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A clinical risk stratification tool for predicting treatment resistance in major depressive disorder

机译:用于预测重度抑郁症治疗抵抗力的临床风险分层工具

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Background: Early identification of depressed individuals at high risk for treatment resistance could be helpful in selecting optimal setting and intensity of care. At present, validated tools to facilitate this risk stratification are rarely used in psychiatric practice. Methods: Data were drawn from the first two treatment levels of a multicenter antidepressant effectiveness study in major depressive disorder, the STARD (Sequenced Treatment Alternatives to Relieve Depression) cohort. This cohort was divided into training, testing, and validation subsets. Only clinical or sociodemographic variables available by or readily amenable to self-report were considered. Multivariate models were developed to discriminate individuals reaching remission with a first or second pharmacological treatment trial from those not reaching remission despite two trials. Results: A logistic regression model achieved an area under the receiver operating characteristic curve exceeding.71 in training, testing, and validation cohorts and maintained good calibration across cohorts. Performance of three alternative models with machine learning approaches - a na?ve Bayes classifier and a support vector machine, and a random forest model - was less consistent. Similar performance was observed between more and less severe depression, men and women, and primary versus specialty care sites. A web-based calculator was developed that implements this tool and provides graphical estimates of risk. Conclusion: Risk for treatment resistance among outpatients with major depressive disorder can be estimated with a simple model incorporating baseline sociodemographic and clinical features. Future studies should examine the performance of this model in other clinical populations and its utility in treatment selection or clinical trial design.
机译:背景:及早发现有高抵抗力的抑郁症患者有助于选择最佳的治疗环境和强度。目前,在精神病学实践中很少使用经过验证的工具来促进这种风险分层。方法:数据来自于重度抑郁症多中心抗抑郁药有效性研究的前两个治疗水平,即STARD(缓解抑郁的循序治疗替代方法)队列。该队列分为训练,测试和验证子集。仅考虑可用于或易于自我报告的临床或社会人口统计学变量。建立了多变量模型,以区分通过第一次或第二次药物治疗试验已达到缓解的个体与尽管进行了两次试验仍未达到缓解的个体。结果:在训练,测试和验证队列中,逻辑回归模型的接收器工作特征曲线下的面积超过71,并且在各个队列中保持良好的校准。使用机器学习方法的三种替代模型(朴素的贝叶斯分类器和支持向量机以及随机森林模型)的性能不一致。在越来越严重的抑郁症,男性和女性以及初级保健和专科保健地点之间观察到类似的表现。开发了基于Web的计算器,该计算器实现了该工具并提供了图形化的风险估计。结论:可以通过结合基线社会人口统计学和临床​​特征的简单模型来评估重度抑郁症门诊患者的治疗抵抗风险。未来的研究应检查该模型在其他临床人群中的性能及其在治疗选择或临床试验设计中的效用。

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