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Quantitative diagnosis of bladder cancer by morphometric analysis of HE images

机译:通过H&E图像的形态计量分析定量诊断膀胱癌

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In clinical practice, histopathological analysis of biopsied tissue is the main method for bladder cancer diagnosis and prognosis. The diagnosis is performed by a pathologist based on the morphological features in the image of a hematoxylin and eosin (H&E) stained tissue sample. This manuscript proposes algorithms to perform morphometric analysis on the H&E images, quantify the features in the images, and discriminate bladder cancers with different grades, i.e. high grade and low grade. The nuclei are separated from the background and other types of cells such as red blood cells (RBCs) and immune cells using manual outlining, color deconvolution and image segmentation. A mask of nuclei is generated for each image for quantitative morphometric analysis. The features of the nuclei in the mask image including size, shape, orientation, and their spatial distributions are measured. To quantify local clustering and alignment of nuclei, we propose a 1-nearest-neighbor (1-NN) algorithm which measures nearest neighbor distance and nearest neighbor parallelism. The global distributions of the features are measured using statistics of the proposed parameters. A linear support vector machine (SVM) algorithm is used to classify the high grade and low grade bladder cancers. The results show using a particular group of nuclei such as large ones, and combining multiple parameters can achieve better discrimination. This study shows the proposed approach can potentially help expedite pathological diagnosis by triaging potentially suspicious biopsies.
机译:在临床实践中,活检组织的组织病理学分析是膀胱癌诊断和预后的主要方法。诊断由病理学家根据苏木精和曙红(H&E)染色的组织样本图像中的形态特征进行。该手稿提出了对H&E图像进行形态计量分析,量化图像特征并区分不同等级(即高等级和低等级)的膀胱癌的算法。使用手动概述,颜色反卷积和图像分割,可将细胞核与背景细胞和其他类型的细胞(如红细胞(RBC)和免疫细胞)分离。为每个图像生成一个原子核遮罩,以进行定量形态分析。测量掩模图像中核的特征,包括大小,形状,方向及其空间分布。为了量化局部聚类和核对齐,我们提出了一种1-最近邻(1-NN)算法,该算法可测量最近邻距离和最近邻平行度。使用建议参数的统计量来测量特征的全局分布。线性支持向量机(SVM)算法用于对高等级和低等级膀胱癌进行分类。结果表明,使用一组特定的原子核(例如大原子核),并组合多个参数可以实现更好的分辨力。这项研究表明,提出的方法通过对潜在可疑活检进行分类,可以潜在地帮助加快病理诊断。

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