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Breast Tumor Localization Using Simultaneous Perturbation Stochastic-Neural Algorithm

机译:基于同时扰动随机神经算法的乳腺肿瘤定位

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Many impalpable or occult breast cancers cannot be localized using imaging techniques like mammography and ultrasound. An accurate localization of the tumor is, however, essential to guide the surgeon to the lesion, and ensure its correct and adequate removal with satisfactory excision margins. Current breast tumor localization techniques are invasive and often result in a cosmetic disfigurement. In this paper, we use the ultrawide band radar-based microwave breast imaging technique to non-invasively localize (impalpable) tumors in the breast. We consider four clinically important lesion features: location, size, depth and spatial orientation within the breast. A comparison of the energy of the received signal from healthy and cancerous breasts exhibits some remarkable differences in some frequency bands. We, therefore, use the energy spectrum of the receiving antenna signal decomposed by wavelet transform as the input to a Simultaneous Perturbation Neural Network (SPNN) classifier. Furthermore, we determine the optimum structure and gains of the SPNN, in terms of optimum initial weights and optimum number of nodes in the hidden layer. We use CST Microwave Studio to simulate a data set of 1024 cancer cases with various tumor location, size, depth and direction inside the breast. Our results show that the proposed algorithm gives accurate localization of the breast lesion, and possesses a high sensitivity to small tumor sizes. Additionally, it can accurately detect and classify multiple tumors with short learning and testing time.
机译:许多无法触及或隐匿的乳腺癌无法通过乳腺X线照相术和超声检查等影像技术进行定位。但是,准确定位肿瘤对于将外科医生引导至病变并确保其正确而充分的切除以及令人满意的切除切缘至关重要。当前的乳腺肿瘤定位技术是侵入性的,并且经常导致外观上的毁容。在本文中,我们使用基于超宽带雷达的微波乳房成像技术对乳房中的肿瘤进行非侵入性定位。我们考虑了四个重要的临床病变特征:乳房内的位置,大小,深度和空间方向。来自健康和癌性乳房的接收信号能量的比较在某些频段上表现出一些显着差异。因此,我们将通过小波变换分解的接收天线信号的能谱用作同步扰动神经网络(SPNN)分类器的输入。此外,我们根据最佳初始权重和隐藏层中的最佳节点数来确定SPNN的最佳结构和增益。我们使用CST Microwave Studio来模拟1024个癌症病例的数据集,这些数据包括乳房内各种肿瘤的位置,大小,深度和方向。我们的结果表明,所提出的算法可以准确定位乳腺病变,并且对小肿瘤具有很高的敏感性。此外,它可以在较短的学习和测试时间内准确地检测和分类多个肿瘤。

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