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Detecting different sub-types of acute myelogenous leukemia using dictionary learning and sparse representation

机译:使用字典学习和稀疏表示法检测急性骨髓性白血病的不同亚型

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Leukemia (a cancer of leukocytes) basically develops in the bone marrow. Acute myelogenous leukemia (a type of leukemia) has eight sub-types according to French-American-British classification. These forms can be visually observed by pathologists using microscopic images of infected cells. However, identification task is tedious and usually difficult due to varying features. Automatic leukemia detection is an important topic in the domain of cancer diagnosis. This paper presents a novel method based on dictionary learning and sparse representation for detecting and classification of different sub-types of AML. For each class, two intensity and label dictionaries are designed for representation using image patches of training samples. New image is represented by all dictionaries and the one with minimum error determine the type of class. We considered M2, M3 and M5 sub-types for evaluation of the method. The initial implementing of the proposed method achieved 97.53% average accuracy for different sub-types of AML.
机译:白血病(白细胞癌)基本上在骨髓中发展。根据法国-美国-英国分类,急性骨髓性白血病(一种白血病)有八种亚型。病理学家可以使用感染细胞的显微图像直观地观察到这些形式。然而,由于特征的变化,识别任务很繁琐并且通常很困难。自动白血病检测是癌症诊断领域中的重要主题。本文提出了一种基于字典学习和稀疏表示的新方法来检测和分类不同类型的AML。对于每个班级,设计了两个强度和标签词典,以使用训练样本的图像补丁来表示。新图像由所有词典表示,并且错误最少的词典决定了类的类型。我们考虑了M2,M3和M5子类型来评估该方法。对于不同类型的AML,该方法的最初实现实现了97.53%的平均准确度。

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