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White blood cell classification and counting using convolutional neural network

机译:使用卷积神经网络进行白细胞分类和计数

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Establishing an accurate count and classification of leukocytes commonly known as WBC (white blood cells) is crucial in the assessment and detection of illness of an individual, which involves complications on the immune system that leads to various types of diseases including infections, anemia, leukemia, cancer, AIDS (Acquired Immune Deficiency Syndrome) etc. The two widely used methods to count WBC is with the use of hematology analyzer and manual counting. Currently, in the age of modernization there has been numerous research in the field of image processing incorporated with various segmentation and classification techniques to be able to generate alternatives for WBC classification and counting. However, the accuracy of these existing methods could still be improved. Thus, in this paper we proposed a new method that could segment various types of WBCs: monocytes, lymphocytes, eosinophils, basophils, and neutrophils from a microscopic blood image using HSV (Hue, Saturation, Value) saturation component with blob analysis for segmentation and incorporate CNN (Convolutional Neural Network) for counting which in turn generates more accurate results.
机译:建立常见称为WBC(白细胞)的白细胞的准确计数和分类在评估和检测个体的疾病中至关重要,这涉及免疫系统的并发症,导致各种类型的疾病,包括感染,贫血,白血病,癌症,艾滋病(获得的免疫缺乏综合征)等。两种广泛使用的跨性WBC方法是使用血液学分析仪和手动计数。目前,在现代化时代,在具有各种分段和分类技术的图像处理领域已经有许多研究,以能够生成WBC分类和计数的替代方案。然而,仍然可以提高这些现有方法的准确性。因此,在本文中,我们提出了一种新方法,可以使用HSV(色调,饱和度值)饱和组分与微观血液图像分段为各种类型的WBC:单核细胞,淋巴细胞,嗜酸性粒细胞,嗜碱性粒细胞和中性粒细胞。包含CNN(卷积神经网络),用于计数,这反过来又会产生更准确的结果。

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