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首页> 外文期刊>Journal of biomolecular screening: The official journal of the Society for Biomolecular Screening >'Plate cherry picking': A novel semi-sequential screening paradigm for cheaper, faster, information-rich compound selection
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'Plate cherry picking': A novel semi-sequential screening paradigm for cheaper, faster, information-rich compound selection

机译:“平板采摘樱桃”:一种新颖的半序列筛选范例,可进行更便宜,更快,信息更丰富的化合物选择

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摘要

This work describes a novel semi-sequential technique for in silico enhancement of high-throughput screening (HTS) experiments now employed at Novartis. It is used in situations in which the size of the screen is limited by the readout (e.g., high-content screens) or the amount of reagents or tools (proteins or cells) available. By performing computational chemical diversity selection on a per plate basis (instead of a per compound basis), 25% of the 1,000,000-compound screening was optimized for general initial HTS. Statistical models are then generated from target-specific primary results (percentage inhibition data) to drive the cherry picking and testing from the entire collection. Using retrospective analysis of I I HTS campaigns, the authors show that this method would have captured on average two thirds of the active compounds (IC50 < 10 mu M) and three fourths of the active Murcko scaffolds while decreasing screening expenditure by nearly 75%. This result is true for a wide variety of targets, including G-protein-coupled receptors, chemokine receptors, kinases, metalloproteinases, pathway screens, and protein-protein interactions. Unlike time-consuming "classic" sequential approaches that require multiple iterations of cherry picking, testing, and building statistical models, here individual compounds are cherry picked just once, based directly on primary screening data. Strikingly, the authors demonstrate that models built from primary data are as robust as models, built from IC50 data. This is true for all HTS campaigns analyzed, which represent a wide variety of target classes and assay types.
机译:这项工作描述了一种新型的半序列技术,用于计算机增强诺华现在使用的高通量筛选(HTS)实验。它用于屏幕尺寸受读数(例如高含量屏幕)或可用试剂或工具(蛋白质或细胞)数量限制的情况。通过在每个平板(而不是每个化合物)的基础上进行计算化学多样性的选择,在1,000,000化合物筛选中有25%被优化用于一般初始HTS。然后从特定于目标的主要结果(抑制百分比数据)生成统计模型,以驱动整个集合中的樱桃采摘和测试。通过对I HTS活动的回顾性分析,作者表明,该方法将平均捕获三分之二的活性化合物(IC50 <10μM)和四分之三的活性Murcko支架,同时将筛查支出减少近75%。对于许多靶标,包括G蛋白偶联受体,趋化因子受体,激酶,金属蛋白酶,途径筛选和蛋白质-蛋白质相互作用,此结果都是正确的。与费时的“经典”顺序方法需要多次反复进行Cherry采摘,测试和构建统计模型不同,此处直接基于主要筛选数据对单个化合物进行一次Cherry采摘。引人注目的是,作者证明了从原始数据构建的模型与从IC50数据构建的模型一样强大。对于所分析的所有HTS活动来说都是如此,它代表了各种各样的目标类别和化验类型。

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