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The potential of predictive analytics to provide clinical decision support in depression treatment planning

机译:预测分析的潜力在抑郁症治疗规划中提供临床决策支持

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Purpose of review To review progress developing clinical decision support tools for personalized treatment of major depressive disorder (MDD).Recent findings Over the years, a variety of individual indicators ranging from biomarkers to clinical observations and self-report scales have been used to predict various aspects of differential MDD treatment response. Most of this work focused on predicting remission either with antidepressant medications versus psychotherapy, some antidepressant medications versus others, some psychotherapies versus others, and combination therapies versus monotherapies. However, to date, none of the individual predictors in these studies has been strong enough to guide optimal treatment selection for most patients. Interest consequently turned to decision support tools made up of multiple predictors, but the development of such tools has been hampered by small study sample sizes. Design recommendations are made here for future studies to address this problem.Summary Recommendations include using large prospective observational studies followed by pragmatic trials rather than smaller, expensive controlled treatment trials for preliminary development of decision support tools; basing these tools on comprehensive batteries of inexpensive self-report and clinical predictors (e.g., selfadministered performance-based neurocognitive tests) versus expensive biomarkers; and reserving biomarker assessments for targeted studies of patients not well classified by inexpensive predictor batteries.
机译:审查目的以审查进展开发临床决策支持工具,用于各种抑郁症(MDD)的个性化治疗。多年来,各种单独指标范围从生物标志物到临床观察和自我报告尺度的各种指标都被用来预测差分MDD治疗响应的方面。大部分工作都专注于预测缓解药物与心理治疗,一些抗抑郁药物与其他药物,一些心理治疗与他人,以及组合治疗与单一医疗组合。然而,迄今为止,这些研究中的个人预测因子都不足够强大,以指导大多数患者的最佳治疗选择。因此,兴趣转向决策支持工具组成的多重预测因子,但这些工具的发展受到小型研究样本尺寸的阻碍。在此设计建议在此处进行以下研究,以解决这一问题。制定的建议包括使用大型前瞻性观察研究,然后使用务实的试验而不是较小,昂贵的受控治疗试验,以便初步发展决策支持工具;基于廉价的自我报告和临床预测因子的综合电池基于综合电池(例如,基于性能的性能的神经认知测试),与昂贵的生物标志物;并为廉价的预测电池占患者的患者有针对性研究的生物标志物评估。

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