A Classification Scheme for Analyzing Mobile Apps Used to Prevent and Manage Disease in Late Life
BackgroundThere 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 o...
Main Authors: | , , , , , |
---|---|
Format: | Article |
Language: | English |
Published: |
JMIR Publications
2014-02-01
|
Series: | JMIR mHealth and uHealth |
Online Access: | http://mhealth.jmir.org/2014/1/e6/ |
id |
doaj-bd6265f2a4244028a837430efc9be524 |
---|---|
record_format |
Article |
spelling |
doaj-bd6265f2a4244028a837430efc9be5242021-05-02T19:27:55ZengJMIR PublicationsJMIR mHealth and uHealth2291-52222014-02-0121e610.2196/mhealth.2877A Classification Scheme for Analyzing Mobile Apps Used to Prevent and Manage Disease in Late LifeWang, AiguoAn, NingLu, XinChen, HongtuLi, ChangqunLevkoff, Sue BackgroundThere 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. ObjectiveThe objective of our study was to build and evaluate the effectiveness of a classification scheme that classifies mobile apps available for older adults in the “Health & Fitness” category of the iTunes App Store. MethodsWe constructed a classification scheme for mobile apps according to three dimensions: (1) the Precede-Proceed Model (PPM), which classifies mobile apps in terms of predisposing, enabling, and reinforcing factors for behavior change; (2) health care process, specifically prevention versus management of disease; and (3) health conditions, including physical health and mental health. Content analysis was conducted by the research team on health and fitness apps designed specifically for older adults, as well as those applicable to older adults, released during the months of June and August 2011 and August 2012. Face validity was assessed by a different group of individuals, who were not related to the study. A reliability analysis was conducted to confirm the accuracy of the coding scheme of the sample apps in this study. ResultsAfter applying sample inclusion and exclusion criteria, a total of 119 apps were included in the study sample, of which 26/119 (21.8%) were released in June 2011, 45/119 (37.8%) in August 2011, and 48/119 (40.3%) in August 2012. Face validity was determined by interviewing 11 people, who agreed that this scheme accurately reflected the nature of this application. The entire study sample was successfully coded, demonstrating satisfactory inter-rater reliability by two independent coders (95.8% initial concordance and 100% concordance after consensus was reached). The apps included in the study sample were more likely to be used for the management of disease than prevention of disease (109/119, 91.6% vs 15/119, 12.6%). More apps contributed to physical health rather than mental health (81/119, 68.1% vs 47/119, 39.5%). Enabling apps (114/119, 95.8%) were more common than reinforcing (20/119, 16.8%) or predisposing apps (10/119, 8.4%). ConclusionsThe findings, including face validity and inter-rater reliability, support the integrity of the proposed classification scheme for categorizing mobile apps for older adults in the “Health and Fitness” category available in the iTunes App Store. Using the proposed classification system, older adult app users would be better positioned to identify apps appropriate for their needs, and app developers would be able to obtain the distributions of available mobile apps for health-related concerns of older adults more easily.http://mhealth.jmir.org/2014/1/e6/ |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Wang, Aiguo An, Ning Lu, Xin Chen, Hongtu Li, Changqun Levkoff, Sue |
spellingShingle |
Wang, Aiguo An, Ning Lu, Xin Chen, Hongtu Li, Changqun Levkoff, Sue A Classification Scheme for Analyzing Mobile Apps Used to Prevent and Manage Disease in Late Life JMIR mHealth and uHealth |
author_facet |
Wang, Aiguo An, Ning Lu, Xin Chen, Hongtu Li, Changqun Levkoff, Sue |
author_sort |
Wang, Aiguo |
title |
A Classification Scheme for Analyzing Mobile Apps Used to Prevent and Manage Disease in Late Life |
title_short |
A Classification Scheme for Analyzing Mobile Apps Used to Prevent and Manage Disease in Late Life |
title_full |
A Classification Scheme for Analyzing Mobile Apps Used to Prevent and Manage Disease in Late Life |
title_fullStr |
A Classification Scheme for Analyzing Mobile Apps Used to Prevent and Manage Disease in Late Life |
title_full_unstemmed |
A Classification Scheme for Analyzing Mobile Apps Used to Prevent and Manage Disease in Late Life |
title_sort |
classification scheme for analyzing mobile apps used to prevent and manage disease in late life |
publisher |
JMIR Publications |
series |
JMIR mHealth and uHealth |
issn |
2291-5222 |
publishDate |
2014-02-01 |
description |
BackgroundThere 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.
ObjectiveThe objective of our study was to build and evaluate the effectiveness of a classification scheme that classifies mobile apps available for older adults in the “Health & Fitness” category of the iTunes App Store.
MethodsWe constructed a classification scheme for mobile apps according to three dimensions: (1) the Precede-Proceed Model (PPM), which classifies mobile apps in terms of predisposing, enabling, and reinforcing factors for behavior change; (2) health care process, specifically prevention versus management of disease; and (3) health conditions, including physical health and mental health. Content analysis was conducted by the research team on health and fitness apps designed specifically for older adults, as well as those applicable to older adults, released during the months of June and August 2011 and August 2012. Face validity was assessed by a different group of individuals, who were not related to the study. A reliability analysis was conducted to confirm the accuracy of the coding scheme of the sample apps in this study.
ResultsAfter applying sample inclusion and exclusion criteria, a total of 119 apps were included in the study sample, of which 26/119 (21.8%) were released in June 2011, 45/119 (37.8%) in August 2011, and 48/119 (40.3%) in August 2012. Face validity was determined by interviewing 11 people, who agreed that this scheme accurately reflected the nature of this application. The entire study sample was successfully coded, demonstrating satisfactory inter-rater reliability by two independent coders (95.8% initial concordance and 100% concordance after consensus was reached). The apps included in the study sample were more likely to be used for the management of disease than prevention of disease (109/119, 91.6% vs 15/119, 12.6%). More apps contributed to physical health rather than mental health (81/119, 68.1% vs 47/119, 39.5%). Enabling apps (114/119, 95.8%) were more common than reinforcing (20/119, 16.8%) or predisposing apps (10/119, 8.4%).
ConclusionsThe findings, including face validity and inter-rater reliability, support the integrity of the proposed classification scheme for categorizing mobile apps for older adults in the “Health and Fitness” category available in the iTunes App Store. Using the proposed classification system, older adult app users would be better positioned to identify apps appropriate for their needs, and app developers would be able to obtain the distributions of available mobile apps for health-related concerns of older adults more easily. |
url |
http://mhealth.jmir.org/2014/1/e6/ |
work_keys_str_mv |
AT wangaiguo aclassificationschemeforanalyzingmobileappsusedtopreventandmanagediseaseinlatelife AT anning aclassificationschemeforanalyzingmobileappsusedtopreventandmanagediseaseinlatelife AT luxin aclassificationschemeforanalyzingmobileappsusedtopreventandmanagediseaseinlatelife AT chenhongtu aclassificationschemeforanalyzingmobileappsusedtopreventandmanagediseaseinlatelife AT lichangqun aclassificationschemeforanalyzingmobileappsusedtopreventandmanagediseaseinlatelife AT levkoffsue aclassificationschemeforanalyzingmobileappsusedtopreventandmanagediseaseinlatelife AT wangaiguo classificationschemeforanalyzingmobileappsusedtopreventandmanagediseaseinlatelife AT anning classificationschemeforanalyzingmobileappsusedtopreventandmanagediseaseinlatelife AT luxin classificationschemeforanalyzingmobileappsusedtopreventandmanagediseaseinlatelife AT chenhongtu classificationschemeforanalyzingmobileappsusedtopreventandmanagediseaseinlatelife AT lichangqun classificationschemeforanalyzingmobileappsusedtopreventandmanagediseaseinlatelife AT levkoffsue classificationschemeforanalyzingmobileappsusedtopreventandmanagediseaseinlatelife |
_version_ |
1724163884145704960 |