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Identifying transcriptional regulatory modules and networks by integrative approaches.

机译:通过整合方法识别转录调控模块和网络。

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摘要

There is great interest in understanding the genetic program of cellular response and differentiation. However, the transcriptional regulatory networks that specify and maintain cellular function are still largely uncharted. The recent advent of high-throughput technologies provides genome-wide (omit) measurements of molecular network components at multiple levels such as genomic sequences, mRNA expression and protein-DNA interactions. Not only does the growing availability of these omit data provide researchers with unprecedented and global views of these transcriptional regulatory systems, but it also raises the challenge of identifying and extracting biological insights from them. In this dissertation I develop and apply computational approaches to integrate these omit data for identifying transcriptional regulatory modules and networks.;Comparative sequence analysis has been widely used to identify conserved transcription factor binding sites (TFBS) and proven useful in certain cases. I design and implement a pipeline to identify conserved TFBS. In comparison to previous methods, the developed pipeline has the flexibility to (1) refine orthologous sequence alignments and (2) adjust the sequence conservation ratio based on the statistical properties of a particular TFBS. Using this pipeline, we have further expanded the mammalian CArGome with the discovery of 60 novel SRF targets which are experimentally validated. This study illustrates the power of our comparative genomic analysis pipeline for identifying conserved TFBS.;More recently, it has been shown that the approaches based on single data type are more likely to be biased due to the fact that each data source provides only partial information for unveiling transcriptional regulatory mechanisms. To take advantage of the complementary information provided by different types of omic data, I present a Bayesian hierarchical model and Markov Chain Monte Carlo implementation that integrates gene expression data, ChIP binding data and TFBS data in a principled and robust fashion. The applications represent both unicellular and mammalian organisms under several scenarios of available data. In these applications, the predicted gene-TF interactions are shown very likely to be biologically relevant. I also demonstrate the ability to predict gene-TF interactions with reduced levels of false positives. Our full probabilistic modeling approach for discovering regulatory networks provides a flexible framework for utilizing all available biological data, while overcoming the intrinsic limitations of other available methods such as the need for prior clustering of expression data and arbitrary parameter thresholds.
机译:人们对了解细胞反应和分化的遗传程序非常感兴趣。但是,指定和维持细胞功能的转录调控网络仍是未知的。高通量技术的最新出现提供了基因组序列,mRNA表达和蛋白质-DNA相互作用等多个级别的分子网络组件的全基因组范围(省略)测量。这些遗漏数据的不断增长的可用性不仅为研究人员提供了关于这些转录调控系统的前所未有的全球视野,而且也带来了从中识别和提取生物学见解的挑战。在本文中,我开发并应用了计算方法来整合这些省略的数据,以识别转录调控模块和网络。比较序列分析已广泛用于鉴定保守的转录因子结合位点(TFBS),并在某些情况下被证明是有用的。我设计并实现了用于识别保守TFBS的管道。与以前的方法相比,开发的管道具有灵活性(1)完善直系同源序列比对和(2)根据特定TFBS的统计特性调整序列保守率。通过使用该管道,我们通过发现60个经过实验验证的新型SRF靶标,进一步扩展了哺乳动物CArGome。这项研究说明了我们的比较基因组分析流程在识别保守的TFBS方面的能力。最近,由于每个数据源仅提供部分信息这一事实,基于单一数据类型的方法更容易产生偏见。揭示转录调控机制。为了利用由不同类型的眼科数据提供的补充信息,我提出了一种贝叶斯层次模型和Markov Chain Monte Carlo实现,该实现以有原则且鲁棒的方式集成了基因表达数据,ChIP绑定数据和TFBS数据。在可用数据的几种情况下,这些应用程序代表了单细胞生物和哺乳动物生物。在这些应用中,预测的基因-TF相互作用显示出很可能与生物学相关。我还展示了预测假阳性水平降低的基因-TF相互作用的能力。我们用于发现监管网络的完整概率建模方法为利用所有可用的生物学数据提供了灵活的框架,同时克服了其他可用方法的固有局限性,例如,对表达数据和任意参数阈值进行预先聚类的需要。

著录项

  • 作者

    Chen, Guang.;

  • 作者单位

    University of Pennsylvania.;

  • 授予单位 University of Pennsylvania.;
  • 学科 Engineering Biomedical.
  • 学位 Ph.D.
  • 年度 2007
  • 页码 117 p.
  • 总页数 117
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 生物医学工程;
  • 关键词

  • 入库时间 2022-08-17 11:39:35

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