Predicting remission following CBT for childhood anxiety disorders: a machine learning approach.

IF 5.9 2区 医学 Q1 PSYCHIATRY Psychological Medicine Pub Date : 2024-12-17 DOI:10.1017/S0033291724002654
Lizel-Antoinette Bertie, Juan C Quiroz, Shlomo Berkovsky, Kristian Arendt, Susan Bögels, Jonathan R I Coleman, Peter Cooper, Cathy Creswell, Thalia C Eley, Catharina Hartman, Krister Fjermestadt, Tina In-Albon, Kristen Lavallee, Kathryn J Lester, Heidi J Lyneham, Carla E Marin, Anna McKinnon, Lauren F McLellan, Richard Meiser-Stedman, Maaike Nauta, Ronald M Rapee, Silvia Schneider, Carolyn Schniering, Wendy K Silverman, Mikael Thastum, Kerstin Thirlwall, Polly Waite, Gro Janne Wergeland, Viviana Wuthrich, Jennifer L Hudson
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Abstract

Background: The identification of predictors of treatment response is crucial for improving treatment outcome for children with anxiety disorders. Machine learning methods provide opportunities to identify combinations of factors that contribute to risk prediction models.

Methods: A machine learning approach was applied to predict anxiety disorder remission in a large sample of 2114 anxious youth (5-18 years). Potential predictors included demographic, clinical, parental, and treatment variables with data obtained pre-treatment, post-treatment, and at least one follow-up.

Results: All machine learning models performed similarly for remission outcomes, with AUC between 0.67 and 0.69. There was significant alignment between the factors that contributed to the models predicting two target outcomes: remission of all anxiety disorders and the primary anxiety disorder. Children who were older, had multiple anxiety disorders, comorbid depression, comorbid externalising disorders, received group treatment and therapy delivered by a more experienced therapist, and who had a parent with higher anxiety and depression symptoms, were more likely than other children to still meet criteria for anxiety disorders at the completion of therapy. In both models, the absence of a social anxiety disorder and being treated by a therapist with less experience contributed to the model predicting a higher likelihood of remission.

Conclusions: These findings underscore the utility of prediction models that may indicate which children are more likely to remit or are more at risk of non-remission following CBT for childhood anxiety.

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预测儿童焦虑症 CBT 治疗后的缓解:一种机器学习方法。
背景:确定治疗反应的预测因素对于改善焦虑症儿童的治疗效果至关重要。机器学习方法为确定有助于风险预测模型的因素组合提供了机会:方法:在 2114 名焦虑症青少年(5-18 岁)的大样本中,采用机器学习方法预测焦虑症缓解情况。潜在的预测因素包括人口统计学、临床、父母和治疗变量,数据来自治疗前、治疗后和至少一次随访:所有机器学习模型在缓解结果方面的表现相似,AUC 在 0.67 和 0.69 之间。有助于模型预测两个目标结果的因素之间存在明显的一致性:所有焦虑症的缓解和主要焦虑症的缓解。与其他儿童相比,年龄较大、患有多种焦虑症、合并抑郁症、合并外部化障碍、接受小组治疗和由经验更丰富的治疗师提供治疗、父母焦虑和抑郁症状较重的儿童,在治疗结束时仍符合焦虑症标准的可能性更大。在这两个模型中,不存在社交焦虑症以及由经验较少的治疗师进行治疗,都有助于模型预测出更高的缓解可能性:这些发现强调了预测模型的实用性,该模型可以显示哪些儿童在接受儿童焦虑症 CBT 治疗后更有可能缓解焦虑症或更有可能无法缓解焦虑症。
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来源期刊
Psychological Medicine
Psychological Medicine 医学-精神病学
CiteScore
11.30
自引率
4.30%
发文量
711
审稿时长
3-6 weeks
期刊介绍: Now in its fifth decade of publication, Psychological Medicine is a leading international journal in the fields of psychiatry, related aspects of psychology and basic sciences. From 2014, there are 16 issues a year, each featuring original articles reporting key research being undertaken worldwide, together with shorter editorials by distinguished scholars and an important book review section. The journal''s success is clearly demonstrated by a consistently high impact factor.
期刊最新文献
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