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Characteristics of adopters of an online social networking physical activity mobile phone app: Cluster analysis
Version 2 2022-08-07, 23:29Version 2 2022-08-07, 23:29
Version 1 2021-01-17, 12:51Version 1 2021-01-17, 12:51
journal contribution
posted on 2020-01-30, 00:00 authored by I Sanders, CE Short, S Bogomolova, T Stanford, R Plotnikoff, Corneel VandelanotteCorneel Vandelanotte, T Olds, S Edney, J Ryan, RG CurtisBackground: To date, many online health behavior programs developed by researchers have not been translated at scale. To inform translational efforts, health researchers must work with marketing experts to design cost-effective marketing campaigns. It is important to understand the characteristics of end users of a given health promotion program and identify key market segments. Objective: This study aimed to describe the characteristics of the adopters of Active Team, a gamified online social networking physical activity app, and identify potential market segments to inform future research translation efforts. Methods: Participants (N=545) were Australian adults aged 18 to 65 years who responded to general advertisements to join a randomized controlled trial (RCT) evaluating the Active Team app. At baseline they provided demographic (age, sex, education, marital status, body mass index, location of residence, and country of birth), behavioral (sleep, assessed by the Pittsburgh Quality Sleep Index) and physical activity (assessed by the Active Australia Survey), psychographic information (health and well-being, assessed by the PERMA [Positive Emotion, Engagement, Relationships, Meaning, Achievement] Profile; depression, anxiety and stress, assessed by the Depression, Anxiety, and Stress Scale [DASS-21]; and quality of life, assessed by the 12-Item Short Form Health Survey [SF-12]). Descriptive analyses and a k-medoids cluster analysis were performed using the software R 3.3.0 (The R Foundation) to identify key characteristics of the sample. Results: Cluster analyses revealed four clusters: (1) younger inactive women with poor well-being (218/545), characterized by a higher score on the DASS-21, low mental component summary score on the SF-12, and relatively young age; (2) older, active women (153/545), characterized by a lower score on DASS-21, a higher overall score on the SF-12, and relatively older age; (3) young, active but stressed men (58/545) with a higher score on DASS-21 and higher activity levels; and (4) older, low active and obese men (30/545), characterized by a high body mass index and lower activity levels. Conclusions: Understanding the characteristics of population segments attracted to a health promotion program will guide the development of cost-effective research translation campaigns. © Ilea Sanders, Camille E Short, Svetlana Bogomolova, Tyman Stanford, Ronald Plotnikoff, Corneel Vandelanotte, Tim Olds, Sarah Edney, Jillian Ryan, Rachel G Curtis, Carol Maher.
Funding
Category 1 - Australian Competitive Grants (this includes ARC, NHMRC)
History
Volume
7Issue
6Start Page
1End Page
11Number of Pages
11eISSN
1438-8871ISSN
1439-4456Publisher
Journal of Medical Internet ResearchPublisher DOI
Full Text URL
Additional Rights
CC BY 4.0Peer Reviewed
- Yes
Open Access
- Yes
Acceptance Date
2019-04-11External Author Affiliations
University of South Australia; University of Adelaide; University of NewcastleAuthor Research Institute
- Appleton Institute
Era Eligible
- Yes
Journal
Journal of Medical Internet ResearchUsage metrics
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Exports
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