Analysis and automated classification of images of blood cells to diagnose acute lymphoblastic leukemia

Airam Curtidor, Ernst Kussul, Tetyana Baydyk, Masuma Mammadova
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Abstract

Analysis of white blood cells from blood can help to detect Acute Lymphoblastic Leukemia, a potentially fatal blood cancer if left untreated. The morphological analysis of blood cells images is typically performed manually by an expert; however, this method has numerous drawbacks, including slow analysis, low precision, and the results depend on the operator’s skill. We have developed and present here an automated method for the identification and classification of white blood cells using microscopic images of peripheral blood smears. Once the image has been obtained, we propose describing it using brightness, contrast, and micro-contour orientation histograms. Each of these descriptions provides a coding of the image, which in turn provides n parameters. The extracted characteristics are presented to an encoder’s input. The encoder generates a high-dimensional binary output vector, which is presented to the input of the neural classifier. This paper presents the performance of one classifier, the Random Threshold Classifier. The classifier’s output is the recognized class, which is either a healthy cell or an Acute Lymphoblastic Leukemia-affected cell. As shown below, the proposed neural Random Threshold Classifier achieved a recognition rate of 98.3 % when the data has partitioned on 80 % training set and 20 % testing set for. Our system of image recognition is evaluated using the public dataset of peripheral blood samples from Acute Lymphoblastic Leukemia Image Database. It is important to mention that our system could be implemented as a computational tool for detection of other diseases, where blood cells undergo alterations, such as Covid-19
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用于诊断急性淋巴细胞白血病的血细胞图像分析和自动分类
分析血液中的白细胞有助于检测急性淋巴细胞白血病,如果不及时治疗,这是一种可能致命的血癌。血细胞图像的形态学分析通常由专家手动执行;然而,这种方法有许多缺点,包括分析速度慢,精度低,结果取决于操作人员的技能。我们已经开发并提出了一种利用外周血涂片显微图像自动识别和分类白细胞的方法。一旦获得图像,我们建议使用亮度,对比度和微轮廓方向直方图来描述它。这些描述中的每一个都提供了图像的编码,而编码又提供了n个参数。提取的特征被呈现给编码器的输入。编码器生成一个高维二进制输出向量,该输出向量被呈现给神经分类器的输入。本文介绍了一种分类器的性能,即随机阈值分类器。分类器的输出是被识别的类别,该类别要么是健康细胞,要么是急性淋巴细胞白血病影响的细胞。如下图所示,当数据在80%的训练集和20%的测试集上进行划分时,所提出的神经随机阈值分类器的识别率为98.3%。我们的图像识别系统使用来自急性淋巴细胞白血病图像数据库的外周血样本的公共数据集进行评估。值得一提的是,我们的系统可以作为检测其他疾病的计算工具来实施,其中血细胞发生变化,例如Covid-19
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来源期刊
EUREKA: Physics and Engineering
EUREKA: Physics and Engineering Engineering-Engineering (all)
CiteScore
1.90
自引率
0.00%
发文量
78
审稿时长
12 weeks
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