Harrer Mathias, Ebert David Daniel, Kuper Paula, Paganini Sarah, Schlicker Sandra, Terhorst Yannik, Reuter Benedikt, Sander Lasse B, Baumeister Harald
Psychology & Digital Mental Health Care, Technical University Munich, Munich, Germany.
Clinical Psychology and Psychotherapy, Friedrich-Alexander-University Erlangen-Nuremberg, Erlangen, Germany.
Internet Interv. 2023 Jun 7;33:100634. doi: 10.1016/j.invent.2023.100634. eCollection 2023 Sep.
Depression is highly prevalent among individuals with chronic back pain. Internet-based interventions can be effective in treating and preventing depression in this patient group, but it is unclear who benefits most from this intervention format.
In an analysis of two randomized trials ( = 504), we explored ways to predict heterogeneous treatment effects of an Internet-based depression intervention for patients with chronic back pain. Univariate treatment-moderator interactions were explored in a first step. Multilevel model-based recursive partitioning was then applied to develop a decision tree model predicting individualized treatment benefits.
The average effect on depressive symptoms was = -0.43 (95 % CI: -0.68 to -0.17; 9 weeks; PHQ-9). Using univariate models, only back pain medication intake was detected as an effect moderator, predicting higher effects. More complex interactions were found using recursive partitioning, resulting in a final decision tree with six terminal nodes. The model explained a large amount of variation (bootstrap-bias-corrected = 45 %), with predicted subgroup-conditional effects ranging from = 0.24 to -1.31. External validation in a pilot trial among patients on sick leave ( = 76; = 33 %) pointed to the transportability of the model.
The studied intervention is effective in reducing depressive symptoms, but not among all chronic back pain patients. Predictions of the multivariate tree learning model suggest a pattern in which patients with moderate depression and relatively low pain self-efficacy benefit most, while no benefits arise when patients' self-efficacy is already high. If corroborated in further studies, the developed tree algorithm could serve as a practical decision-making tool.
抑郁症在慢性背痛患者中极为普遍。基于互联网的干预措施对于治疗和预防该患者群体的抑郁症可能有效,但尚不清楚谁能从这种干预形式中获益最多。
在对两项随机试验(n = 504)的分析中,我们探索了预测基于互联网的抑郁症干预措施对慢性背痛患者异质性治疗效果的方法。第一步探索单变量治疗调节因素的相互作用。然后应用基于多水平模型的递归划分来开发一个预测个体化治疗获益的决策树模型。
对抑郁症状的平均效应为d = -0.43(95%CI:-0.68至-0.17;9周;PHQ-9)。使用单变量模型,仅发现服用背痛药物是一个效应调节因素,预示着更高的效应。使用递归划分发现了更复杂的相互作用,最终得到一个有六个终端节点的决策树。该模型解释了大量的变异(经自举偏差校正的R² = 45%),预测的亚组条件效应范围为d = 0.24至-1.31。在病假患者的一项试点试验(n = 76;R² = 33%)中的外部验证表明该模型具有可移植性。
所研究的干预措施在减轻抑郁症状方面有效,但并非对所有慢性背痛患者都有效。多变量树学习模型的预测表明,中度抑郁且疼痛自我效能相对较低的患者获益最大,而当患者的自我效能已经很高时则无益处。如果在进一步研究中得到证实,所开发的树算法可作为一种实用的决策工具。