Schrodinger, Sanali Infopark, 8-2-120/113, Banjara Hills, Hyderabad 500034, Andhra Pradesh, India.
J Chem Inf Model. 2010 May 24;50(5):771-84. doi: 10.1021/ci100062n.
A systematic virtual screening study on 11 pharmaceutically relevant targets has been conducted to investigate the interrelation between 8 two-dimensional (2D) fingerprinting methods, 13 atom-typing schemes, 13 bit scaling rules, and 12 similarity metrics using the new cheminformatics package Canvas. In total, 157 872 virtual screens were performed to assess the ability of each combination of parameters to identify actives in a database screen. In general, fingerprint methods, such as MOLPRINT2D, Radial, and Dendritic that encode information about local environment beyond simple linear paths outperformed other fingerprint methods. Atom-typing schemes with more specific information, such as Daylight, Mol2, and Carhart were generally superior to more generic atom-typing schemes. Enrichment factors across all targets were improved considerably with the best settings, although no single set of parameters performed optimally on all targets. The size of the addressable bit space for the fingerprints was also explored, and it was found to have a substantial impact on enrichments. Small bit spaces, such as 1024, resulted in many collisions and in a significant degradation in enrichments compared to larger bit spaces that avoid collisions.
已经针对 11 个制药相关目标进行了系统的虚拟筛选研究,以使用新的化学信息学软件包 Canvas 研究 8 种二维(2D)指纹方法、13 种原子类型方案、13 种位标度规则和 12 种相似性度量之间的相互关系。总共进行了 157872 次虚拟筛选,以评估每种参数组合识别数据库筛选中活性物质的能力。通常,指纹方法(例如 MOLPRINT2D、Radial 和 Dendritic)比其他指纹方法更能编码关于局部环境的信息,而不仅仅是简单的线性路径。具有更具体信息的原子类型方案,如 Daylight、Mol2 和 Carhart,通常优于更通用的原子类型方案。尽管没有一组参数在所有目标上都表现最佳,但所有目标的富集因子都得到了显著提高。还探索了指纹的可寻址位空间的大小,发现它对富集有很大的影响。小的位空间(例如 1024)会导致许多冲突,并与避免冲突的较大位空间相比,显著降低了富集。