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Gene-Set Local Hierarchical Clustering (GSLHC)—A Gene Set-Based Approach for Characterizing Bioactive Compounds in Terms of Biological Functional Groups

机译:基因组局部层次聚类(GSLHC)-一种基于基因组的方法根据生物学功能组表征生物活性化合物

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摘要

Gene-set-based analysis (GSA), which uses the relative importance of functional gene-sets, or molecular signatures, as units for analysis of genome-wide gene expression data, has exhibited major advantages with respect to greater accuracy, robustness, and biological relevance, over individual gene analysis (IGA), which uses log-ratios of individual genes for analysis. Yet IGA remains the dominant mode of analysis of gene expression data. The Connectivity Map (CMap), an extensive database on genomic profiles of effects of drugs and small molecules and widely used for studies related to repurposed drug discovery, has been mostly employed in IGA mode. Here, we constructed a GSA-based version of CMap, Gene-Set Connectivity Map (GSCMap), in which all the genomic profiles in CMap are converted, using gene-sets from the Molecular Signatures Database, to functional profiles. We showed that GSCMap essentially eliminated cell-type dependence, a weakness of CMap in IGA mode, and yielded significantly better performance on sample clustering and drug-target association. As a first application of GSCMap we constructed the platform Gene-Set Local Hierarchical Clustering (GSLHC) for discovering insights on coordinated actions of biological functions and facilitating classification of heterogeneous subtypes on drug-driven responses. GSLHC was shown to tightly clustered drugs of known similar properties. We used GSLHC to identify the therapeutic properties and putative targets of 18 compounds of previously unknown characteristics listed in CMap, eight of which suggest anti-cancer activities. The GSLHC website contains 1,857 local hierarchical clusters accessible by querying 555 of the 1,309 drugs and small molecules listed in CMap. We expect GSCMap and GSLHC to be widely useful in providing new insights in the biological effect of bioactive compounds, in drug repurposing, and in function-based classification of complex diseases.
机译:基于基因集的分析(GSA)使用功能性基因集或分子标记的相对重要性作为分析全基因组基因表达数据的单位,在提高准确性,鲁棒性和生物学相关性,超过了单个基因分析(IGA),该分析使用单个基因的对数比进行分析。但是,IGA仍然是分析基因表达数据的主要方式。连接图(CMap)是一个有关药物和小分子作用的基因组概况的广泛数据库,被广泛用于与重用药物发现有关的研究中,该图主要用于IGA模式。在这里,我们构建了一个基于GSA的CMap版本,即“基因集连接图(GSCMap)”,其中使用“分子特征数据库”中的基因集将CMap中的所有基因组图谱转换为功能图谱。我们显示GSCMap基本上消除了细胞类型依赖性,这是IGA模式下CMap的弱点,并且在样品聚类和药物-靶标结合方面产生了明显更好的性能。作为GSCMap的第一个应用程序,我们构建了平台基因组局部层次聚类(GSLHC),以发现对生物学功能的协调作用的见解,并促进药物驱动反应中异质亚型的分类。 GSLHC被证明是紧密结合的已知相似性质的药物。我们使用GSLHC鉴定了CMap中列出的18种先前未知特征的化合物的治疗特性和假定的靶标,其中8种表明具有抗癌活性。 GSLHC网站包含1,857个本地层次集群,可通过查询CMap中列出的1,309种药物和小分子中的555种来访问。我们希望GSCMap和GSLHC在提供有关生物活性化合物的生物学效应,药物用途以及基于功能的复杂疾病分类方面的新见解方面将广泛有用。

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