Department of Clinical Psychological Science, Maastricht University, Maastricht, The Netherlands.
Department of Psychology, University of Pennsylvania, Philadelphia, USA.
Psychol Med. 2021 Jan;51(2):279-289. doi: 10.1017/S0033291719003192. Epub 2019 Nov 22.
Psychotherapies for depression are equally effective on average, but individual responses vary widely. Outcomes can be improved by optimizing treatment selection using multivariate prediction models. A promising approach is the Personalized Advantage Index (PAI) that predicts the optimal treatment for a given individual and the magnitude of the advantage. The current study aimed to extend the PAI to long-term depression outcomes after acute-phase psychotherapy.
Data come from a randomized trial comparing cognitive therapy (CT, n = 76) and interpersonal psychotherapy (IPT, n = 75) for major depressive disorder (MDD). Primary outcome was depression severity, as assessed by the BDI-II, during 17-month follow-up. First, predictors and moderators were selected from 38 pre-treatment variables using a two-step machine learning approach. Second, predictors and moderators were combined into a final model, from which PAI predictions were computed with cross-validation. Long-term PAI predictions were then compared to actual follow-up outcomes and post-treatment PAI predictions.
One predictor (parental alcohol abuse) and two moderators (recent life events; childhood maltreatment) were identified. Individuals assigned to their PAI-indicated treatment had lower follow-up depression severity compared to those assigned to their PAI-non-indicated treatment. This difference was significant in two subsets of the overall sample: those whose PAI score was in the upper 60%, and those whose PAI indicated CT, irrespective of magnitude. Long-term predictions did not overlap substantially with predictions for acute benefit.
If replicated, long-term PAI predictions could enhance precision medicine by selecting the optimal treatment for a given depressed individual over the long term.
抑郁症的心理疗法平均效果相当,但个体反应差异很大。通过使用多变量预测模型优化治疗选择,可以提高治疗效果。一种有前途的方法是个性化优势指数(PAI),它可以预测针对特定个体的最佳治疗方法和优势程度。本研究旨在将 PAI 扩展到急性心理治疗后长期抑郁的结果。
数据来自一项比较认知疗法(CT,n = 76)和人际心理治疗(IPT,n = 75)治疗重度抑郁症(MDD)的随机试验。主要结果是使用 BDI-II 在 17 个月的随访期间评估的抑郁严重程度。首先,使用两步机器学习方法从 38 个治疗前变量中选择预测因子和调节剂。其次,将预测因子和调节剂合并到最终模型中,通过交叉验证计算 PAI 预测。然后将长期 PAI 预测与实际随访结果和治疗后 PAI 预测进行比较。
确定了一个预测因子(父母酗酒)和两个调节剂(近期生活事件;儿童期虐待)。与被分配到 PAI 非指示性治疗的个体相比,被分配到 PAI 指示性治疗的个体在随访期间的抑郁严重程度较低。这种差异在总体样本的两个子集中具有统计学意义:那些 PAI 得分在 60%以上的个体,以及那些 PAI 指示 CT 的个体,无论优势程度如何。长期预测与急性获益预测没有明显重叠。
如果得到复制,长期 PAI 预测可以通过为特定的抑郁个体选择长期最佳治疗方法来增强精准医学。