Phenotypic fingerprinting of small molecule cell cycle kinase inhibitors for drug discovery.

Jonathan Low, Arunava Chakravartty, Wayne Blosser, Michele Dowless, Christopher Chalfant, Patty Bragger, Louis Stancato
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引用次数: 19

Abstract

Phenotypic drug discovery, primarily abandoned in the 1980's in favor of targeted approaches to drug development, is once again demonstrating its value when used in conjunction with new technologies. Phenotypic discovery has been brought back to the fore mainly due to recent advances in the field of high content imaging (HCI). HCI elucidates cellular responses using a combination of immunofluorescent assays and computer analysis which increase both the sensitivity and throughput of phenotypic assays. Although HCI data characterize cellular responses in individual cells, these data are usually analyzed as an aggregate of the treated population and are unable to discern differentially responsive subpopulations. A collection of 44 kinase inhibitors affecting cell cycle and apoptosis were characterized with a number of univariate, bivariate, and multivariate subpopulation analyses demonstrating that each level of complexity adds additional information about the treated populations and often distinguishes between compounds with seemingly similar mechanisms of action. Finally, these subpopulation data were used to characterize compounds as they relate in chemical space.

Abstract Image

Abstract Image

Abstract Image

小分子细胞周期激酶抑制剂的表型指纹图谱用于药物发现。
在20世纪80年代,由于倾向于靶向药物开发方法,表型药物发现主要被放弃,当与新技术结合使用时,它再次显示出其价值。由于高含量成像(HCI)领域的最新进展,表型发现已经回到了前台。HCI阐明细胞反应使用免疫荧光分析和计算机分析的组合,这增加了表型分析的敏感性和吞吐量。虽然HCI数据描述了单个细胞的细胞反应,但这些数据通常是作为治疗群体的总体来分析的,无法辨别不同反应的亚群体。通过一系列单变量、双变量和多变量亚群分析,对44种影响细胞周期和细胞凋亡的激酶抑制剂进行了表征,表明每一种复杂性水平都增加了有关被处理群体的额外信息,并经常区分具有看似相似作用机制的化合物。最后,这些亚种群数据被用来表征化合物,因为它们在化学空间中相关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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