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White Blood Cell Differential Counts Using Convolutional Neural Networks for Low Resolution Images

机译:卷积神经网络用于低分辨率图像的白细胞差异计数

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The Complete Blood Count (CBC) is a medical diagnostic test concerned with identifying and counting basic blood cells such as red blood cells (RBC), white blood cells (WBC) and platelets. The computerized automation of CBC has been a challenging problem in medical diagnostics. In this work we describe a subcomponent system for the CBC to perform the automatic classification of WBC cells into one of five WBC types in low resolution cytological images. We describe feature extraction and consider three classifiers: a support vector machine (SVM) using standard intensity and histogram features, an SVM with features extracted by a kernel principal component analysis of the intensity and histogram features, and a convolutional neural network (CNN) which takes the entire image as input. The proposed classifiers were compared through experiments conducted on low resolution cytological images of normal blood smears. The best results were obtained with the CNN solution with recognition rates either higher or comparable to the SVM-based classifiers for all five types of WBCs.
机译:全血细胞计数(CBC)是一种医学诊断测试,涉及识别和计数基本血细胞,例如红细胞(RBC),白细胞(WBC)和血小板。在医学诊断中,CBC的计算机自动化一直是一个具有挑战性的问题。在这项工作中,我们描述了CBC的子组件系统,该系统可将WBC细胞自动分类为低分辨率细胞学图像中的五种WBC类型之一。我们描述了特征提取并考虑了三个分类器:使用标准强度和直方图特征的支持向量机(SVM),具有通过强度和直方图特征的核主成分分析提取的特征的SVM以及卷积神经网络(CNN)将整个图像作为输入。通过对正常血液涂片的低分辨率细胞学图像进行的实验对提出的分类器进行了比较。使用CNN解决方案可获得最好的结果,对于所有五种类型的WBC,其识别率均高于或可与基于SVM的分类器相媲美。

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