirmed the metric was stable between predicted usage limits and remained stable at extremes of these limits. Analysis of a simulated dataset of 20,000 apps calculated an average value for the app usage factor of 4.90 (SD 0.78). A temporal simulation showed that the metric remained stable over time and suitable limits for its use were identified. ConclusionsA key component when assessing app risk and potential harm is understanding the potential population impact of each mobile app. Our metric has many potential uses for a wide range of stakeholders in the app ecosystem, including users, regulators, developers, and health care professionals. Furthermore, this metric forms part of the overall estimate of risk and potential for harm or benefit posed by a mobile medical app. We identify the merits and limitations of this metric, as well as potential avenues for future validation and research.