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Segmentation of Prostate Cancer Tissue Micro Array Images

机译:前列腺癌组织微阵列图像分割

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Prostate cancer is diagnosed by histopathology interpretation of hematoxylin and eosin (H&E)-stained tissue sections. Gland and nuclei distributions vary with the disease grade. The morphological features vary with the advance of cancer where the epithelial regions grow into the stroma. An efficient pathology slide image analysis method involved using a tissue microarray with known disease stages. Digital 24-bit RGB images were acquired for each tissue element on the slide with both 10X and 40X objectives. Initial segmentation at low magnification was accomplished using prior spectral characteristics from a training tissue set composed of four tissue clusters; namely, glands, epithelia, stroma and nuclei. The segmentation method was automated by using the training RGB values as an initial guess and iterating the averaging process 10 times to find the four cluster centers. Labels were assigned to the nearest cluster center in red-blue spectral feature space. An automatic threshold algorithm separated the glands from the tissue. A visual pseudo color representation of 60 segmented tissue microarray image was generated where white, pink, red, blue colors represent glands, epithelia, stroma and nuclei, respectively. The higher magnification images provided refined nuclei morphology. The nuclei were detected with a RGB color space principle component analysis that resulted in a grey scale image. The shape metrics such as compactness, elongation, minimum and maximum diameters were calculated based on the eigenvalues of the best-fitting ellipses to the nuclei.
机译:前列腺癌通过苏木精和曙红(H&E)染色的组织切片的组织病理学解释来诊断。腺体和细胞核分布随疾病等级而变化。形态学特征随癌症的进展而变化,其中上皮区长成间质。一种有效的病理幻灯片图像分析方法涉及使用具有已知疾病阶段的组织微阵列。对于具有10倍和40倍物镜的载玻片上的每个组织元素,都获取了数字24位RGB图像。低倍率下的初始分割是使用来自由四个组织簇组成的训练组织集的先前光谱特性完成的;即腺体,上皮细胞,间质和细胞核。通过使用训练RGB值作为初始猜测并平均10次迭代平均过程以找到四个聚类中心,从而实现了分割方法的自动化。标签被分配到红蓝色光谱特征空间中最近的聚类中心。自动阈值算法将腺体与组织分开。生成了60个分割的组织微阵列图像的可视伪彩色表示,其中白色,粉红色,红色,蓝色分别代表腺体,上皮细胞,基质和细胞核。较高放大倍数的图像提供了精确的核形态。通过RGB颜色空间主成分分析检测了原子核,从而得到了灰度图像。根据最佳拟合椭圆核的特征值,计算形状度量(例如紧密度,伸长率,最小和最大直径)。

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