个性化压力优化干预减少青少年焦虑:一项利用机器学习的随机对照试验

IF 4.8 2区 医学 Q1 PSYCHIATRY Journal of Anxiety Disorders Pub Date : 2025-01-03 DOI:10.1016/j.janxdis.2024.102964
Jinmeng Liu, Jun Hu, Yuxue Qi, Xuebing Wu, Yiqun Gan
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引用次数: 0

摘要

焦虑症状是青少年中最普遍的精神健康障碍之一,因此需要采取可扩展和可获得的干预措施。在青春期,焦虑常常与感知到的压力同时发生,压力干预可能为减少焦虑提供了一种有希望的方法。以前的压力干预主要集中在压力是有害的观点上,旨在管理和减轻其负面影响。压力优化提出了一种新的干预视角,表明压力也可以导致积极的结果。然而,压力优化是否能有效减轻青少年的焦虑症状尚不清楚。我们开发了一种单次应力优化干预措施,并研究了其最有效的条件。进行了一项大规模随机对照试验(N = 1779,年龄12-18岁),参与者在两个月的随访期间报告了他们的感知压力,压力心态和焦虑。机器学习是评估个性化干预效果的一种很有前途的方法。采用保守贝叶斯因果森林分析来检测治疗效果和异质性干预效果。结果显示,在两个月的随访中,干预有效地减少了学校环境中的焦虑症状(后验概率为0.87)。此外,在基线时焦虑和感知压力较高的青少年在焦虑结果上的下降最为显著(标准偏差分别为-0.18和-0.11)。单次应力优化干预具有成本效益。
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Personalized stress optimization intervention to reduce adolescents' anxiety: A randomized controlled trial leveraging machine learning.

Anxiety symptoms are among the most prevalent mental health disorders in adolescents, highlighting the need for scalable and accessible interventions. As anxiety often co-occurs with perceived stress during adolescence, stress interventions may offer a promising approach to reducing anxiety. Previous stress interventions have largely focused on the view that stress is harmful, aiming to manage and mitigate its negative effects. Stress optimization presents a novel intervention perspective, suggesting that stress can also lead to positive outcomes. However, it remains unclear whether stress optimization can effectively reduce anxiety symptoms in adolescents. We developed a single-session stress optimization intervention and investigated the conditions under which it was most effective. A large-scale randomized controlled trial was conducted (N = 1779, aged 12-18 years), with participants reporting their perceived stress, stress mindset, and anxiety over a two-month follow-up period. Machine learning is a promising approach for assessing personalized intervention effects. Conservative Bayesian causal forest analysis was employed to detect both treatment and heterogeneous intervention effects. The findings revealed that the intervention effectively reduced anxiety symptoms in the school context over a two-month follow-up (0.87 posterior probability). Furthermore, adolescents with higher anxiety and perceived stress at baseline experienced the most significant reductions in anxiety outcomes (standard deviations of -0.18 and -0.11 respectively). The single-session stress optimization intervention demonstrated potential for cost-effective scaling.

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来源期刊
CiteScore
16.60
自引率
2.90%
发文量
95
期刊介绍: The Journal of Anxiety Disorders is an interdisciplinary journal that publishes research papers on all aspects of anxiety disorders for individuals of all age groups, including children, adolescents, adults, and the elderly. Manuscripts that focus on disorders previously classified as anxiety disorders such as obsessive-compulsive disorder and posttraumatic stress disorder, as well as the new category of illness anxiety disorder, are also within the scope of the journal. The research areas of focus include traditional, behavioral, cognitive, and biological assessment; diagnosis and classification; psychosocial and psychopharmacological treatment; genetics; epidemiology; and prevention. The journal welcomes theoretical and review articles that significantly contribute to current knowledge in the field. It is abstracted and indexed in various databases such as Elsevier, BIOBASE, PubMed/Medline, PsycINFO, BIOSIS Citation Index, BRS Data, Current Contents - Social & Behavioral Sciences, Pascal Francis, Scopus, and Google Scholar.
期刊最新文献
Intolerance of uncertainty, aging, and anxiety and mental health concerns: A scoping review and meta-analysis. Mindfulness- and acceptance-based programmes for obsessive-compulsive disorder: A systematic review and meta-analysis. Personalized stress optimization intervention to reduce adolescents' anxiety: A randomized controlled trial leveraging machine learning. Epidemiology of DSM-5 PTSD and ICD-11 PTSD and complex PTSD in the Netherlands. Post-event processing in social anxiety: A scoping review.
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