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Computational methodologies and resources for discovery of phosphorylation regulation and function in cellular networks

机译:用于发现蜂窝网络中磷酸化调节和功能的计算方法和资源

摘要

Post-translational modifications (PTMs) regulate cellular signaling networks by modifying activity, localization, turnover and other characteristics of proteins in the cell. For example, signaling in receptor tyrosine kinase (RTK) networks, such as those downstream of epidermal growth factor receptor (EGFR) and insulin receptor, is initiated by binding of cytokines or growth factors, and is generally propagated by phosphorylation of signaling molecules. The rate of discovery of PTM sites is increasing rapidly and is significantly outpacing our biological understanding of the function and regulation of those modifications. The ten-fold increase in known phosphorylation sites over a five year time span can primarily be attributed to mass spectrometry (MS) measurement methods, which are capable of identifying and monitoring hundreds to thousands of phosphorylation sites across multiple biological samples. There is significant interest in the field in understanding these modifications, due to their important role in basic physiology as well as their implication in disease. In this thesis, we develop algorithms and tools to aid in analysis and organization of these immense datasets, which fundamentally seek to generate novel insights and testable hypotheses regarding the function and regulation of phosphorylation in RTK networks. We have developed a web-accessible analysis and repository resource for high-throughput quantitative measurements of post-translational modifications, called PTMScout. Additionally, we have developed a semi-automatic, high-throughput screen for unsupervised learning parameters based on their relative ability to partition datasets into functionally related and biologically meaningful clusters. We developed methods for comparing the variability and robustness of these clustering solutions and discovered that phosphopeptide co-clustering robustness can recapitulate known protein interaction networks, and extend them. Both of these tools take advantage of a new linear motif discovery algorithm, which we additionally used to find a putative regulatory sequence downstream of the highly tumorigenic EGFRvIII mutation that indicates casein kinase II (CK2) activity may be increased in glioblastoma.
机译:翻译后修饰(PTM)通过修饰细胞中蛋白质的活性,定位,更新和其他特征来调节细胞信号网络。例如,受体酪氨酸激酶(RTK)网络中的信号传导,例如表皮生长因子受体(EGFR)和胰岛素受体的下游,是通过细胞因子或生长因子的结合而引发的,并且通常通过信号分子的磷酸化而传播。 PTM位点的发现速度正在迅速增加,并且大大超过了我们对这些修饰的功能和调控的生物学理解。在五年的时间内,已知的磷酸化位点增加了十倍,这主要归因于质谱(MS)测量方法,该方法能够识别和监控多个生物样品中数百至数千个磷酸化位点。由于它们在基本生理学中的重要作用及其对疾病的影响,因此在理解这些修饰方面引起了人们的极大兴趣。在本文中,我们开发了有助于分析和组织这些巨大数据集的算法和工具,这些算法和工具从根本上寻求产生有关RTK网络中磷酸化的功能和调控的新颖见解和可检验的假设。我们已经开发了一种可通过网络访问的分析和资源库资源,用于翻译后修饰的高通量定量测量,称为PTMScout。此外,我们基于无监督学习参数的相对能力将数据集划分为功能相关和生物学上有意义的簇的相对能力,开发了半自动,高通量的屏幕。我们开发了用于比较这些聚类解决方案的变异性和鲁棒性的方法,并发现磷酸肽共聚簇鲁棒性可以概括已知的蛋白质相互作用网络,并对其进行扩展。这两种工具都利用了新的线性基序发现算法,我们还使用该算法发现了高度致瘤性EGFRvIII突变下游的假定调控序列,该序列表明胶质母细胞瘤中的酪蛋白激酶II(CK2)活性可能增加。

著录项

  • 作者

    Naegle Kristen M;

  • 作者单位
  • 年度 2010
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  • 原文格式 PDF
  • 正文语种 eng
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