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采用个性化优势指数为个体分配认知行为疗法(CBT)或整合暴露和情绪焦点元素的 CBT(CBT-EE)治疗。

Using the Personalized Advantage Index for individual treatment allocation to cognitive behavioral therapy (CBT) or a CBT with integrated exposure and emotion-focused elements (CBT-EE).

机构信息

Department of Clinical Psychology and Psychotherapy, University of Bern, Switzerland.

Division of Psychosomatic Medicine, Department of Neurology, Inselspital, Bern University Hospital, Bern, Switzerland.

出版信息

Psychother Res. 2020 Jul;30(6):763-775. doi: 10.1080/10503307.2019.1664782. Epub 2019 Sep 11.

DOI:10.1080/10503307.2019.1664782
PMID:31507250
Abstract

Even though different psychotherapeutic interventions for depression have shown to be effective, patients suffering from depression vary substantially in their treatment response. The goal of this study was to answer the following research questions: (1) What are the most important predictors determining optimal treatment allocation to cognitive behavioral therapy (CBT) or CBT with integrated exposure and emotion-focused elements (CBT-EE)?, and (2) Would model-determined treatment allocation using this predictive information result in better treatment outcomes? Bayesian Model Averaging (BMA) was applied to the data of a randomized controlled trial comparing the efficacy of CBT and CBT-EE in depressive outpatients. Predictions were made for every patient for both treatment conditions and an optimal versus a suboptimal treatment was identified in each case. An index comparing the two estimates, the Personalized Advantage Index (PAI), was calculated. Different predictors were found for both conditions. A PAI of 1.35 BDI-II points for the two conditions was found and 46% of the sample was predicted to have a clinically meaningful advantage in one of the therapies. Although the utility of the PAI approach must be further confirmed in prospective research, the present study study promotes the identification of specific interventions favorable for specific patients.

摘要

尽管不同的心理治疗干预措施对抑郁症都显示出有效,但患有抑郁症的患者在治疗反应方面存在很大差异。本研究旨在回答以下研究问题:(1)决定认知行为疗法(CBT)或整合暴露和情绪焦点元素的 CBT(CBT-EE)最佳治疗分配的最重要预测因素是什么?,(2)使用此预测信息确定的模型驱动的治疗分配是否会导致更好的治疗结果?贝叶斯模型平均(BMA)应用于一项比较抑郁门诊患者 CBT 和 CBT-EE 疗效的随机对照试验的数据。对两种治疗条件的每位患者进行预测,并在每种情况下确定最佳治疗与次优治疗。计算了比较这两个估计值的指数,即个性化优势指数(PAI)。对于两种情况都发现了不同的预测因素。对于两种情况,发现 PAI 为 1.35 BDI-II 点,46%的样本在其中一种治疗中有临床意义的优势。尽管 PAI 方法的实用性必须在前瞻性研究中进一步证实,但本研究促进了识别有利于特定患者的具体干预措施。

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