| Literature DB >> 26290093 |
Thomas Lorchan Lewis1, Jeremy C Wyatt.
Abstract
BACKGROUND: One 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.Entities:
Keywords: mHealth; medical app; medical informatics apps; metric; mobile app; mobile health; mobile phone; patient safety; population impact; risk assessment
Mesh:
Year: 2015 PMID: 26290093 PMCID: PMC4642395 DOI: 10.2196/jmir.4284
Source DB: PubMed Journal: J Med Internet Res ISSN: 1438-8871 Impact factor: 5.428
Models currently in use for assessing the impact of a mobile app on a given population.
| Assessment toola | Examples | Advantages | Disadvantages |
| Detailed app analytics | High level metrics such as active users, time spent on app, and ethnographic and epidemiological data | Gold standard in terms of data detail | Large volumes of data |
| mHealth studies [ | Numerous mHealth studies testing the validity of mobile apps for health care | Rigorous independent trials | Often focus on one specific app |
| Number of app downloads | Basic metric available from a number of sources | Can easily compare apps from different disciplines | Information not easily accessible |
| Educated guesswork | N/Ab | Minimal knowledge required to provide estimate | Not accurate or precise |
aAssessment tools are ranked in order of accuracy.
bNot applicable (N/A).
Key reasons for use of population impacts of mobile apps by stakeholders.
| Stakeholder | Reason for estimating app impact on population |
| Regulator | To estimate and compare the overall risks posed if the app is unsafe, and to decide on the appropriate regulatory measures |
| Guideline developer (eg, NICEa) | To understand the potential for population benefit from effective apps |
| App developer | To justify investment decisions |
| App users | May use the population impact as a surrogate indicator for quality |
| Clinicians advising users about the app | May use the population impact as a surrogate indicator for quality |
| Health insurers and funding schemes | To understand the likely payback from approving reimbursement of the cost of the app |
| Health economists | As part of an estimate of cost effectiveness of the app |
| App stores | Could utilize AUFbas part of their ranking algorithm |
aNational Institute for Health and Care Excellence (NICE).
bApp usage factor (AUF).
Initial data used to model the characteristics of the AUF as a function of time for a single mobile app.
| External ecosystem event | Day number |
|
|
|
| Initial market launch | 1e(No. of users initially set at 50) | -50 | 50 | 10-20 |
| Daily market fluctuation | All days other than those below | -50 | 50 | 10-20 |
| Positive media publicity | 100-110 | 50 | 500 | 10-20 |
| Negative media publicity | 350-360 | -500 | 50 | 10-20 |
| App version/operating system update | 501f(No. of users reset to 500) | -50 | 50 | 10-20 |
| Users upgrade to latest version | 500-650 | -20 | 250 | 10-20 |
aRange for minimum number of active users of a mobile app (A ).
bRange for maximum number of active users of a mobile app (A ).
cRange for minimum median number of daily uses of an app (D ).
dRange for maximum median number of daily uses of an app (D ).
eInitial number of active users of a mobile app (A ) on day 1 (initial market launch)=50.
fAt day 501, the number of active users was reset to 500 to simulate app version/operating system update.
Figure 1A contour plot illustrating the stability of the app usage factor as a function of Au and Du, including determination of metric limits.
Figure 2A combined scatterplot (input data, left) and histogram (relative frequency of both Au and Du, right) showing the initial sample dataset of 20,000 mobile medical apps.
Figure 3A histogram showing the frequency distribution of the app usage factor for the sample dataset of 20,000 simulated mobile medical apps, including mean and standard deviation for the data.
Equivalent population impact of an app based on its corresponding AUF.
| App usage factor (AUF) | Equivalent active user daily actions ( |
| 6 | 1,000,000 |
| 5 | 100,000 |
| 4 | 10,000 |
| 3 | 1000 |
| 2 | 100 |
aNumber of active users of a mobile app (A ).
bMedian number of daily uses of an app (D ).
Figure 4A graph showing app usage factor as a function of time for a single mobile app which is subject to a number of simulated app ecosystem events.