| Literature DB >> 25098687 |
Aiguo Wang1, Ning An, Xin Lu, Hongtu Chen, Changqun Li, Sue Levkoff.
Abstract
BACKGROUND: There are several mobile apps that offer tools for disease prevention and management among older adults, and promote health behaviors that could potentially reduce or delay the onset of disease. A classification scheme that categorizes apps could be useful to both older adult app users and app developers.Entities:
Keywords: Precede-Proceed Model (PPM); app; health care process; mHealth; management; mental health; physical health; prevention
Year: 2014 PMID: 25098687 PMCID: PMC4114434 DOI: 10.2196/mhealth.2877
Source DB: PubMed Journal: JMIR Mhealth Uhealth ISSN: 2291-5222 Impact factor: 4.773
Figure 1Proposed scheme for apps classification.
Mobile app functions in relation to PPM.
| Mobile apps | Features | Core values |
| Predisposing apps | Provide health information to impact health perceptions, health beliefs, values, or attitudes toward behavior change (eg, providing information on risks of diabetes, including obesity). | Promoting correct perceptions about the relation between lifestyle behaviors and the development of chronic disease, as well as about the value of self-management in delaying onset of disease progression and functional loss. |
| Enabling apps | Teach a skill (eg, how to monitor blood pressure), provide a service; record/track behaviors (eg, an app that records blood pressure values). | Providing useful and direct help to enable people to do something. |
| Reinforcing apps | Interface with online community using a social network site; provide encouragement from trainers/coaches; evaluate users’ self-monitoring (eg, give an evaluation based on blood pressure values). | Strengthening behaviors through interactions, typically positive feedback; emphasis on support through interaction with users. |
Figure 2Selection of apps sample in August 2012.
Figure 3Selection of apps sample in August 2011.
Figure 4Selection of apps sample in June 2011.
Study sample (1) coding results.
| Coding scheme | June 2011 | August 2011 | August 2012 |
| Study sample | 26 | 45 | 48 |
| Physical-related apps, n (%) | 21/26 (80.8) | 29/45 (64.4) | 31/48 (64.6) |
| Mental-related apps, n (%) | 9/26 (34.6) | 21/45 (46.7) | 17/48 (35.4) |
| Prevention-related apps, n (%) | 2/26 (7.7) | 7/45 (15.6) | 6/48 (12.5) |
| Management-related apps, n (%) | 24/26 (92.3) | 41/45 (91.1) | 44/48 (91.7) |
| Predisposing-related apps, n (%) | 2/26 (7.7) | 4/45 (8.9) | 4/48 (8.3) |
| Enabling-related apps, n (%) | 26/26 (100) | 43/45 (95.6) | 45/48 (93.8) |
| Reinforcing-related apps, n (%) | 8/26 (30.7) | 8/45 (17.8) | 4/48 (8.3) |
| Predisposing-enabling-reinforcing apps, n (%) | 2/26 (7.7) | 0/45 (0.0) | 0/48 (0.0) |
Study sample (2) coding results.
| Coding scheme | June 2011 | August 2011 | August 2012 |
| Physical-prevention-predisposing, n (%) | 0/21 (0.0) | 1/29 (3.4) | 1/31 (3.2) |
| Physical-prevention-enabling, n (%) | 1/21 (4.8) | 5/29 (17.2) | 5/31 (16.1) |
| Physical-prevention-reinforcing, n (%) | 0/21 (0.0) | 2/29 (6.9) | 2/31 (6.5) |
| Physical-management-predisposing, n (%) | 2/21 (9.5) | 1/29 (3.4) | 1/31 (3.2) |
| Physical-management-enabling, n (%) | 20/21 (95.2) | 25/29 (86.2) | 31/31 (100) |
| Physical-management-reinforcing, n (%) | 8/21 (38.1) | 6/29 (20.7) | 4/31 (12.9) |
| Mental-prevention-predisposing, n (%) | 0/9 (0.0) | 0/21 (0.0) | 0/17 (0.0) |
| Mental-prevention-enabling, n (%) | 1/9 (11.1) | 4/21 (19.0) | 2/17 (11.8) |
| Mental-prevention-reinforcing, n (%) | 0/9 (0.0) | 1/21 (4.8) | 1/17 (5.9) |
| Mental-management-predisposing, n (%) | 0/9 (0.0) | 1/21 (4.8) | 3/17 (17.6) |
| Mental-management-enabling, n (%) | 8/9 (88.9) | 19/21 (90.5) | 16/17 (94.1) |
| Mental-management-reinforcing, n (%) | 0/9 (0.0) | 3/21 (14.3) | 2/17 (11.8) |