Browning Michael, Bilderbeck Amy C, Dias Rebecca, Dourish Colin T, Kingslake Jonathan, Deckert Jürgen, Goodwin Guy M, Gorwood Philip, Guo Boliang, Harmer Catherine J, Morriss Richard, Reif Andreas, Ruhe Henricus G, van Schaik Anneke, Simon Judit, Sola Victor Perez, Veltman Dick J, Elices Matilde, Lever Anne G, Menke Andreas, Scanferla Elisabetta, Stäblein Michael, Dawson Gerard R
P1vital Ltd, Howbery Park, Wallingford, UK.
Department of Psychiatry, University of Oxford, Oxford, UK.
Neuropsychopharmacology. 2021 Jun;46(7):1307-1314. doi: 10.1038/s41386-021-00981-z. Epub 2021 Feb 26.
Depressed patients often do not respond to the first antidepressant prescribed, resulting in sequential trials of different medications. Personalised medicine offers a means of reducing this delay; however, the clinical effectiveness of personalised approaches to antidepressant treatment has not previously been tested. We assessed the clinical effectiveness of using a predictive algorithm, based on behavioural tests of affective cognition and subjective symptoms, to guide antidepressant treatment. We conducted a multicentre, open-label, randomised controlled trial in 913 medication-free depressed patients. Patients were randomly assigned to have their antidepressant treatment guided by a predictive algorithm or treatment as usual (TaU). The primary outcome was the response of depression symptoms, defined as a 50% or greater reduction in baseline score of the QIDS-SR-16 scale, at week 8. Additional prespecified outcomes included symptoms of anxiety at week 8, and symptoms of depression and functional outcome at weeks 8, 24 and 48. The response rate of depressive symptoms at week 8 in the PReDicT (55.9%) and TaU (51.8%) arms did not differ significantly (odds ratio: 1.18 (95% CI: 0.89-1.56), P = 0.25). However, there was a significantly greater reduction of anxiety in week 8 and a greater improvement in functional outcome at week 24 in the PReDicT arm. Use of the PReDicT test did not increase the rate of response to antidepressant treatment estimated by depressive symptoms but did improve symptoms of anxiety at week 8 and functional outcome at week 24. Our findings indicate that personalisation of antidepressant treatment may improve outcomes in depressed patients.
抑郁症患者通常对首次开具的抗抑郁药没有反应,因此需要依次试用不同的药物。个性化医疗提供了一种减少这种延误的方法;然而,此前尚未对个性化抗抑郁治疗方法的临床效果进行测试。我们评估了基于情感认知行为测试和主观症状的预测算法指导抗抑郁治疗的临床效果。我们对913名未服用过药物的抑郁症患者进行了一项多中心、开放标签、随机对照试验。患者被随机分配接受由预测算法指导的抗抑郁治疗或常规治疗(TaU)。主要结局是第8周时抑郁症状的反应,定义为QIDS-SR-16量表基线评分降低50%或更多。其他预先指定的结局包括第8周时的焦虑症状,以及第8周、24周和48周时的抑郁症状和功能结局。在PReDicT组(55.9%)和TaU组(51.8%)中,第8周时抑郁症状的反应率没有显著差异(优势比:1.18(95%CI:0.89-1.56),P = 0.25)。然而,PReDicT组在第8周时焦虑症状的减轻更为显著,在第24周时功能结局的改善更为明显。使用PReDicT测试并没有提高根据抑郁症状估计的抗抑郁治疗反应率,但确实改善了第8周时的焦虑症状和第24周时的功能结局。我们的研究结果表明,抗抑郁治疗的个性化可能会改善抑郁症患者的结局。