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Measuring CT Reconstruction Quality with Deep Convolutional Neural Networks

机译:用深卷积神经网络测量CT重建质量

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With the increasing use of CT in diagnostic imaging, reducing the clinical radiation dose is necessary for ensuring patient safety. Reduced radiation dose results in quantum noise which adversely affects image quality and diagnostic value. Moreover, obtaining high quality images to act as reference images for image quality assessment is difficult. Therefore, automatic no-reference quality assessment of reconstructed images is necessary to preserve diagnostic image quality, while controlling radiation dose. In this work, we investigate the use of a deep convolutional neural network to measure CT image quality. Our developed metric shows concordance with conventional metrics of CT image quality (|γ| > 0.75, |ρ| > 0.75). Our metric ranks images in terms of quality highly accurately (τ = 0.98). We measure noise textures and levels not present in our training dataset. Furthermore, the proposed metric shows the improved quality in high dose iteratively reconstructed images, and the reduced quality in low dose images.
机译:随着CT在诊断成像中不断使用的情况下,降低临床辐射剂量对于确保患者安全是必要的。减少的辐射剂量导致量子噪声对图像质量和诊断值产生不利影响。此外,获得高质量图像以充当图像质量评估的参考图像是困难的。因此,在控制辐射剂量的同时需要对重建图像的自动无参考质量评估是保持诊断图像质量。在这项工作中,我们调查了深度卷积神经网络来测量CT图像质量的使用。我们开发的公制显示CT图像质量的常规度量(|γ|> 0.75,|ρ|> 0.75)。我们的指标在高度准确的(τ= 0.98)中以质量排列图像。我们测量我们的训练数据集中不存在的噪声纹理和级别。此外,所提出的度量显示高剂量迭代重建图像中的改善质量,以及低剂量图像中的质量降低。

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