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通过体外药物诱导基因组表达谱分类预测临床药物疗效

Prediction of clinical drug efficacy by classification of drug-induced genomic expression profiles in vitro.

作者信息

Gunther Erik C, Stone David J, Gerwien Robert W, Bento Patricia, Heyes Melvyn P

机构信息

CuraGen Corporation, 322 East Main Street, Branford, CT 06405, USA.

出版信息

Proc Natl Acad Sci U S A. 2003 Aug 5;100(16):9608-13. doi: 10.1073/pnas.1632587100. Epub 2003 Jul 17.

DOI:10.1073/pnas.1632587100
PMID:12869696
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC170965/
Abstract

Assays of drug action typically evaluate biochemical activity. However, accurately matching therapeutic efficacy with biochemical activity is a challenge. High-content cellular assays seek to bridge this gap by capturing broad information about the cellular physiology of drug action. Here, we present a method of predicting the general therapeutic classes into which various psychoactive drugs fall, based on high-content statistical categorization of gene expression profiles induced by these drugs. When we used the classification tree and random forest supervised classification algorithms to analyze microarray data, we derived general "efficacy profiles" of biomarker gene expression that correlate with anti-depressant, antipsychotic and opioid drug action on primary human neurons in vitro. These profiles were used as predictive models to classify naïve in vitro drug treatments with 83.3% (random forest) and 88.9% (classification tree) accuracy. Thus, the detailed information contained in genomic expression data is sufficient to match the physiological effect of a novel drug at the cellular level with its clinical relevance. This capacity to identify therapeutic efficacy on the basis of gene expression signatures in vitro has potential utility in drug discovery and drug target validation.

摘要

药物作用检测通常评估生化活性。然而,将治疗效果与生化活性准确匹配是一项挑战。高内涵细胞检测试图通过获取有关药物作用细胞生理学的广泛信息来弥合这一差距。在此,我们提出一种基于这些药物诱导的基因表达谱的高内涵统计分类来预测各种精神活性药物所属一般治疗类别的方法。当我们使用分类树和随机森林监督分类算法分析微阵列数据时,我们得出了与抗抑郁药、抗精神病药和阿片类药物在原代人神经元上的体外作用相关的生物标志物基因表达的一般“疗效谱”。这些谱被用作预测模型,以83.3%(随机森林)和88.9%(分类树)的准确率对未经处理的体外药物治疗进行分类。因此,基因组表达数据中包含的详细信息足以在细胞水平上将新药的生理效应与其临床相关性相匹配。这种基于体外基因表达特征识别治疗效果的能力在药物发现和药物靶点验证中具有潜在用途。