In-person vs. eHealth Mindfulness-based Intervention for Adolescents with Chronic Illnesses: A Pilot Randomized Trial

ADOLESCENT PSYCHIATRY(2019)

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摘要
Background: Mindfulness-Based Interventions (MBIs) can improve mental health and well-being in adolescents with chronic illnesses. However, there are many barriers such as reduced mobility and distance which compromise accessibility to MBIs. Objective: The aim of this study was to determine the effectiveness of the Mindful Awareness and Resilience Skills for Adolescents (MARS-A) program in youth with chronic illnesses delivered in person or via eHealth. Methods: In this mixed method randomized controlled trial, participants received weekly 90-minute long MARS-A sessions for 8 weeks, either in person or via a secure eHealth audiovisual platform allowing group interactions in real time. Data was collected at baseline, immediately after and two months post-MBI through saliva analyses, electronic participant logs and validated questionnaires assessing mindfulness skills and mental health outcomes. Results: Seven participants per group completed the intervention (total n=14, completion rate 77.8%). Paired t-test analyses revealed a significant reduction in depression/anxiety scores immediately post-intervention (p=0.048, Cohen's d=0.934) and a significant reduction in pre-post mindfulness cortisol levels at week 8 (p=0.022, Cohen's d=0.534) in the eHealth group. Frequency and duration of weekly individual home practice (eHealth: 6.5 times; 28.8 minutes; in-person: 6.0 times; 30.6 minutes) were similar in both groups and maintained at follow-up. Conclusion: This is the first study comparing in-person and eHealth delivery of an 8-week MBI for adolescents with chronic illnesses. Although the study was limited by the small size of the sample, our results suggest that eHealth delivery of MBIs may represent a promising avenue for increasing availability in this population.
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关键词
Adolescent,mindfulness,eHealth,chronic illness,randomized controlled trial,MARS-A
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