Reddy A Srinivas, Pati S Priyadarshini, Kumar P Praveen, Pradeep H N, Sastry G Narahari
Molecular Modeling Group, Organic Chemical Sciences, Indian Institute of Chemical Technology, Tarnaka, Hyderabad 500 007, India.
Curr Protein Pept Sci. 2007 Aug;8(4):329-51. doi: 10.2174/138920307781369427.
Virtual screening emerged as an important tool in our quest to access novel drug like compounds. There are a wide range of comparable and contrasting methodological protocols available in screening databases for the lead compounds. The number of methods and software packages which employ the target and ligand based virtual screening are increasing at a rapid pace. However, the general understanding on the applicability and limitations of these methodologies is not emerging as fast as the developments of various methods. Therefore, it is extremely important to compare and contrast various protocols with practical examples to gauge the strength and applicability of various methods. The review provides a comprehensive appraisal on several of the available virtual screening methods to-date. Recent developments of the docking and similarity based methods have been discussed besides the descriptor selection and pharmacophore based searching. The review touches upon the application of statistical, graph theory based methods machine learning tools in virtual screening and combinatorial library design. Finally, several case studies are undertaken where the virtual screening technology has been applied successfully. A critical analysis of these case studies provides a good platform to estimate the applicability of various virtual screening methods in the new lead identification and optimization.
虚拟筛选已成为我们寻找新型类药物化合物过程中的一项重要工具。在筛选数据库中,有各种各样可比较和对比的方法协议用于先导化合物。采用基于靶点和配体的虚拟筛选的方法和软件包数量正在迅速增加。然而,对于这些方法的适用性和局限性的普遍认识并没有随着各种方法的发展而快速形成。因此,通过实际例子比较和对比各种协议以评估各种方法的优势和适用性极其重要。本综述对目前几种可用的虚拟筛选方法进行了全面评估。除了描述符选择和基于药效团的搜索外,还讨论了对接和基于相似性方法的最新进展。本综述还涉及统计、基于图论的方法、机器学习工具在虚拟筛选和组合库设计中的应用。最后,进行了几个虚拟筛选技术成功应用的案例研究。对这些案例研究的批判性分析为评估各种虚拟筛选方法在新先导物识别和优化中的适用性提供了一个良好的平台。