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Stereo-Correlation and Noise-Distribution Aware Res VoxGAN for Dense Slices Reconstruction and Noise Reduction in Thick Low-Dose CT

机译:立体相关和噪声分布感知Res VoxGAN用于厚小剂量CT的密集切片重建和降噪

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The low-dose computed tomography (CT) scan with thick slice thickness (3 mm) dramatically improves the imaging efficiency and reduces the radiation risk in clinical. However, the low-dose CT acquisition inherently compromises the signal-to-noise ratio, and the sparse sampled thick slices poorly reproduce the coronal/sagittal anatomy. We propose a Residual Voxel Generative Adversarial Nets (ResVoxGAN), the first powerful work to densely reconstruct slices into the thin thickness (1mm), and simultaneously denoise the CT image into the more readable pattern, directly from the widely accessible thick low-dose CT. The framework is achieved in a voxel-wise conditional GAN constituted by the following: (1) a generator is composed of consecutive 3D multi-scale residual blocks that richly extracts multi-scale stereo feature for fine-granted and latent spatial structure mining from the noisy volume, and a followed Subpixel Convnet further interpretively reconstructs dense slices from the features for high-resolution and denoising volume; (2) a stereo-correlation constraint elegantly penalizes gradient deviation in voxel adjacent region (i.e., 3D 26-neighborhoods) to guide structural detail, together with a image-expression constraint on perceptual feature representations transformed from a pretrained deep convolution autoen-coder to keep scene content; and (3) a pair of coupled discriminators advantageously fuse the prior-knowledge from the thick low-dose CT with the generated image and residual noise via self-learning to drive the generation towards into both realistic anatomic structure distribution and valid noise-reduction distribution. The experiment validated on Mayo dataset shows that the Res VoxGAN successfully reconstruct the low-dose CT of 3 mm thickness into 1 mm, and meanwhile keeps the with peak signal to noise ratio of 40.80 for noise reduction, and structural similarity index of 0.918 for dense slices reconstruction. These advantages reveal our method a great potential in clinical CT imaging.
机译:厚切片厚度(3 mm)的低剂量计算机断层扫描(CT)扫描可显着提高成像效率并降低临床上的放射风险。但是,低剂量CT采集本质上损害了信噪比,并且稀疏采样的厚切片很难再现冠状/矢状解剖结构。我们提出了残差体素对抗网络(ResVoxGAN),这是第一个强大的工作,可直接从可广泛使用的厚低剂量CT直接将切片密集地重建为薄厚度(1mm),同时将CT图像去噪为更易读的模式。该框架是在由以下元素构成的体素条件条件GAN中实现的:(1)生成器由连续的3D多尺度残差块组成,该块丰富地提取了多尺度立体特征,以从中精细授予潜在的空间结构挖掘。嘈杂的音量,随后的子像素卷积网络进一步根据高分辨率和降噪体积的特征,解释性地重建了密集切片; (2)立体相关约束优雅地惩罚了体素相邻区域(即3D 26邻域)中的梯度偏差以引导结构细节,以及对从预训练的深度卷积自动编码器转换为感知特征表示的图像表达约束保留场景内容; (3)一对耦合的鉴别器通过自学习有利地融合了厚低剂量CT的先验知识,生成的图像和残留噪声,从而将生成的图像推向了实际的解剖结构分布和有效的降噪分布。在Mayo数据集上验证的实验表明,Res VoxGAN成功地将3 mm厚度的低剂量CT重建为1 mm,同时保持与峰值信噪比为40.80的降噪效果,对于密度为0.918的结构相似性指数切片重建。这些优点表明我们的方法在临床CT成像中具有巨大的潜力。

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  • 会议地点 Shenzhen(CN)
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    Laboratory of Image Science and Technology School of Computer Science and Engineering Southeast University Nanjing China Centre de Recherche en Information Biomedicale Sino-Francais (LIA CRIBs) Rennes France Key Laboratory of Computer Network and Information Integration Southeast University Ministry of Education Nanjing China Department of Medical Imaging and Medical Biophysics Western University London ON Canada Digital Imaging Group of London London ON Canada;

    Laboratory of Image Science and Technology School of Computer Science and Engineering Southeast University Nanjing China Centre de Recherche en Information Biomedicale Sino-Francais (LIA CRIBs) Rennes France Key Laboratory of Computer Network and Information Integration Southeast University Ministry of Education Nanjing China;

    Department of Medical Imaging and Medical Biophysics Western University London ON Canada Digital Imaging Group of London London ON Canada;

    Laboratory of Image Science and Technology School of Computer Science and Engineering Southeast University Nanjing China Centre de Recherche en Information Biomedicale Sino-Francais (LIA CRIBs) Rennes France Key Laboratory of Computer Network and Information Integration Southeast University Ministry of Education Nanjing China School of Cyber Science and Engineering Southeast University Nanjing China;

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