Comparative Study on Different Color Spaces for Segmentation of Acute Leukemia using Automatic Otsu Clustering

Siti Marissa Mohd Zairy, Nurul Hazwani Abd Halim, M. S. Sulaiman, Zuraidi Saad
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Abstract

Leukemia is common cancer that occurs due to the abnormality in the production of white blood cells in the human blood. This disease which is likely to affect youngsters below the age of 15 years old can be detected by analysing bone marrow samples. However, the process of extracting bone marrow samples is complicated and this could cause patients to experience discomfort, hence blood samples could serve as alternatives since it also contains white blood cell (WBC) information that was needed in determining acute lymphocytic leukemia (ALL). As the development of ALL is quite fast, the early detection of the diseases is vital; hence this segmentation method was developed. The blood images of ALL patients will first be converted from RGB to HSV and Lab color space before the grayscale images produced used as the input to Otsu by clustering technique resulting in black background images while the cells will be staying in white color. Next, the watershed ridge technique has been used to remove the overlapping cells before retrieving the colored version of the WBC images. The results from testing the image segmentation method using a different component from different color spaces showed that the images applied with component b from the Lab color space proved to produce the clearest image of ALL subtypes compared to the other color components applied as the accuracy produced for B cell, T cell and normal cell were at 99.17%, 99.88%, and 99.92% respectively.
基于自动Otsu聚类的不同颜色空间分割急性白血病的比较研究
白血病是一种常见的癌症,由于人体血液中白细胞的产生异常而发生。这种疾病很可能影响15岁以下的青少年,可以通过分析骨髓样本来检测。然而,提取骨髓样本的过程很复杂,这可能会导致患者感到不适,因此血液样本可以作为替代品,因为它还含有确定急性淋巴细胞白血病(ALL)所需的白细胞(WBC)信息。由于ALL的发展相当快,早期发现疾病至关重要;因此,开发了这种分割方法。ALL患者的血液图像首先从RGB转换为HSV和Lab色彩空间,然后通过聚类技术将生成的灰度图像作为Otsu的输入,使其成为黑色背景图像,而细胞将保持白色。然后,在获取WBC图像的彩色版本之前,使用分水岭脊技术去除重叠的细胞。使用不同颜色空间的不同分量对图像分割方法进行测试的结果表明,与使用其他颜色分量相比,使用Lab颜色空间的b分量产生的图像对所有亚型的图像最清晰,对b细胞、T细胞和正常细胞产生的准确率分别为99.17%、99.88%和99.92%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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