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Brain tumor classification of microscopy images using deep residual learning

机译:利用深度残差学习对显微镜图像进行脑肿瘤分类

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The crisis rate of brain tumor is about one point four in ten thousands. In general, cytotechnologists take charge of cytologic diagnosis. However, the number of cytotechnologists who can diagnose brain tumors is not sufficient, because of the necessity of highly specialized skill. Computer-Aided Diagnosis by computational image analysis may dissolve the shortage of experts and support objective pathological examinations. Our purpose is to support a diagnosis from a microscopy image of brain cortex and to identify brain tumor by medical image processing. In this study, we analyze Astrocytes that is a type of glia cell of central nerve system. It is not easy for an expert to discriminate brain tumor correctly since the difference between astrocytes and low grade astrocytoma (tumors formed from Astrocyte) is very slight. In this study, we present a novel method to segment cell regions robustly using BING objectness estimation and to classify brain tumors using deep convolutional neural networks (CNNs) constructed by deep residual learning. BING is a fast object detection method and we use pretrained BING model to detect brain cells. After that, we apply a sequence of post-processing like Voronoi diagram, binarization, watershed transform to obtain fine segmentation. For classification using CNNs, a usual way of data argumentation is applied to brain cells database. Experimental results showed 98.5% accuracy of classification and 98.2% accuracy of segmentation.
机译:脑肿瘤的危机发生率约为万分之四。通常,细胞技术专家负责细胞学诊断。但是,由于需要高度专业化的技能,因此能够诊断脑肿瘤的细胞技术人员的数量还不够。通过计算图像分析进行计算机辅助诊断可以解决专家的不足,并支持客观的病理学检查。我们的目的是支持通过大脑皮层的显微图像进行诊断,并通过医学图像处理来识别脑瘤。在这项研究中,我们分析了星形胶质细胞,它是中枢神经系统的一种胶质细胞。由于星形胶质细胞和低级星形细胞瘤(由星形胶质细胞形成的肿瘤)之间的差异非常小,因此专家很难正确地区分脑瘤。在这项研究中,我们提出了一种新的方法,可以使用BING客观性估计来稳健地分割细胞区域,并使用通过深度残差学习构建的深度卷积神经网络(CNN)对脑肿瘤进行分类。 BING是一种快速的对象检测方法,我们使用预训练的BING模型来检测脑细胞。之后,我们应用一系列的后处理程序,例如Voronoi图,二值化,分水岭变换,以获得精细的分割。对于使用CNN的分类,通常将数据论证的方法应用于脑细胞数据库。实验结果表明分类精度为98.5%,分割精度为98.2%。

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