Clinical, genetic, and sociodemographic predictors of symptom severity after internet-delivered cognitive behavioural therapy for depression and anxiety.

IF 3.4 2区 医学 Q2 PSYCHIATRY
Olly Kravchenko, Julia Bäckman, David Mataix-Cols, James J Crowley, Matthew Halvorsen, Patrick F Sullivan, John Wallert, Christian Rück
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引用次数: 0

Abstract

Background: Internet-delivered cognitive behavioural therapy (ICBT) is an effective and accessible treatment for mild to moderate depression and anxiety disorders. However, up to 50% of patients do not achieve sufficient symptom relief. Identifying patient characteristics predictive of higher post-treatment symptom severity is crucial for devising personalized interventions to avoid treatment failures and reduce healthcare costs.

Methods: Using the Swedish multimodal database MULTI-PSYCH, we evaluated novel and established predictors associated with treatment outcome and assessed the added benefit of polygenic risk scores (PRS) and nationwide register data in a sample of 2668 patients treated with ICBT for major depressive disorder, panic disorder, and social anxiety disorder. Two linear regression models were compared: a baseline model employing six well-established predictors and a full model incorporating six clinic-based, 32 register-based predictors, and PRS for seven psychiatric disorders and traits. Predictor importance was assessed through bivariate associations, and models were compared by the variance explained in post-treatment symptom scores.

Results: Our analysis identified several novel predictors of higher post-treatment severity, including comorbid ASD and ADHD, receipt of financial benefits, and prior use of psychotropic medications. The baseline model explained 27%, while the full model accounted for 34% of the variance.

Conclusions: The findings suggest that a model incorporating a broad array of multimodal data offered a modest improvement in explanatory power compared to one using a limited set of easily accessible measures. Employing machine learning algorithms capable of capturing complex non-linear associations and interactions is a viable next step to improve prediction of post-ICBT symptom severity.

Clinical trial number: Not applicable.

网络认知行为疗法治疗抑郁和焦虑后症状严重程度的临床、遗传和社会人口学预测因素
背景:互联网认知行为疗法(ICBT)是一种有效且易于获得的治疗轻中度抑郁和焦虑障碍的方法。然而,高达50%的患者没有达到充分的症状缓解。识别可预测治疗后症状严重程度的患者特征对于设计个性化干预措施以避免治疗失败和降低医疗成本至关重要。方法:使用瑞典多模式数据库multipsych,我们评估了与治疗结果相关的新的和已建立的预测因素,并评估了多基因风险评分(PRS)和全国登记数据的额外益处,这些数据来自2668名接受ICBT治疗的重度抑郁症、恐慌症和社交焦虑症患者。比较了两种线性回归模型:采用6个成熟预测因子的基线模型和包含6个基于临床、32个基于登记的预测因子的完整模型,以及针对7种精神疾病和特征的PRS。通过双变量关联评估预测因子的重要性,并通过治疗后症状评分解释的方差来比较模型。结果:我们的分析确定了治疗后严重程度较高的几个新的预测因素,包括ASD和ADHD合并症、获得经济利益和先前使用精神药物。基线模型解释了27%的差异,而完整模型解释了34%的差异。结论:研究结果表明,与使用一组有限的易于获取的测量方法相比,包含广泛的多模态数据的模型在解释力方面有适度的提高。采用能够捕获复杂非线性关联和相互作用的机器学习算法是改善icbt后症状严重程度预测的可行下一步。临床试验号:不适用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
BMC Psychiatry
BMC Psychiatry 医学-精神病学
CiteScore
5.90
自引率
4.50%
发文量
716
审稿时长
3-6 weeks
期刊介绍: BMC Psychiatry is an open access, peer-reviewed journal that considers articles on all aspects of the prevention, diagnosis and management of psychiatric disorders, as well as related molecular genetics, pathophysiology, and epidemiology.
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