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Classifying breast cancer regions in microscopic image using texture analysis and neural network

机译:使用纹理分析和神经网络对显微图像中的乳腺癌区域进行分类

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This study proposes and evaluates a neural network (NN) classifier for dividing the histological structures (HS) in breast cancer (BC) microscopic image into two region types: cancer or normal. Cancer region included positive cells and negative cells while normal region included stromal cells and lymphocyte. The classification task using a back propagation learning algorithm is applied to the multilayer perceptron architecture of NN classifiers. To yield a high classification performance, the main focus of interests is feature extraction task using four texture features: correlation, autocorrelation, the information measure of correlation and fractal dimension. A combination of these texture features is used in 60 images for training data set and 104 images for testing data set. The comparison of performances between each texture feature and the combination of them has been reported. The results show that the best classification accuracy obtained from the all features is 94.23%. This indicated that the texture analysis and NN classifier are feasible for dividing the HS in BC microscopic images and can be applied to improve and to develop an accurate cell counting of computer-aided systems for BC diagnosis.
机译:这项研究提出并评估了一个神经网络(NN)分类器,用于将乳腺癌(BC)显微图像中的组织学结构(HS)分为两个区域类型:癌症或正常区域。癌症区域包括阳性细胞和阴性细胞,而正常区域包括基质细胞和淋巴细胞。使用反向传播学习算法的分类任务被应用于NN分类器的多层感知器体系结构。为了获得较高的分类性能,关注的重点是使用四个纹理特征的特征提取任务:相关性,自相关性,相关性的信息度量和分形维数。这些纹理特征的组合用于训练数据集的60张图像和测试数据集的104张图像中。已经报告了每个纹理特征及其组合之间的性能比较。结果表明,从所有特征中获得的最佳分类精度为94.23%。这表明纹理分析和神经网络分类器可用于在BC显微图像中划分HS,并可用于改进和开发用于BC诊断的计算机辅助系统的精确细胞计数。

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