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Development and Application of Next-Generation Sequencing Methods to Profile Cellular Translational Dynamics

机译:下一代测序方法在细胞转化动力学研究中的发展与应用

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摘要

The transmission of genetic information from the transcription of DNA to RNA and the subsequent translation of RNA into protein is often abstracted into a linear process. However, as methods and technologies to measure the genomic, transcriptomic, and proteomic content of cells have advanced, so too has our understanding that the transmission of genetic information does not always flow in a lossless manner. For instance, changes observed in messenger RNA (mRNA) abundance are not always retained at the proteomic level. Indeed, a diverse array of mechanisms have been identified that exert regulatory control over this transmission of information. Next-generation short read sequencing has driven many of these insights and provided increasingly nuanced understanding of these regulatory mechanisms. However, the continued development and application of sequencing methodologies and analytics are required to properly contextualize many of these insights on a more global scale. Ribosome profiling is one such recent advancement which enriches for ribosome-protected fragments of mRNA; sequencing and analysis of these ribosome-protected mRNA fragments enables profiling of the translational content of a sample. The aim of this dissertation is to address the need for the development and application of statistical and analytical algorithms to profile the regulatory factors that contribute to the translational dynamics in cells.;In the first chapter, I survey the development and application of next-generation sequencing methods for the profiling and computational analysis of translation and translational dynamics. In the second chapter of this thesis, I present SPECtre, a software package that identifies regions of active translation through measurement of the translational engagement of ribosomes over a transcript. SPECtre achieves high sensitivity and specificity in its classification of regions undergoing translation by leveraging the codon-dependent elongation of peptides; this tri-nucleotide periodicity is evident in the alignment of ribosome profiling sequence reads to a reference transcriptome. SPECtre classifies actively translated transcripts according to their coherence in read coverage over a region to an optimal tri-nucleotide signal.;In the third chapter, I describe the application of SPECtre to identify the translation of upstream-initiated open-reading frames that may regulate differentiation in a neuron-like cell model. uORFs are transcripts that result from the initiation of translation from AUG, and under certain biological constraints, from non-AUG sequences localized in the 5' untranslated regions of annotated protein-coding genes. Subsets of these uORFs have been implicated in the regulation of their downstream protein-coding genes in yeast, mice and humans. In this chapter, I provide further evidence for this regulation as well as the spatial context for the functional consequences of uORF translation on downstream protein-coding genes in a neuron-like cell line model of differentiation.;Finally, in the fourth chapter, I outline a strategy using our coherence-based translational scoring algorithm to profile ribosomal engagement over chimeric gene fusion breakpoints in prostate cancer. Here, known breakpoints from current annotation databases are integrated with novel junctions nominated by existing whole genome and transcriptomic gene fusion detection algorithms, and the translational profile over these chimeric junctions using SPECtre is measured. This provides an additional layer of translational evidence to known and novel gene fusion breakpoints in prostate cancer. Ongoing development of a database and visualization platform based on these results will enable integrative insights into the transcriptional and translational topology of these breakpoints.
机译:遗传信息从DNA转录到RNA以及随后RNA到蛋白质的翻译通常被抽象为线性过程。然而,随着测量细胞的基因组,转录组和蛋白质组学含量的方法和技术的发展,我们对遗传信息的传递并不总是以无损方式流动的理解也得到了发展。例如,信使RNA(mRNA)丰度中观察到的变化并不总是保留在蛋白质组学水平上。实际上,已经确定了对信息的这种传递施加监管控制的各种机制。下一代短读测序已推动了许多这些见解,并提供了对这些调节机制的日益细微的了解。但是,需要继续开发和应用测序方法学和分析方法,才能在全球范围内正确地关联许多这些见解。核糖体谱分析就是这样的最新进展之一,它丰富了核糖体保护的mRNA片段。这些核糖体保护的mRNA片段的测序和分析能够对样品的翻译内容进行分析。本文的目的是为了解决统计和分析算法的开发和应用问题,以剖析有助于细胞翻译动态变化的调节因子。在第一章中,我概述了下一代的开发和应用。用于翻译和翻译动力学分析和计算分析的排序方法。在本论文的第二章中,我介绍了SPECtre,这是一个软件包,它通过测量转录本上核糖体的翻译参与来识别活跃翻译的区域。通过利用肽的密码子依赖性延伸,幽灵在经历翻译的区域的分类中实现了高灵敏度和特异性;该三核苷酸的周期性在核糖体谱分析序列读数与参考转录组的比对中是明显的。幽灵根据其在一个区域的阅读覆盖范围内与最佳三核苷酸信号的连贯性对主动翻译的转录本进行分类;在第三章中,我描述了幽灵在识别上游启动的开放阅读框的翻译中的应用神经元样细胞模型中的分化。 uORF是从AUG开始翻译并在某些生物学限制下由位于带注释的蛋白质编码基因的5'非翻译区中的非AUG序列产生的转录本。这些uORF的子集与酵母,小鼠和人类中其下游蛋白质编码基因的调控有关。在本章中,我将提供这种调节的进一步证据,以及uORF翻译对神经元样细胞系分化模型中下游蛋白质编码基因的功能后果的空间背景。最后,在第四章,我概述使用我们基于一致性的翻译评分算法在前列腺癌中通过嵌合基因融合断点分析核糖体参与的策略。在这里,当前注释数据库中的已知断点与现有全基因组和转录组基因融合检测算法提名的新型连接点整合在一起,并使用Spectre测量了这些嵌合连接点的翻译谱。这为前列腺癌中已知和新型基因融合断裂点提供了另一层翻译证据。基于这些结果的数据库和可视化平台的持续开发将使您能够对这些断点的转录和翻译拓扑结构进行整合。

著录项

  • 作者

    Chun, Sang Young.;

  • 作者单位

    University of Michigan.;

  • 授予单位 University of Michigan.;
  • 学科 Bioinformatics.
  • 学位 Ph.D.
  • 年度 2018
  • 页码 166 p.
  • 总页数 166
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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