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Optimization of co-evolution analysis through phylogenetic profiling reveals pathway-specific signals

机译:通过系统发育分析揭示途径特异性信号的共进分析

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摘要

The exponential growth in available genomic data is expected to reach full sequencing of a million genomes in the coming decade. Improving and developing methods to analyze these genomes and to reveal their utility is of major interest in a wide variety of fields, such as comparative and functional genomics, evolution and bio-informatics. Phylogenetic profiling is an established method for predicting functional interactions between proteins based on similarities in their evolutionary patterns across species. Proteins that function together (i.e. generate complexes, interact in the same pathways or improve adaptation to environmental niches) tend to show coordinated evolution across the tree of life. The normalized phylogenetic profiling (NPP) method takes into account minute changes in proteins across species to identify protein co-evolution. Despite the success of this method, it is still not clear what set of parameters is required for optimal use of co-evolution in predicting functional interactions. Moreover, it is not clear if pathway evolution or function should direct parameter choice. Here, we create a reliable and usable NPP construction pipeline. We explore the effect of parameter selection on functional interaction prediction using NPP from 1028 genomes, both separately and in various value combinations. We identify several parameter sets that optimize performance for pathways with certain biological annotation. This work reveals the importance of choosing the right parameters for optimized function prediction based on a biological context.
机译:预计可用基因组数据中的指数增长将在未来十年中达到百万基因组的全部排序。改进和开发分析这些基因组的方法和揭示其效用对各种领域的主要兴趣,例如比较和功能基因组学,演化和生物信息学。系统发育分析是一种确定基于跨种类的进化模式的相似性预测蛋白质之间的功能相互作用的方法。蛋白质一起起作用(即产生复合物,在相同的途径中相互作用或改善对环境核仁的适应)倾向于显示在生命之树上的协调演变。标准化的系统发育分析(NPP)方法考虑了蛋白质的微小变化,以鉴定蛋白共同进化。尽管这种方法的成功,但尚不清楚在预测功能相互作用时最佳使用共同进化所需的一组参数。此外,如果路径演化或功能应该是直接参数选择,则不清楚。在这里,我们创建了可靠和可用的NPP建设管道。我们探讨参数选择对使用1028基因组的功能交互预测的效果,分别和各种值组合。我们识别多个参数集,可优化具有某些生物注释的途径性能。这项工作揭示了根据生物学背景选择用于优化功能预测的正确参数的重要性。

著录项

  • 来源
    《Bioinformatics》 |2020年第14期|共10页
  • 作者单位

    Hebrew Univ Jerusalem Inst Med Res Israel Canada Dept Dev Biol &

    Canc Res IL-9112102 Jerusalem Israel;

    Hebrew Univ Jerusalem Inst Med Res Israel Canada Dept Dev Biol &

    Canc Res IL-9112102 Jerusalem Israel;

    Hebrew Univ Jerusalem Inst Med Res Israel Canada Dept Dev Biol &

    Canc Res IL-9112102 Jerusalem Israel;

    Hebrew Univ Jerusalem Inst Med Res Israel Canada Dept Dev Biol &

    Canc Res IL-9112102 Jerusalem Israel;

    Hebrew Univ Jerusalem Inst Med Res Israel Canada Dept Dev Biol &

    Canc Res IL-9112102 Jerusalem Israel;

    Hebrew Univ Jerusalem Inst Med Res Israel Canada Dept Dev Biol &

    Canc Res IL-9112102 Jerusalem Israel;

    Hebrew Univ Jerusalem Inst Med Res Israel Canada Dept Dev Biol &

    Canc Res IL-9112102 Jerusalem Israel;

    Hebrew Univ Jerusalem Inst Med Res Israel Canada Dept Dev Biol &

    Canc Res IL-9112102 Jerusalem Israel;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 生物工程学(生物技术);
  • 关键词

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