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首页> 外文期刊>Journal of Computer-Aided Molecular Design >VSDMIP 1.5: An automated structure- and ligand-based virtual screening platform with a PyMOL graphical user interface
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VSDMIP 1.5: An automated structure- and ligand-based virtual screening platform with a PyMOL graphical user interface

机译:VSDMIP 1.5:具有PyMOL图形用户界面的基于结构和配体的自动化虚拟筛选平台

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摘要

A graphical user interface (GUI) for our previously published virtual screening (VS) and data management platform VSDMIP (Gil-Redondo et al. J Comput Aided Mol Design, 23:171-184, 2009) that has been developed as a plugin for the popular molecular visualization program PyMOL is presented. In addition, a ligand-based VS module (LBVS) has been implemented that complements the already existing structure-based VS (SBVS) module and can be used in those cases where the receptor's 3D structure is not known or for pre-filtering purposes. This updated version of VSDMIP is placed in the context of similar available software and its LBVS and SBVS capabilities are tested here on a reduced set of the Directory of Useful Decoys database. Comparison of results from both approaches confirms the trend found in previous studies that LBVS outperforms SBVS. We also show that by combining LBVS and SBVS, and using a cluster of ~100 modern processors, it is possible to perform complete VS studies of several million molecules in less than a month. As the main processes in VSDMIP are 100% scalable, more powerful processors and larger clusters would notably decrease this time span. The plugin is distributed under an academic license upon request from the authors.
机译:我们先前发布的虚拟筛选(VS)和数据管理平台VSDMIP(Gil-Redondo等人,J Comput Aided Mol Design,23:171-184,2009)的图形用户界面(GUI)已开发为用于介绍了流行的分子可视化程序PyMOL。另外,已经实现了基于配体的VS模块(LBVS),它是对已经存在的基于结构的VS(SBVS)模块的补充,可用于不知道受体3D结构或用于预过滤目的的情况。 VSDMIP的更新版本放在类似的可用软件的上下文中,并在简化的“有用诱饵目录”数据库集中测试了其LBVS和SBVS功能。两种方法的结果比较证实了先前研究中LBVS优于SBVS的趋势。我们还表明,通过结合使用LBVS和SBVS,并使用约100个现代处理器的集群,可以在不到一个月的时间内对数百万个分子进行完整的VS研究。由于VSDMIP中的主要过程具有100%可扩展性,因此功能更强大的处理器和更大的群集将显着减少此时间跨度。根据作者的要求,该插件根据学术许可进行分发。

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