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Novel Algorithms for Automated NMR Assignment and Protein Structure Determination.

机译:自动NMR分配和蛋白质结构确定的新算法。

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摘要

High-throughput structure determination based on solution nuclear magnetic resonance (NMR) spectroscopy plays an important role in structural genomics. Unfortunately, current NMR structure determination is still limited by the lengthy time required to process and analyze the experimental data. A major bottleneck in protein structure determination via NMR is the interpretation of NMR data, including the assignment of chemical shifts and nuclear Overhauser effect (NOE) restraints from NMR spectra. The development of automated and efficient procedures for analyzing NMR data and assigning experimental restraints will thereby enable high-throughput protein structure determination and advance structural proteomics research. In this dissertation, we present the following novel algorithms for automating NMR assignment and protein structure determination. First, we develop a novel high-resolution structure determination algorithm that starts with a global fold calculated from the exact and analytic solutions to the residual dipolar coupling (RDC) equations. Our high-resolution structure determination protocol has been applied to solve the NMR structures of the FF Domain 2 of human transcription elongation factor CA150 (RNA polymerase II C-terminal domain interacting protein), which have been deposited into the Protein Data Bank. Second, we propose an automated side-chain resonance and NOE assignment algorithm that does not require any explicit through-bond experiment to facilitate side-chain resonance assignment, such as HCCH-TOCSY. Third, we present a Bayesian approach to determine protein side-chain rotamer conformations by integrating the likelihood function derived from unassigned NOE data, with prior information (i.e., empirical molecular mechanics energies) about the protein structures. Fourth, we develop a loop backbone structure determination algorithm that exploits the global orientational restraints from sparse RDCs and computes an ensemble of loop conformations that not only close the gap between two end residues but also satisfy the NMR data restraints. Finally, to facilitate NMR structure determination for large proteins, we develop a novel algorithm for predicting the Halpha chemical shifts by exploiting the dependencies between chemical shifts of different backbone atoms and integrating the attainable structural information. All the algorithms developed in this dissertation have been tested on experimental NMR data with collaborators in Dr. Pei Zhou's and our labs. The promising results demonstrate that our algorithms can be successfully applied to high-quality protein structure determination. Since our algorithms reduce the time required in NMR assignment, it can accelerate the protein structure determination process.
机译:基于溶液核磁共振(NMR)光谱的高通量结构确定在结构基因组学中起着重要作用。不幸的是,当前的NMR结构确定仍然受到处理和分析实验数据所需的漫长时间的限制。通过NMR确定蛋白质结构的主要瓶颈是NMR数据的解释,包括从NMR光谱中分配化学位移和核Overhauser效应(NOE)限制。用于分析NMR数据和分配实验约束条件的自动化,高效程序的发展将使高通量蛋白质结构测定和结构蛋白质组学研究成为可能。在本文中,我们提出了以下新颖的算法来自动完成NMR核对和蛋白质结构测定。首先,我们开发了一种新颖的高分辨率结构确定算法,该算法从对残余偶极耦合(RDC)方程的精确解和解析解计算出的全局折叠开始。我们的高分辨率结构确定方案已应用于解决人类转录延伸因子CA150(RNA聚合酶II C末端域相互作用蛋白)的FF域2的NMR结构,该结构已沉积到蛋白质数据库中。其次,我们提出了一种自动的侧链共振和NOE分配算法,该算法不需要任何显式的键合实验来促进侧链共振分配,例如HCCH-TOCSY。第三,我们提出了一种贝叶斯方法,通过将源自未分配的NOE数据的似然函数与有关蛋白质结构的先验信息(即经验分子力学能)相集成来确定蛋白质侧链旋转异构体构象。第四,我们开发了一种环状骨干结构确定算法,该算法利用稀疏RDC的全局定向约束并计算出一系列环状构象,这些构象不仅可以闭合两个末端残基之间的缺口,而且可以满足NMR数据约束。最后,为了促进大蛋白的NMR结构确定,我们开发了一种新颖的算法,通过利用不同骨架原子的化学位移之间的相关性并整合可获得的结构信息来预测Halpha化学位移。本文所开发的所有算法均已在Pei Zhou博士和我们实验室的合作者的实验NMR数据上进行了测试。有希望的结果表明,我们的算法可以成功地应用于高质量蛋白质结构测定。由于我们的算法减少了NMR分配所需的时间,因此可以加快蛋白质结构确定过程。

著录项

  • 作者

    Zeng, Jianyang.;

  • 作者单位

    Duke University.;

  • 授予单位 Duke University.;
  • 学科 Computer science.;Biophysics.
  • 学位 Ph.D.
  • 年度 2011
  • 页码 253 p.
  • 总页数 253
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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