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Implementation of Backpropagation Neural Network and Blood Cells Imagery Extraction for Acute Leukemia Classification

机译:反向传播神经网络和血细胞图像提取在急性白血病分类中的实现

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This paper proposes an implementation of classification of Acute Leukemia using backpropagation neural network algorithm and blood cells imagery extraction. Leukemia is a cancer of blood cells, known as an abnormal white blood cells growth produced by the bone marrow. The exact cause of leukemia is still unknown. However, leukemias have been acknowledged to be grouped by how quickly the disease develops (acute leukemia and chronic leukemia) as well as by the type of blood cell that is affected (lymphocytes or myelocytes). This paper focuses on the acute leukemia, which can be categorized into Acute Lymphoblastic Leukemia (ALL) and Acute Myelogenous Leukemia (AML). These types of leukemia are possible to be diagnosed by counting the number of blood cells growth in the bone marrow through the microscopic analysis of blood cell imagery. However, it cost overpriced in terms of time, energy, and amount. In addition, manual counting may lead potential false of diagnoses. In this paper, backpropagation neural network algorithm is used to extract the characteristics of ALL and AML blood cells. Digital image processing is employed for identification type of leukemias. The experimental results argue that the proposed work achieves about 86.66% accuracy on average in classifying the leukemia acute types.
机译:本文提出了一种利用反向传播神经网络算法和血细胞图像提取实现急性白血病分类的方法。白血病是血细胞癌,称为骨髓产生的异常白细胞生长。白血病的确切病因仍未知。但是,人们公认白血病是根据疾病发展的速度(急性白血病和慢性白血病)以及受影响的血细胞类型(淋巴细胞或骨髓细胞)来分类的。本文关注的是急性白血病,可分为急性淋巴细胞白血病(ALL)和急性骨髓性白血病(AML)。通过对血细胞图像进行显微镜分析,可以通过计数骨髓中血细胞生长的数量来诊断出这些类型的白血病。但是,就时间,精力和数量而言,它的成本高估了。另外,手动计数可能会导致潜在的诊断错误。本文采用反向传播神经网络算法提取ALL和AML血细胞的特征。数字图像处理用于识别白血病类型。实验结果表明,所提出的工作在对白血病急性类型进行分类时平均可达到约86.66%的准确度。

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