The Effectiveness of Web-Based Interventions to Promote Health Behaviour Change in Adolescents: A Systematic Review
Abstract
:1. Introduction
2. Methods
2.1. Data Sources
2.2. Inclusion and Exclusion Criteria
2.2.1. Participants/Population
Inclusion Criteria
Exclusion Criteria
2.2.2. Intervention/Exposure
Inclusion Criteria
Exclusion Criteria
2.2.3. Comparator(s)/Control
Inclusion Criteria
Exclusion Criteria
2.2.4. Outcome(s)
Inclusion Criteria
Exclusion Criteria
2.2.5. Study Design
Inclusion Criteria
Exclusion Criteria
2.3. Data Extraction
2.4. Data Synthesis
3. Results
3.1. Study Selection
3.2. Description of the Studies
Author, Year, Country | Setting | Study Design | Participants | Web-Based Intervention | Health Outcomes of Interest | Main Findings |
---|---|---|---|---|---|---|
Wilson, M. et al., (2017) [30] USA, North-western United States | School | One-group pre-/post-test design (pre-experimental) | N = 20 students (convenience sample) Mean age of 16.8 years. | Multicomponent Intervention: wearable digital tracking device using an Internet-based platform + group physical activities + nutrition group education/individual counselling session on healthy eating + weekly goal-setting sessions. | Measured at baseline and post-intervention: BMI calculation. Blood glucose level. Blood pressure and pulse measurements. Fitness and cardiovascular fitness. Cognitive and affective variables related to health behaviours. Adolescents’ physical activity (PA) and healthy eating. Self-efficacy for PA and healthy eating. Self-determination. Screen time. | Participants showed improvements from pre-test to post-test in health and fitness markers (positive changes in weight, fitness, and cardiovascular measurements) and improved motivation toward PA and reduced screen time. |
Larsen, B. et al., (2018) [31] USA (San Diego, CA) | Hispanic community | Pre/post-test design (Single-arm pilot trial) | N = 21 Latina adolescents Mean age of 14.7 years. | Website mobile phone friendly (tailored Internet-delivered activity manuals, computer-expert system tailored reports, activity tip sheets, and a guide of local activity resources) | Measured at baseline and follow-up (12 weeks): PA by 7-day physical activity recall (PAR) interview and ActiGraph GT3X+ accelerometers. | Results from the 7-day PAR showed that positive changes in PA at 12 weeks were seen not just in quantity but also in type. The usage of validated self-report measures showed to be better than accelerometers among this population since there are some activities in which the accelerometer may not be worn or that were not well measured by the accelerometer. |
Huang, S. J. et al., (2019) [39] Taiwan, Taipei City | School | Quasi-experimental (Three-armed) | N initial = 617 students Mean age of 11.4 years. | Two experimental groups: One using a web-based exercise program applying a self-management strategy combined with geographical information system (GIS) mapping function and using a narrative animated cartoon. The other was knowledge-only using only the animated story. | Measured at baseline, immediately post and 3-month follow-up: PA by the Chinese version of the Child/Adolescent Activity Log. Exercise-related self-efficacy using a 5-item Exercise-Related-Self-Efficacy Scale. Perceived benefit of PA using a self-developed 7-item Perceived-Benefit-of-Exercise Scale. | This intervention using self-management strategy + GIS mapping function was effective in producing small but significant increases in school children’s self-efficacy and PA. The perceived benefit and self-efficacy of regular PA might have partly affected the participants’ PA levels because the self-efficacy factor was always higher for both experimental groups than for the control at the post-test and follow-up; it was also higher for the self-management group than for the knowledge-only group. The intervention was more effective for male students than females. |
Pirzadeh, A. et al., (2020) [38] Iran, Isfahan | University | Quasi-experimental | N = 278 high school students Mean age is not described. | Two web-based intervention groups. One group received education through a website with tailored education strategies based on TTM. The second group only received general education by the same website but without tailored materials. | Measured before intervention and 6 months after: Stage of exercise behaviour change questionnaire. Processes of change questionnaire. Decision-making balance questionnaire. Exercise self-efficacy scale. International PA questionnaire short form. | Education on PA based on the website can be effective. The percentage of students with low, moderate, and severe levels of physical activity in the two intervention groups has increased significantly after the intervention. Participants showed significant progress during stages of change post-intervention and changes were greater in the group who was trained by the TTM. |
Duan, Y. P. et al., (2017) [40] China, Central Region | University | Randomized controlled trial | N initial = 493 undergraduate students N post-intervention = 337 N 1-month follow-up = 142 Mean age of 19.2 years. | Web-based intervention modules target social–cognitive indicators for health behaviour change for Physical Activity and Fruit and Vegetable Intake (FVI) (information about risks and benefits, motivating intentions to change, identification of barriers, goal setting, development of action plans, coping plans and social support, providing tailored normative feedback). | PA by Chinese short version of the International Physical Activity Questionnaire (IPAQ-C). FVI in the past 7 days. Stages of behavioural change for PA and FVI. Social-cognitive indicators of behaviour change: positive and negative outcome expectancies for PA and FVI; self-efficacy for PA and FVI; action planning; coping planning; social support; intentions for PA and FVI; habit scale. | Students in the intervention group reported more FVI over time. Average FVI for the intervention group were all greater than the recommended amounts at the end of the 8-week intervention and the 1-month follow-up. In terms of PA behaviour, there was no significant interaction effect. Positive results on stage progression for the PA and FVI. All 6 tests revealed significant treatment effects on motivational, volitional, and distal indicators of PA and FVI over time. |
Khalil, G. E. et al., (2017) [32] USA, Texas, Houston | School | Randomized controlled trial (2-arm single-blinded) | N = 101 adolescents Mean age of 13.4 years. | Two web-based intervention groups: One features interactivity and entertainment to engage adolescent users (text, animations, videos, task-oriented activities, two-dimensional environment to explore health information and make a virtual character). The second included the same health information but without any features of interactivity or entertainment. | Measured at baseline and follow-up: Intention to smoke using items adapted from the susceptibility to smoke scale. | The more participants considered intervention interactive and entertaining, the more they were probably going to show a reduction in their intention to smoke. Perceived interactivity had a more grounded relationship with the reduction in intention to smoke than perceived entertainment. |
Castillo-Arcos Ldel, C. et al., (2016) [42] Mexico, Urban Mexico | School | Quasi-experimental (single-stage cluster sampling) | N = 193 participants Mean age of 15.8 years. | Multicomponent intervention: 6 online sessions + 2 face-to-face activities aimed at increasing levels of social competence and resilience about sexual behaviours. | Measured pre-and post-intervention: Self-reported risky sexual behaviours (defined as self-reporting unprotected sex, multiple concurrent sexual partners, and alcohol or drug use during sex). Resilience to risky sexual behaviour (defined as the ability to identify and practice strategies to avoid risky sexual behaviour). | The intervention was independently associated with improved self-reported resilience to risky sexual behaviours though not with a significant reduction in those behaviours in multivariate analyses. Participant age mediated the effect of the intervention on resilience, influencing the effectiveness of the intervention. |
Doubova, S. V. et al., (2017) [41] Mexico, Mexico City | School | Quasi-experimental (field trial) | N = 833 adolescents Mean age is not described. | Multicomponent intervention: Educational sessions through a website displayed by two central characters + class discussions Main topics: dating, courtship, sexual relationships, misconceptions and myths about gender roles and sexual relationships, partner abuse, STIs, early pregnancy, self-esteem, safe sex, use of condoms and condom negotiation. | Measured at baseline, at the end of the four educational sessions (first month), and the end of the follow-up period (fourth month): Knowledge of STIs. Multidimensional Condom Attitudes Scale measuring attitudes regarding condom use. Self-efficacy toward consistent condom use. | The intervention had a positive effect on improving adolescents’ knowledge of STIs, attitudes and self-efficacy toward consistent condom use. In the intervention group, the average knowledge of STIs increased by 30 points compared to the control group. An increase in positive attitudes and self-efficacy toward consistent condom use was also observed more often in the intervention group. |
Brown, K. E. et al., (2018) [36] United Kingdom (UK), Midlands | Clinical (sexual health service) | Pilot randomized controlled trial (two-armed parallel-group) | N initial = 88 integrated sexual health service attendees N follow-up = 67 Mean age of 20.0 years. | Multicomponent intervention: brief tailored web-based programme + paper-based action planning card. Content about contraceptive pills and/or condoms use using characters with audio to take the user through the process of identifying environmental cues to key target behaviours and planning to perform those behaviours when the environmental cue is present. | Measured at baseline and 3-month follow-up: Self-reported contraceptive pill or condom “mishaps” in the past 3 months. Contraceptive pill or condom use intention. Attitude toward contraceptive pill or condom use. Perceived behavioural control over pill or condom use. Subjective norm relating to pill or condom use. Trait self-control. | The intervention supported pill and condom users to produce quality plans since potential improvements were identified. Bivariate correlations suggest that perceived behavioural control may have a role over method use within intervention content. Additionally, having greater levels of trait self-control may negatively affect plan quality. The study suggests early indications that the intervention could reduce the number of mishaps of intervention participants. |
Widman, L. et al., (2018) [33] USA, South-eastern | School | Randomized Controlled Trial | N = 222 tenth-grade girls Mean age of 15.2 years. | Interactive, skills-focused web-based intervention. The intervention includes 5 modules about safer sex motivation, HIV and other STDs, sexual norms and attitudes, safer sex self-efficacy, sexual communication skills that can be completed on a computer, tablet, or smartphone device. Each module used audio and video clips, tips from other adolescents, interactive games and quizzes, infographics, and skill-building exercises with self-feedback given in real-time). | Measured at pre-test, post-test and 4-month follow-up: Behavioural assessment of sexual assertiveness skills (at refusing unwanted sexual activity and negotiating condom use). Self-reported sexual assertiveness by Multidimensional Sexual Self Concept Scale. Knowledge regarding HIV and other STDs. Intentions to use condoms and to communicate about sex with items from the AIDS Risk Behaviour Assessment. Sexual Self-Efficacy from self-efficacy for HIV prevention scale. | Immediately post-test, the intervention group showed better sexual assertiveness skills measured with a behavioural task, higher self-reported assertiveness, intentions to communicate about sexual health, knowledge regarding HIV and other STDs, safer sex norms and attitudes, and condom self-efficacy compared with the control condition. At a 4-month follow-up, group differences remained in knowledge regarding HIV and other STDs, condom attitudes, and condom self-efficacy. |
Arnaud, N. et al., (2016) [35] European countries (Sweden, Germany, Belgium, and the Czech Republic) | Online | Randomized controlled trial (Two-armed multisite) | N initial = 1449 adolescents (Convenience sample) N follow-up = 211 Mean age of 16.8 years. | Interactive web-based system to generate individually tailored content. Generated information in small units using text and graphics and referred to previous participants’ statements. | Measured at baseline and 3-month follow-up: Self-reported drinking index (drinking frequency, frequency of binge drinking, and typical quantity of drinks) using AUDIT-C screening tool. | Self-reported risky drinking as measured by a drinking index was significantly reduced for participants in the intervention group. Statistically significant mean differences at follow-up in favour of the intervention were found for drinking frequency and binge drinking frequency but not for quantity when missing follow-up data were not imputed. In contrast, analyses using an EM-imputed dataset revealed drinking quantity as the only significant secondary effect. |
Norman, P. et al., (2018) [37] UK, large city | University | Randomized controlled trial (full-factorial design) | N initial = 2,951 students before starting university N post-intervention = 2681 Mean age of 18.8 years. | Brief online intervention combining self-affirmation x TPB-based messages x implementation intentions in a factorial design. | Measured at baseline, 1-week, 1-month and 6-month follow-up: Self-reported alcohol intake (total number of units consumed and number of binge drinking sessions/week). Hazardous and harmful patterns of alcohol use from 10-item AUDIT (only at 6-month follow-up). Cognitions about binge drinking (intention, affective attitude, cognitive attitude, subjective norms, descriptive norms, and perceived control) and extent of endorsement for the beliefs (Engaging in binge drinking at university would be fun; engaging in binge drinking at university would have a negative impact on my studies; my friends engaging in binge drinking would make my binge drinking at university more likely). | TPB-based messages had significant effects on reducing the quantity of alcohol consumed, frequency of binge drinking and harmful patterns of alcohol use over the first 6 months at university. Its effects did not diminish over time. The messages also had significant positive effects on intentions to binge drink, cognitive attitudes, subjective norms, descriptive norms, and self-efficacy, although some effects weakened over time. The effects on the quantity of alcohol and frequency of binge drinking were mediated by TPB variables with significant indirect effects through intention and self-efficacy. The effect sizes for the TPB-based messages on the quantity of alcohol consumed (d = 0.20) and the frequency of binge drinking (d = 0.17) were small. Messages were sufficiently relevant and persuasive to produce changes in behaviour without the need to form if-then plans. Non-significant effects were found for self-affirmation and forming implementation intentions. |
Coughlin, L. N. et al., (2021) [34] USA, Michigan | Online | Pre/post-test design (Pilot study) | N = 39 participants Mean age of 20.7 years. | Mobile intervention with tailored messages and tips, inspirational images to reinforce content, web links to articles, or other web-based resources, based on users’ responses to daily and weekly surveys. The intervention included gamification through a virtual aquarium environment. | Measured at baseline and 1-month follow up: Concerning alcohol use (quantity and frequency of use, consequences of use, intention, importance confidence of change, perceived risk, reasons for use, and past month driving under influence of use). | Participants’ substance use declined over time, and those reporting using the app more often reported less substance use (including fewer days drinking alcohol, binge drinking, fewer consequences of use and episodes of driving after drinking) at the 1-month follow-up than those who reported using the app less often. |
Doumas, D. M. et al., (2021) [28] USA, Northwest region | School | Randomized controlled trial | N = 311 high school seniors Mean age of 17.1 years old. | Online personalized normative feedback intervention via text, graphs, and video recordings. The program is intended to reduce risk factors for alcohol use and increase protective behaviours. | Measured at baseline, 30-day and 6-month follow-up: Weekly drinking quantity. Estimated peak blood alcohol concentration (eBAC). Self-reported peak alcohol volume. Classification of High-Risk vs. Low-Risk drinkers by participants’ report on the frequency of binge drinking in the past month. | The intervention effects were moderated by risk status, such that high-risk students in the intervention condition reported a greater reduction in alcohol use relative to students in the control condition. For weekly drinking quantity, intervention effects were limited to the baseline to 30-day follow-up period. Among high-risk students was found a significant decrease in weekly drinking in the intervention condition. However, intervention effects from baseline to the 6-month follow-up were not significant since the control condition also reported significant decreases in weekly drinking. For eBAC, intervention effects were evident at the 30-day follow-up and were sustained at the 6-month follow-up. Specifically, among high-risk students, we found a significant decrease in eBAC relative at the 30-day and 6-month follow-up. It is unclear why sustained intervention effects were found for eBAC but not for weekly drinking. Non-significant intervention effects for low-risk drinkers. |
3.3. Recruitment and Participants
3.4. Web-Based Interventions
3.5. Behaviour Change Theories and Techniques
3.6. Effectiveness of the Web-Based Interventions
3.7. Other Outcomes
3.8. Risk of Bias Assessment
4. Discussion
4.1. Summary of Findings
4.2. Limitations of This Review
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Conflicts of Interest
References
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Components | Strong | Moderate | Weak |
---|---|---|---|
Selection bias | Very likely to be representative of the target population and greater than 80% participation rate | Somewhat likely to be representative of the target population and 60–79% participation rate | All other responses or not stated |
Study design | RCT and CCT | Cohort analytic, case–control, cohort. Or an interrupted time series | All other designs or not stated |
Confounders | Controlled for at least 80% of confounders | Controlled for 60–79% of confounders | Confounders not controlled for or not stated |
Blinding | Blinding of outcome assessor and study participants to intervention status and/or research question | Blinding of either outcome assessor or study participants | Outcome assessor and study participants are aware of intervention status and/or research question |
Data collection methods | Tools are valid and reliable | Tools are valid but reliability is not described | No evidence of validity or reliability |
Withdrawals and drop-outs | Follow up rate >80% of participants | Follow-up rate of 60–79% of participants | Follow-up rate of <60% of participants or withdrawals and drop-outs not described |
Author, Year | Section Rating | Global Rating | |||||
---|---|---|---|---|---|---|---|
Selection Bias | Study Design | Confounders | Blinding | Data Collection Methods | Withdrawals and Drop-Outs | ||
Doumas, D. M. et al., (2021) [28] | WEAK | STRONG | STRONG | WEAK | STRONG | MODERATE | WEAK |
Wilson, M. et al., (2017) [30] | WEAK | MODERATE | STRONG | WEAK | STRONG | MODERATE | WEAK |
Larsen, B. et al., (2018) [31] | WEAK | MODERATE | STRONG | WEAK | STRONG | STRONG | WEAK |
Khalil, G. E. et al., (2017) [32] | WEAK | STRONG | STRONG | WEAK | WEAK | NOT APPLICABLE | WEAK |
Widman, L. et al., (2018) [33] | MODERATE | STRONG | STRONG | WEAK | WEAK | STRONG | WEAK |
Coughlin, L. N. et al., (2021) [34] | WEAK | MODERATE | STRONG | WEAK | STRONG | STRONG | WEAK |
Arnaud, N. et al., (2016) [35] | WEAK | STRONG | STRONG | WEAK | STRONG | WEAK | WEAK |
Brown, K. E. et al., (2018) [36] | MODERATE | STRONG | STRONG | WEAK | STRONG | STRONG | MODERATE |
Norman, P. et al., (2018) [37] | WEAK | STRONG | STRONG | WEAK | STRONG | WEAK | WEAK |
Pirzadeh, A. et al., (2020) [38] | WEAK | STRONG | WEAK | WEAK | STRONG | STRONG | WEAK |
Huang, S. J. et al., (2019) [39] | MODERATE | STRONG | STRONG | WEAK | MODERATE | WEAK | WEAK |
Duan, Y. P. et al., (2017) [40] | MODERATE | STRONG | WEAK | WEAK | STRONG | WEAK | WEAK |
Doubova, S. V. et al., (2017) [41] | WEAK | STRONG | STRONG | MODERATE | STRONG | STRONG | MODERATE |
Castillo-Arcos Ldel, C. et al., (2016) [42] | WEAK | STRONG | STRONG | WEAK | WEAK | MODERATE | WEAK |
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de Sousa, D.; Fogel, A.; Azevedo, J.; Padrão, P. The Effectiveness of Web-Based Interventions to Promote Health Behaviour Change in Adolescents: A Systematic Review. Nutrients 2022, 14, 1258. https://doi.org/10.3390/nu14061258
de Sousa D, Fogel A, Azevedo J, Padrão P. The Effectiveness of Web-Based Interventions to Promote Health Behaviour Change in Adolescents: A Systematic Review. Nutrients. 2022; 14(6):1258. https://doi.org/10.3390/nu14061258
Chicago/Turabian Stylede Sousa, Daniela, Adriana Fogel, José Azevedo, and Patrícia Padrão. 2022. "The Effectiveness of Web-Based Interventions to Promote Health Behaviour Change in Adolescents: A Systematic Review" Nutrients 14, no. 6: 1258. https://doi.org/10.3390/nu14061258
APA Stylede Sousa, D., Fogel, A., Azevedo, J., & Padrão, P. (2022). The Effectiveness of Web-Based Interventions to Promote Health Behaviour Change in Adolescents: A Systematic Review. Nutrients, 14(6), 1258. https://doi.org/10.3390/nu14061258