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Automated Analysis of Microscopy Images using Deep Convolutional Neural Networks

机译:深卷积神经网络自动分析显微镜图像

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The general cell quantification and identification have technical limitations concerning the fast and accurate detection of complex morphological cells, especially for overlapping cells, irregular cell shapes, bad focal planes, among other factors. We use the deep convolutional neural networks (DCNN) to classify the annotated images of five types of white blood cells. The accuracy and performance of the proposed framework are evaluated for the blood cell classifications. The results demonstrate that the DCNN model performs close to the accuracy of 80% and provides an accurate and fast method for hematological laboratories.
机译:通用细胞定量和鉴定具有关于复杂形态细胞的快速准确检测的技术限制,特别是对于重叠的细胞,不规则细胞形状,不规则的焦点平面以及其他因素。 我们使用深卷积神经网络(DCNN)来分类五种类型的白细胞的注释图像。 评估所提出的框架的准确性和性能对血细胞分类进行评估。 结果表明,DCNN模型的性能接近80%,并为血液实验室提供了准确和快速的方法。

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