Treatment Modalities for Internet Addiction in Children and Adolescents: A Systematic Review of Randomized Controlled Trials (RCTs)
Abstract
:1. Introduction
2. Materials and Methods
2.1. Search Strategy
2.2. Inclusion Criteria
2.3. Exclusion Criteria
2.4. Study Selection
2.5. Quality Assessment
2.6. Data Synthesis and Analysis
3. Results
3.1. Synthesis of Studies
- Large Sample Size Studies: Efficacy of a Mobile App-Based Coaching Program for Addiction Prevention among Apprentices: Efficacy of a Mobile App-Based Coaching Program for Addiction Prevention among Apprentices: A Cluster-Randomized Controlled Trial [53] and Effects of a brief school-based media literacy intervention on digital media use in adolescents: Cluster randomized controlled trial [54] both have large sample sizes, increasing the power and generalizability of the findings. These studies focus on prevention and intervention programs that could be implemented in school settings. They demonstrate the potential effectiveness of school-based programs and mobile app-based coaching in managing internet addiction among adolescents, with both studies finding a significant intervention effect in reducing problematic internet use behaviors.
- Studies Focused on Treatment and Medication: Combined cognitive behavioral therapy and bupropion for the treatment of problematic on-line game play in adolescents with major depressive disorder [43] and Effectiveness of atomoxetine and methylphenidate for problematic online gaming in adolescents with attention deficit hyperactivity disorder [51] address comorbid conditions associated with problematic internet use and explore the combination of therapy and medication in treating internet addiction and related symptoms. Both studies found significant improvements in internet addiction symptoms and related behaviors, highlighting the importance of addressing psychiatric comorbidities in optimizing treatment outcomes for adolescents with problematic internet use.
- Studies Focused on Cognitive Behavioral Therapy (CBT) and Psychosocial Interventions: A number of studies, including Lindenberg [47], Ya-song Du [48], Uysal [49], Akgül-Gündoğdu [50], and Zhao [52] demonstrate the effectiveness of cognitive behavioral therapy and psychosocial interventions in addressing internet addiction and associated issues. These studies focus on various aspects of adolescents’ lives and found significant improvements in internet addiction symptoms and related behaviors, emphasizing the importance of addressing underlying psychological and social factors in the treatment and prevention of internet addiction among adolescents.
- Studies Focused on Alternative Therapies: Electro-acupuncture treatment for internet addiction: Evidence of normalization of impulse control disorder in adolescents Yang [49] explores an alternative therapy (electro-acupuncture) for treating internet addiction, broadening the range of potential treatment options. The study investigates the effects of electro-acupuncture on impulse control and brain neuron protection, providing insights into its potential mechanisms of action. The study found that both electro-acupuncture and psychological intervention had significantly positive effects on internet addiction in adolescents, particularly in improving psychological experiences and behavioral expressions. Electro-acupuncture might have an advantage over psychological intervention in terms of impulsivity control and brain neuron protection, as evidenced by increased NAA and Cho levels in the prefrontal and anterior cingulate cortices.The RCT papers on internet addiction in adolescents are grouped into four categories: large sample size studies, studies focused on treatment and medication, studies focused on cognitive behavioral therapy (CBT) and psychosocial interventions, and studies focused on alternative therapies. These studies demonstrate the potential effectiveness of various interventions, such as school-based programs, mobile app-based coaching, therapy combined with medication, and alternative therapies like electro-acupuncture, in addressing internet addiction and related issues in adolescents. Key findings across these studies include significant improvements in internet addiction symptoms and related behaviors, as well as the importance of addressing underlying psychological, social, and comorbid factors in the treatment and prevention of internet addiction among adolescents.
3.2. Critical Appraisal of Included Studies and Cochrane Risk of Bias Assessment
4. Discussion
5. Conclusions
6. Limitations
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Number | Title | Author, Year of Publication Type of Trial | Sample Size | Age of Participants Range, Mean | Primary Outcome Measure | Intervention Description | Key Findings |
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1 | Effectiveness of Cognitive Behavioral Therapy–Based Intervention in Preventing Gaming Disorder and Unspecified Internet Use Disorder in Adolescents A Cluster Randomized Clinical Trial [47] | Lindenberg, 2022 RCT | Active group: 167 Control group: 255 | Age Range 12–18 Mean Age 15.11 (SD = 2.01) |
| Professional Use of Technical Media(PROTECT), which is a theory-driven, school-based, manualized, cognitive behavioral therapy (CBT)–based indicated preventive group intervention. It consists of four 90-min sessions and is delivered by 2 trained psychologists per group | The PROTECT intervention group showed a significantly greater reduction in symptom severity of gaming disorder or unspecified internet use disorder compared to the control group (39.8% vs. 27.7% reduction of symptoms). The effect size of the reduction in symptom severity was Cohen d = 0.67. Differences in incidence rates did not reach statistical significance. The PROTECT group showed a significantly greater decrease in procrastination over 12 months. No significant differences were found for other secondary outcomes. |
2 | Combined cognitive behavioral therapy and bupropion for the treatment of problematic on-line game play in adolescents with major depressive disorder [43] | Kim, 2012 RCT | Active group (CBT + MED): 32 Control group MED: 33 | Age Range 13–18 Mean Age: Active group (CBT + MED): 16.2 (SD = 1.4) Control group MED: 15.9 (SD = 1.6) |
| This study created two groups of subjects with problematic online game play and major depressive disorder after screenings All participants were prescribed bupropion with a fixed schedule of 150 mg/day for 1 week followed by 300 mg/day for 7 weeks. Participants in the Med group had weekly, 10 min interviews with a psychiatrist. Participants in the CBT-Med group also received an eight-session CBT provided by a multidisciplinary treatment team including a psychiatrist, nurse, psychologist, and social worker. |
|
3 | Longer Term Effect of Randomized, Controlled Group Cognitive Behavioral Therapy for Internet Addiction in Adolescent Students in Shanghai [48] | Du, 2010 RCT | Active group: 32 Control group: 24 | Age Range 12–17 Mean Age: Active group: years old 15.39 (SD = 1.69) Control group: years old 16.63 (SD = 1.23) |
| This study utilizes a Multimodal school-based intervention with three components 1—8 sessions of Group CBT delivered to 6–10 adolescent students by two child and adolescent psychiatrists. Each session lasted 1.5–2 h, and discussed a unique topic. 2—Group cognitive behavioral parent training. 3—Psychoeducation provided to teachers about identification and treatment of Internet addiction. | Multimodal school-based group CBT is effective for adolescents with Internet addiction, particularly in improving emotional state and regulation ability. It also leads to improvement in behavioral style and self-management style. |
4 | Evaluation of a School-Based Program for Internet Addiction of Adolescents in Turkey [49] | Uysal, 2018 RCT | Active group: 41 Control group: 43 | Age Range: 11–16 Mean Age: Active group: years old 13.1 Control group: 13.05 years old | Internet Addiction Scale (IAS) | Healthy Internet Use Program. This program involves 8 sessions (each 40–80 min long) over a 3-month period. The sessions covered topics regarding internet use and its impact. Parents were interviewed before the start, and in the last week of the program. Also, weekly phone calls were made to parents to track internet use. | The findings suggest that use of the Healthy Internet Use Program decreases the rate of internet addiction among adolescents. |
5 | Electro-acupuncture treatment for internet addiction: Evidence of normalization of impulse control disorder in adolescents [46] | Yang, 2017 RCT | Active group: EA (electro-acupuncture): 16 PI (Psychological Intervention): 16 Control group: 16 | Age Range: 18–30 Mean Age: Active group: EA (electro-acupuncture): 21.13 (SD = 1.3) PI (Psychological Intervention): 21.65 (SD = 2.36) Control group: 21.50 (SD = 1.41) |
| Electro-acupuncture was administered on 10 acupoints using 0.3 mm × 40 mm needles for LI 4, PC 6, LR 3, and SP 6, and 0.3 mm × 25 mm needles for GV 20 and EX-HN 1. Electric stimulation with 2 Hz dilatational and 100 Hz condensation waves was applied, adjusting intensity according to patient tolerance. Needles remained for 30 min per session, given every other day for a total of 20 sessions across 45 days, comprising two treatment courses. |
|
6 | Effect of solution-focused approach on problematic internet use, health behaviors in schoolchildren [50] | Akgül-Gündoğdu, 2023 RCT | Active group: 64 Control group: 64 | Age Range: 10–15 Mean Age: Active group: 12.66 years old Control group: 12.89 years old |
| In the study, four groups of 16 students discussed their internet usage and participated in Solution-Focused Approach (SFA) techniques to address problematic internet use. Techniques included Magic Sphere, Letter Writing, Miracle Question, Exceptional Situation Question, Cheerleading Effect/Compliment, Grading, and Homework. Students attended six sessions, held every two weeks, lasting 30–45 min each. | The intervention group attended six solution-focused approach (SFA) group meetings. SFA may prevent students’ uncontrolled internet use, help them gain positive health behaviors, and increase perceived academic success. |
7 | Effectiveness of atomoxetine and methylphenidate for problematic online gaming in adolescents with attention deficit hyperactivity disorder [51] | Park, 2016 Single Blinded RCT | Active group: MPH: 44 ATM: 42 No Control Groups. | Age Range: 13–18 Mean Age: Active group: MPH: 16.9 years old (SD = 1.6) ATM: 17.1 years old (SD = 1) No Control Groups. |
| Participants were randomly assigned to either the MPH group or the ATM group at a 1:1 ratio. The MPH group participants started on MPH 10 mg/day and increased to 40 mg/day during the first 2 weeks as per individual symptoms. The ATM group participants were started on ATM 10 mg/day and increased to 60 mg/day during the first 2 weeks as per individual symptoms. |
|
8 | Effect of Social-Psychological Intervention on Self-Efficacy, Social Adaptability, and Quality of Life of Internet-Addicted Teenagers [52] | Zhao, 2022 RCT | Active group: 50 Control group: 50 | Age Range: 12–19 Mean Age: Active group: years old 15.25 (SD = 2.12) Control group: 15.16 years old (SD = 2.18) |
| Participants were divided into five groups of 10, based on common traits, and met weekly for 1-h sessions over three months. They fostered relationships and identified healthy internet use by watching addiction-related sitcoms, sharing feedback, feelings, and suggestions to improve their online behaviors. Finally, they signed a behavior contract and publicly committed to rectifying their ‘bad’ online habits. | Social psychological intervention can effectively improve the self-efficacy of internet-addicted teenagers, correct. Their bad surfing habits and improve their social adaptability and quality of life. |
9 | Efficacy of a Mobile App-Based Coaching Program for Addiction Prevention among Apprentices: A Cluster-Randomized Controlled Trial [53] | Haug, 2022 Cluster- RCT | Active group: 688 Control group: 663 | Age Range: 16–19 Mean Age: Active group: years old 17.3 (SD =2.7) Control group: years old 17.4 (SD = 3.2) |
| participants used a mobile app-based program ready4life, which provides individualized coaching by a conversational agent based on information provided by participants. Participant can then choose 2 out of 6 modules and chose to receive coaching for each topic for a total of 8 weeks | The mobile app-based coaching was effective in reducing risk behaviors such as at-risk drinking and problematic Internet use in a group of adolescents who have an especially high risk of engaging in addictive activities. |
10 | Effects of a brief school-based media literacy intervention on digital media use in adolescents: Cluster randomized controlled trial. [54] | Walther, 2014 cluster-RCT | Active group: 804 Control group: 1039 | Age Rage: 10–14 Mean Age: Active group: 11.8 years old (SD = 0.80) Control group: 12.1 years old (SD = 0.83) |
| Participants engaged in a media literacy program Vernetzte www.Welten (“Connected www.Worlds”) which was implemented by trained teachers during class time. The control group attended regular class. |
|
Study | Random Sequence Generation | Allocation Concealment | Blinding of Participants and Personnel | Blinding of Outcome Assessment | Incomplete Outcome Data | Selective Reporting | Overall Risk of Bias | |
---|---|---|---|---|---|---|---|---|
1 | Lindenberg et al., 2022 [47] | Low | Low | Low | Low | Low | Low | Some concerns |
2 | Kim et al., 2012 [43] | Low | Low | Low | Low | Low | Low | Low |
3 | Du et al., 2010 [48] | Low | Unclear | High | Low | Low | Low | some concerns |
4 | Uysal et al., 2018 [49] | Low | Unclear | High | Unclear | High | Unclear | High |
5 | Yi Zhao et al., 2022 [52] | Low | Low | Unclear | Low | Low | Low | Unclear |
6 | Park et al., 2016 [51] | Low | Low | High | High | Low | High | moderate to high risk |
7 | Haug et al., 2022 [53] | Low | Low | Low | Low | Low | Low | Low |
8 | Walther et al., 2012 [54] | Low | Low | Low | Low | Low | Low | Some concerns |
9 | Akgül-Gündoğdu et al., 2022 [50] | Low | Low | High | Low | Low | Low | Unclear |
10 | Yang et al., 2017 [46] | Low | High | High | Low | Low | Low | High |
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Ayub, S.; Jain, L.; Parnia, S.; Bachu, A.; Farhan, R.; Kumar, H.; Sullivan, A.; Ahmed, S. Treatment Modalities for Internet Addiction in Children and Adolescents: A Systematic Review of Randomized Controlled Trials (RCTs). J. Clin. Med. 2023, 12, 3345. https://doi.org/10.3390/jcm12093345
Ayub S, Jain L, Parnia S, Bachu A, Farhan R, Kumar H, Sullivan A, Ahmed S. Treatment Modalities for Internet Addiction in Children and Adolescents: A Systematic Review of Randomized Controlled Trials (RCTs). Journal of Clinical Medicine. 2023; 12(9):3345. https://doi.org/10.3390/jcm12093345
Chicago/Turabian StyleAyub, Shahana, Lakshit Jain, Shanli Parnia, Anil Bachu, Rabeea Farhan, Harendra Kumar, Amanda Sullivan, and Saeed Ahmed. 2023. "Treatment Modalities for Internet Addiction in Children and Adolescents: A Systematic Review of Randomized Controlled Trials (RCTs)" Journal of Clinical Medicine 12, no. 9: 3345. https://doi.org/10.3390/jcm12093345
APA StyleAyub, S., Jain, L., Parnia, S., Bachu, A., Farhan, R., Kumar, H., Sullivan, A., & Ahmed, S. (2023). Treatment Modalities for Internet Addiction in Children and Adolescents: A Systematic Review of Randomized Controlled Trials (RCTs). Journal of Clinical Medicine, 12(9), 3345. https://doi.org/10.3390/jcm12093345