首页> 外文期刊>Journal of biomolecular screening: The official journal of the Society for Biomolecular Screening >Building predictive models for mechanism-of-action classification from phenotypic assay data sets
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Building predictive models for mechanism-of-action classification from phenotypic assay data sets

机译:从表型分析数据集建立作用机制分类的预测模型

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Compound mechanism-of-action information can be critical for drug development decisions but is often challenging for phenotypic drug discovery programs. One concern is that compounds selected by phenotypic screening will have a previously known but undesirable target mechanism. Here we describe a useful method for assigning mechanism class to compounds and bioactive agents using an 84-feature signature from a panel of primary human cell systems (BioMAP systems). For this approach, a reference data set of well-characterized compounds was used to develop predictive models for 28 mechanism classes using support vector machines. These mechanism classes encompass safety and efficacy-related mechanisms, include both target-specific and pathway-based classes, and cover the most common mechanisms identified in phenotypic screens, such as inhibitors of mitochondrial and microtubule function, histone deacetylase, and cAMP elevators. Here we describe the performance and the application of these predictive models in a decision scheme for triaging phenotypic screening hits using a previously published data set of 309 environmental chemicals tested as part of the Environmental Protection Agency's ToxCast program. By providing quantified membership in specific mechanism classes, this approach is suitable for identification of off-target toxicity mechanisms as well as enabling target deconvolution of phenotypic drug discovery hits.
机译:复合的作用机制信息对于药物开发决策可能至关重要,但对于表型药物发现计划通常是具有挑战性的。一个问题是通过表型筛选选择的化合物将具有先前已知但不理想的靶标机制。在这里,我们描述了一种有用的方法,该方法使用一组主要的人类细胞系统(BioMAP系统)中的84个特征签名,将机制类别分配给化合物和生物活性剂。对于此方法,使用支持向量机,将特征明确的化合物的参考数据集用于开发28种机理类别的预测模型。这些机制类别包括与安全性和功效相关的机制,包括基于靶标的类别和基于途径的类别,并涵盖了在表型筛选中确定的最常见机制,例如线粒体和微管功能的抑制剂,组蛋白脱乙酰基酶和cAMP升降子。在这里,我们描述了这些预测模型在决策表中对表型筛选命中进行分类的决策中的性能和应用,这些决策表是使用先前发布的309种环境化学物质的数据集进行测试的,这是环境保护署ToxCast计划的一部分。通过提供特定机制类别中的量化成员资格,此方法适用于鉴定脱靶毒性机制以及实现表型药物发现命中的目标去卷积。

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