Segmentation of Leukemia Cells Using Clustering: A Comparative Study

Eman Mostafa, H. El-Dien
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引用次数: 3

Abstract

Leukemia is a blood cancer which is defined as an irregular augment of undeveloped white blood cells called “blasts.” It develops in the bone marrow, which is responsible for blood cell generation including leukocytes and white blood cells. The early diagnosis of leukemia greatly helps in the treatment. Accordingly, researchers are interested in developing advanced and accurate automated techniques for localizing such abnormal blood cells. Subsequently, image segmentation becomes an important image processing stage for successful feature extraction and classification of leukemia in further stages. It aims to separate cancer cells by segmenting the microscopic image into background and cancer cells that are known as the region of interested (ROI). In this article, the cancer blood cells were segmented using two separated clustering techniques, namely the K-means and Fuzzy-c-means techniques. Then, the results of these techniques were compared to in terms of different segmentation metrics, such as the Dice, Jac, specificity, sensitivity, and accuracy. The results proved that the k-means provided better performance in leukemia blood cells segmentation as it achieved an accuracy of 99.8% compared to 99.6% with the fuzzy c-means.
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用聚类方法分割白血病细胞的比较研究
白血病是一种血癌,被定义为未发育的白细胞的不规则增加,称为“原细胞”。它在骨髓中发育,骨髓负责产生包括白细胞和白细胞在内的血细胞。白血病的早期诊断对治疗有很大帮助。因此,研究人员对开发先进和准确的自动化技术来定位这种异常血细胞很感兴趣。随后,图像分割成为后续阶段成功提取白血病特征和分类的重要图像处理阶段。它的目的是通过将显微镜图像分割成背景和癌细胞,即感兴趣区域(ROI)来分离癌细胞。在本文中,使用两种分离的聚类技术,即K-means和Fuzzy-c-means技术对癌症血细胞进行分割。然后,将这些技术的结果在不同的分割指标(如Dice, Jac,特异性,敏感性和准确性)方面进行比较。结果证明,k-means在白血病血细胞分割中提供了更好的性能,其准确率达到99.8%,而模糊c-means的准确率为99.6%。
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