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首页> 外文期刊>Chem-Bio Informatics Journal >A Novel Fragment Recommendation Workflow using Direct and Indirect Transfer of SAR According to Integrated Similarities of Scaffold Motifs and SAR Trends: Application to Identifying Factor Xa Inhibitors
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A Novel Fragment Recommendation Workflow using Direct and Indirect Transfer of SAR According to Integrated Similarities of Scaffold Motifs and SAR Trends: Application to Identifying Factor Xa Inhibitors

机译:根据支架基序和SAR趋势的综合相似性,使用直接和间接转移SAR的新型片段推荐工作流程:在识别Xa因子抑制剂中的应用

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Here we report a new drug design workflow that facilitates the transfer of structure-activity relationships (SARs) and recommends alternative fragments from SAR databases. We first prepare two collections of matched molecular series (MMS) comprising a query set of compounds with their SARs and a set derived from reference SAR databases. The second step detects MMS from the reference SAR sources, which identifies profiles similar to a query MMS according to integrated similarities of scaffold shapes and SAR trends. The third step enumerates new compounds with improved activity profiles compared with a query compound computed using a collaborative filtering algorithm. Our workflow detected direct and latent relationships between a query MMS and those derived from the reference SAR sources. Retrospective application of this workflow to the identification of factor Xa inhibitors yielded recommendations with higher predictive accuracy than a conventional quantitative SAR technique. Moreover, potent S1 binding elements were identified using SAR knowledge independent of information about ligand-protein complexes.
机译:在这里,我们报告了一种新的药物设计工作流程,该工作流程可促进结构-活性关系(SAR)的转移,并推荐SAR数据库中的替代片段。我们首先准备两个匹配分子系列(MMS)的集合,包括具有SAR的化合物查询集和从参考SAR数据库中衍生的集合。第二步从参考SAR源检测MMS,该参考源根据支架形状和SAR趋势的综合相似性识别与查询MMS类似的配置文件。第三步列举了与使用协作过滤算法计算出的查询化合物相比,具有改进的活性特征的新化合物。我们的工作流程检测到查询MMS与从参考SAR来源派生的MMS之间的直接和潜在关系。该工作流程在因子Xa抑制剂鉴定中的回顾性应用提出了比常规定量SAR技术具有更高预测准确性的建议。此外,独立于配体-蛋白质复合物的信息,使用SAR知识可以鉴定出有效的S1结合元件。

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