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Cascaded Correlation Neural Network Based Microcalcification Detection in Mammographic Images

机译:基于级联相关神经网络的乳腺X线图像微钙化检测

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This paper presents a novel approach for classification of microcalcification (MC) clusters in mammograms. This cluster is the significant indication of breast cancer in women at the early stage. Diagnosis of these clusters at the early stage is a very difficult task as the cancerous tumors are embedded in normal breast tissue structures. This paper proposes an artificial intelligent neural network algorithm - Cascaded Correlation Neural Network (CCNN) - for detection of tumors in mammograms. CCNN has a distinct feature that it does not use a predefined set of hidden units, instead the hidden units gets added up one by one until the error is minimized. By exploiting this distinct feature of the CCNN, a computerized detection algorithm is developed that are not only accurate but also computationally efficient for microcalcification detection in mammograms. Prior to MC detection texture features from the Region of Interest (ROI) of the mammmographic Image is extracted using gabor features. Then CCNN classifier is used to determine whether the input data is normal/benign/malignant. The performance of this scheme is evaluated using a database of 322 mammograms from MIAS database and real time clinical mammograms. The result shows that the proposed CCNN algorithm has good performance.
机译:本文提出了一种在乳房X光照片中对微钙化(MC)簇进行分类的新方法。该簇是女性早期乳腺癌的重要标志。由于癌性肿瘤包埋在正常的乳房组织结构中,因此在早期诊断这些簇是一项非常困难的任务。本文提出了一种人工智能神经网络算法-级联相关神经网络(CCNN)-用于检测乳房X线照片中的肿瘤。 CCNN具有一个独特的功能,它不使用预定义的隐藏单元集,而是将隐藏单元逐个累加,直到将错误最小化为止。通过利用CCNN的这一独特功能,开发了一种计算机化的检测算法,该算法不仅精确,而且在乳腺X线照片中的微钙化检测方面具有计算效率。在进行MC检测之前,使用gabor特征提取乳腺X线图像感兴趣区域(ROI)的纹理特征。然后使用CCNN分类器确定输入数据是否正常/良性/恶性。使用来自MIAS数据库的322个乳房X线照片和实时临床X射线照片来评估该方案的性能。结果表明,所提出的CCNN算法具有良好的性能。

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