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首页> 外文期刊>Journal of signal processing systems for signal, image, and video technology >Automated Breast Cancer Diagnosis Based on GVF-Snake Segmentation, Wavelet Features Extraction and Fuzzy Classification
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Automated Breast Cancer Diagnosis Based on GVF-Snake Segmentation, Wavelet Features Extraction and Fuzzy Classification

机译:基于GVF-Snake分割,小波特征提取和模糊分类的乳腺癌自动诊断

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摘要

The automatic diagnosis of breast cancer (BC) is an important real-world medical problem. This paper proposes a design of automated detection, segmentation, and classification of breast cancer nuclei using a fuzzy logic. The first step is based on segmentation using an active contour for cell tracking and isolating of the nucleus in the cytological image. Then from this nucleus, have been extracted some textural features using the wavelet transforms to characterize image using its texture, so that malign texture can be differentiated from benign one with the assumption that tumoral texture is different from the texture of other kinds of tissues. Finally, the obtained features will be introduced as the input vector of a fuzzy C-means (FCM) clustering algorithm to classify the images into malign and benign ones. The implementation of such algorithm has been done using a methodology based on very high speed integrated circuit, hardware description language (VHDL). The design of the circuit is performed by using a CMOS 0.35 μm technology.
机译:乳腺癌(BC)的自动诊断是一个重要的现实医学问题。本文提出了一种使用模糊逻辑对乳腺癌细胞核进行自动检测,分割和分类的设计。第一步基于使用活动轮廓进行分割,以进行细胞跟踪和细胞影像学中细胞核的分离。然后从该细胞核中,利用小波变换提取了一些纹理特征,以利用其纹理表征图像,从而可以假设肿瘤纹理与其他组织的纹理不同,从而将恶性纹理与良性肿瘤区分开。最后,将获得的特征作为模糊C均值(FCM)聚类算法的输入向量进行介绍,以将图像分为恶性和良性。已经使用基于超高速集成电路,硬件描述语言(VHDL)的方法来实现这种算法。通过使用CMOS 0.35μm技术进行电路设计。

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