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Treatment response classes in major depressive disorder identified by model-based clustering and validated by clinical prediction models

机译:通过基于模型的聚类确定并通过临床预测模型验证的重大抑郁症的治疗反应类别

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摘要

The identification of generalizable treatment response classes (TRC[s]) in major depressive disorder (MDD) would facilitate comparisons across studies and the development of treatment prediction algorithms. Here, we investigated whether such stable TRCs can be identified and predicted by clinical baseline items. We analyzed data from an observational MDD cohort (Munich Antidepressant Response Signature [MARS] study, N = 1017), treated individually by psychopharmacological and psychotherapeutic means, and a multicenter, partially randomized clinical/pharmacogenomic study (Genome-based Therapeutic Drugs for Depression [GENDEP], N = 809). Symptoms were evaluated up to week 16 (or discharge) in MARS and week 12 in GENDEP. Clustering was performed on 809 MARS patients (discovery sample) using a mixed model with the integrated completed likelihood criterion for the assessment of cluster stability, and validated through a distinct MARS validation sample and GENDEP. A random forest algorithm was used to identify prediction patterns based on 50 clinical baseline items. From the clustering of the MARS discovery sample, seven TRCs emerged ranging from fast and complete response (average 4.9 weeks until discharge, 94% remitted patients) to slow and incomplete response (10% remitted patients at week 16). These proved stable representations of treatment response dynamics in both the MARS and the GENDEP validation sample. TRCs were strongly associated with established response markers, particularly the rate of remitted patients at discharge. TRCs were predictable from clinical items, particularly personality items, life events, episode duration, and specific psychopathological features. Prediction accuracy improved significantly when cluster-derived slopes were modelled instead of individual slopes. In conclusion, model-based clustering identified distinct and clinically meaningful treatment response classes in MDD that proved robust with regard to capturing response profiles of differently designed studies. Response classes were predictable from clinical baseline characteristics. Conceptually, model-based clustering is translatable to any outcome measure and could advance the large-scale integration of studies on treatment efficacy or the neurobiology of treatment response.
机译:在重度抑郁症(MDD)中确定可概括的治疗反应类别(TRC [s])将有助于进行研究之间的比较以及治疗预测算法的发展。在这里,我们研究了临床基线项目是否可以识别和预测这种稳定的TRC。我们分析了来自观察性MDD队列(慕尼黑抗抑郁反应签名[MARS]研究,N = 1017)的数据,这些数据分别通过心理药理学和心理治疗手段进行了治疗,以及多中心,部分随机临床/药物基因组学研究(基于基因组的抑郁症治疗药物[ GENDEP],N = 809)。在MARS中评估症状直至第16周(或出院),在GENDEP中评估症状的第12周。使用具有集成的完成似然性标准的混合模型对809名MARS患者(发现样本)进行聚类,以评估聚类稳定性,并通过不同的MARS验证样本和GENDEP进行验证。随机森林算法用于基于50个临床基线项目识别预测模式。从MARS发现样本的聚类中,出现了7个TRC,从快速而完全的反应(平均4.9周到出院,94%缓解的患者出院)到缓慢而又不完全的反应(第16周有10%的患者入院)。这些在MARS和GENDEP验证样本中均证明了治疗反应动力学的稳定表示。 TRC与已建立的反应标记物密切相关,尤其是出院时的缓解患者比率。可从临床项目(尤其是人格项目,生活事件,发作持续时间和特定的心理病理特征)预测TRC。当建模聚类衍生坡度而不是单个坡度时,预测准确性显着提高。总之,基于模型的聚类确定了MDD中独特且具有临床意义的治疗反应类别,这些类别在捕获不同设计研究的反应概况方面被证明是可靠的。从临床基线特征可以预测反应类别。从概念上讲,基于模型的聚类可以转换为任何结果度量,并且可以促进对治疗功效或治疗反应的神经生物学研究的大规模整合。

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