Reisen Felix, Sauty de Chalon Amelie, Pfeifer Martin, Zhang Xian, Gabriel Daniela, Selzer Paul
Novartis Institutes for BioMedical Research , Center for Proteomic Chemistry, Basel, Switzerland .
Assay Drug Dev Technol. 2015 Sep;13(7):415-27. doi: 10.1089/adt.2015.656. Epub 2015 Aug 10.
High-content screening (HCS) is a powerful technique for monitoring phenotypic responses to treatments on a cellular and subcellular level. Cellular phenotypes can be characterized by multivariate image readouts such as shape, intensity, or texture. The corresponding feature vectors can thus be defined as HCS fingerprints that serve as a powerful biological compound descriptor. Therefore, clustering or classification of HCS fingerprints across compound treatments allows for the identification of similarities in protein targets or pathways. We developed an HCS-based profiling panel that serves as basis for characterizing the mode of action of compounds. This panel measures phenotypic effects in six different compartments of U-2OS cells, namely the nucleus, the cytoplasm, the endoplasmic reticulum, the Golgi apparatus, and the cytoskeleton. We profiled a set of 2,725 well-annotated compounds and clustered their corresponding HCS fingerprints to establish links between predominant cellular phenotypes and cellular processes and protein targets. We found various different clusters enriched for individual targets (e.g., HDAC, HSP90, TOP1, HMGCR, TUB), signaling pathways (e.g., PIK3/AKT/mTOR), or gene sets associated with diseases (e.g., psoriasis, leukemia). Based on this clustering we were able to identify novel compound-target associations for selected compounds such as a submicromolar inhibitory activity of Silmitasertib (a casein kinase inhibitor) on PI3K and mTOR.
高内涵筛选(HCS)是一种在细胞和亚细胞水平监测对治疗的表型反应的强大技术。细胞表型可以通过多变量图像读数来表征,如形状、强度或纹理。相应的特征向量因此可以定义为HCS指纹,作为强大的生物化合物描述符。因此,跨化合物处理对HCS指纹进行聚类或分类有助于识别蛋白质靶点或信号通路中的相似性。我们开发了一种基于HCS的分析面板,作为表征化合物作用模式的基础。该面板测量U-2OS细胞六个不同区室中的表型效应,即细胞核、细胞质、内质网、高尔基体和细胞骨架。我们对一组2725种注释良好的化合物进行了分析,并对其相应的HCS指纹进行聚类,以建立主要细胞表型与细胞过程及蛋白质靶点之间的联系。我们发现了各种不同的聚类,这些聚类富含单个靶点(如HDAC、HSP90、TOP1、HMGCR、TUB)、信号通路(如PIK3/AKT/mTOR)或与疾病相关的基因集(如银屑病、白血病)。基于这种聚类,我们能够为选定的化合物识别新的化合物-靶点关联,如西咪替丁(一种酪蛋白激酶抑制剂)对PI3K和mTOR的亚微摩尔抑制活性。