Department of Psychology, University of Pennsylvania, Philadelphia, PA, USA.
Arkin Mental Health Care, Amsterdam, The Netherlands.
Psychother Res. 2020 Feb;30(2):137-150. doi: 10.1080/10503307.2018.1563312. Epub 2019 Jan 11.
: We use a new variable selection procedure for treatment selection which generates treatment recommendations based on pre-treatment characteristics for adults with mild-to-moderate depression deciding between cognitive behavioral (CBT) versus psychodynamic therapy (PDT). : Data are drawn from a randomized comparison of CBT versus PDT for depression ( = 167, 71% female, mean-age = 39.6). The approach combines four different statistical techniques to identify patient characteristics associated consistently with differential treatment response. Variables are combined to generate predictions indicating each individual's optimal-treatment. The average outcomes for patients who received their indicated treatment versus those who did not were compared retrospectively to estimate model utility. : Of 49 predictors examined, depression severity, anxiety sensitivity, extraversion, and psychological treatment-needs were included in the final model. The average post-treatment Hamilton-Depression-Rating-Scale score was 1.6 points lower (95%CI = [0.5:2.8]; = 0.21) for those who received their indicated-treatment compared to non-indicated. Among the 60% of patients with the strongest treatment recommendations, that advantage grew to 2.6 (95%CI = [1.4:3.7]; = 0.37). : Variable selection procedures differ in their characterization of the importance of predictive variables. Attending to consistently-indicated predictors may be sensible when constructing treatment selection models. The small N and lack of separate validation sample indicate a need for prospective tests before this model is used.
我们使用了一种新的变量选择程序来进行治疗选择,该程序根据轻度至中度抑郁症成人的治疗前特征生成治疗建议,以决定选择认知行为疗法(CBT)还是心理动力学疗法(PDT)。
数据来自 CBT 与 PDT 治疗抑郁症的随机比较( = 167,71%为女性,平均年龄 = 39.6)。该方法结合了四种不同的统计技术来识别与治疗反应差异相关的患者特征。变量组合生成预测结果,表明每个个体的最佳治疗方案。比较接受指定治疗与未接受指定治疗的患者的平均结局,以评估模型的实用性。
在 49 个预测因子中,抑郁严重程度、焦虑敏感性、外向性和心理治疗需求被纳入最终模型。与未接受指定治疗的患者相比,接受指定治疗的患者在治疗后的 Hamilton 抑郁量表评分平均降低了 1.6 分(95%CI = [0.5:2.8]; = 0.21)。在治疗建议最强的 60%患者中,这一优势增加到 2.6(95%CI = [1.4:3.7]; = 0.37)。
变量选择程序在预测变量重要性的描述上存在差异。在构建治疗选择模型时,关注一致指示性的预测因子可能是明智的。小样本量和缺乏单独的验证样本表明,在使用该模型之前需要进行前瞻性测试。