| Literature DB >> 32706724 |
Md Mohaimenul Islam1,2,3, Tahmina Nasrin Poly1,2,3, Bruno Andres Walther4, Yu-Chuan Jack Li1,2,3,5.
Abstract
BACKGROUND: Obesity and lack of physical activity are major health risk factors for many life-threatening diseases, such as cardiovascular diseases, type 2 diabetes, and cancer. The use of mobile app interventions to promote weight loss and boost physical activity among children and adults is fascinating owing to the demand for cutting-edge and more efficient interventions. Previously published studies have examined different types of technology-based interventions and their impact on weight loss and increase in physical activity, but evidence regarding the impact of only a mobile phone app on weight loss and increase in physical activity is still lacking.Entities:
Keywords: mHealth; mobile app; obesity; physical activity; weight gain prevention
Mesh:
Year: 2020 PMID: 32706724 PMCID: PMC7407260 DOI: 10.2196/17039
Source DB: PubMed Journal: JMIR Mhealth Uhealth ISSN: 2291-5222 Impact factor: 4.773
Figure 1Flow chart of the study search and selection.
Characteristics of the studies included in the meta-analysis.
| First author (year) | Country | Study design | Study sample | Male, % | Age (years), mean | Study duration | Inclusion criteria | Exclusion criteria | Outcomes |
| Patel (2019) | USA | RCTa | 100 | 16 | 42.7 | 3 months | Age 21-65 years with BMI 25-45 kg/m2, and willingness to reduce weight through dietary change. Availability of an iPhone or Android smartphone and personal email address, and ability to read and write in English. | Enrollment in other weight loss programs, use of MyFitnessPal to track diet in the past 6 months, loss of ≥10 lb, or use of weight loss medication in the past 6 months. Moreover, pregnancy and disorders, such as cancer, eating disorders, uncontrolled hypertension, diabetes mellitus, cardiovascular events, and congestive heart failure. | Weight and BMI |
| Farinelli (2016) | Australia | RCT | 258 | 40.7 | 28.1 | 9 months | Age 18-35 years, BMI 25.0-31.9 kg/m2 or 23.0-24.9 kg/m2 with reported weight gain greater than 2 kg over the previous 12 months. Fruit intake of less than two servings daily, vegetable intake of less than five servings daily, and SSBb intake of at least 1 L weekly. Energy-dense meals prepared away from home more than once per week. Owning a mobile phone capable of receiving text messages and having access to the internet at least once a week. | Pregnancy or plan for pregnancy within the next 9 months, enrollment in another mobile app–based weight loss program, weight reduction more than 10 kg voluntarily in the past 3 months, taking medications that cause more than 2 kg of weight gain, medical conditions that preclude following dietary or physical recommendations, history of disorders like eating disorders, and inability to read or write in English. | Weight, |
| Partridge (2015) | Australia | RCT | 250 | 38 | 27.2 | 9 months | BMI 25.0-31.9 kg/m2 or 23.0-24.9 kg/m2 with reported weight gain greater than 2 kg over the previous 12 months, fruit intake of less than two servings daily, vegetable intake of less than five servings daily, SSB intake of at least 1 L weekly, energy-dense meals prepared away from home more than once per week, etc. | Pregnancy or plan for pregnancy within the study period, enrollment in other mobile app–based weight loss programs, reduction in weight greater than 10 kg in the past 3 months, use of medications that help to gain weight greater than 2 kg, other medical conditions that preclude following dietary or physical activity recommendations, and inability to speak English. | Weight, BMI, MPAd, and VPAe |
| Laing (2014) | USA | RCT | 212 | 27 | 43.3 | 6 months | Age ≥18 years, BMI ≥25 kg/m2, and smartphone ownership. | Current, planned, or previous pregnancy within the last 6 months, hemodialysis, life expectancy less than 6 months, lack of interest in weight loss, or current use of other kinds of apps for weight loss. | Weight |
| Hebden (2014) | Australia | RCT | 41 | 15 | 22.6 | 3 months | BMI 24.00-31.99 kg/m2 with weight gain greater than 2 kg in the past 12 months, age 18-35 years, moderate intensity physical activity <60 min/day, SSB intake of at least 1 L weekly, fruit intake of less than two servings daily, vegetable intake of less than five servings daily, or at least two energy-dense takeaway meals weekly. | Inability to receive SMS messages or no regular internet access, a diet required for medical reasons, medical conditions that influence body weight or ability to comply with the intervention, intake of medications or herbal preparations that might influence body weight, enrollment in weight loss programs, pregnancy, or plan for pregnancy in the next 3 months. | Weight, |
| Smith (2014) | Australia | RCT | 361 | 100 | 12.7 | 7 months | Male students in their first year at the study schools completed a short screening questionnaire. | NRf | BMI and waist circumference |
| Glynn (2014) | Ireland | RCT | 139 | 32 | 44 | 2 months | Age >16 years and active use of an Android smartphone. | No android smartphone, acute psychiatric illness, pregnancy, or inability to undertake moderate exercise. | Weight, BMI, and PA |
| Brindal (2013) | Australia | RCT | 58 | 0 | 42 | 2 months | BMI >25 kg/m2 and ability to measure weight at home. | Medical conditions that are likely to interfere with the ability to undertake the meal replacement program (eg, pregnancy, breastfeeding, active cancer, gastrointestinal disorders, and type 1 diabetes). | Weight |
| Carter (2013) | UK | RCT | 128 | 23.3 | 41.2 | 6 months | BMI ≥27 kg/m2, age 18-65 years, and willingness to commit the necessary time and effort to the study. Ability to read and write in English, ability to access the internet, and willingness to be randomized to one of three groups. | Pregnancy, breast feeding, plan for pregnancy, use of antiobesity medication or medication/insulin for diabetes, surgery for weight loss, and use of the antidepressant sertraline. | Weight and BMI |
| Allen (2013) | USA | RCT | 35 | 22.1 | 44.9 | 6 months | Age 21-65 years, BMI 28-42 kg/m2, ownership of an iPhone or Android phone, willingness to download the app to be used on their device. | History of myocardial infarction, angina, coronary artery bypass graft surgery, percutaneous transluminal coronary angioplasty, congestive heart failure, and diabetes. Current participation in other weight loss programs, pregnancy, plan for pregnancy in the next 6 months, use of weight loss medications, and history of psychiatric illness, alcohol, or substance abuse within the past 12 months. | Weight, BMI, and waist circumference |
| McGrievy (2011) | USA | RCT | 96 | 24.7 | 44 | 6 months | Age 18-60 years and BMI 25-45 kg/m2. | Smoking, unstable medical status, uncontrolled thyroid condition, inability to attend the three monitoring visits or improve the walking status, psychiatric illness, alcohol consumption, drug dependency, eating disorders, enrollment in another weight loss program, pregnancy, breast feeding, and plan for pregnancy within the next 6 months. | BMI and PA |
| Li (2010) | South Korea | CCSg | 36 | NR | 28.5 | 6 weeks | Different ages and blood groups because of individual lifestyle and health effects according to blood group and the requirement of various amounts of calories based on gender. | NR | Weight and BMI |
aRCT: randomized controlled trial.
bSSB: sugar-sweetened beverage.
cPA: physical activity.
dMPA: moderate physical activity.
eVPA: vigorous physical activity.
fNR: not reported.
gCCS: case-control study.
Descriptions of baseline, interventions, apps, and findings of the included studies.
| First author (year) | Baseline variables | Intervention type | App description | Control group treatment | Difference of the intervention group, mean (SD) | Difference of the control group, mean (SD) | Inference | Recommendation |
| Patel (2019) | Age, gender, marital status, race/ethnicity, education, employment status, annual household income, body mass index category, self-monitoring of diet frequency, and type of smartphone | App, email, MyFitnessPal, mobile, and internet | Weight loss goal, calorie goal, self-monitoring of body weight, dietary intake, rea-time feedback, skill training, and reminder of the goal | Self-regulation, email, and action plans via weekly email | −1.8 (1.53) | −2.55 (1.11) | The mobile app is an effective intervention for clinically meaningful weight loss. | Stand-alone digital health treatments may be a viable option for those looking for a lower intensity approach. |
| Farinelli (2016) | Age, gender, weight status, BMI, WHO-5 score, SESa, ethnic background, education, fruit, vegetable, SSBb, take-out meals, and physical activity | Mobile app, email, online weight tracker, physical activity planner, a blog facility for communication, and printable eating chart | Smart mobile apps for education and self-monitoring | Four text messages, one on each key behavior, and a two-page handout based on dietary guidelines. | −3.8 (4.9) | −0.80 (3.7) | The mHealth intervention has the potential to reduce weight and improve physical activity. | Replication of trials and widespread adoption of this model are needed. |
| Partridge (2015) | Age, gender, SES, ethnicity, education level, and weekly income | App, text messages, email, internet forum, a community blog, and usual care. | Educational program and self-monitoring | Mailed two-page handout, four text messages, and access to a website | −1.9 (2.84) | 0.2 (2.99) | The app has huge potential for preventing weight gain with modest weight loss. It also helps to improve lifestyle behaviors. | Implementation of a large-scale study is needed. |
| Laing (2014) | Gender, self-reported race, education, annual income, and type of smartphone | App and usual care plan | MyFitnessPal app | Counseling and one-page educational handout for eating plan | −0.03 (4.64) | 0.27 (4.64) | The app was an effective tool for reducing weight. | NRc |
| Hebden (2014) | Age, gender, SES, education, work history, lives with parents, and English proficiency | App, text messaging, email, internet forum, and usual care | Four types of behavior plans | 10-page printed book | −1.6 (3) | −1.4 (3.18) | The app provided short-term positive changes in weight, nutrition, and physical activity. | More studies are needed to explore engagement and personalized support |
| Smith (2014) | Age, English language, cultural background, socioeconomic position, weight, height, BMI, weight status, and waist circumference | App, parent newsletters, seminars, spot sessions, lunchtime physical activity monitoring, and teaching material | Fitness challenges, activity monitoring, and motivational messages | Traditional approaches | 0.6 (1.21) | 0.61 (1.07) | The app-based intervention helped to improve fitness, movement skill, and key weight-related behavior. | More studies require to capture objective data on app usage throughout the intervention period and find out the association. It is also important to add some features like gamification. |
| Glynn (2014) | Gender, age, systolic and diastolic blood pressure, weight, BMI, HADSd, EQ-VASe, EQ-5Df, and daily step count | App and usual care plan | Accupedo-Pro Pedometer app | Education program about the benefits of physical activity and exercise | −2.2 (3.4) | −1.5 (4.3) | The mobile app–based intervention had a positive impact on weight loss | NR |
| Brindal (2013) | Weight and dietary status | App and celebrity slim program | Support apps like my meals, my weight, and my task | Only celebrity slim program | −2.9 (6.4) | −2.1 (1) | The app intervention was useful for weight loss and psychological changes. | Integrating more dynamic stage-based tailoring, as |
| Carter (2013) | Age, weight, BMI, body fat, gender, race, smoking status, occupation, and education | App | Self-monitoring | Food diary and a calorie-counting book | −4.6 (5.2) | −2.9 (5.85) | The mobile app was an acceptable and feasible weight loss intervention | More studies are needed to investigate the cost of implementing a smartphone app intervention compared with other types of interventions |
| Allen (2013) | Age, weight, BMI, waist circumference, education, and marital status | App and intensive counseling | Lose it! | Comprehensive counseling | −5.4 (4) | −2.5 (4.1) | The app intervention had a positive impact on weight loss and contributed to behavioral changes. | Need to conduct a large-scale population-based study. |
| McGrievy (2011) | NR | App + podcast + twitter | Diet plan and physical activity monitoring | Podcast only | −2.57 (2.6) | −2.45 (4.39) | NR | NR |
| Li (2010) | Age, occupation, education, monthly income, smoking, drinking, and exercise history | Mobile app and usual care | Mobile apps that provided a personal diet profile based on gender and promoted knowledge about nutrition and physical activity | NR | −1.9 (2.3) | −0.9 (4.64) | Improved user satisfaction. | A more effective study to motivate participants and extend study duration is required. |
aSES: socioeconomic status.
bSSB: sugar-sweetened beverage.
cNR: not reported.
dHADS: Hospital Anxiety and Depression Scale.
eEQ-VAS: EuroQol visual analogue scale.
fEQ-5D: EuroQol five-dimension scale.
Figure 2Risk bias assessment of the included studies.
Figure 3Forest plot of mobile phone app interventions and weight loss.
Figure 4Forest plot of mobile phone app interventions and change in BMI.
Figure 5Forest plot of mobile phone apps for increased physical activity.
Figure 6Funnel plot.