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Similarity-Based Virtual Screening Using Bayesian Inference Network: Enhanced Search Using 2D Fingerprints and Multiple Reference Structures

机译:使用贝叶斯推理网络的基于相似度的虚拟筛选:使用2D指纹和多个参考结构的增强搜索

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摘要

It has been known that different reference structure retrieve different sets of structures. Recent works in similarity searching have suggested that significant improvements in retrieval effectiveness can be achieved by combining results from different reference structures. One of an important characteristic of the Bayesian inference network (BIN) model is that permits the combining of multiple reference structures. In this paper we introduce a formal inference net model to directly combine the contributions of multiple reference structures, and propose a novel approach to the combination of information from various reference structures. The inference net model of similarity, which was designed from this point of view, treats similarity searching as an evidential reasoning process where multiple sources of evidence about target structure are combined to estimate similarity scores. In this paper, we have compared BIN with other similarity searching methods when multiple bioactive reference structures are available. Six different 2D fingerprints were used in combination with data fusion (DF) and nearest neighbor (NN) approaches as search tools and also as descriptors for BIN. Our empirical results show that the BIN consistently outperformed all conventional approaches such as DF and NN, regardless of the fingerprints that were tested. The superiority of BIN over conventional approaches is ascribed to the fact that BIN understands the content of the descriptors of the structures and references and used this understanding to infer the direct relationship between structures and references.
机译:已知不同的参考结构检索不同的结构集。相似性搜索的最新工作表明,可以通过组合来自不同参考结构的结果来显着提高检索效率。贝叶斯推理网络(BIN)模型的重要特征之一是允许组合多个参考结构。在本文中,我们介绍了一种正式的推理网络模型,可以直接组合多个参考结构的贡献,并提出一种新颖的方法来组合来自各种参考结构的信息。从这一观点出发设计的相似性推论网络模型将相似性搜索视为一种证据推理过程,其中结合了有关目标结构的多种证据来源以估计相似性得分。在本文中,当多个生物活性参考结构可用时,我们将BIN与其他相似性搜索方法进行了比较。六个不同的2D指纹与数据融合(DF)和最近邻居(NN)方法结合使用,作为搜索工具以及BIN的描述符。我们的经验结果表明,无论测试指纹如何,BIN始终都优于所有常规方法,例如DF和NN。 BIN优于常规方法的原因是BIN理解了结构和引用的描述符的内容,并使用这种理解来推断结构和引用之间的直接关系。

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