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Improved recognition of figures containing fluorescence microscope images in online journal articles using graphical models

机译:使用图形模型改善在线期刊文章中包含荧光显微镜图像的图形的识别

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Motivation: There is extensive interest in automating the collection, organization and analysis of biological data. Data in the form of images in online literature present special challenges for such efforts. The first steps in understanding the contents of a figure are decomposing it into panels and determining the type of each panel. In biological literature, panel types include many kinds of images collected by different techniques, such as photographs of gels or images from microscopes. We have previously described the SLIF system (http://slif.cbi.cmu.edu) that identifies panels containing fluorescence microscope images among figures in online journal articles as a prelude to further analysis of the subcellular patterns in such images. This system contains a pretrained classifier that uses image features to assign a type (class) to each separate panel. However, the types of panels in a figure are often correlated, so that we can consider the class of a panel to be dependent not only on its own features but also on the types of the other panels in a figure. Results: In this article, we introduce the use of a type of probabilistic graphical model, a factor graph, to represent the structured information about the images in a figure, and permit more robust and accurate inference about their types. We obtain significant improvement over results for considering panels separately.
机译:动机:自动化收集,组织和分析生物数据引起了广泛的兴趣。在线文献中图像形式的数据为此类工作提出了特殊的挑战。理解图形内容的第一步是将图形分解为面板并确定每个面板的类型。在生物学文献中,面板类型包括通过不同技术收集的多种图像,例如凝胶照片或显微镜图像。先前我们已经描述了SLIF系统(http://slif.cbi.cmu.edu),该系统可识别在线期刊文章中包含荧光显微镜图像的面板,以此作为进一步分析此类图像中亚细胞模式的序幕。该系统包含一个预训练的分类器,该分类器使用图像功能为每个单独的面板分配类型(类)。但是,图中的面板类型通常是相关的,因此我们可以认为面板的类别不仅取决于其自身的特征,而且还取决于图中其他面板的类型。结果:在本文中,我们介绍了使用一种概率图形模型(因子图)来表示有关图中图像的结构化信息,并允许对它们的类​​型进行更健壮和准确的推断。与分别考虑小组讨论的结果相比,我们取得了显着的进步。

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