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Mining for bioactive scaffolds with scaffold networks: Improved compound set enrichment from primary screening data

机译:具有支架网络的生物活性支架的挖掘:从初步筛选数据中改善化合物集的富集

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Identification of meaningful chemical patterns in the increasing amounts of high-throughput-generated bioactivity data available today is an increasingly important challenge for successful drug discovery. Herein, we present the scaffold network as a novel approach for mapping and navigation of chemical and biological space. A scaffold network represents the chemical space of a library of molecules consisting of all molecular scaffolds and smaller "parent" scaffolds generated therefrom by the pruning of rings, effectively leading to a network of common scaffold substructure relationships. This algorithm provides an extension of the scaffold tree algorithm that, instead of a network, generates a tree relationship between a heuristically rule-based selected subset of parent scaffolds. The approach was evaluated for the identification of statistically significantly active scaffolds from primary screening data for which the scaffold tree approach has already been shown to be successful. Because of the exhaustive enumeration of smaller scaffolds and the full enumeration of relationships between them, about twice as many statistically significantly active scaffolds were identified compared to the scaffold-tree-based approach. We suggest visualizing scaffold networks as islands of active scaffolds.
机译:在当今越来越多的高通量生成的生物活性数据中鉴定有意义的化学模式,对于成功地发现药物而言,是一个日益重要的挑战。在本文中,我们将支架网络作为一种新颖的方法来映射和导航化学和生物空间。支架网络代表分子库的化学空间,该分子库由所有分子支架和通过修剪环而从中产生的较小的“亲本”支架组成,有效地导致了常见支架亚结构关系的网络。该算法提供了支架树算法的扩展,它代替了网络,在基于启发式规则的父支架的选定子集之间生成树关系。对该方法进行了评估,以从初步筛选数据中鉴定出统计学上具有显着活性的支架,对于该方法,已经证明了支架树方法是成功的。由于较小的支架的穷举枚举以及它们之间的关系的完整枚举,与基于支架树的方法相比,鉴定出的统计学上显着活跃的支架大约是两倍。我们建议将支架网络可视化为活动支架的孤岛。

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