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Treatment Selection in Depression
Annual Review of Clinical Psychology ( IF 17.8 ) Pub Date : 2018-05-07 00:00:00 , DOI: 10.1146/annurev-clinpsy-050817-084746
Zachary D. Cohen 1 , Robert J. DeRubeis 1
Affiliation  

Mental health researchers and clinicians have long sought answers to the question “What works for whom?” The goal of precision medicine is to provide evidence-based answers to this question. Treatment selection in depression aims to help each individual receive the treatment, among the available options, that is most likely to lead to a positive outcome for them. Although patient variables that are predictive of response to treatment have been identified, this knowledge has not yet translated into real-world treatment recommendations. The Personalized Advantage Index (PAI) and related approaches combine information obtained prior to the initiation of treatment into multivariable prediction models that can generate individualized predictions to help clinicians and patients select the right treatment. With increasing availability of advanced statistical modeling approaches, as well as novel predictive variables and big data, treatment selection models promise to contribute to improved outcomes in depression.

中文翻译:


抑郁症的治疗选择

精神卫生研究人员和临床医生长期以来一直在寻找“什么对谁有用?”这个问题的答案。精密医学的目的是为这个问题提供循证的答案。抑郁症的治疗选择旨在帮助每个人在可用的选择中最有可能为他们带来积极成果的治疗方法。尽管已识别出可预测对治疗反应的患者变量,但该知识尚未转化为现实的治疗建议。个性化优势指数(PAI)和相关方法将在开始治疗之前获得的信息组合到多变量预测模型中,该模型可以生成个性化预测,以帮助临床医生和患者选择正确的治疗方法。

更新日期:2018-05-07
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