Kümmel Anne, Selzer Paul, Siebert Daniela, Schmidt Isabel, Reinhardt Jürgen, Götte Marjo, Ibig-Rehm Yvonne, Parker Christian N, Gabriel Daniela
Modeling and Simulation, Novartis Campus, Basel, Switzerland.
J Biomol Screen. 2012 Jul;17(6):843-9. doi: 10.1177/1087057112439324. Epub 2012 Mar 6.
High-throughput screening, based on subcellular imaging, has become a powerful tool in lead discovery. Through the generation of high-quality images, not only the specific target signal can be analyzed but also phenotypic changes of the whole cell are recorded. Yet analysis strategies for the exploration of high-content screening results, in a manner that is independent from predefined control phenotypes, are largely missing. The approach presented here is based on a well-established modeling technique, self-organizing maps (SOMs), which uses multiparametric results to group treatments that create similar morphological effects. This report describes a novel visualization of the SOM clustering by using an image of the cells from each node, with the most representative cell highlighted to deploy the phenotype described by each node. The approach has the potential to identify both expected hits and novel cellular phenotypes. Moreover, different chemotypes, which cause the same phenotypic effects, are identified, thus facilitating "scaffold hopping."
基于亚细胞成像的高通量筛选已成为先导化合物发现中的一项强大工具。通过生成高质量图像,不仅可以分析特定的目标信号,还能记录整个细胞的表型变化。然而,目前很大程度上缺乏以独立于预定义对照表型的方式来探索高内涵筛选结果的分析策略。这里提出的方法基于一种成熟的建模技术——自组织映射(SOM),它利用多参数结果对产生相似形态学效应的处理进行分组。本报告描述了一种新颖的SOM聚类可视化方法,即使用来自每个节点的细胞图像,并突出显示最具代表性的细胞,以展现每个节点所描述的表型。该方法有潜力识别预期的活性化合物以及新的细胞表型。此外,还能识别引起相同表型效应的不同化学类型,从而便于“骨架跃迁”。