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首页> 外文期刊>American Journal of Pathology: Official Publication of the American Association of Pathologists >Rational variety mapping for contrast-enhanced nonlinear unsupervised segmentation of multispectral images of unstained specimen.
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Rational variety mapping for contrast-enhanced nonlinear unsupervised segmentation of multispectral images of unstained specimen.

机译:用于对未染色标本的多光谱图像进行对比增强的非线性无监督分割的合理品种映射。

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摘要

A methodology is proposed for nonlinear contrast-enhanced unsupervised segmentation of multispectral (color) microscopy images of principally unstained specimens. The methodology exploits spectral diversity and spatial sparseness to find anatomical differences between materials (cells, nuclei, and background) present in the image. It consists of rth-order rational variety mapping (RVM) followed by matrix/tensor factorization. Sparseness constraint implies duality between nonlinear unsupervised segmentation and multiclass pattern assignment problems. Classes not linearly separable in the original input space become separable with high probability in the higher-dimensional mapped space. Hence, RVM mapping has two advantages: it takes implicitly into account nonlinearities present in the image (ie, they are not required to be known) and it increases spectral diversity (ie, contrast) between materials, due to increased dimensionality of the mapped space. This is expected to improve performance of systems for automated classification and analysis of microscopic histopathological images. The methodology was validated using RVM of the second and third orders of the experimental multispectral microscopy images of unstained sciatic nerve fibers (nervus ischiadicus) and of unstained white pulp in the spleen tissue, compared with a manually defined ground truth labeled by two trained pathophysiologists. The methodology can also be useful for additional contrast enhancement of images of stained specimens.
机译:提出了一种方法,用于主要未染色标本的多光谱(彩色)显微图像的非线性对比度增强无监督分割。该方法利用光谱多样性和空间稀疏性来发现图像中存在的物质(细胞,细胞核和背景)之间的解剖差异。它由一阶有理多样性映射(RVM)和矩阵/张量分解所组成。稀疏约束意味着非线性无监督分割与多类模式分配问题之间的对偶性。在原始输入空间中不可线性分离的类在较高维的映射空间中具有较高的分离可能性。因此,RVM映射具有两个优点:隐式考虑了图像中存在的非线性(即,不需要知道它们),并且由于映射空间的维数增加,它增加了材料之间的光谱多样性(即,对比度)。 。预期这将改善用于显微组织病理学图像的自动分类和分析的系统的性能。使用由两名受过训练的病理生理学家标记的人工定义的地面真相进行比较,该方法已使用未染色的坐骨神经纤维(神经坐骨神经)和脾脏组织中未染色的白髓的第二和第三次实验多光谱显微镜图像的RVM进行了验证。该方法还可用于对染色样本图像进行额外的对比度增强。

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