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High quality imaging from sparsely sampled computed tomography data with deep learning and wavelet transform in various domains

机译:来自各个域中的深度学习和小波变换的稀疏采样计算机断层扫描数据的高品质成像

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Purpose Sparsely sampled computed tomography (CT) has been attracting attention as a technique that can reduce the high radiation dose of conventional CT. In general, iterative reconstruction techniques have been applied to sparsely sampled CT to realize high quality images. These methodologies require high computing power due to the modeling of the system and the trajectory of radiation rays. Therefore, the purpose of this study was to obtain high quality three-dimensional (3D) reconstructed images with deep learning under sparse sampling conditions. Methods We used a deep learning model based on a fully convolutional network and a wavelet transform to predict high quality images. To reduce the spatial resolution loss of predicted images, we replaced the pooling layer with a wavelet transform. Three different domains were evaluated - the sinogram domain, the image domain, and the hybrid domain - to optimize a reconstruction technique based on deep learning. To train and develop a deep learning model, The Cancer Imaging Archive (TCIA) dataset was used. Results Streak artifacts, which generally occur under sparse sampling conditions, were effectively removed from deep learning-based sparsely sampled reconstructed images. However, image characteristics of fine structures varied depending on the application of deep learning technologies. The use of deep learning techniques in the sinogram domain removed streak artifacts well, but some image noise remained. Likewise, when applying deep learning technology to the image domain, a blurring effect occurred. The proposed hybrid domain sparsely sampled reconstruction based on deep learning was able to restore images to a quality similar to fully sampled images. The structural similarity (SSIM) index values of sparsely sampled CT reconstruction based on deep learning technology were 0.85 or higher. Among the three domains studied, the hybrid domain techniques achieved the highest SSIM index values (0.9 or more). Conclusion We proposed a method of sparsely sampled CT reconstruction from a new perspective - unlike iterative reconstruction. In addition, we developed an optimal deep learning-based sparse sampling reconstruction technique by evaluating image quality with deep learning technologies.
机译:目的稀疏地采样的计算断层扫描(CT)一直吸引注意力,以减少常规CT的高辐射剂量的技术。通常,已经应用迭代重建技术以稀疏地采样的CT来实现高质量的图像。由于系统的建模和辐射射线的轨迹,这些方法需要高计算能力。因此,本研究的目的是在稀疏的采样条件下获得具有深度学习的高质量三维(3D)重建图像。方法采用基于完全卷积网络的深度学习模型和小波变换来预测高质量的图像。为了减少预测图像的空间分辨率丢失,我们用小波变换替换了池汇集层。评估三个不同的域 - SCOMAGRAMAGA域,图像域和混合域 - 以优化基于深度学习的重建技术。要培训和开发深入学习模型,使用癌症成像档案(TCIA)数据集。结果,通常在稀疏的采样条件下发生条纹伪影,从基于深度学习的稀疏采样的重建图像有效地消除。然而,细结构的图像特征根据深度学习技术的应用而变化。使用深度学习技术在Sinogram结构域中删除了条纹伪像,但仍然存在一些图像噪声。同样,在向图像域应用深度学习技术时,发生模糊效果。基于深度学习的提议的混合域稀疏采样重建能够将图像恢复到类似于完全采样的图像的质量。基于深度学习技术的稀疏采样CT重建的结构相似性(SSIM)指标值为0.85或更高。在研究的三个域中,混合域技术实现了最高的SSIM指数值(0.9或更多)。结论我们提出了一种新的视角下稀疏采样的CT重建方法 - 与迭代重建不同。此外,我们通过使用深层学习技术评估图像质量,开发了基于深度学习的稀疏采样重建技术。

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