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Pros and cons of virtual screening based on public 'Big Data': In silico mining for new bromodomain inhibitors

机译:基于公共“大数据”的虚拟筛选的优缺点:新溴泛肿瘤抑制剂的硅挖掘

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The Virtual Screening (VS) study described herein aimed at detecting novel Bromodomain BRD4 binders and relied on knowledge from public databases (ChEMBL, REAXYS) to establish a battery of predictive models of BRD activity for in silico selection of putative ligands. Beyond the actual discovery of new BRD ligands, this represented an opportunity to practically estimate the actual usefulness of public domain "Big Data" for robust predictive model building. Obtained models were used to virtually screen a collection of 2 million compounds from the Enamine company collection. This industrial partner then experimentally screened a subset of 2992 molecules selected by the VS procedure for their high likelihood to be active. Twenty nine confirmed hits were detected after experimental testing, representing 1% of the selected candidates. As a general conclusion, this study emphasizes once more that public structure-activity databases are nowadays key assets in drug discovery. Their usefulness is however limited by the state-of-the-art knowledge harvested so far by published studies. Target-specific structure-activity information is rarely rich enough, and its heterogeneity makes it extremely difficult to exploit in rational drug design. Furthermore, published affinity measures serving to build models selecting compounds to be experimentally screened may not be well correlated with the experimental hit selection criterion (in practice, often imposed by equipment constraints). Nevertheless, a robust 2.6 fold increase in hit rate with respect to an equivalent, random screening campaign showed that machine learning is able to extract some real knowledge in spite of all the noise in structure-activity data. (C) 2019 Elsevier Masson SAS. All rights reserved.
机译:本文描述的虚拟筛选(VS)研究旨在检测新的溴琼素BRD4粘合剂并依赖于来自公共数据库(ChemBl,Reaxys)的知识,以建立用于在硅选择的诱导配体中的BRD活性的预测模型的电池。除了新的BRD配体的实际发现之外,这代表了几乎估计了公共领域“大数据”的实际有用性的机会,以实现强大的预测模型建设。获得的模型用于实际上筛选来自莱尼内公司集合的200万种化合物。然后,该工业合作伙伴然后通过VS程序选择了2992个分子的子集,以便其高似的活性。在实验测试后检测到二十九次确认的命中,代表了1%的选定候选者。作为一般的结论,这项研究再次强调,现在是药物发现中的公共结构 - 活动数据库。然而,他们的有用性受到公布的研究迄今为止收获的最先进知识的限制。目标特定的结构 - 活动信息很少足够丰富,其异质性使得利用合理的药物设计难以实现。此外,用于构建模型选择要实验筛选的化合物的发布的亲和力测量可能与实验击中选择标准(在实践中,通常通过设备限制施加)不良。尽管如此,对于等同的随机筛选活动,击中率的强大2.6倍的增加表明,尽管结构 - 活动数据中的所有噪声,但机器学习能够提取一些真实知识。 (c)2019年Elsevier Masson SAS。版权所有。

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