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Inference of Protein Complex Activities from Chemical-Genetic Profile and Its Applications: Predicting Drug-Target Pathways

机译:从化学遗传概况及其应用中推断蛋白复合物活性的方法:预测药物-靶途径

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摘要

The chemical-genetic profile can be defined as quantitative values of deletion strains' growth defects under exposure to chemicals. In yeast, the compendium of chemical-genetic profiles of genomewide deletion strains under many different chemicals has been used for identifying direct target proteins and a common mode-of-action of those chemicals. In the previous study, valuable biological information such as protein–protein and genetic interactions has not been fully utilized. In our study, we integrated this compendium and biological interactions into the comprehensive collection of ∼490 protein complexes of yeast for model-based prediction of a drug's target proteins and similar drugs. We assumed that those protein complexes (PCs) were functional units for yeast cell growth and regarded them as hidden factors and developed the PC-based Bayesian factor model that relates the chemical-genetic profile at the level of organism phenotypes to the hidden activities of PCs at the molecular level. The inferred PC activities provided the predictive power of a common mode-of-action of drugs as well as grouping of PCs with similar functions. In addition, our PC-based model allowed us to develop a new effective method to predict a drug's target pathway, by which we were able to highlight the target-protein, TOR1, of rapamycin. Our study is the first approach to model phenotypes of systematic deletion strains in terms of protein complexes. We believe that our PC-based approach can provide an appropriate framework for combining and modeling several types of chemical-genetic profiles including interspecies. Such efforts will contribute to predicting more precisely relevant pathways including target proteins that interact directly with bioactive compounds.
机译:化学-遗传特征可以定义为在暴露于化学物质下缺失菌株的生长缺陷的定量值。在酵母中,许多不同化学物质下的全基因组缺失菌株的化学遗传概况纲要已用于鉴定直接靶蛋白和这些化学物质的共同作用方式。在先前的研究中,尚未充分利用诸如蛋白质与蛋白质以及遗传相互作用等有价值的生物学信息。在我们的研究中,我们将此纲要和生物学相互作用整合到了约490种酵母蛋白质复合物中,以基于模型预测药物的靶蛋白和类似药物。我们假定那些蛋白质复合物(PCs)是酵母细胞生长的功能单元,并将其视为隐藏因素,并开发了基于PC的贝叶斯因子模型,该模型将生物表型水平上的化学遗传特征与PC的隐藏活动相关联在分子水平上。推断的PC活动提供了药物共同作用方式以及具有相似功能的PC分组的预测能力。另外,我们基于PC的模型使我们能够开发一种新的有效方法来预测药物的靶途径,从而能够突出雷帕霉素的靶蛋白TOR1。我们的研究是根据蛋白质复合物对系统缺失菌株表型建模的第一种方法。我们认为,基于PC的方法可以为组合和建模包括种间关系在内的多种类型的化学遗传概况提供适当的框架。这些努力将有助于预测更精确的相关途径,包括与生物活性化合物直接相互作用的靶蛋白。

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