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A graphical model approach to automated classification of protein subcellular location patterns in multi-cell images

机译:自动分类多细胞图像中蛋白质亚细胞定位模式的图形模型方法

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Background Knowledge of the subcellular location of a protein is critical to understanding how that protein works in a cell. This location is frequently determined by the interpretation of fluorescence microscope images. In recent years, automated systems have been developed for consistent and objective interpretation of such images so that the protein pattern in a single cell can be assigned to a known location category. While these systems perform with nearly perfect accuracy for single cell images of all major subcellular structures, their ability to distinguish subpatterns of an organelle (such as two Golgi proteins) is not perfect. Our goal in the work described here was to improve the ability of an automated system to decide which of two similar patterns is present in a field of cells by considering more than one cell at a time. Since cells displaying the same location pattern are often clustered together, considering multiple cells may be expected to improve discrimination between similar patterns. Results We describe how to take advantage of information on experimental conditions to construct a graphical representation for multiple cells in a field. Assuming that a field is composed of a small number of classes, the classification accuracy can be improved by allowing the computed probability of each pattern for each cell to be influenced by the probabilities of its neighboring cells in the model. We describe a novel way to allow this influence to occur, in which we adjust the prior probabilities of each class to reflect the patterns that are present. When this graphical model approach is used on synthetic multi-cell images in which the true class of each cell is known, we observe that the ability to distinguish similar classes is improved without suffering any degradation in ability to distinguish dissimilar classes. The computational complexity of the method is sufficiently low that improved assignments of classes can be obtained for fields of twelve cells in under 0.04 second on a 1600 megahertz processor. Conclusion We demonstrate that graphical models can be used to improve the accuracy of classification of subcellular patterns in multi-cell fluorescence microscope images. We also describe a novel algorithm for inferring classes from a graphical model. The performance and speed suggest that the method will be particularly valuable for analysis of images from high-throughput microscopy. We also anticipate that it will be useful for analyzing the mixtures of cell types typically present in images of tissues. Lastly, we anticipate that the method can be generalized to other problems.
机译:背景知识了解蛋白质的亚细胞位置对于了解蛋白质在细胞中的工作方式至关重要。该位置通常通过荧光显微镜图像的解释来确定。近年来,已经开发出用于对此类图像进行一致且客观的解释的自动化系统,以便可以将单个细胞中的蛋白质模式分配给已知的位置类别。尽管这些系统对于所有主要亚细胞结构的单细胞图像的表现几乎完美,但它们区分细胞器亚模式(例如两个高尔基蛋白)的能力并不完美。我们在此描述的工作的目标是通过一次考虑多个单元来提高自动化系统确定两个相似模式中哪个模式存在于一个单元场中的能力。由于显示相同位置模式的单元通常会聚在一起,因此考虑使用多个单元可以改善相似模式之间的区别。结果我们描述了如何利用有关实验条件的信息来构造一个字段中多个细胞的图形表示。假设字段由少量类别组成,则通过允许每个像元的每个模式的计算概率受模型中其相邻像元的概率影响,可以提高分类精度。我们描述了一种允许这种影响发生的新颖方法,其中我们调整每个类的先验概率以反映存在的模式。当此图形模型方法用于已知每个单元格真实类别的合成多单元图像时,我们观察到,区分相似类别的能力得到了改善,而分辨不同类别的能力却没有任何下降。该方法的计算复杂度非常低,以至于在1600兆赫兹处理器上以0.04秒为单位获得十二个小区的字段的改进类分配。结论我们证明了图形化模型可用于提高多细胞荧光显微镜图像中亚细胞模式分类的准确性。我们还描述了一种从图形模型推断类的新颖算法。性能和速度表明,该方法对于分析高通量显微镜的图像特别有价值。我们还预期这对于分析组织图像中通常存在的细胞类型的混合物将很有用。最后,我们预计该方法可以推广到其他问题。

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