首页> 外文会议>Hellenic Conference on AI(Artificial Intellignece)(SENTN 2004); 20040505-20040508; Samos; GR >Automatic Detection of Abnormal Tissue in Bilateral Mammograms Using Neural Networks
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Automatic Detection of Abnormal Tissue in Bilateral Mammograms Using Neural Networks

机译:使用神经网络自动检测双侧乳房X线照片中的异常组织

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摘要

A novel method for accurate detection of regions of interest (ROIs) that contain circumscribed lesions in X-rays mammograms based on bilateral subtraction is presented. Implementing this method requires left and right breast images alignment using a cross-correlation criterion followed by a windowing analysis in mammogram pairs. Furthermore, a set of qualification criteria is employed to filter these regions, retaining the most suspicious for which a Radial-Basis Function Neural Network makes the final decision marking them as ROIs that contain abnormal tissue. Extensive experiments have shown that the proposed method detects the location of the circumscribed lesions with accuracy of 95.8% in the MIAS database.
机译:提出了一种新的方法,该方法可基于双边减法准确检测X线乳房X线照片中包含外接病变的目标区域(ROI)。要实施此方法,需要使用互相关标准对齐左右乳房图像,然后在乳房X线照片对中进行窗口分析。此外,采用一套资格标准来过滤这些区域,并保留最可疑的方法,径向基函数神经网络对此做出最后决定,将它们标记为包含异常组织的ROI。大量的实验表明,该方法在MIAS数据库中能够准确地检测出外接病变的位置,准确率为95.8%。

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