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首页> 外文期刊>Journal of affective disorders >The predictive power of subgroups: An empirical approach to identify depressive symptom patterns that predict response to treatment
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The predictive power of subgroups: An empirical approach to identify depressive symptom patterns that predict response to treatment

机译:亚组的预测能力:一种确定预测治疗反应的抑郁症状模式的经验方法

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摘要

Depression research has been trying to improve the response rates to treatments by identifying a valid set of differential predictor variables. Potential candidates have been proposed, one of which were different subtypes of depression. However, the results on the predictive quality of subtypes on treatment are conflicting. The analyzed data consisted of Hamilton Depression Rating Scales (HAM-D17) of 879 depressive inpatients, which were recruited in a naturalistic multicenter study. Mean length of stay was 9.9 weeks. In a first step, a Latent Class Analysis (LCA) was conducted to classify the patients into smaller groups. In a second step, the class variable was included in a Linear Mixed Effects model to predict the same patients’ response to treatment. Five classes were obtained from LCA, showing substantially different symptom profiles. One of the classes, with a symptom profile similar to melancholic depression, showed substantially slower response to treatment (i.e. estimated time to remission; 11.3 weeks) than the remaining classes in the study (6.6–8.6 weeks). The applied measurement instrument, the HAM-D17, did not include items for two additional, frequently found subtypes of depression: psychotic and atypical depression. Thus, these subtypes could not emerge in the LCA. Furthermore, there was no systematic variation of treatment in the data. Thus, a differential effect of the classes on treatment could not be measured. The classification of patients according to their symptom profiles seems to be a potent predictor for treatment response. However, the obtained symptom patterns are not completely congruent with the theoretically proposed subgroups. Against the background of the results, dividing melancholic depression in a rather cognitive and vegetative subtype may be promising.
机译:抑郁症研究一直试图通过确定一组有效的差异预测变量来提高对治疗的反应率。已经提出了潜在的候选药物,其中之一是抑郁症的不同亚型。但是,关于亚型治疗的预测质量的结果是矛盾的。分析的数据由879名抑郁症住院患者的汉密尔顿抑郁量表(HAM-D17)组成,该量表是在一项自然主义的多中心研究中招募的。平均住院时间为9.9周。第一步,进行潜在类别分析(LCA)将患者分类为较小的组。第二步,将类别变量包含在“线性混合效应”模型中,以预测同一患者对治疗的反应。从LCA中获得了五类,显示出明显不同的症状特征。其中一类的症状与忧郁抑郁症相似,显示出对治疗的反应(即估计的缓解时间; 11.3周)比研究中的其余类(6.6-8.6周)明显慢。所用的测量仪器HAM-D17不包括其他两种常见的抑郁亚型:精神病性和非典型性抑郁症。因此,这些亚型不能出现在LCA中。此外,数据中没有系统的处理差异。因此,无法测量类别对治疗的不同影响。根据症状特征对患者进行分类似乎是治疗反应的有效预测指标。但是,所获得的症状模式与理论上提出的亚组并不完全一致。在结果的背景下,将忧郁症抑郁症分为认知性和营养性亚型可能是有希望的。

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