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Acute lymphoblastic leukemia segmentation using local pixel information

机译:使用局部像素信息的急性淋巴细胞白血病分割

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The severity of acute lymphoblastic leukemia depends on the percentages of blast cells (abnormal white blood cells) in bone marrow or peripheral blood. The manual microscopic examination of bone marrow is less accurate, time-consuming, and susceptible to errors, thus making it difficult for lab workers to accurately recognize the characteristics of blast cells. Researchers have adopted different computational methods to identify the nature of blast cells; however, these methods are incapable of accurately segmenting leukocyte cells due to some major disadvantages, such as lack of contrast between objects and background, sensitivity to gray-scale, sensitivity to noise in images, and large computational size. Therefore, it is indispensable to develop a new and improved technique for leukocyte cell segmentation. In the present research, an automatic leukocyte cell segmentation process was introduced that is based on machine learning approach and image processing technique. Further, the characteristics of blast cells were extracted using 4-moment statistical features and artificial neural networks (ANNs). It was found that the proposed method yielded a blasts cell segmentation accuracy of 97% under different lighting conditions. (C) 2019 Elsevier B.V. All rights reserved.
机译:急性淋巴细胞白血病的严重程度取决于骨髓或外周血中原始细胞(异常白细胞)的百分比。人工显微镜检查骨髓的准确性较差,费时且容易出错,因此实验室工作人员难以准确识别胚细胞的特征。研究人员采用了不同的计算方法来识别胚细胞的性质。但是,由于一些主要缺点,例如对象与背景之间缺乏对比度,对灰度敏感,对图像中的噪声敏感以及计算量大,这些方法无法准确地分割白细胞。因此,开发新的和改进的白细胞分割技术是必不可少的。在本研究中,介绍了一种基于机器学习方法和图像处理技术的自动白细胞分割过程。此外,使用4矩统计特征和人工神经网络(ANN)提取原始细胞的特征。发现所提出的方法在不同光照条件下的胚细胞分割精度为97%。 (C)2019 Elsevier B.V.保留所有权利。

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