Cargando…

A Library of Analytic Indicators to Evaluate Effective Engagement with Consumer mHealth Apps for Chronic Conditions: Scoping Review

BACKGROUND: There is mixed evidence to support current ambitions for mobile health (mHealth) apps to improve chronic health and well-being. One proposed explanation for this variable effect is that users do not engage with apps as intended. The application of analytics, defined as the use of data to...

Descripción completa

Detalles Bibliográficos
Autores principales: Pham, Quynh, Graham, Gary, Carrion, Carme, Morita, Plinio P, Seto, Emily, Stinson, Jennifer N, Cafazzo, Joseph A
Formato: Online Artículo Texto
Lenguaje:English
Publicado: JMIR Publications 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6356188/
https://www.ncbi.nlm.nih.gov/pubmed/30664463
http://dx.doi.org/10.2196/11941
_version_ 1783391473045078016
author Pham, Quynh
Graham, Gary
Carrion, Carme
Morita, Plinio P
Seto, Emily
Stinson, Jennifer N
Cafazzo, Joseph A
author_facet Pham, Quynh
Graham, Gary
Carrion, Carme
Morita, Plinio P
Seto, Emily
Stinson, Jennifer N
Cafazzo, Joseph A
author_sort Pham, Quynh
collection PubMed
description BACKGROUND: There is mixed evidence to support current ambitions for mobile health (mHealth) apps to improve chronic health and well-being. One proposed explanation for this variable effect is that users do not engage with apps as intended. The application of analytics, defined as the use of data to generate new insights, is an emerging approach to study and interpret engagement with mHealth interventions. OBJECTIVE: This study aimed to consolidate how analytic indicators of engagement have previously been applied across clinical and technological contexts, to inform how they might be optimally applied in future evaluations. METHODS: We conducted a scoping review to catalog the range of analytic indicators being used in evaluations of consumer mHealth apps for chronic conditions. We categorized studies according to app structure and application of engagement data and calculated descriptive data for each category. Chi-square and Fisher exact tests of independence were applied to calculate differences between coded variables. RESULTS: A total of 41 studies met our inclusion criteria. The average mHealth evaluation included for review was a two-group pretest-posttest randomized controlled trial of a hybrid-structured app for mental health self-management, had 103 participants, lasted 5 months, did not provide access to health care provider services, measured 3 analytic indicators of engagement, segmented users based on engagement data, applied engagement data for descriptive analyses, and did not report on attrition. Across the reviewed studies, engagement was measured using the following 7 analytic indicators: the number of measures recorded (76%, 31/41), the frequency of interactions logged (73%, 30/41), the number of features accessed (49%, 20/41), the number of log-ins or sessions logged (46%, 19/41), the number of modules or lessons started or completed (29%, 12/41), time spent engaging with the app (27%, 11/41), and the number or content of pages accessed (17%, 7/41). Engagement with unstructured apps was mostly measured by the number of features accessed (8/10, P=.04), and engagement with hybrid apps was mostly measured by the number of measures recorded (21/24, P=.03). A total of 24 studies presented, described, or summarized the data generated from applying analytic indicators to measure engagement. The remaining 17 studies used or planned to use these data to infer a relationship between engagement patterns and intended outcomes. CONCLUSIONS: Although researchers measured on average 3 indicators in a single study, the majority reported findings descriptively and did not further investigate how engagement with an app contributed to its impact on health and well-being. Researchers are gaining nuanced insights into engagement but are not yet characterizing effective engagement for improved outcomes. Raising the standard of mHealth app efficacy through measuring analytic indicators of engagement may enable greater confidence in the causal impact of apps on improved chronic health and well-being.
format Online
Article
Text
id pubmed-6356188
institution National Center for Biotechnology Information
language English
publishDate 2019
publisher JMIR Publications
record_format MEDLINE/PubMed
spelling pubmed-63561882019-02-22 A Library of Analytic Indicators to Evaluate Effective Engagement with Consumer mHealth Apps for Chronic Conditions: Scoping Review Pham, Quynh Graham, Gary Carrion, Carme Morita, Plinio P Seto, Emily Stinson, Jennifer N Cafazzo, Joseph A JMIR Mhealth Uhealth Original Paper BACKGROUND: There is mixed evidence to support current ambitions for mobile health (mHealth) apps to improve chronic health and well-being. One proposed explanation for this variable effect is that users do not engage with apps as intended. The application of analytics, defined as the use of data to generate new insights, is an emerging approach to study and interpret engagement with mHealth interventions. OBJECTIVE: This study aimed to consolidate how analytic indicators of engagement have previously been applied across clinical and technological contexts, to inform how they might be optimally applied in future evaluations. METHODS: We conducted a scoping review to catalog the range of analytic indicators being used in evaluations of consumer mHealth apps for chronic conditions. We categorized studies according to app structure and application of engagement data and calculated descriptive data for each category. Chi-square and Fisher exact tests of independence were applied to calculate differences between coded variables. RESULTS: A total of 41 studies met our inclusion criteria. The average mHealth evaluation included for review was a two-group pretest-posttest randomized controlled trial of a hybrid-structured app for mental health self-management, had 103 participants, lasted 5 months, did not provide access to health care provider services, measured 3 analytic indicators of engagement, segmented users based on engagement data, applied engagement data for descriptive analyses, and did not report on attrition. Across the reviewed studies, engagement was measured using the following 7 analytic indicators: the number of measures recorded (76%, 31/41), the frequency of interactions logged (73%, 30/41), the number of features accessed (49%, 20/41), the number of log-ins or sessions logged (46%, 19/41), the number of modules or lessons started or completed (29%, 12/41), time spent engaging with the app (27%, 11/41), and the number or content of pages accessed (17%, 7/41). Engagement with unstructured apps was mostly measured by the number of features accessed (8/10, P=.04), and engagement with hybrid apps was mostly measured by the number of measures recorded (21/24, P=.03). A total of 24 studies presented, described, or summarized the data generated from applying analytic indicators to measure engagement. The remaining 17 studies used or planned to use these data to infer a relationship between engagement patterns and intended outcomes. CONCLUSIONS: Although researchers measured on average 3 indicators in a single study, the majority reported findings descriptively and did not further investigate how engagement with an app contributed to its impact on health and well-being. Researchers are gaining nuanced insights into engagement but are not yet characterizing effective engagement for improved outcomes. Raising the standard of mHealth app efficacy through measuring analytic indicators of engagement may enable greater confidence in the causal impact of apps on improved chronic health and well-being. JMIR Publications 2019-01-18 /pmc/articles/PMC6356188/ /pubmed/30664463 http://dx.doi.org/10.2196/11941 Text en ©Quynh Pham, Gary Graham, Carme Carrion, Plinio P Morita, Emily Seto, Jennifer N Stinson, Joseph A Cafazzo. Originally published in JMIR Mhealth and Uhealth (http://mhealth.jmir.org), 18.01.2019. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work, first published in JMIR mhealth and uhealth, is properly cited. The complete bibliographic information, a link to the original publication on http://mhealth.jmir.org/, as well as this copyright and license information must be included.
spellingShingle Original Paper
Pham, Quynh
Graham, Gary
Carrion, Carme
Morita, Plinio P
Seto, Emily
Stinson, Jennifer N
Cafazzo, Joseph A
A Library of Analytic Indicators to Evaluate Effective Engagement with Consumer mHealth Apps for Chronic Conditions: Scoping Review
title A Library of Analytic Indicators to Evaluate Effective Engagement with Consumer mHealth Apps for Chronic Conditions: Scoping Review
title_full A Library of Analytic Indicators to Evaluate Effective Engagement with Consumer mHealth Apps for Chronic Conditions: Scoping Review
title_fullStr A Library of Analytic Indicators to Evaluate Effective Engagement with Consumer mHealth Apps for Chronic Conditions: Scoping Review
title_full_unstemmed A Library of Analytic Indicators to Evaluate Effective Engagement with Consumer mHealth Apps for Chronic Conditions: Scoping Review
title_short A Library of Analytic Indicators to Evaluate Effective Engagement with Consumer mHealth Apps for Chronic Conditions: Scoping Review
title_sort library of analytic indicators to evaluate effective engagement with consumer mhealth apps for chronic conditions: scoping review
topic Original Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6356188/
https://www.ncbi.nlm.nih.gov/pubmed/30664463
http://dx.doi.org/10.2196/11941
work_keys_str_mv AT phamquynh alibraryofanalyticindicatorstoevaluateeffectiveengagementwithconsumermhealthappsforchronicconditionsscopingreview
AT grahamgary alibraryofanalyticindicatorstoevaluateeffectiveengagementwithconsumermhealthappsforchronicconditionsscopingreview
AT carrioncarme alibraryofanalyticindicatorstoevaluateeffectiveengagementwithconsumermhealthappsforchronicconditionsscopingreview
AT moritapliniop alibraryofanalyticindicatorstoevaluateeffectiveengagementwithconsumermhealthappsforchronicconditionsscopingreview
AT setoemily alibraryofanalyticindicatorstoevaluateeffectiveengagementwithconsumermhealthappsforchronicconditionsscopingreview
AT stinsonjennifern alibraryofanalyticindicatorstoevaluateeffectiveengagementwithconsumermhealthappsforchronicconditionsscopingreview
AT cafazzojosepha alibraryofanalyticindicatorstoevaluateeffectiveengagementwithconsumermhealthappsforchronicconditionsscopingreview
AT phamquynh libraryofanalyticindicatorstoevaluateeffectiveengagementwithconsumermhealthappsforchronicconditionsscopingreview
AT grahamgary libraryofanalyticindicatorstoevaluateeffectiveengagementwithconsumermhealthappsforchronicconditionsscopingreview
AT carrioncarme libraryofanalyticindicatorstoevaluateeffectiveengagementwithconsumermhealthappsforchronicconditionsscopingreview
AT moritapliniop libraryofanalyticindicatorstoevaluateeffectiveengagementwithconsumermhealthappsforchronicconditionsscopingreview
AT setoemily libraryofanalyticindicatorstoevaluateeffectiveengagementwithconsumermhealthappsforchronicconditionsscopingreview
AT stinsonjennifern libraryofanalyticindicatorstoevaluateeffectiveengagementwithconsumermhealthappsforchronicconditionsscopingreview
AT cafazzojosepha libraryofanalyticindicatorstoevaluateeffectiveengagementwithconsumermhealthappsforchronicconditionsscopingreview