苏木精和伊红染色淋巴结组织病理学图像中Reed-Sternberg细胞核的鉴别诊断何杰金氏病

Mohammad Hossein Masoudi, M. Mikaeili
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引用次数: 2

摘要

何杰金氏病是淋巴系统的一种癌症,淋巴系统是免疫系统的一部分。为了得到准确的诊断,病理学家检查了被苏木精和伊红染色的淋巴结组织样本的切片,以找到一种叫做里德-斯滕伯格细胞的肿瘤细胞。诊断是主观的,容易在观察者之间/内部发生变化。此外,这是一项耗时的任务。因此,有必要提供一个更好的自动诊断和检测系统。本文介绍了一种在(H&E)染色的淋巴结组织病理学图像中识别Reed-Sternberg细胞核的方法。在预处理阶段,去除噪声和恼人的结构。然后,我们使用三种不同的基于形态学、颜色和纹理特征的分割算法来识别RS细胞核。利用Chan-Vese活动轮廓模型,我们找到了组织病理图像中RS细胞核的精确边界,并与图像中的其他物体进行了高精度的区分。在包含98张Reed-Sternberg细胞图像的实际数据集上对该方案进行了测试。实验结果表明,所提出算法的结果与病理学家描述的基本事实之间存在高度相关性。此外,通过与其他组织病理图像的细胞核分割方法的比较研究,证明了该方法的有效性。与最近的方法相比,它给出了最高的平均准确率(93.80%)。
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Diagnosis of Hodgkin's disease by identifying Reed-Sternberg cell nuclei in histopathological images of lymph nodes stained with Hematoxylin and Eosin
Hodgkin's disease is a cancer of the lymphatic system, which is part of the immune system. For an accurate diagnosis, a pathologist examines a slide of a sample of lymph node tissue stained with hematoxylin and eosin to find a tumoral cell called Reed-Sternberg cell. The diagnosis is subjective and prone to inter/intra-observer variations. Furthermore, it is a time-consuming task. Therefore, there is a necessity to provide an automatic system for better diagnosis and detection. In this paper, a method for identifying Reed-Sternberg cell nuclei in histopathological images of lymph nodes stained with (H&E) is presented. In the preprocessing stage, noise and annoying structures are removed. Then, we identify RS cell nuclei using three different segmentation algorithms based on morphological, color, and textural features. Using the Chan-Vese Active Contour model, we find the exact boundary of the RS cell nuclei in the histopathological image and distinguish them from other objects in the image with high accuracy. The proposed scheme is tested on an actual dataset containing 98 Reed-Sternberg cell images. The experiments' results show a high correlation between the results of the proposed algorithm and the ground-truth described by the pathologists. Moreover, a comparative study with other cell nuclei segmentation methods on histopathological images demonstrates the proposed method's efficiency. It gives the highest average accuracy rate (93.80 %) compared to recent approaches.
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