Zhao Ting, Velliste Meel, Boland Michael V, Murphy Robert F
Department of Biomedical Engineering, Carnegie Mellon University, Pittsburgh, PA 15213, USA.
IEEE Trans Image Process. 2005 Sep;14(9):1351-9. doi: 10.1109/tip.2005.852456.
The new field of location proteomics seeks to provide a comprehensive, objective characterization of the subcellular locations of all proteins expressed in a given cell type. Previous work has demonstrated that automated classifiers can recognize the patterns of all major subcellular organelles and structures in fluorescence microscope images with high accuracy. However, since some proteins may be present in more than one organelle, this paper addresses a more difficult task: recognizing a pattern that is a mixture of two or more fundamental patterns. The approach utilizes an object-based image model, in which each image of a location pattern is represented by a set of objects of distinct, learned types. Using a two-stage approach in which object types are learned and then cell-level features are calculated based on the object types, the basic location patterns were well recognized. Given the object types, a multinomial mixture model was built to recognize mixture patterns. Under appropriate conditions, synthetic mixture patterns can be decomposed with over 80% accuracy, which, for the first time, shows that the problem of computationally decomposing subcellular patterns into fundamental organelle patterns can be solved.
定位蛋白质组学这一新兴领域旨在全面、客观地表征特定细胞类型中表达的所有蛋白质的亚细胞定位。先前的研究表明,自动分类器能够高精度地识别荧光显微镜图像中所有主要亚细胞细胞器和结构的模式。然而,由于某些蛋白质可能存在于不止一种细胞器中,本文探讨了一项更具挑战性的任务:识别由两种或更多种基本模式混合而成的模式。该方法采用基于对象的图像模型,其中每个定位模式的图像由一组不同的、已学习类型的对象表示。通过两阶段方法,先学习对象类型,然后基于对象类型计算细胞水平特征,基本定位模式得到了很好的识别。给定对象类型后,构建了一个多项混合模型来识别混合模式。在适当条件下,合成混合模式的分解准确率超过80%,这首次表明将亚细胞模式计算分解为基本细胞器模式的问题可以得到解决。