三维细胞核分割的最小生成树最优切割

A. Abreu, F. Frenois, S. Valitutti, P. Brousset, P. Denéfle, B. Naegel, Cédric Wemmert
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引用次数: 4

摘要

在生物学和病理学中,免疫荧光显微镜方法是破译细胞活化和疾病进展的分子机制的主要技术。虽然目前市场上有几个用于图像分析的商业软件,但现有的解决方案不允许完全非主观的图像分析。因此,强烈需要新的方法,可以允许一个完全非主观的图像分析程序,包括阈值和感兴趣的对象的选择。为了解决这一需要,我们描述了一个全自动分割细胞核的三维共聚焦免疫荧光图像。该方法将图像的片段与训练好的随机森林分类器学习到的核模型相融合。该方法利用区域邻接图的最小生成树来有效地探索过分割图像的融合配置空间。
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Optimal cut in minimum spanning trees for 3-D cell nuclei segmentation
In biology and pathology immunofluorescence microscopy approaches are leading techniques for deciphering of the molecular mechanisms of cell activation and disease progression. Although several commercial softwares for image analysis are presently in the market, available solutions do not allow a totally non subjective image analysis. There is therefore strong need for new methods that could allow a completely non-subjective image analysis procedure including for thresholding and for choice of the objects of interest. To address this need, we describe a fully automatic segmentation of cell nuclei in 3-D confocal 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 trees of its region adjacency graph.
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