Abstract

To minimize radiation risk, dose reduction is important in the diagnostic and therapeutic applications of computed tomography (CT). However, image noise degrades image quality owing to the reduced X-ray dose and a possible unacceptably reduced diagnostic performance. Deep learning approaches with convolutional neural networks (CNNs) have been proposed for natural image denoising; however, these approaches might introduce image blurring or loss of original gradients. The aim of this study was to compare the dose-dependent properties of a CNN-based denoising method for low-dose CT with those of other noise-reduction methods on unique CT noise-simulation images. To simulate a low-dose CT image, a Poisson noise distribution was introduced to normal-dose images while convoluting the CT unit-specific modulation transfer function. An abdominal CT of 100 images obtained from a public database was adopted, and simulated dose-reduction images were created from the original dose at equal 10-step dose-reduction intervals with a final dose of 1/100. These images were denoised using the denoising network structure of CNN (DnCNN) as the general CNN model and for transfer learning. To evaluate the image quality, image similarities determined by the structural similarity index (SSIM) and peak signal-to-noise ratio (PSNR) were calculated for the denoised images. Significantly better denoising, in terms of SSIM and PSNR, was achieved by the DnCNN than by other image denoising methods, especially at the ultra-low-dose levels used to generate the 10% and 5% dose-equivalent images. Moreover, the developed CNN model can eliminate noise and maintain image sharpness at these dose levels and improve SSIM by approximately 10% from that of the original method. In contrast, under small dose-reduction conditions, this model also led to excessive smoothing of the images. In quantitative evaluations, the CNN denoising method improved the low-dose CT and prevented over-smoothing by tailoring the CNN model.

Highlights

  • Computed tomography (CT) is widely used for repetitive screening diagnostic scans, such as scans for cancer, lung nodules, and bleeding internal organs

  • In the results of the original denoising network structure of CNN (DnCNN) method, the noise had been eliminated, image blurring was introduced at ultra-low-dose levels

  • The denoising performance in terms of image structural similarity index (SSIM) and peak signalto-noise ratio (PSNR) was significantly better for DnCNN than for the other image-space denoising methods

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Summary

Introduction

Computed tomography (CT) is widely used for repetitive screening diagnostic scans, such as scans for cancer, lung nodules, and bleeding internal organs. To minimize exposure doses, reducing the number of Xray photons via tube-current modulation is a viable solution This method is limited because low-dose CT triggers image-quality degradation. Sinogram domain filtration and iterative reconstruction methods combine the statistical properties of the data in the image domain and projection space to optimize the objective function These methods can eliminate image noise, they depend on the specifications of the manufacturer, thereby limiting their clinical applications. Image-space denoising methods, such as median, Gaussian, and Wiener filters, do not require projection data and aim to reduce image noise without requiring an understanding of the structures of interest They are exposed to the risk of either generating new image artifacts or losing original structural information during post-processing, which limit their clinical applications [6]

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