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Segmentation of Thermal Breast Images Using Convolutional and Deconvolutional Neural Networks

机译:利用卷积和碎屑神经网络进行热乳房图像的分割

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Breast cancer is the second leading cause of death for women in the U.S. Early detection of breast cancer has been shown to be the key to higher survival rates for breast cancer patients. We are investigating infrared thermography as a noninvasive adjunctive to mammography for breast screening. Thermal imaging is safe, radiation-free, pain-free, and non-contact. Segmentation of breast area from the acquired thermal images will help limit the area for tumor search and reduce the time and effort needed for manual hand segmentation. Autoencoder-like convolutional and deconvolutional neural networks (C-DCNN) are promising computational approaches to automatically segment breast areas in thermal images. In this study, we apply the C-DCNN to segment breast areas from our thermal breast images database, which we are collecting in our clinical trials by imaging breast cancer patients with our infrared camera (N2 Imager). For training the C-DCNN, the inputs are 132 gray-value thermal images and the corresponding manually-cropped breast area images (binary masks to designate the breast areas). For testing, we input thermal images to the trained C-DCNN and the output after post-processing are the binary breast-area images. Cross-validation and comparison with the ground-truth images show that the C-DCNN is a promising method to segment breast areas. The results demonstrate the capability of C-DCNN to learn essential features of breast regions and delineate them in thermal images.
机译:乳腺癌是美国女性死亡的第二个主要原因。已被证明是乳腺癌的早期检测是乳腺癌患者的较高存活率的关键。我们正在调查红外热成像作为乳房筛选的非侵袭性助理。热成像是安全的,无辐射,无疼痛和非接触。从所获得的热图像中乳房区域的分割将有助于限制肿瘤搜索区域,并减少手动分割所需的时间和精力。自动化器类似的卷积和解卷积神经网络(C-DCNN)是在热图像中自动分割乳房区域的计算方法。在这项研究中,我们将C-DCNN应用于我们的热乳房图像数据库中的段乳房区域,我们通过使用我们的红外线摄像头(N2成像仪)进行乳腺癌患者进行临床试验。为了训练C-DCNN,输入是132灰度热图像和相应的手动裁剪乳房区域图像(二进制面罩以指定乳房区域)。对于测试,我们将热图像输入到训练的C-DCNN和后处理后的输出是二进制乳房区域图像。与地面图象的交叉验证和比较表明,C-DCNN是对乳房区域的有希望的方法。结果证明了C-DCNN学习乳房区域基本特征的能力,并在热图像中描绘它们。

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