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Super-Resolution Imaging of Mammograms Based on the Super-Resolution Convolutional Neural Network

机译:基于超分辨率卷积神经网络的乳房X线图的超分辨率成像

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>Purpose: To apply and evaluate a super-resolution scheme based on the super-resolution convolutional neural network (SRCNN) for enhancing image resolution in digital mammograms. >Materials and Methods: A total of 711 mediolateral oblique (MLO) images including breast lesions were sampled from the Curated Breast Imaging Subset of the Digital Database for Screening Mammography (CBIS-DDSM). We first trained the super-resolution convolutional neural network (SRCNN), which is a deep-learning based super-resolution method. Using this trained SRCNN, high-resolution images were reconstructed from low-resolution images. We compared the image quality of the super-resolution method and that obtained using the linear interpolation methods (nearest neighbor and bilinear interpolations). To investigate the relationship between the image quality of the SRCNN-processed images and the clinical features of the mammographic lesions, we compared the image quality yielded by implementing the SRCNN, in terms of the breast density, the Breast Imaging-Reporting and Data System (BI-RADS) assessment, and the verified pathology information. For quantitative evaluation, peak signal-to-noise ratio (PSNR) and structural similarity (SSIM) were measured to assess the image restoration quality and the perceived image quality.> Results: The super-resolution image quality yielded by the SRCNN was significantly higher than that obtained using linear interpolation methods (p < 0.001). The SRCNN-processed image quality in dense breasts, high-risk BI-RADS assessment groups, and pathology-verified malignant cases were significantly higher than that in low-density breasts, low-risk BI-RADS assessment groups, and benign cases, respectively (p < 0.01). >Conclusion: SRCNN can significantly outperform conventional interpolation methods for enhancing image resolution in digital mammography. SRCNN can significantly improve the image quality of magnified mammograms, especially in dense breasts, high-risk BI-RADS assessment groups, and pathology-verified malignant cases.
机译:<强>目的:应用基于超分辨率卷积神经网络(SRCNN)的超分辨率方案,用于增强数字乳房X光图中的图像分辨率。 <强>材料和方法:总共711个Mediolateral斜(MLO)图像,包括乳房病变的图像,用于筛选乳房X线照相术(CBIS-DDSM)的数字数据库的静态成像子集。我们首先培训了超分辨率的卷积神经网络(SRCNN),这是一种基于深度学习的超分辨率方法。使用该训练的SRCNN,从低分辨率图像重建高分辨率图像。我们比较了超分辨率方法的图像质量,并使用线性插值方法(最近邻居和双线性插值)。为了研究SRCNN处理图像的图像质量与乳房X线监测病变的临床特征之间的关系,我们通过在乳房密度,乳房成像报告和数据系统方面实现了通过实施SRCNN来实现的图像质量( BI-RADS)评估,以及已验证的病理信息。为了定量评估,测量峰值信噪比(PSNR)和结构相似性(SSIM),以评估图像恢复质量和感知的图像质量。<强>结果:均产生超分辨率图像质量通过SRCNN显着高于使用线性插值方法获得的( P <0.001)。致密乳房,高风险Bi-Rads评估组和病理学疾病病例的SRCNN处理的图像质量显着高于低密度乳房,低风险Bi-RADS评估组和良性病例( P <0.01)。 >结论: srcnn可以显着优异地优于常规插值方法,以提高数字乳房X线X XPOCTION。 SRCNN可以显着提高放大乳房X线照片的图像质量,特别是在密集的乳房,高风险Bi-Rads评估组和病理学核实恶性病例中。

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