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Computational methods for structure-based and combinatorial drug design.

机译:基于结构和组合药物设计的计算方法。

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摘要

Computational methods, both ligand- and structure-based, have made important contributions to drug design. More recently, combinatorial synthesis and high-throughput screening have begun to impact significantly the drug design process. An emerging drug design paradigm is the partnering of computational methods with combinatorial chemistry to integrate information, such as target structure and pharmacophore preferences, in library design. This approach capitalizes on complementary capabilities of the methods to compensate for the difficulties of each.;The Multiple Copy Simultaneous Search (MCSS) method described in Chapter two is an efficient computational method for determining favorable positions and orientations (defined as local minima in the force field of the target) for functional groups in the binding site of a macromolecule. The resulting functional group maps form the basis of computational and experimental methods for generating compound libraries targeted for a selected macromolecule.;Chapter three describes a method for constructing compound libraries in silico. The method uses Monte Carlo simulated annealing to find near-optimal combinations; of MCSS functional group minima which form molecular skeletons. These skeletons are functionalized by an exhaustive search of side chain functional group minima. The construction of a virtual library for HLA-B27, a Major Histocompatibility Complex (MHC) Class I protein, is presented.;Chapter four illustrates how structure-based design methods can be used to focus combinatorial libraries for a target macromolecule. In this approach, MCSS functional group maps are analyzed by visualization, clustering, interaction energy comparisons, and diversity methods to form a hypothesis regarding ligands for HLA-DR4, an MHC Class II protein. Combinatorial synthesis is used to fill in the details of the hypothesis by generating a library of compounds that satisfy key points of the hypothesis. Parallel screening in vitro allows rapid evaluation of the library.;Chapter five describes an empirically-derived model for protein-ligand binding affinity. A predictive model is generated using a simulated neural network to fit experimentally-determined binding affinities using a small number of structure-based parameters. This model may be useful for screening virtual libraries.;Concluding remarks consider the prospects of an integrated computational and experimental approach to drug design.
机译:基于配体和基于结构的计算方法对药物设计做出了重要贡献。最近,组合合成和高通量筛选已开始显着影响药物设计过程。一种新兴的药物设计范例是计算方法与组合化学的结合,以在图书馆设计中整合诸如靶结构和药效基团首选项之类的信息。这种方法利用了方法的互补功能来弥补每种方法的困难。第二章中描述的多副本同时搜索(MCSS)方法是一种有效的计算方法,用于确定有利的位置和方向(定义为力的局部最小值)。大分子结合位点的官能团)。所得的官能团图构成用于产生针对所选大分子的化合物文库的计算和实验方法的基础。第三章描述了一种在计算机上构建化合物文库的方法。该方法使用蒙特卡洛模拟退火法找到接近最佳的组合。形成分子骨架的MCSS官能团最小值。这些骨架通过详尽搜索侧链官能团最小值来实现功能化。介绍了HLA-B27(主要组织相容性复合体(MHC)I类蛋白质)的虚拟文库的构建。第四章说明了如何使用基于结构的设计方法来聚焦目标大分子的组合文库。在这种方法中,通过可视化,聚类,相互作用能比较和多样性方法分析了MCSS功能组图,从而形成了有关MHC II类蛋白HLA-DR4配体的假设。组合合成通过生成满足假设要点的化合物库来填充假设的细节。体外平行筛选可以快速评估文库。第五章描述了蛋白质-配体结合亲和力的经验模型。使用模拟神经网络使用少量基于结构的参数来拟合实验确定的结合亲和力,从而生成预测模型。该模型对于筛选虚拟文库可能是有用的。结束语考虑了药物设计中集成的计算和实验方法的前景。

著录项

  • 作者

    Evensen, Erik-Robert.;

  • 作者单位

    Harvard University.;

  • 授予单位 Harvard University.;
  • 学科 Biophysics.;Pharmacy sciences.;Pharmaceutical sciences.
  • 学位 Ph.D.
  • 年度 2000
  • 页码 255 p.
  • 总页数 255
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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