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Diagnosing Leukemia in Blood Smear Images Using an Ensemble of Classifiers and Pre-Trained Convolutional Neural Networks

机译:使用分类器的集合和预训练的卷积神经网络诊断血液涂片图像中的白血病

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Leukemia is a worldwide disease. In this paper we demonstrate that it is possible to build an automated, efficient and rapid leukemia diagnosis system. We demonstrate that it is possible to improve the precision of current techniques from the literature using the description power of well-known Convolutional Neural Networks (CNNs). We extract features from a blood smear image using pre-trained CNNs in order to obtain an unique image description. Many feature selection techniques were evaluated and we chose PCA to select the features that are in the final descriptor. To classify the images on healthy and pathological we created an ensemble of classifiers with three individual classification algorithms (Support Vector Machine, Multilayer Perceptron and Random Forest). In the tests we obtained an accuracy rate of 100%. Besides the high accuracy rate, the tests showed that our approach requires less processing time than the methods analyzed in this paper, considering the fact that our approach does not use segmentation to obtain specific cell regions from the blood smear image.
机译:白血病是一个全球疾病。在本文中,我们证明可以建立自动化,高效和性的白血病诊断系统。我们证明,可以使用众所周知的卷积神经网络(CNN)的描述功率来提高文献的当前技术的精度。我们使用预先训练的CNN从血液涂抹图像中提取特征,以获得唯一的图像描述。评估了许多特征选择技术,并选择PCA以选择最终描述符中的功能。为了对健康和病理学的图像进行分类,我们创建了一个具有三个单独分类算法的分类器的集合(支持向量机,多层情节和随机林)。在测试中,我们获得了100 %的准确率。除了高精度率之外,测试表明,考虑到我们的方法不使用分割从血液涂抹图像获得特定的细胞区,所以考虑我们的方法需要比本文分析的方法更少。

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