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基于 GWAS 的机器学习方法预测在重度抑郁症中对度洛西汀的反应。

GWAS-based machine learning approach to predict duloxetine response in major depressive disorder.

机构信息

Pharmacogenetic Research Clinic, Center for Addiction and Mental Health, Toronto, ON, Canada.

Pharmacogenetic Research Clinic, Center for Addiction and Mental Health, Toronto, ON, Canada; Institute of Medical Science, Faculty of Medicine, University of Toronto, Toronto, ON, Canada.

出版信息

J Psychiatr Res. 2018 Apr;99:62-68. doi: 10.1016/j.jpsychires.2017.12.009. Epub 2018 Feb 2.

Abstract

Major depressive disorder (MDD) is one of the most prevalent psychiatric disorders and is commonly treated with antidepressant drugs. However, large variability is observed in terms of response to antidepressants. Machine learning (ML) models may be useful to predict treatment outcomes. A sample of 186 MDD patients received treatment with duloxetine for up to 8 weeks were categorized as "responders" based on a MADRS change >50% from baseline; or "remitters" based on a MADRS score ≤10 at end point. The initial dataset (N = 186) was randomly divided into training and test sets in a nested 5-fold cross-validation, where 80% was used as a training set and 20% made up five independent test sets. We performed genome-wide logistic regression to identify potentially significant variants related to duloxetine response/remission and extracted the most promising predictors using LASSO regression. Subsequently, classification-regression trees (CRT) and support vector machines (SVM) were applied to construct models, using ten-fold cross-validation. With regards to response, none of the pairs performed significantly better than chance (accuracy p > .1). For remission, SVM achieved moderate performance with an accuracy = 0.52, a sensitivity = 0.58, and a specificity = 0.46, and 0.51 for all coefficients for CRT. The best performing SVM fold was characterized by an accuracy = 0.66 (p = .071), sensitivity = 0.70 and a sensitivity = 0.61. In this study, the potential of using GWAS data to predict duloxetine outcomes was examined using ML models. The models were characterized by a promising sensitivity, but specificity remained moderate at best. The inclusion of additional non-genetic variables to create integrated models may improve prediction.

摘要

重度抑郁症(MDD)是最常见的精神疾病之一,通常采用抗抑郁药物治疗。然而,抗抑郁药物的反应存在很大的变异性。机器学习(ML)模型可能有助于预测治疗结果。186 名 MDD 患者接受度洛西汀治疗,最长 8 周,根据 MADRS 从基线变化>50%分为“应答者”;或根据终点时 MADRS 评分≤10 分为“缓解者”。初始数据集(N=186)在嵌套的 5 折交叉验证中随机分为训练集和测试集,其中 80%作为训练集,20%由五个独立的测试集组成。我们进行了全基因组逻辑回归,以确定与度洛西汀反应/缓解相关的潜在显著变体,并使用 LASSO 回归提取最有前途的预测因子。随后,应用分类回归树(CRT)和支持向量机(SVM)构建模型,使用 10 折交叉验证。关于反应,没有一对的表现明显优于机会(准确性 p>.1)。对于缓解,SVM 表现中等,准确性=0.52,敏感性=0.58,特异性=0.46,所有 CRT 系数的准确性=0.51。表现最好的 SVM 折叠的准确性=0.66(p=0.071),敏感性=0.70,特异性=0.61。在这项研究中,使用 ML 模型检查了使用 GWAS 数据预测度洛西汀结果的潜力。这些模型的敏感性有一定的优势,但特异性最多只是中等。纳入额外的非遗传变量来创建集成模型可能会提高预测能力。

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