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Connecting genetics and gene expression data for target prioritisation and drug repositioning

机译:连接遗传学和基因表达数据以进行靶标优先排序和药物重新定位

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摘要

Developing new drugs continues to be a highly inefficient and costly business. By repurposing an existing compound for a different indication, drug repositioning offers an attractive alternative to traditional drug discovery. Most of these approaches work by matching transcriptional disease signatures to anti-correlated gene expression profiles of drug perturbations. Genome-wide association studies (GWASs) are of great interest to researchers in the pharmaceutical industry because drug programmes with supporting genetic evidence are more likely to successfully progress through the drug discovery pipeline.Here, we present a systematic approach to generate drug repositioning hypothesis based on disease genetics by mining public repositories of GWAS data and drug transcriptomic profiles. We find that genes genetically associated with a certain disease are more likely to be differentially expressed in the same disease (p-value = 1.54e-17 and AUC = 0.75) and that, in existing drug – disease combinations, genes significantly up- or down-regulated after drug treatment are enriched for genes genetically associated with that disease (p-value = 1.1e-79 and AUC = 0.64). Finally, we use this framework to generate and rank novel GWAS-driven drug repositioning predictions.Electronic supplementary materialThe online version of this article (10.1186/s13040-018-0171-y) contains supplementary material, which is available to authorized users.
机译:开发新药仍然是效率低下且成本高昂的业务。通过将现有化合物用于不同的适应症,药物重新定位提供了一种替代传统药物发现的有吸引力的选择。这些方法中的大多数通过使转录疾病特征与药物扰动的抗相关基因表达谱相匹配而起作用。全基因组关联研究(GWAS)对制药行业的研究人员非常感兴趣,因为具有遗传证据支持的药物计划更有可能通过药物发现流程成功进行。在此,我们提出了一种系统的方法来生成基于药物重新定位假说的方法通过挖掘GWAS数据和药物转录组谱的公共资源库研究疾病遗传学。我们发现与某种疾病遗传相关的基因更有可能在同一疾病中差异表达(p值= 1.54e-17和AUC = 0.75),并且在现有药物-疾病组合中,基因显着升高或降低药物治疗后下调的基因丰富了与该疾病遗传相关的基因(p值== 1.1e-79,AUC == 0.64)。最后,我们使用此框架来生成和排序由GWAS驱动的新颖药物重新定位预测。电子补充材料本文的在线版本(10.1186 / s13040-018-0171-y)包含补充材料,授权用户可以使用。

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