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How do 2D fingerprints detect structurally diverse active compounds? Revealing compound subset-specific fingerprint features through systematic selection

机译:2D指纹如何检测结构上不同的活性化合物?通过系统选择揭示复合子集特定的指纹特征

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In independent studies it has previously been demonstrated that two-dimensional (2D) fingerprints have scaffold hopping ability in virtual screening, although these descriptors primarily emphasize structural and/or topological resemblance of reference and database compounds. However, the mechanism by which such fingerprints enrich structurally diverse molecules in database selection sets is currently little understood. In order to address this question, similarity search calculations on 120 compound activity classes of varying structural diversity were carried out using atom environment fingerprints. Two feature selection methods, Kullback-Leibler divergence and gain ratio analysis, were applied to systematically reduce these fingerprints and generate alternative versions for searching. Gain ratio is a feature selection method from information theory that has thus far not been considered in fingerprint analysis. However, it is shown here to be an effective fingerprint feature selection approach. Following comparative feature selection and similarity searching, the compound recall characteristics of original and reduced fingerprint versions were analyzed in detail. Small sets of fingerprint features were found to distinguish subsets of active compounds from other database molecules. The compound recall of fingerprint similarity searching often resulted from a cumulative detection of distinct compound subsets by different fingerprint features, which provided a rationale for the scaffold hopping potential of these 2D fingerprints.
机译:在独立研究中,先前已证明二维(2D)指纹在虚拟筛选中具有支架跳跃功能,尽管这些描述符主要强调参考化合物和数据库化合物的结构和/或拓扑相似性。但是,目前尚不了解这种指纹在数据库选择集中丰富结构多样化分子的机制。为了解决这个问题,使用原子环境指纹对120种不同结构多样性的化合物活性类别进行了相似性搜索计算。两种特征选择方法,即Kullback-Leibler散度和增益比分析,被用于系统地减少这些指纹并生成用于搜索的替代版本。增益比是信息理论中的一种特征选择方法,迄今为止在指纹分析中尚未考虑。但是,此处显示这是一种有效的指纹特征选择方法。在比较特征选择和相似性搜索之后,详细分析了原始指纹版本和还原指纹版本的复合召回特性。发现少量指纹特征可将活性化合物的子集与其他数据库分子区分开。指纹相似性搜索的复合召回通常是由不同指纹特征对不同化合物子集的累积检测导致的,这为这些2D指纹的支架跳跃潜力提供了理论依据。

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