Usui Keisuke, Ogawa Koichi, Goto Masami, Sakano Yasuaki, Kyougoku Shinsuke, Daida Hiroyuki
Department of Radiological Technology, Faculty of Health Science, Juntendo University, Tokyo, 113-8421, Japan.
Department of Radiation Oncology, Faculty of Medicine, Juntendo University, Tokyo, 113-8421, Japan.
Vis Comput Ind Biomed Art. 2021 Jul 25;4(1):21. doi: 10.1186/s42492-021-00087-9.
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.
为了将辐射风险降至最低,在计算机断层扫描(CT)的诊断和治疗应用中降低剂量非常重要。然而,由于X射线剂量降低以及可能导致诊断性能不可接受地下降,图像噪声会降低图像质量。已经提出了使用卷积神经网络(CNN)的深度学习方法用于自然图像去噪;然而,这些方法可能会引入图像模糊或原始梯度的丢失。本研究的目的是在独特的CT噪声模拟图像上,比较基于CNN的低剂量CT去噪方法与其他降噪方法的剂量依赖性特性。为了模拟低剂量CT图像,在对CT单元特定的调制传递函数进行卷积时,将泊松噪声分布引入到正常剂量图像中。采用从公共数据库获得的100幅腹部CT图像,并以相等的10步剂量降低间隔从原始剂量创建模拟剂量降低图像,最终剂量为1/100。使用CNN的去噪网络结构(DnCNN)作为通用CNN模型并用于迁移学习对这些图像进行去噪。为了评估图像质量,计算了去噪图像的结构相似性指数(SSIM)和峰值信噪比(PSNR)确定的图像相似度。与其他图像去噪方法相比,DnCNN在SSIM和PSNR方面实现了显著更好的去噪效果,特别是在用于生成10%和5%剂量等效图像的超低剂量水平下。此外,所开发的CNN模型可以在这些剂量水平下消除噪声并保持图像清晰度,并且与原始方法相比,SSIM提高了约10%。相比之下,在小剂量降低条件下,该模型也导致图像过度平滑。在定量评估中,CNN去噪方法通过定制CNN模型改善了低剂量CT并防止了过度平滑。