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Similarity-Based Virtual Screening with a Bayesian Inference Network

机译:贝叶斯推理网络基于相似度的虚拟筛选

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摘要

Many methods have been developed to capture the biological similarity between two compounds for use in drug discovery. A variety of similarity metrics have been introduced, the Tanimoto coefficient being the most prominent. Many of the approaches assume that molecular features or descriptors that do not relate to the biological activity carry the same weight as the important aspects in terms of biological similarity. Herein, a novel similarity searching approach using a Bayesian inference network is dis-cussed. Similarity searching is regarded as an inference or evidential reasoning process in which the probability that a given compound has biological similarity with the query is estimated and used as evidence. Our experiments demonstrate that the similarity approach based on Bayesian inference networks is likely to outperform the Tanimoto similarity search and offer a promising alternative to existing similarity search approaches.
机译:已经开发出许多方法来捕获用于药物发现的两种化合物之间的生物学相似性。已经引入了多种相似性度量,其中谷本系数最为突出。许多方法都假定与生物学活性无关的分子特征或描述符在生物学相似性方面具有与重要方面相同的权重。在此,讨论了一种使用贝叶斯推理网络的新颖的相似性搜索方法。相似性搜索被视为推论或证据推理过程,其中估算给定化合物与查询具有生物学相似性的可能性并将其用作证据。我们的实验表明,基于贝叶斯推理网络的相似性方法可能会优于Tanimoto相似性搜索,并为现有相似性搜索方法提供有希望的替代方法。

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