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预测抗抑郁反应和缓解的社会经济和临床特征。

Predictive socioeconomic and clinical profiles of antidepressant response and remission.

机构信息

Department of Psychiatry and Biobehavioral Sciences, University of California, Los Angeles, California 90024, USA.

出版信息

Depress Anxiety. 2013 Jul;30(7):624-30. doi: 10.1002/da.22045. Epub 2013 Jan 3.

Abstract

BACKGROUND

There are many prognostic factors for treatment outcome in major depressive disorder (MDD). The predictive power of any single factor, however, is limited. We aimed to develop profiles of antidepressant response and remission based upon hierarchical combinations of baseline clinical and demographic factors.

METHODS

Using data from Level 1 of the Sequenced Treatment Alternatives to Relieve Depression trial (STAR*D), in which 2,876 participants with MDD were treated with citalopram, a signal-detection analysis was performed to identify hierarchical predictive profiles for patients with different treatment outcome. An automated algorithm was used to determine the optimal predictive variables by evaluating sensitivity, specificity, positive and negative predictive value, and test efficiency.

RESULTS

Hierarchical combinations of baseline clinical and demographic factors yielded profiles that significantly predicted treatment outcome. In contrast to an overall 47% response rate in STAR*D Level 1, response rates of profiled patient subgroups ranged from 31 to 63%. In contrast to an overall remission rate of 28%, identified subsets of patients had a 12 to 55% probability of remission. The predictors of antidepressant treatment outcome most commonly incorporated into profiles were related to socioeconomic status (e.g., income, education), whereas indicators of depressive symptom type and severity, as well as comorbid clinical conditions, were useful but less powerful predictors.

CONCLUSIONS

Hierarchical profiles of demographic and clinical baseline variables categorized patients according to the likelihood they would benefit from a single antidepressant trial. Socioeconomic factors had greater predictive power than symptoms or other clinical factors, and profiles combining multiple factors were stronger predictors than individual factors alone.

摘要

背景

重度抑郁症(MDD)的治疗结果有许多预后因素。然而,任何单一因素的预测能力都是有限的。我们旨在根据基线临床和人口统计学因素的层次组合,制定抗抑郁药反应和缓解的预测模型。

方法

使用来自抑郁症序贯治疗选择试验(STAR*D)一级的数据,其中 2876 名 MDD 患者接受了西酞普兰治疗,采用信号检测分析来识别不同治疗结果患者的分层预测模型。通过评估敏感性、特异性、阳性和阴性预测值以及测试效率,使用自动算法来确定最佳预测变量。

结果

基线临床和人口统计学因素的层次组合产生了显著预测治疗结果的模型。与 STAR*D 一级中总体 47%的反应率相比,模型患者亚组的反应率从 31%到 63%不等。与总体缓解率为 28%相比,确定的患者亚组有 12%至 55%的缓解可能性。最常纳入模型的抗抑郁治疗结果预测因子与社会经济地位(例如,收入、教育)有关,而抑郁症状类型和严重程度的指标以及合并的临床病症虽然有用,但预测能力较弱。

结论

根据患者从单次抗抑郁试验中获益的可能性,分层的人口统计学和基线临床变量模型对患者进行分类。社会经济因素比症状或其他临床因素具有更强的预测能力,而结合多种因素的模型比单独的因素更具预测能力。

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