| Literature DB >> 30551555 |
Mikyung Lee1, Hyeonkyeong Lee2, Youlim Kim3, Junghee Kim4, Mikyeong Cho5, Jaeun Jang6, Hyoeun Jang7.
Abstract
This study investigated the features and usefulness of mobile app-based health promotion programs for the general population. A comprehensive bibliographic search of studies on health promotion programs using mobile apps in peer-reviewed journals published in English up to November 2017 was performed using the PubMed, Embase, and CINAHL databases. The inclusion criteria were (1) randomized control trial designs; (2) assessed mobile app-based interventions to promote adult health conditions; 12 studies were ultimately included. The most common topics were diet and physical activity (n = 8) and overall healthy lifestyle improvement (n = 4). The purpose of the apps included providing feedback on one's health status (n = 9) and monitoring individual health status or behavior change (n = 9). Across all studies, health outcomes were shown to be better for mobile app users compared to non-users. Mobile app-based health interventions may be an effective strategy for improving health promotion behaviors in the general population without diseases. This study suggests that mobile app use is becoming commonplace for a variety of health-promoting behaviors in addition to physical activity and weight control. Future research should address the feasibility and effectiveness of using mobile apps for health promotion in developing countries.Entities:
Keywords: app-based intervention; health promotion; mobile app; smartphone
Mesh:
Year: 2018 PMID: 30551555 PMCID: PMC6313530 DOI: 10.3390/ijerph15122838
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 3.390
Figure 1Study selection process.
Figure 2Cochrane’s risk of bias summary for health promotion apps reviewed.
General study characteristics (n = 12).
| Variables | Categories | |
|---|---|---|
| Type of Studies | Published journal | 12 (100.0) |
| Major field of researcher | Medicine (General, Nephrology, Dermatology) | 4 (33.3) |
| Nursing | 3 (25.0) | |
| Nutrition, Exercise and Sports | 4 (33.3) | |
| Public Health | 1 (8.4) | |
| Sample size | Under 100 | 5 (41.8) |
| 100–200 | 3 (25.0) | |
| 201–300 | 2 (16.6) | |
| Above 300 | 2 (16.6) | |
| Setting | Community | 12 (100.0) |
Features and outcomes of the app-based health promotion interventions (n = 12).
| No. | Author, Year | Sample Size | App Name | Platform | App Purpose | Intervention Period (Week) | Major Outcome Indices | ||
|---|---|---|---|---|---|---|---|---|---|
| Total | Exp. | Cont. | |||||||
| 1 | Balk-Moller et al., 2017 [ | 566 | 355 | 211 | SoSu-life | - | - Provide information, feedback | 16 | - Body weight, body fat, waist circumference, blood pressure, total cholesterol |
| 2 | Buller et al., 2015 [ | 202 | 96 | 106 | Solar Cell | Android, | - Provide information, feedback | 8 | - Sun protection practices, time spent outdoors, sunburn prevalence |
| 3 | Carter et al., 2013 [ | 128 | 43 | 42 | My Meal Mate | Android | - Provide feedback | 24 | - Body weight, BMI, body fat |
| 4 | Fukuoka et al., 2015 [ | 61 | 30 | 31 | Mobile Phone–Based Diabetes Prevention Program (mDPP) | iOS | - Provide information | 20 | - Body weight, BMI, hip circumference, blood pressure, lipid profile, glucose levels, daily steps, minutes per day |
| 5 | Glynn et al., 2014 [ | 90 | 45 | 45 | Accupedo-Pro Pedometer app | Android | - Provide information, feedback | 8 | - Daily step count, blood pressure, resting heart rate, body weight, mental health, qualityof life |
| 6 | Goodman et al., 2016 [ | 109 | 59 | 50 | Vitamin D Calculator app (VDC-app) | iOS | - Provide information, feedback | 12 | - Intake, knowledge, perceptions of vitamin D, blood concentrations of 25(OH) D3 |
| 7 | Kerr et al., 2016 [ | 247 | 82 | 82 | Mobile food record | iOS | - Provide information, feedback | 24 | - Intake of fruits, vegetables, energy-dense nutrient-poor foods and sugar-sweetened beverages, body weight, BMI |
| 8 | King et al., 2016 [ | 95 | 22 | 27 | Analytically framed app, a socially framed app, an affectively | Android | - Monitor behavior change | 8 | - Duration of physical activity, sitting time |
| 9 | Park et al., 2017 [ | 103 | 36 | 29 | Strong bone, Fit body (SbFb) | Android | - Provide feedback | 20 | - Bone mineral density, minerals, biochemical, markers, food intake diary, knowledge, health belief, self-efficacy |
| 10 | Naimark et al., 2015 [ | 99 | 69 | 30 | eBalance | web-based | - Provide information, feedback | 14 | - Nutrition knowledge, diet quality, physical activity, weight, waist circumference |
| 11 | Svetkey et al., 2015 [ | 365 | 122 | 123 | CITY | Android | - Provide feedback | 24months | - Body weight |
| 12 | Zhang et al., 2017 [ | 80 | 40 | 40 | Care4 | Android, iOS | - Provide information | 4 | - Knowledge of coronary heart disease, perceived stress level, cardiac-related lifestyle behaviors |
Note: Exp. = experimental group, Cont. = control group.