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Similarity boosted quantitative structure-activity relationship - A systematic study of enhancing structural descriptors by molecular similarity

机译:相似性增强了定量构效关系-通过分子相似性增强结构描述符的系统研究

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摘要

The concept of molecular similarity is one of the most central in the fields of predictive toxicology and quantitative structure-activity relationship (QSAR) research. Many toxicological responses result from a multimechanistic process and, consequently, structural diversity among the active compounds is likely. Combining this knowledge, we introduce similarity boosted QSAR modeling, where we calculate molecular descriptors using similarities with respect to representative reference compounds to aid a statistical learning algorithm in distinguishing between different structural classes. We present three approaches for the selection of reference compounds, one by literature search and two by clustering. Our experimental evaluation on seven publicly available data sets shows that the similarity descriptors used on their own perform quite well compared to structural descriptors. We show that the combination of similarity and structural descriptors enhances the performance and that a simple stacking approach is able to use the complementary information encoded by the different descriptor sets to further improve predictive results. All software necessary for our experiments is available within the cheminformatics software framework AZOrange.
机译:分子相似性的概念是预测毒理学和定量构效关系(QSAR)研究领域中最核心的概念之一。许多毒理学反应是由多机理过程引起的,因此,活性化合物之间的结构多样性是可能的。结合这些知识,我们介绍了相似度增强的QSAR建模,其中我们使用与代表性参考化合物有关的相似度来计算分子描述符,以帮助统计学习算法区分不同的结构类别。我们提供了三种参考化合物的选择方法,一种是通过文献检索,另一种是通过聚类。我们对七个公开可用数据集的实验评估表明,与结构描述符相比,它们自己使用的相似性描述符表现良好。我们显示相似性和结构描述符的组合提高了性能,并且简单的堆叠方法能够使用由不同描述符集编码的互补信息来进一步改善预测结果。化学实验软件框架AZOrange中提供了我们实验所需的所有软件。

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