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Cognitive-Behavioral Analysis System of Psychotherapy, Drug, or Their Combination for Persistent Depressive Disorder: Personalizing the Treatment Choice Using Individual Participant Data Network Metaregression

机译:心理治疗,药物或其对持续抑郁症的组合的认知行为分析系统:使用个别参与者数据网络实现个性化治疗选择

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Background: Persistent depressive disorder is prevalent, disabling, and often difficult to treat. The cognitive-behavioral analysis system of psychotherapy (CBASP) is the only psychotherapy specifically developed for its treatment. However, we do not know which of CBASP, antidepressant pharmacotherapy, or their combination is the most efficacious and for which types of patients. This study aims to present personalized prediction models to facilitate shared decision- making in treatment choices to match patients' characteristics and preferences based on individual participant data network metaregression. Methods: We conducted a comprehensive search for randomized controlled trials comparing any two of CBASP, pharmacotherapy, or their combination and sought individual participant data from identified trials. The primary outcomes were reduction in depressive symptom severity for efficacy and dropouts due to any reason for treatment acceptability. Results: All 3 identified studies (1,036 participants) were included in the present analyses. On average, the combination therapy showed significant superiority over both monotherapies in terms of efficacy and acceptability, while the latter 2 treatments showed essentially similar results. Baseline depression, anxiety, prior pharmacotherapy, age, and depression subtypes moderated their relative efficacy, which indicated that for certain subgroups of patients either drug therapy or CBASP alone was a recommendable treatment option that is less costly, may have fewer adverse effects and match an individual patient's preferences. An interactive web app (https://kokoro.med.kyoto-u.ac.jp/CBASP/prediction/) shows the predicted disease course for all possible combinations of patient characteristics. Conclusions: Individual participant data network metaregression enables treatment recommendations based on individual patient characteristics. (C) 2018 S. Karger AG, Basel
机译:背景:持续抑郁症是普遍的,致残,往往难以治疗。心理治疗(CBASP)的认知行为分析系统是唯一用于其治疗的心理治疗。然而,我们不知道CBASP,抗抑郁药物治疗或其组合是最有效的,类型的患者。本研究旨在展示个性化预测模型,以促进在治疗选择中共享决策,以基于个别参与者数据网络元的讨论患者的特征和偏好。方法:我们对随机对照试验进行了全面的搜索,比较了任何两种CBASP,药物疗法或其组合,并寻求来自所识别的试验的个人参与者数据。由于治疗可接受性的任何原因,主要结果减少了疗效和辍学的疗效和辍学的严重程度。结果:本分析中包含所有3项确定的研究(1,036名参与者)。平均而言,联合治疗在功效和可接受性方面表现出对两种单法的显着优势,而后者2治疗表现出基本相似的结果。基线抑郁,焦虑,先前药物疗法,年龄和抑郁症患者的相对功效,表明对于某些患者的亚组,单独的药物治疗或CBASP是一个不太成本的可推荐的治疗选择,可能具有更少的不利影响并匹配个人患者的偏好。交互式Web应用程序(https://kokoro.med.kyoto-u.ac.jp/cbasp/prediction/)显示了预测的疾病课程,以获得患者特征的所有可能组合。结论:个人参与者数据网络METAREGRONGS基于个体患者特征实现治疗建议。 (c)2018年S. Karger AG,巴塞尔

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