Baatz Martin, Arini Nick, Schäpe Arno, Binnig Gerd, Linssen Bettina
Definiens AG, Munich, Germany.
Cytometry A. 2006 Jul;69(7):652-8. doi: 10.1002/cyto.a.20289.
Detailed image analysis still is a considerable bottleneck for many cellular assays, and automated solutions to the problem are desirable. However, dealing with the complexity and variability of structures in cellular images makes detailed and reliable analysis a nontrivial task.
Therefore, based on the object-oriented image analysis approach, a novel image analysis technology, a flexible and reliable system for image analysis in cellular assays was developed. It contains a library of predefined, adaptable modules, each of them developed for a specific analysis task. The system can be configured easily by combining appropriate modules and adapting them interactively to the specific image data, if necessary. By representing cells and sub cellular structures within a network of interlinked image objects, a large number of parameters can be derived that describe shape, intensity, and relevant structural and relational aspects of any chosen class of structures.
Thus, multi-parameter analysis and multiplexing are supported. A sample application based on this approach demonstrates that GFP signals can be distinguished based on their properties and the relative location within the cell.
详细的图像分析仍然是许多细胞分析中的一个重大瓶颈,因此需要自动化的解决方案。然而,处理细胞图像中结构的复杂性和变异性使得详细而可靠的分析成为一项艰巨的任务。
因此,基于面向对象的图像分析方法,开发了一种新颖的图像分析技术,即一种灵活可靠的细胞分析图像分析系统。它包含一个预定义的、可适配的模块库,每个模块都针对特定的分析任务而开发。如果需要,该系统可以通过组合适当的模块并将它们交互式地适配到特定的图像数据来轻松配置。通过在相互关联的图像对象网络中表示细胞和亚细胞结构,可以导出大量描述任何选定结构类别的形状、强度以及相关结构和关系方面的参数。
因此,支持多参数分析和复用。基于此方法的一个示例应用表明,可以根据绿色荧光蛋白(GFP)信号的特性及其在细胞内的相对位置来区分它们。