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Chronic lymphocytic leukemia cell segmentation from microscopic blood images using watershed algorithm and optimal thresholding

机译:使用分水岭算法和最佳阈值从显微血液图像中分离慢性淋巴细胞性白血病细胞

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Chronic lymphocytic leukemia (CLL) is the most common type of blood cancer in Canadian adults. CLL cells are abnormal lymphocytes, which tend to be slightly larger than normal resting lymphocytes and have a condensed appearance to their chromatin. There is a low number of related works on this disease. This paper presents a method to segment normal and CLL lymphocytes into two parts: nucleus, and cytoplasm using a watershed algorithm and optimal thresholding. The goal of this work is reducing the over and under segmentation error of the watershed algorithm by suppressing 1% of the local minima. We tested 140 microscopic lymphocyte images (normal and CLL), and the algorithm obtained 99.92% maximum accuracy for nucleus segmentation, and 99.85% maximum accuracy for cell segmentation. The cytoplasm can be extracted with a 99.63% maximum accuracy with simple mask subtraction. The code for the presented algorithm is shared on the MATLAB® file exchange website.
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。 CLL细胞是异常淋巴细胞,其倾向于比正常静息淋巴细胞稍大,并且其染色质具有浓缩的外观。关于这种疾病的相关工作很少。本文提出了一种使用分水岭算法和最佳阈值将正常和CLL淋巴细胞分为两部分的方法:细胞核和细胞质。这项工作的目的是通过抑制1%的局部最小值来减少分水岭算法的上下分割误差。我们测试了140张显微镜下的淋巴细胞图像(正常图像和CLL),该算法获得的核分割最大精度为99.92%,细胞分割的最大精度为99.85%。通过简单的模板扣除,可以以99.63%的最大准确度提取细胞质。所提出算法的代码在MATLAB®文件交换网站上共享。

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