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首页> 外文期刊>Journal of chemical information and modeling >Virtual screening data fusion using both structure-and ligand-based methods
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Virtual screening data fusion using both structure-and ligand-based methods

机译:使用基于结构和基于配体的方法进行虚拟筛选数据融合

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摘要

Virtual screening is widely applied in drug discovery, and significant effort has been put into improving current methods. In this study, we have evaluated the performance of compound ranking in virtual screening using five different data fusion algorithms on a total of 16 data sets. The data were generated by docking, pharmacophore search, shape similarity, and electrostatic similarity, spanning both structure-and ligand-based methods. The algorithms used for data fusion were sum rank, rank vote, sum score, Pareto ranking, and parallel selection. None of the fusion methods require any prior knowledge or input other than the results from the single methods and, thus, are readily applicable. The results show that compound ranking using data fusion improves the performance and consistency of virtual screening compared to the single methods alone. The best performing data fusion algorithm was parallel selection, but both rank voting and Pareto ranking also have good performance.
机译:虚拟筛选已广泛应用于药物开发中,并且已经投入大量精力来改进当前的方法。在这项研究中,我们评估了在总共16个数据集上使用五种不同的数据融合算法在虚拟筛选中化合物排名的性能。数据是通过对接,药效团搜索,形状相似性和静电相似性生成的,涵盖了基于结构和基于配体的方法。用于数据融合的算法是总和排名,总和投票,总和得分,帕累托排名和并行选择。除了来自单个方法的结果之外,没有任何融合方法需要任何先验知识或输入,因此易于应用。结果表明,与单独使用单一方法相比,使用数据融合进行化合物分级可提高虚拟筛选的性能和一致性。表现最佳的数据融合算法是并行选择,但等级投票和帕累托等级都具有良好的性能。

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