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首页> 外文期刊>Molecular cancer therapeutics >High-content phenotypic profiling of drug response signatures across distinct cancer cells.
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High-content phenotypic profiling of drug response signatures across distinct cancer cells.

机译:跨不同癌细胞的药物反应特征的高含量表型分析。

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摘要

The application of high-content imaging in conjunction with multivariate clustering techniques has recently shown value in the confirmation of cellular activity and further characterization of drug mode of action following pharmacologic perturbation. However, such practical examples of phenotypic profiling of drug response published to date have largely been restricted to cell lines and phenotypic response markers that are amenable to basic cellular imaging. As such, these approaches preclude the analysis of both complex heterogeneous phenotypic responses and subtle changes in cell morphology across physiologically relevant cell panels. Here, we describe the application of a cell-based assay and custom designed image analysis algorithms designed to monitor morphologic phenotypic response in detail across distinct cancer cell types. We further describe the integration of these methods with automated data analysis workflows incorporating principal component analysis, Kohonen neural networking, and kNN classification to enable rapid and robust interrogation of such data sets. We show the utility of these approaches by providing novel insight into pharmacologic response across four cancer cell types, Ovcar3, MiaPaCa2, and MCF7 cells wild-type and mutant for p53. These methods have the potential to drive the development of a new generation of novel therapeutic classes encompassing pharmacologic compositions or polypharmacology in appropriate disease context.
机译:高内涵成像结合多元聚类技术的应用最近在确认细胞活性以及药理学扰动后药物作用方式的进一步表征方面显示了价值。然而,迄今为止公开的药物反应的表型分析的这种实际例子在很大程度上已经限于适用于基本细胞成像的细胞系和表型反应标记。因此,这些方法无法同时分析复杂的异质表型反应和整个生理相关细胞组中细胞形态的细微变化。在这里,我们描述了基于细胞的测定法和定制设计的图像分析算法的应用,这些算法旨在监控不同癌细胞类型中形态学表型的详细响应。我们进一步描述了这些方法与结合主成分分析,Kohonen神经网络和kNN分类的自动化数据分析工作流程的集成,以实现对此类数据集的快速而健壮的询问。我们通过提供跨越四种癌细胞类型(Ovcar3,MiaPaCa2和MCF7细胞野生型和p53突变型)的药理反应的新颖见解,展示了这些方法的实用性。这些方法有可能推动新一代新型治疗方法的发展,包括在适当疾病背景下的药理组合物或多元药理学。

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