Department of Biomedical Sciences, Oregon State University, 106 Dryden Hall, Corvallis, OR, 97331, USA.
School of Electrical Engineering and Computer Science, Oregon State University, 1148 Kelley Engineering Center, Corvallis, OR, 97331, USA.
Interdiscip Sci. 2018 Jun;10(2):449-454. doi: 10.1007/s12539-016-0194-3. Epub 2016 Oct 24.
We report an in silico method to screen for receptors or pathways that could be targeted to elicit beneficial transcriptional changes in a cellular model of a disease of interest. In our method, we integrate: (1) a dataset of transcriptome responses of a cell line to a panel of drugs; (2) two sets of genes for the disease; and (3) mappings between drugs and the receptors or pathways that they target. We carried out a gene set enrichment analysis (GSEA) test for each of the two gene sets against a list of genes ordered by fold-change in response to a drug in a relevant cell line (HL60), with the overall score for a drug being the difference of the two enrichment scores. Next, we applied GSEA for drug targets based on drugs that have been ranked by their differential enrichment scores. The method ranks drugs by the degree of anti-correlation of their gene-level transcriptional effects on the cell line with the genes in the disease gene sets. We applied the method to data from (1) CMap 2.0; (2) gene sets from two transcriptome profiling studies of atherosclerosis; and (3) a combined dataset of drug/target information. Our analysis recapitulated known targets related to CVD (e.g., PPARγ; HMG-CoA reductase, HDACs) and novel targets (e.g., amine oxidase A, δ-opioid receptor). We conclude that combining disease-associated gene sets, drug-transcriptome-responses datasets and drug-target annotations can potentially be useful as a screening tool for diseases that lack an accepted cellular model for in vitro screening.
我们报告了一种在计算机上筛选受体或途径的方法,这些受体或途径可以在感兴趣疾病的细胞模型中引发有益的转录变化。在我们的方法中,我们整合了:(1)细胞系对药物组的转录组反应数据集;(2)两种疾病相关基因集;以及(3)药物与它们靶向的受体或途径之间的映射。我们对两种基因集中的每一种都进行了基因集富集分析(GSEA)测试,针对的是一个相关细胞系(HL60)中药物反应的基因列表,通过对药物的整体评分是两种富集评分的差异。接下来,我们根据药物的差异富集评分对药物靶点进行了 GSEA 分析。该方法通过药物对细胞系的基因水平转录效应与疾病基因集之间的相关性程度对药物进行排序。我们将该方法应用于(1)CMap 2.0 中的数据;(2)动脉粥样硬化的两个转录组分析研究中的基因集;以及(3)药物/靶点信息的综合数据集。我们的分析再现了与 CVD 相关的已知靶点(例如,PPARγ;HMG-CoA 还原酶,HDACs)和新靶点(例如,胺氧化酶 A,δ-阿片受体)。我们得出结论,将疾病相关基因集、药物转录组反应数据集和药物靶点注释结合起来,可能有助于筛选缺乏体外筛选可接受细胞模型的疾病。