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Application of Support Vector Machine and k-means clustering algorithms for robust chronic lymphocytic leukemia color cell segmentation

机译:支持向量机和k-means聚类算法在慢性淋巴细胞白血病彩色细胞分割中的应用

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Chronic lymphocytic leukemia (CLL) is the most common type of blood cancer in Canadian adults. The relative 5-year survival rates for CLL in Canada is decreasing. CLL cell morphology maybe similar to normal lymphocytes and require a hematopathologist examination for diagnosis. There are a low number of related works on image analysis in CLL. This paper focuses on lymphocyte color cell segmentation using Support Vector Machine (SVM) and k-means clustering algorithms. The algorithm overcomes the occlusion problem when lymphocytes are tightly bound to the surrounding Red Blood Cells. Over and under-segmentation problems are significantly reduced. In this paper we used 440 lymphocyte images (normal and CLL), in which 140 images are used for segmentation accuracy measurement and 12 images for SVM training. The algorithm obtained 98.43% maximum accuracy for nucleus segmentation, and 98.69% for cell segmentation. The cytoplasm region can be extracted by 99.85% maximum accuracy with simple mask subtraction.
机译:慢性淋巴细胞性白血病(CLL)是加拿大成年人中最常见的血液癌类型。在加拿大,CLL的相对5年生存率正在下降。 CLL细胞形态可能与正常淋巴细胞相似,需要血液病理学家检查才能诊断。 CLL中有关图像分析的相关工作很少。本文着重介绍了使用支持向量机(SVM)和k-means聚类算法进行的淋巴细胞颜色细胞分割。当淋巴细胞与周围的红细胞紧密结合时,该算法克服了阻塞问题。分段过多和分段不足的问题已大大减少。在本文中,我们使用了440幅淋巴细胞图像(正常和CLL),其中140幅图像用于分割精度测量,而12幅图像用于SVM训练。该算法对细胞核分割的最高准确度为98.43%,对于细胞细胞分割的最高准确度为98.69%。通过简单的掩膜扣除,可以以99.85%的最大准确度提取细胞质区域。

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