| Literature DB >> 33605884 |
Alexandra A Portenhauser1, Yannik Terhorst1,2, Dana Schultchen3, Lasse B Sander4, Michael D Denkinger5, Michael Stach6, Natalie Waldherr5, Dhayana Dallmeier5,7, Harald Baumeister1, Eva-Maria Messner1.
Abstract
BACKGROUND: Through the increasingly aging population, the health care system is confronted with various challenges such as expanding health care costs. To manage these challenges, mobile apps may represent a cost-effective and low-threshold approach to support older adults.Entities:
Keywords: MARS; MARS-G; aging; apps; mHealth; mobile apps; older adults
Year: 2021 PMID: 33605884 PMCID: PMC8081158 DOI: 10.2196/23313
Source DB: PubMed Journal: JMIR Aging ISSN: 2561-7605
Mobile app categories for older adults with exemplary topics according to Cunha et al [42].
| Categories | Exemplary topics |
| Diagnostic | Cognitive impairments, physical and mental illnesses |
| History | Monitoring of vital parameters such as blood pressure, and organization of daily activities |
| Improve | Relaxation, speech-to-text, text-to-speech, risk assessment, magnifying glass, medication recognition, pictogram-to-speech, communication portals, and social networks |
| Informative | Healthy living, education, and psychoeducation about mental and physical illnesses |
| Interface | Mobile apps for conversion to a user-friendly interface |
| Measurement | Physical activity, pedometer, and GPS tracking |
| Protection | Drug reminder, help requests, and localization |
| Simulation | Simulation of diseases, impairments, or appearance |
| Trainer | Memory, relaxation, logical thinking, fitness, and cognitive speed |
| Tutorial | Accident rehabilitation, sign language, improvement of self-esteem, and improvement of communication |
Figure 1Flowchart of the mobile app selection process.
Figure 2Frequency of objectives of mobile apps for older adults. Multiple naming of objectives for one mobile app was possible. Data are given for n=83 mobile apps.
Figure 3Frequency of methods used in mobile apps for older adults. Multiple naming of different methods in one mobile app was possible. Data are given for n=83 mobile apps.
Privacy and security measures found in mobile apps.
| Data protection precaution | Valuea, n (%) |
| Allows password use | 22 (27) |
| Requires a log-in | 20 (24) |
| Has a privacy statement | 28 (34) |
| Requires active confirmation of a consent form | 14 (17) |
| Information on dealing with the data | 14 (17) |
| Notes on financing/conflict of interest | 14 (17) |
| Contact/contact person/imprint | 30 (36) |
| Data transmission security | 4 (5) |
| Emergency functions available | 6 (7) |
| Security strategies for mobile phone loss | 20 (24) |
| Other security strategies | 0 (0) |
aMultiple naming of different data protection precautions for one mobile app are possible.
Figure 4Graphical representation of the distribution of the Mobile Application Rating Scale (German version) overall rating, and the four subdimensions. The median, the interquartile distance as well as the range and outliners were given (n=83 mobile apps).
Correlations between the mean values of the four MARS-G subdimensions, overall rating and user star rating.
| Characteristics | MARS-Ga | ||||||||||
| Engagement | Functionality | Aesthetics | Information | Overall rating | |||||||
|
| |||||||||||
| Engagement | —b | — | — | — | — | — | — | — | — | — | |
| Functionality | .52 | <.001 | — | — | — | — | — | — | — | — | |
| Aesthetics | .62 | <.001 | .54 | <.001 | — | — | — | — | — | — | |
| Information | .55 | <.001 | .33 | .002 | .58 | <.001 | — | — | — | — | |
| Overall rating | .83 | <.001 | .68 | <.001 | .85 | <.001 | .83 | <.001 | — | — | |
| User star ratingc | .27 | .03 | .11 | .38 | .19 | .13 | .32 | .01 | .30 | .01 | |
aMARS-G: German version of the Mobile Application Rating Scale.
bNot applicable.
cCorrelations were calculated with 69 mobile apps since the user star rating was missing for 14 apps.