通过深度学习技术对数字乳房断层合成恢复施加噪声相关保真度

R. B. Vimieiro, L. Borges, Ge Wang, M. Vieira
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引用次数: 1

摘要

数字乳腺断层合成(DBT)是一种重要的乳腺癌筛查成像方式。乳腺肿块的形态和微钙化形态是检测和判断乳腺癌恶性的重要因素。最近,卷积神经网络(cnn)已被用于医学成像的去噪,并显示出提高放射科医生表现的潜力。然而,它们会在恢复过程中施加噪声空间相关。噪声相关性会对放射科医生的表现产生负面影响,产生类似于乳房病变的图像信号。在这项工作中,我们提出了一种深度CNN,它通过部分滤除噪声来恢复低剂量DBT投影,但在原始图像和恢复图像之间施加噪声相关性的保真度,避免了可能类似于乳腺癌迹象的伪影。提出了计算输入输出图像功率谱差的损失函数与寻求图像视觉感知的损失函数相结合的方法。我们将所提出的神经网络的性能与传统的去噪方法进行了比较,传统的去噪方法在恢复过程中不考虑噪声相关性,发现我们的方法在PS方面取得了更好的结果。
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Imposing noise correlation fidelity on digital breast tomosynthesis restoration through deep learning techniques
Digital breast tomosynthesis (DBT) is an important imaging modality for breast cancer screening. The morphology of breast masses and the shape of the microcalcifications are important factors to detect and determine the malignancy of breast cancer. Recently, convolutional neural networks (CNNs) have been used for denoising in medical imaging and have shown potential to improve the performance of radiologists. However, they can impose noise spatial correlation in the restoration process. Noise correlation can negatively impact radiologists’ performance, creating image signals that can resemble breast lesions. In this work, we propose a deep CNN that restores low-dose DBT projections by partially filtering out the noise, but imposes fidelity of the noise correlation between the original and restored images, avoiding artifacts that may resemble signs of breast cancer. The combination of a loss function that calculates the difference in the power spectra (PS) of the input and output images and another one that seeks image visual perception is proposed. We compared the performance of the proposed neural network with traditional denoising methods that do not consider the noise correlation in the restoration process and found superior results in terms of PS for our approach.
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