Data-driven longitudinal modeling and prediction of symptom dynamics in major depressive disorder: Integrating factor graphs and learning methods

A. Athreya, Subho Sankar Banerjee, Drew R Neavin, R. Kaddurah-Daouk, A. Rush, M. Frye, Liewei Wang, R. Weinshilboum, W. Bobo, R. Iyer
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引用次数: 9

Abstract

This paper proposes a data-driven longitudinal model that brings together factor graphs and learning methods to demonstrate a significant improvement in predictability in clinical outcomes of patients with major depressive disorder treated with antidepressants. Using data from the Mayo Clinic PGRN-AMPS trial and the STAR∗D trial for validation, this work makes two significant contributions in the context of predictability in psychiatric therapeutic outcomes. First, we establish symptom dynamics in response to antidepressants by using the forward algorithm on a factor graph. Symptom dynamics are the changes in the symptom severity that are most likely to occur because of the antidepressants taken during the trial, and the associated clinical outcomes at 4 weeks and 8 weeks into the trial. The structure of the factor graph is inferred by using unsupervised learning to stratify patients by the similarity of their overall symptom severity. Second, by using metabolomics data as an accurate biological measure in addition to symptom survey data and other patient history information, the prediction of clinical outcomes such as response and remission significantly improved from 30% to 68% in men, and from 35% to 72% in women. This work demonstrates a significant difference in how men and women respond to antidepressants in terms of their symptom dynamics, and also shows that top predictors of clinical outcomes for men and women are significantly different and known to play a role in behavioral sciences.
重度抑郁症症状动态的数据驱动纵向建模与预测:整合因子图与学习方法
本文提出了一个数据驱动的纵向模型,该模型将因子图和学习方法结合在一起,以证明使用抗抑郁药治疗的重度抑郁症患者临床结果的可预测性有显著改善。利用梅奥诊所PGRN-AMPS试验和STAR * D试验的数据进行验证,这项工作在精神治疗结果的可预测性方面做出了两项重大贡献。首先,我们通过在因子图上使用前向算法建立抗抑郁药反应的症状动态。症状动态是指由于试验期间服用抗抑郁药而最有可能发生的症状严重程度的变化,以及试验第4周和第8周的相关临床结果。因子图的结构是通过使用无监督学习来推断的,通过患者整体症状严重程度的相似性来对患者进行分层。其次,除了症状调查数据和其他患者病史信息外,通过使用代谢组学数据作为准确的生物学指标,男性对缓解和缓解等临床结果的预测从30%显著提高到68%,女性从35%显著提高到72%。这项研究表明,男性和女性对抗抑郁药的反应在症状动态方面存在显著差异,同时也表明,男性和女性临床结果的主要预测因素存在显著差异,并且已知在行为科学中发挥作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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