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A robust clustering method for chemical structures

机译:化学结构的鲁棒聚类方法

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摘要

A clustering method based on finding the largest set of disconnected fragments that two chemical compounds have in common is shown to be able to group structures in a way that is ideally suited to medicinal chemistry programs. We describe how markedly improved results can be obtained by using a similarity metric that accounts not just for the size of the shared fragments but also on their relative arrangement in the two parent compounds, The use of a physiochemical atom typing scheme is also shown to provide significant contributions. Results from calculations using a test set consisting of actives from nine different important biological target proteins demonstrate the strengths of our clustering method and the advantages over other approaches that are widely used throughout the pharmaceutical industry.
机译:基于发现两种化合物共有的最大断开连接片段集的聚类方法显示出能够以最适合药物化学程序的方式对结构进行分组。我们描述了如何通过使用相似性度量来获得显着改善的结果,该度量不仅考虑共享片段的大小,还考虑了它们在两个母体化合物中的相对排列,还显示出使用物理化学原子分型方案可以提供重大贡献。使用由来自9种不同的重要生物靶蛋白的活性成分组成的测试集进行计算得出的结果证明了我们的聚类方法的优势以及与整个制药行业广泛使用的其他方法相比的优势。

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