| Literature DB >> 34409104 |
Mia A Emberson1, Anna Lalande2, Danielle Wang2, Daniel J McDonough2, Wenxi Liu2, Zan Gao2.
Abstract
DESIGN: A systematic review. Data Sources. 114 studies were gathered using the following search descriptors: ("mobile phone" OR "smartphone" OR "cell phone" OR "mobile device" OR "mobile apps" OR "mHealth") AND ("exercise" OR "physical activity" OR "physical fitness" OR "motor activity") AND ("physiological outcomes" OR "weight outcomes" OR "psychological outcomes" OR "health" OR "health behavior"). Seven databases were used including databases such as Academic Search Premier and PubMed. PRISMA guidelines were followed in this review. Eligibility Criteria for Selecting Studies. The 20 articles included in this review met the following inclusion criteria: (1) randomized and controlled trials, (2) involving an outcome variable measured by accelerometer, and (3) intervention enforced by a smartphone application.Entities:
Mesh:
Year: 2021 PMID: 34409104 PMCID: PMC8367594 DOI: 10.1155/2021/6296896
Source DB: PubMed Journal: Biomed Res Int Impact factor: 3.411
Design quality analysis.
| Articles | (1) Randomization | (2) Control | (3) Pre-post | (4) Retention | (5) Baseline | (6) Missing data | (7) Power analysis | (8) Validity measure | (9) Six-month follow-up | Score | Effectiveness |
|---|---|---|---|---|---|---|---|---|---|---|---|
| Bender et al. [ | + | + | + | + | − | + | − | − | + | 6 | + |
| Choi et al. [ | + | + | + | + | + | + | − | − | − | 6 | 0 |
| Direito et al. [ | + | + | + | + | + | − | + | − | − | 7 | 0 |
| Fukuoka [ | + | + | + | + | + | − | + | − | + | 7 | + |
| Garcia-Ortiz et al. [ | + | + | + | + | − | + | − | − | + | 6 | − |
| Harries et al. [ | + | + | + | + | − | + | − | − | − | 5 | + |
| Hartman et al. [ | + | + | + | + | + | − | − | − | + | 6 | + |
| Hebden et al. [ | + | + | + | + | + | + | − | − | − | 6 | − |
| Höchsmann et al. [ | + | + | + | + | + | − | + | − | − | 6 | + |
| Kitagawa et al. [ | + | + | + | + | + | + | − | + | − | 7 | + |
| Lynch et al. [ | + | + | + | + | + | − | + | − | + | 7 | + |
| Martin et al. [ | + | + | + | + | + | + | − | − | − | 6 | + |
| Melton et al. [ | + | + | + | + | + | + | − | − | − | 6 | 0 |
| Patel et al. [ | + | + | + | − | + | + | + | − | − | 6 | + |
| Patel et al. [ | + | + | + | + | − | + | + | − | − | 6 | + |
| Pope et al. [ | + | + | + | + | − | + | − | − | − | 5 | 0 |
| Poppe et al. [ | + | + | + | + | + | + | − | + | + | 8 | 0 |
| Smith et al. [ | + | + | + | + | + | + | + | − | + | 8 | 0 |
| Vorrink et al. [ | + | + | + | − | + | − | + | + | + | 7 | 0 |
| Wang et al. [ | + | + | + | + | + | + | − | + | − | 7 | + |
Note: + refers to positive or present, − refers to negative or absent; retention = retaining more than 70% of the participants throughout the intervention; six-month follow-up = presence of a check in more than six months after the experiment.
Figure 1Flow diagram of studies through the review process.
Characteristics of the included studies.
| Study | Location | Study Description | Sample and Design | Measurement | Study Duration | Key findings |
|---|---|---|---|---|---|---|
| Bender et al. (2017) | San Francisco Bay Area, United States | Effect of PilAm Go4Health intervention with fitbit app on weight loss (secondary: steps) | 45 total; 22 inintervention, 23 in control | Fitbit accelerometer | 6 months | Statistically significant percent weight loss and fasting glucose change in type 2 diabetics |
| Choi et al. (2016) | San Francisco Bay Area, United States | Effect of MoTHER app (Mobile Technologies to Help Enhance Regular Physical Activity) on PA | 30 total; 15 inintervention, 15 in control | Fitibt Ultra accelerometer | 12 weeks | No significant difference between groups in steps or self reported PA , intervention saw higher self efficacy, significant evidence that intervention reduced lack of energy as barrier in inactive pregnant women |
| Direito et al. (2015) | Auckland, New Zealand | Effect of Zombies, Run and Get Running mobile app on cardiorespiratory fitness | 51 total; 17 in immersive app, 16 in nonimmersive app, 18 in control group | Actigraph accelerometer | 8 weeks | No significant findings between intervention and control group but time taken to complete fitness test decreased in both app groups compared to control |
| Fukuoka (2019) | San Francisco Bay Area, United States | Effect of mobile phone based PA education (mPED) on MVPA for 3 months as well as 9 month maintenance phase | 205 total; 72 in regular, 60 in plus, 69 in control | Omron Active Style Pro HJA- 350IT accelerometer | 9 months | 3 month app and counseling intervention acheived significant increase in PA compared to control group for physically inactive females |
| Garcia- Ortiz et al. (2018) | Spain | Effect of app in addition to counseling on increasing physical activity (PA) and adherence to the Mediterranean diet | 833 total; 415 in counseling+app, 418 in counseling | ActiGraph GT3X accelerometer | 3 month intervention and 12 month follow-up | Overall found no differences between intervention group and counseling- only group in PA increase and adherence to the Mediterranean diet in the long term |
| Harries et al. (2013) | Bristol, UK | Effect of bActive app on step count | 152 total | Accelerometer on smartphone app | 6 weeks | Always-on, accelerometer-based smartphone apps can increase walking amongst males by around 64% |
| Hartman et al. (2016) | San Diego, California, United States | Effect of MyFitnessPal on MVPA and weight | 54 total; 36 in intervention, 18 in usual care | ActiGraph GT3X Accelerometer, | 6 months | Combining technology-based self- monitoring tools with phone counseling supported weight loss over 6 months in women at increased risk for breast cancer |
| Hebden et al. (2013) | Sydney, Australia | Effect of mHelath intervention with access to mobile app on body weight | 51 total; 26 in intervention, 25 in control | ActiGraph GTIM accelerometer | 12 weeks | Intervention and control group dropped weight, increased light intensity activity, and increased veggie intake |
| Hochsman n et al. (2019) | Basel, Switzerland | Effect of Mission: Schweinehund on intrinsic PA motivation (secondary: MVPA) | 36 total; 18 in intervention, 18 in control | Accelerometer in Garmin Vivofit 2 activity wristband | 24 weeks | Smartphone game significantly inmproved intrinsic PA motivation, leading to increased PA for inactive patients with type 2 diabetes |
| Kitagawa (2019) | Osaka, Japan | Effect of Smartphone application (UP) on sitting time (secondary: health related quality of life) | 48 total; 16. in control, 16 in self feedback, 16 in tailored feedback | Jawbone UP24 accelerometer | 2 weeks | All groups showed a significnat reduction in prolonged sitting time. For the tailored feedback group, the longest prolonged sitting time showed the most decrease following intervention. |
| Lynch et al. (2019) | Melbourne, Austrailia | Effect of Garmin app on MVPA levels | 83 total; 43 intevention, 40 control | Accelerometer in Garmin Vivofit 2 wearable, activPAL | 12 weeks | Wearbale technology in this study showed the ability to significnatly increase MVPA lveles in breast cancers survivors |
| Martin et al. (2015) | Baton Rouge, Louisiana, United States | Effect of SmartLoss app on weight, waist circumference (secondary: blood pressure) | 40 total; 20 SmartLoss, 20 health education | Accelerometer A&D Engineering, Inc., Wellness Connected WirelessTM Activity Monitor XL-20 | 12 weeks | Showed signficant results in which SmartLoss particpants had significantly greater weight loss and reduction in waist circumerfance compared to Health Education for overweight adults |
| Melton et al. (2016) | Georgia, United States | Effect of Jawbone UP platform on physical activity | 50 total; 17 intervention, 33 comparison | GT3X+ActiGraph activity monitor | 6-week trial with 8-week follow-up | The physical activity intervention did not result in a signficant increase in physical activity for the intervention group compated to the control group |
| Patel et al. (2016) | Pennsylvania, United States | Effect of "Moves" app on step count using social comparison | 286 total | Built in phone accelerometer | 13 week intervention, 13 week follow-up | Found that social comparison (to median, 50% percentile) with financial incentives resulted in significantly more steps than other groups |
| Patel et al. (2018) | Pennsylvania, United States | Effect of "Moves" app on step count using lottery style | 209 total | Built in phone accelerometer | 13 week intervention, 13 week follow-up | Found that the combined lottery, which included both a higher frequency, smaller reward as well as a lower frequency, higher reward, was the most effect in increasing physical activity in overweigh adults |
| Pope et al. (2019) | Minneapolis, Minnesota, United States | Effect of Smartwatch+Facebook on intervention interest, use/acceptability, adherence, and retention (secondary: PA levels and diet) | 38 total; 19 intervention, 19 contorl | Accelerometer- Polar M400 smartwatch | 12 weeks | There was no significant advantage of intervention versus comparison |
| Poppe et al. (2019) | Ghent, Belgium | Effect of MyPlan 2.0 on PA and sendentary behavior | 54 (RCT1) | ActiGraph accelerometer (GT3X=+) | 5 weekly sessions with one week in between sessions for a total of 9 weeks | Study shows no significant positive effect for the ability of the intervetnion to increase PA or decrease sedentary behavior in type 2 diabetics |
| Smith et al. (2014) | New South Wales, Australia | Effect of Active Teen Leaders Avoiding Screen-time (ATLAS) on reducting obesity (secondary: physical activity) | 293 total; 139 intervention, 154 control | ActiGraph accelerometer (GT3X=+) | 20 weeks | Intervention was not successful in producing signficiant effects compared to control group for body composition but was for muscular fitness, movement skills, and weight related behaviors |
| Vorrink et al. (2016) | Netherlands | Effect of smartphone application on maintaining PA in COPD patients post 12 week COPD intervention | 121 total; 62 intervention, 59 control | Accelerometer in smartphone (HTC desire A8181) | 12 months | mHealth intervention did not improve or maintain physical activity in patients with COPD |
| Wang et al. (2016) | San Diego, California, United States | Effect of Fitbit One with mobile app on daily step count | 67 total | ActiGraph accelerometer (GT3X=+) | 6 weeks | Study showed that increased level of engagement with Fitbit One app was associated with increased steps |