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Computerized Counting-Based System for Acute Lymphoblastic Leukemia Detection in Microscopic Blood Images

机译:微观血液图像中急性淋巴细胞白血病检测的计算机化计数系统

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Counting of white blood cells (WBCs) and detecting the morphological abnormality of these cells allow for diagnosis some blood diseases such as leukemia. This can be accomplished by automatic quantification analysis of microscope images of blood smear. This paper is oriented towards presenting a novel framework that consists of two sub-systems as indicators for detection Acute Lymphoblastic Leukemia (ALL). The first sub-system aims at counting WBCs by adapting a deep learning based approach to separate agglomerates of WBCs. After separation of WBCs, we propose the second sub-system to detect and count abnormal WBCs (lymphoblasts) required to diagnose ALL. The performance of the proposed framework is evaluated using ALL-IDB dataset. The first presented sub-system is able to count WBCs with an accuracy up to 97.38%. Furthermore, an approach using ensemble classifiers based on handcrafted features is able to detect and count the lymphoblasts with an average accuracy of 98.67%.
机译:计数白细胞(WBC)和检测这些细胞的形态异常允许诊断一些血症如白血病。这可以通过血液涂片的显微镜图像的自动量化分析来实现。本文面向呈现一种新颖的框架,该框架由两个子系统组成,作为检测急性淋巴细胞白血病(全部)的指标。第一个子系统通过调整基于深度学习的方法来分离WBC来分离WBC的分离。在分离WBC后,我们提出第二个子系统来检测和计数诊断所有的WBC(淋巴细胞)异常。使用All-IDB数据集进行评估所提出的框架的性能。第一个呈现的子系统能够计算WBC,精度高达97.38%。此外,基于手工特征的使用集合分类器的方法能够检测和计算平均精度为98.67%的淋巴细胞。

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