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Ligand-based virtual screening using bayesian networks

机译:使用贝叶斯网络的基于配体的虚拟筛选

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A Bayesian inference network (BIN) provides an interesting alternative to existing tools for similarity-based virtual screening. The BIN is particularly effective when the active molecules being sought have a high degree of structural homogeneity but has been found to perform less well with structurally heterogeneous sets of actives. In this paper, we introduce an alternative network model, called a Bayesian belief network (BBN), that seeks to overcome this limitation of the BIN approach. Simulated virtual screening experiments with the MDDR, WOMBAT and MUV data sets show that the BIN and BBN methods allow effective screening searches to be carried out. However, the results obtained are not obviously superior to those obtained using a much simpler approach that is based on the use of the Tanimoto coefficient and of the square roots of fragment occurrence frequencies.
机译:贝叶斯推理网络(BIN)为基于相似度的虚拟筛选的现有工具提供了一种有趣的替代方法。当寻找的活性分子具有高度的结构同质性,但是发现在结构异质的活性剂中表现较差时,BIN尤其有效。在本文中,我们介绍了一种称为贝叶斯信念网络(BBN)的替代网络模型,旨在克服BIN方法的这一局限性。使用MDDR,WOMBAT和MUV数据集进行的虚拟筛选实验表明,BIN和BBN方法可以进行有效的筛选搜索。但是,获得的结果显然不优于使用基于谷本系数和片段出现频率的平方根的更简单方法获得的结果。

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