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Model-based Graph Segmentation in 2-D Fluorescence Microsecopy Images.

2018 24th International Conference on Pattern Recognition (ICPR)(2018)

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摘要
In biology and pathology, immunofluorescence microscopy approaches are leading techniques for deciphering molecular mechanisms of cell activation and disease progression. Although several solutions for image analysis exist, totally non-subjective image analysis remains difficult. There is therefore a strong need for analysis procedures highly reproducible, avoiding thresholds and selection of objects of interest by hand. To address this need, we describe a fully automatic segmentation of cell nuclei in 2-D immunofluorescence images. The method merges segments of the image to fit with a nuclei model learned by a trained Random Forest classifier. The merging procedure explores efficiently the fusion configurations space of an over-segmented image by using minimum spanning tree of its region adjacency graph.
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关键词
model-based graph segmentation,immunofluorescence microscopy approaches,molecular mechanisms,cell activation,disease progression,fully automatic segmentation,cell nuclei,2-D immunofluorescence images,nuclei model,over-segmented image,region adjacency graph,random forest classifier,2-D fluorescence microscopy images,nonsubjective image analysis
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