Potential Use of Mobile Phone Applications for Self-Monitoring and Increasing Daily Fruit and Vegetable Consumption: A Systematized Review
Abstract
:1. Introduction
2. Materials and Methods
2.1. Search Strategy
2.2. Selection Criteria and Data Collection
2.3. Data Extraction
2.4. Quality of Studies Included
3. Results
3.1. Increasing Daily Fruit and/or Vegetable Consumption as the Primary Outcome
3.2. Increasing Daily Fruit and/or Vegetable Consumption as a Secondary Outcome
3.3. Quality Appraisal and Risk of Bias in the Included Studies
4. Discussion
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Reference | Study Design | Duration | Type of Intervention and Target Population | Outcome | Effectiveness | Change in Fruit Consumption | Change in Vegetable Consumption |
---|---|---|---|---|---|---|---|
[32] | Randomized Controlled Pilot Study | 3 months | Self-monitored by mobile-phone application. Directed to overweight adults aged 18–50. Total: 17 participants (intervention: n = 8; control: n = 9). | Primary | ✓For vegetables | Fruit consumption not measured | Intervention group: +7.5 servings/day; Control group: −3.1 servings/day; Difference between groups: 10.6 servings/day |
[33] | Randomized Controlled Trial | 2 months | Self-monitored by mobile-phone application. Directed to overweight adults aged 18–50. Total: 135 participants (intervention: n = 68; control: n = 67). | Primary | ✓For vegetables | Fruit consumption not measured | Intervention group: +0.7 servings/day; Control group: −1.7 servings/day; Difference between groups: 2.4 servings/day |
[34] | Randomized Controlled Trial | 6 months | Self-monitored by mobile-phone application, text-based or audio-based health messages. Directed to adults aged 16–71 who had not yet succeeded in consuming the daily recommended fruit and vegetable consumption. Total: 146 participants (intervention: n = 88; control: n = 58). | Primary | ✓For fruits x For vegetables | Textual feedback condition: −0.6 pieces/ week; Auditory feedback condition: +3.3 pieces/week; Control group: +0.4 pieces/week; Differences between Textual- Control: −0.2; Differences between Auditory-Control: 3.7 | Non-significant difference |
[35] | Randomized Controlled Trial (4-arm parallel groups) | 6 months (3 weeks of treatment and 20 weeks of follow-up) | Self-monitored by a PDA, remote coach support and financial incentives. Directed to adults aged 21-60 who eat <5 servings of fruits and vegetables a day, consume ≥8% daily calories from saturated fat; do <150 min/week of Physical Activity and watch >120 min/week of leisure screen time. Total: 204 participants (group A: n = 47; group B: n = 48; group C: n = 56; group D: n = 53). | Secondary | ✓For fruits and vegetables (only significant improvements in Behaviour C intervention) | Baseline vs. 3 weeks Behaviour A (targeted saturated fat and physical activity): +0.6 servings/day; Behaviour B (targeted fruit/vegetable intake and physical activity): +4.3 servings/day; Behaviour C (targeted fruit/vegetable intake and sedentary behaviours): +4.3 servings/day; Behaviour D (targeted saturated fat and sedentary behaviour): +0.5 servings/day | |
[36] | Randomized Controlled Trial | 6 months | Self-monitored, informed and supported by a mobile-phone application, weekly graphic feedback and facultative dietitian contact for further support. Directed to parents of children aged 4.5. Total: 315 participants (intervention: n = 156; control: n = 159). | Secondary | x For fruits x For vegetables | Intervention group: +2.9 ± 78.9 g/day; Control group: −12.1 ± 87.9 g/day | Intervention group: −6.7 ± 42.1 g/day; Control group: −3.6 ± 39.7 g/day |
[37] | Randomized Controlled Trial (3-arm parallel groups) | 9 months (6 months of treatment and 3 months of post-intervention follow-up) | Self-monitored by a mobile-phone application and an accelerometer, remote coaching by telephone and rewarding financial incentives. Directed to adults aged 18–65 characterized by those who eat <5 servings of fruits and vegetables a day, consume ≥8% daily calories from saturated fat; do <150 min/week of Physical Activity and watch >120 min/week of leisure screen time. Total: 212 participants (intervention A: n = 84; intervention B: n = 84; control: n = 44). | Secondary | ✓For fruits and vegetables | Baseline vs. 6 months Group A (Simultaneous): +6.6 servings/day; Group B (Sequential): +7.4 servings/day; Control group: +0.5 servings/day. | |
[38] | Randomized Controlled Trial (3-arm parallel groups) | 6 months | Self-monitored by a mobile-phone application, dietary feedback messages and text messages via mobile-phone. Directed to young adults aged 18–30. Total: 212 participants (intervention A: n = 84; intervention B: n = 84; control: n = 44). | Primary | x For fruits x For vegetables | Group A: −0.2 ± 0.1 servings/day; Group B: −0.1 ± 0.1 servings/day; Control Group: −0.2 ± 0.1 servings/day; Between group difference in Mean change (p > 0.05) | Group A: +0.2 ± 0.1 servings/day; Group B: +0.4 ± 0.1 servings/day Control Group: +0.4 ± 0.1 servings/day; Between group difference in Mean change (p > 0.05) |
[39] | Randomized Controlled Trial | 3 months | Self-monitored and trained by a mobile-phone application, text messages, e-mails, coach calls, diet booklet and access to resources. Directed to young adults aged 18–35 characterized by fruit intake <2 servings/day and vegetable intake <5 servings/day. Total: 248 participants (intervention: n = 123; control: n = 125). | Secondary | ✓For vegetables x For fruits | Non-significant difference | Intervention group: from 34.1% (baseline) to 64.3% (12 weeks) of people consuming ≥2 servings/day; Control group: from 36% (baseline) to 48% (12 weeks) of people consuming ≥2 servings/day |
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Mandracchia, F.; Llauradó, E.; Tarro, L.; del Bas, J.M.; Valls, R.M.; Pedret, A.; Radeva, P.; Arola, L.; Solà, R.; Boqué, N. Potential Use of Mobile Phone Applications for Self-Monitoring and Increasing Daily Fruit and Vegetable Consumption: A Systematized Review. Nutrients 2019, 11, 686. https://doi.org/10.3390/nu11030686
Mandracchia F, Llauradó E, Tarro L, del Bas JM, Valls RM, Pedret A, Radeva P, Arola L, Solà R, Boqué N. Potential Use of Mobile Phone Applications for Self-Monitoring and Increasing Daily Fruit and Vegetable Consumption: A Systematized Review. Nutrients. 2019; 11(3):686. https://doi.org/10.3390/nu11030686
Chicago/Turabian StyleMandracchia, Floriana, Elisabet Llauradó, Lucia Tarro, Josep Maria del Bas, Rosa Maria Valls, Anna Pedret, Petia Radeva, Lluís Arola, Rosa Solà, and Noemi Boqué. 2019. "Potential Use of Mobile Phone Applications for Self-Monitoring and Increasing Daily Fruit and Vegetable Consumption: A Systematized Review" Nutrients 11, no. 3: 686. https://doi.org/10.3390/nu11030686
APA StyleMandracchia, F., Llauradó, E., Tarro, L., del Bas, J. M., Valls, R. M., Pedret, A., Radeva, P., Arola, L., Solà, R., & Boqué, N. (2019). Potential Use of Mobile Phone Applications for Self-Monitoring and Increasing Daily Fruit and Vegetable Consumption: A Systematized Review. Nutrients, 11(3), 686. https://doi.org/10.3390/nu11030686