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Probabilistic computational protein design: Advances in methodology and the incorporation of non-biological molecular components.

机译:概率计算蛋白质设计:方法学的进步和非生物分子成分的整合。

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摘要

Computational protein design method has been developed to understand the underling physicochemical principles that determine the uniqueness of protein conformation often endowing biological function. Many designed sequences have been successful in revealing the energetic ingredients that govern the global and local details of folding; such successes are due in part to the advances in searching methods and scoring functions. Given the intrinsic complexity of proteins, myriads of subtle interactions govern the folding and approximations must be used for efficient computation. Sensitivity to the scoring energy function remains to be examined for discrimination of native-like ensembles of proteins. In this thesis, an entropy-based protein design strategy providing deterministic site-specific amino acid probabilities has been explored upon the variation of molecular mechanical potential energy functions. Secondly, the flexibility and extensibility of the method have been demonstrated in engineering de novo function in the human H-ferritin for noble metal cluster growth. The method has been used to de novo design of a tetra-alpha-helical bundle for anesthetic halothane binding, where the calculation is expedited by a symmetry approximation and expanded to accommodate non-natural amino acids and/or guest-molecules, thereby simultaneously determining the amino acid sequences and the bound ligand conformations. Finally, the probabilistic strategy has been applied to understand physicochemical properties in natural systems and to facilitate experimental studies. The folding of a Zn-binding domain has been explored by computationally designed substitution with the natural fluorescent probe Trp mutation. The probability profiles in the allosteric enzyme Adelnylate kinase has been used to design sequences that may have preferential stabilities for the open and the closed conformations of the enzyme in an attempt to understand the role of allostery in enzyme catalysis. As the last example, methods for designing sequences with targeted pI values have been introduced and applied to the partial redesign of cytochrome P450 2C9.
机译:已经开发了计算蛋白质设计方法来理解基本的物理化学原理,这些原理确定了通常赋予生物学功能的蛋白质构象的独特性。许多设计的序列已经成功地揭示了控制折叠全局和局部细节的能量成分。这样的成功部分归因于搜索方法和评分功能的进步。鉴于蛋白质的内在复杂性,无数微妙的相互作用控制着折叠​​,因此必须使用近似值进行有效的计算。对得分能量功能的敏感性仍有待检查,以区分蛋白质的天然样结构。在本文中,基于分子力学势能函数的变化,探索了一种基于熵的蛋白质设计策略,该策略可提供确定的位点特异性氨基酸概率。其次,该方法的灵活性和可扩展性已在人类H-铁蛋白的新工程功能中证明了贵金属簇的生长。该方法已用于从头设计用于麻醉性氟烷的四α-螺旋束,通过对称近似法加快了计算速度,并将其扩展为可容纳非天然氨基酸和/或客体分子,从而同时确定氨基酸序列和结合的配体构象。最后,概率策略已应用于了解自然系统中的理化性质并促进实验研究。锌结合结构域的折叠已通过天然荧光探针Trp突变的计算设计替代进行了探索。变构酶Adelnylate激酶中的概率图谱已用于设计可能对酶的开放和闭合构象具有优先稳定性的序列,以试图了解变构作用在酶催化中的作用。作为最后一个例子,介绍了设计具有目标pI值的序列的方法,并将其应用于细胞色素P450 2C9的部分重新设计。

著录项

  • 作者

    Keng, Seung-gu.;

  • 作者单位

    University of Pennsylvania.;

  • 授予单位 University of Pennsylvania.;
  • 学科 Chemistry Physical.;Biophysics General.
  • 学位 Ph.D.
  • 年度 2009
  • 页码 295 p.
  • 总页数 295
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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