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Protein Structure Prediction in Structure-Based Ligand Design and Virtual Screening

机译:基于结构的配体设计和虚拟筛选中的蛋白质结构预测

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摘要

Advances in protein modeling algorithms and state-of-the-art sequence similarity comparison and fold recognition methods, in combination with growing protein structure information, are facilitating “genome-to-drug lead” approaches in which chemicals are virtually screened against computationally-predicted protein targets. Although the quality of predicted protein structures by homology modeling methods, and thus their applicability to drug discovery initiatives, predominantly depends on the sequence similarity between the protein of known structure and the protein target to be modeled, recent research underscores that this approach can be used to significant advantage in the identification and optimization of lead compounds, as well as for the identification and validation of drug targets. Rational structure-based drug design cycles begin with an iterative procedure that is dependent on the initial determination of the structure of the target protein, followed by the prediction of ligands for the target protein from molecular modeling computation. The structure determination of all proteins encoded by vast genome sequencing efforts appears to be an unrealistic goal with current technologies. Therefore, other approaches based on the development of technology useful for accurately predicting and modeling the structures of proteins have become exceedingly important in certain structurebased drug design efforts. This review provides an overview of the recent method advancements in protein structure prediction by homology modeling and includes an assessment of the application of homology modeling to pharmaceutically relevant questions. In addition, examples of successful applications of homology modeling approaches to genome-to-drug lead investigations are described.
机译:蛋白质建模算法以及最新的序列相似性比较和折叠识别方法的进步,与不断增长的蛋白质结构信息相结合,正在促进“基因组到药物的先导”方法,其中可以根据计算预测对化学药品进行虚拟筛选蛋白质靶标。尽管通过同源性建模方法预测的蛋白质结构的质量及其在药物发现计划中的适用性主要取决于已知结构的蛋白质与要建模的蛋白质靶标之间的序列相似性,但最近的研究强调可以使用这种方法在先导化合物的鉴定和优化以及药物靶标的鉴定和确认方面具有显着优势。基于合理结构的药物设计周期从迭代过程开始,该过程取决于目标蛋白结构的初始确定,然后通过分子建模计算预测目标蛋白的配体。对于目前的技术而言,由庞大的基因组测序工作编码的所有蛋白质的结构测定似乎是不现实的目标。因此,基于可用于精确预测和建模蛋白质结构的技术发展的其他方法在某些基于结构的药物设计工作中已变得极为重要。这篇综述概述了通过同源性建模在蛋白质结构预测中的最新方法进展,并包括了将同源性建模应用于药学相关问题的评估。此外,还介绍了同源性建模方法在基因组到药物先导研究中成功应用的例子。

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