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Understanding cellular function through the analysis of protein interaction networks.

机译:通过分析蛋白质相互作用网络了解细胞功能。

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摘要

A major challenge of post-genomic biology is understanding the complex networks of interacting genes, proteins and small molecules that give rise to biological form and function. Advances in whole-genome approaches are now enabling us to characterize these networks systematically, using procedures such as the two-hybrid assay and protein co-immunoprecipitation to screen for protein-protein interactions (PPI). Large protein networks are now available for many species like the baker's yeast, worm, fruit fly and the malaria parasite P. falciparum. These data also introduce a number of technical challenges: how to separate true protein-protein interactions from false positives; how to annotate interactions with functional roles; and, ultimately, how to organize large-scale interaction data into models of cellular signaling and machinery. Further, as protein interactions form the backbone of cellular function, they can potentially be used in conjunction with other large-scale data types to get more insights into the functioning of the cell. In this dissertation, I try to address some the above questions that arise during the analysis of protein networks.;First, I describe a new method to assign confidence scores to protein interactions derived from large-scale studies. Subsequently, I perform a benchmarking analysis to compare its performance with other existing methods. Next, I extend the network comparison algorithm, NetworkBLAST, to compare protein networks across multiple species. In particular, to elucidate cellular machinery on a global scale, I performed a multiple comparison of the protein-protein interaction networks of C. elegans, D. melanogaster and S. cerevisiae . This comparison integrated protein interaction and sequence information to reveal 71 network regions that were conserved across all three species and many exclusive to the metazoans. I then applied this technique to the analysis of the protein network of the malaria pathogen Plasmodium falciparum and showed that its patterns of interaction, like its genome sequence, set it apart from other species.;Finally, I integrated the PPI network data with expression Quantitative Loci (eQTL) data in yeast to efficiently interpret them. I present an efficient method, called 'eQTL Electrical Diagrams' (eQED), that integrates eQTLs with protein interaction networks by modeling the two data sets as a wiring diagram of current sources and resistors. eQED achieved a 79% accuracy in recovering a reference set of regulator-target pairs in yeast, which is significantly higher performance than three competing methods. eQED also annotates 368 protein-protein interactions with their directionality of information flow with an accuracy of approximately 75%.
机译:基因组后生物学的一个主要挑战是了解相互作用的基因,蛋白质和小分子的复杂网络,从而形成生物学形式和功能。现在,全基因组方法的进步使我们能够使用双杂交测定和蛋白质共免疫沉淀等方法来系统地表征这些网络,以筛选蛋白质-蛋白质相互作用(PPI)。大型蛋白质网络现在可用于许多种类,例如面包酵母,蠕虫,果蝇和疟原虫恶性疟原虫。这些数据还带来了许多技术挑战:如何从假阳性中分离出真正的蛋白质-蛋白质相互作用;如何注释与职能角色的互动;最终,如何将大规模交互数据组织到蜂窝信号和机械模型中。此外,由于蛋白质相互作用形成了细胞功能的骨干,因此它们有可能与其他大规模数据类型结合使用,以深入了解细胞的功能。在本文中,我试图解决在蛋白质网络分析过程中出现的上述问题。首先,我描述了一种对来自大规模研究的蛋白质相互作用赋予置信度得分的新方法。随后,我进行了基准分析,以将其性能与其他现有方法进行比较。接下来,我扩展了网络比较算法NetworkBLAST,以比较多个物种的蛋白质网络。特别是,为了在全球范围内阐明细胞机制,我对秀丽隐杆线虫,黑腹果蝇和酿酒酵母的蛋白质-蛋白质相互作用网络进行了多次比较。这种比较整合了蛋白质相互作用和序列信息,以揭示71个网络区域,该区域在所有三个物种中都是保守的,许多是后生动物所独有的。然后,我将该技术应用于疟疾病原体恶性疟原虫的蛋白质网络分析,并发现其相互作用方式(如其基因组序列)使其与其他物种区分开来。最后,我将PPI网络数据与表达定量相结合。酵母中的基因座(eQTL)数据可有效地解释它们。我提出了一种有效的方法,称为“ eQTL电气图”(eQED),该方法通过将两个数据集建模为电流源和电阻器的接线图,从而将eQTL与蛋白质相互作用网络集成在一起。 eQED在回收酵母中一组调节剂-靶标对的参考中达到了79%的准确度,其性能明显高于三种竞争方法。 eQED还使用信息流的方向性注释了368种蛋白质-蛋白质相互作用,其准确度约为75%。

著录项

  • 作者

    Suthram, Silpa.;

  • 作者单位

    University of California, San Diego.;

  • 授予单位 University of California, San Diego.;
  • 学科 Biology Bioinformatics.
  • 学位 Ph.D.
  • 年度 2008
  • 页码 191 p.
  • 总页数 191
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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