利用贝叶斯模型对分子片段特征进行虚拟筛选

D. Hoksza, P. Škoda
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引用次数: 0

摘要

虚拟筛选能够搜索相对于给定大分子靶标的活性分子的大的小分子化合物文库。在基于配体的虚拟筛选中,这一目标是通过利用现有已知活性化合物中存在的片段或模式的信息来实现的。通常,这些模式被编码为指纹,用于筛选候选化合物的数据库。在这项工作中,我们介绍了一种使用贝叶斯推理对活动相关信息进行编码的方法。与以前的方法不同,我们的方法不是利用简单的片段,而是利用这些片段的特征。对于每个分子,我们生成一组分子片段,并提取每个分子的分子特征。接下来,我们删除相关特征,并使用剩下的特征来构建活动的贝叶斯模型。为了对以前未见过的分子进行评分,将分子的片段特征向量传递给模型,并获得分数作为其概率分数的集合。在筛选数据库时,该分数用于对化合物数据库进行排序。我们在不同难度的数据集上显示,使用片段特征而不是片段本身,相对于最先进的分子指纹,可以提高检索率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Bayesian modeling on molecular fragments features for virtual screening
Virtual screening enables to search large small-molecule compound libraries for active molecules with respect to given macromolecular target. In ligand-based virtual screening, this goal is achieved by utilizing information about fragments or patterns present in existing known active compounds. Typically, the patterns are encoded as fingerprints which are used to screen a database of candidate compounds. In this work, we introduce an approach which uses Bayesian inference to encode activity-related information. Unlike previous approaches, our method does not utilize simple fragments, but rather uses features of these fragments. For each molecule, we generate a set of molecular fragments and extract molecular features for each of them. Next, we remove correlated features and use the remaining ones to build a Bayes model of activity. To score a previously unseen molecule, the molecule's fragment feature vectors are passed to the model and a score is obtained as the aggregation of their probability scores. When screening a database, this score is used to rank the compounds database. We show on datasets with various levels of difficulty that using fragments features rather then fragments themselves results in improvement of retrieval rates with respect to the best state-of-the art molecular fingerprints.
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