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首页> 外文期刊>Systems Journal, IEEE >Remote Computer-Aided Breast Cancer Detection and Diagnosis System Based on Cytological Images
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Remote Computer-Aided Breast Cancer Detection and Diagnosis System Based on Cytological Images

机译:基于细胞学图像的远程计算机辅助乳腺癌检测与诊断系统

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摘要

The purpose of this study is to develop an intelligent remote detection and diagnosis system for breast cancer based on cytological images. First, this paper presents a fully automated method for cell nuclei detection and segmentation in breast cytological images. The locations of the cell nuclei in the image were detected with circular Hough transform. The elimination of false-positive (FP) findings (noisy circles and blood cells) was achieved using Otsu's thresholding method and fuzzy c-means clustering technique. The segmentation of the nuclei boundaries was accomplished with the application of the marker-controlled watershed transform. Next, an intelligent breast cancer classification system was developed. Twelve features were presented to several neural network architectures to investigate the most suitable network model for classifying the tumor effectively. Four classification models were used, namely, multilayer perceptron using back-propagation algorithm, probabilistic neural network (PNN), learning vector quantization, and support vector machine (SVM). The classification results were obtained using tenfold cross validation. The performance of the networks was compared based on resulted error rate, correct rate, sensitivity, and specificity. Finally, we have merged the proposed computer-aided detection and diagnosis system with the telemedicine platform. This is to provide an intelligent, remote detection, and diagnosis system for breast cancer patients based on the Web service. The proposed system was evaluated using 92 breast cytological images containing 11 502 cell nuclei. Experimental evidence shows that the proposed method has very effective results even in the case of images with high degree of blood cells and noisy circles. In addition, two benchmark data sets were evaluated for comparison. The results showed that the predictive ability of PNN and SVM is stronger than the others in all evaluated data sets.
机译:这项研究的目的是开发基于细胞学图像的乳腺癌智能远程检测和诊断系统。首先,本文提出了一种用于乳腺细胞学图像中细胞核检测和分割的全自动方法。用圆形霍夫变换检测图像中细胞核的位置。使用Otsu的阈值化方法和模糊c均值聚类技术可以消除假阳性(FP)的发现(嘈杂的圆圈和血细胞)。核边界的分割是通过应用标记控制的分水岭变换来完成的。接下来,开发了智能乳腺癌分类系统。十二种功能已呈现给几种神经网络架构,以研究最有效地对肿瘤进行分类的网络模型。使用了四个分类模型,即使用反向传播算法的多层感知器,概率神经网络(PNN),学习向量量化和支持向量机(SVM)。使用十倍交叉验证获得分类结果。根据产生的错误率,正确率,敏感性和特异性比较网络的性能。最后,我们将建议的计算机辅助检测和诊断系统与远程医疗平台合并。这将为基于Web服务的乳腺癌患者提供智能的远程检测和诊断系统。使用包含11×502细胞核的92幅乳腺细胞学图像评估了拟议的系统。实验证据表明,所提出的方法即使在血细胞度高和圆圈嘈杂的图像中也具有非常有效的结果。此外,评估了两个基准数据集以进行比较。结果表明,在所有评估数据集中,PNN和SVM的预测能力均强于其他能力。

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