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Predicting drug-target interactions through integrative analysis of chemogenetic assays in yeast

机译:通过酵母化学原性分析的综合分析预测药物-靶标相互作用

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摘要

Chemical-genomic and genetic interaction profiling approaches are widely used to study mechanisms of drug action and resistance. However, there exist a number of scoring algorithms customized to different experimental assays, the relative performance of which remains poorly understood, especially with respect to different types of chemogenetic assays. Using yeast Saccharomyces cerevisiae as a test bed, we carried out a systematic evaluation among the main drug target analysis approaches in terms of predicting global drug-target interaction networks. We found drastic differences in their performance across different chemical-genomic assay types, such as those based on heterozygous and homozygous diploid or haploid deletion mutant libraries. Moreover, a relatively small overlap in the predicted targets was observed between those approaches that use either chemical-genomic screening alone or combined with genetic interaction profiling. A rank-based integration of the complementary scoring approaches led to improved overall performance, demonstrating that genetic interaction profiling provides added information on drug target prediction. Optimal performance was achieved when focusing specifically on the negative tail of the genetic interactions, suggesting that combining synthetic lethal interactions with chemical-genetic interactions provides highest information on drug-target interactions. A network view of rapamycin-interacting genes, pathways and complexes was used as an example to demonstrate the benefits of such integrated and optimized analysis of chemogenetic assays in yeast.
机译:化学基因组和遗传相互作用分析方法被广泛用于研究药物作用和耐药性的机制。然而,存在许多针对不同实验分析定制的评分算法,其相对性能仍然知之甚少,尤其是对于不同类型的化学发生分析而言。使用酿酒酵母作为测试床,我们在预测全球药物靶标相互作用网络方面对主要药物靶标分析方法进行了系统的评估。我们发现它们在不同化学基因组测定类型之间的性能存在巨大差异,例如基于杂合和纯合二倍体或单倍体缺失突变体文库的那些。此外,在单独使用化学基因组筛选或结合遗传相互作用谱分析的方法之间,观察到的预测目标存在相对较小的重叠。基于等级的互补计分方法的集成导致整体性能的提高,这表明遗传相互作用图谱可提供有关药物靶标预测的更多信息。当专门关注遗传相互作用的负尾时,可获得最佳性能,这表明将合成致死相互作用与化学-遗传相互作用结合在一起,可提供有关药物-靶标相互作用的最高信息。以雷帕霉素相互作用基因,途径和复合物的网络视图为例,说明了对酵母中化学成因分析进行这种综合和优化分析的好处。

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  • 来源
    《Molecular BioSystems》 |2013年第4期|768-779|共12页
  • 作者单位

    Biomathematics Research Group, Department of Mathematics, University of Turku, FI-20014, Finland Finnish Doctoral Programme in Computational Sciences (FICS), Aalto University, School of Science, FI-00076, Finland;

    Biomathematics Research Group, Department of Mathematics, University of Turku, FI-20014, Finland Finnish Doctoral Programme in Computational Sciences (FICS), Aalto University, School of Science, FI-00076, Finland Institute for Molecular Medicine Finland (FIMM), University of Helsinki, FI-00014, Finland;

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