Li Qing, Li Runrui, Li Saize, Wang Tao, Cheng Yubin, Zhang Shuming, Wu Wei, Zhao Juanjuan, Qiang Yan, Wang Long
College of Information and Computer, Taiyuan University of Technology, Taiyuan, China.
Department of Clinical Laboratory, Affiliated People's Hospital of Shanxi Medical University, Shanxi Provincial People's Hospital, Taiyuan, China.
Med Phys. 2024 Feb;51(2):1289-1312. doi: 10.1002/mp.16331. Epub 2023 Mar 10.
Reducing the radiation dose from computed tomography (CT) can significantly reduce the radiation risk to patients. However, low-dose CT (LDCT) suffers from severe and complex noise interference that affects subsequent diagnosis and analysis. Recently, deep learning-based methods have shown superior performance in LDCT image-denoising tasks. However, most methods require many normal-dose and low-dose CT image pairs, which are difficult to obtain in clinical applications. Unsupervised methods, on the other hand, are more general.
Deep learning methods based on GAN networks have been widely used for unsupervised LDCT denoising, but the additional memory requirements of the model also hinder its further clinical application. To this end, we propose a simpler multi-stage denoising framework trained using unpaired data, the progressive cyclical convolutional neural network (PCCNN), which can remove the noise from CT images in latent space.
Our proposed PCCNN introduces a noise transfer model that transfers noise from LDCT to normal-dose CT (NDCT), denoised CT images generated from unpaired CT images, and noisy CT images. The denoising framework also contains a progressive module that effectively removes noise through multi-stage wavelet transforms without sacrificing high-frequency components such as edges and details.
Compared with seven LDCT denoising algorithms, we perform a quantitative and qualitative evaluation of the experimental results and perform ablation experiments on each network module and loss function. On the AAPM dataset, compared with the contrasted unsupervised methods, our denoising framework has excellent denoising performance increasing the peak signal-to-noise ratio (PSNR) from 29.622 to 30.671, and the structural similarity index (SSIM) was increased from 0.8544 to 0.9199. The PCCNN denoising results were relatively optimal and statistically significant. In the qualitative result comparison, PCCNN without introducing additional blurring and artifacts, the resulting image has higher resolution and complete detail preservation, and the overall structural texture of the image is closer to NDCT. In visual assessments, PCCNN achieves a relatively balanced result in noise suppression, contrast retention, and lesion discrimination.
Extensive experimental validation shows that our scheme achieves reconstruction results comparable to supervised learning methods and has performed well in image quality and medical diagnostic acceptability.
降低计算机断层扫描(CT)的辐射剂量可显著降低患者的辐射风险。然而,低剂量CT(LDCT)存在严重且复杂的噪声干扰,影响后续诊断和分析。近年来,基于深度学习的方法在LDCT图像去噪任务中表现出卓越性能。然而,大多数方法需要许多正常剂量和低剂量CT图像对,在临床应用中难以获取。另一方面,无监督方法更为通用。
基于生成对抗网络(GAN)的深度学习方法已广泛用于无监督LDCT去噪,但模型额外的内存需求也阻碍了其进一步的临床应用。为此,我们提出一种使用未配对数据训练的更简单的多阶段去噪框架,即渐进循环卷积神经网络(PCCNN),它可以在潜在空间中去除CT图像的噪声。
我们提出的PCCNN引入了一种噪声转移模型,该模型将噪声从LDCT转移到正常剂量CT(NDCT)、从未配对CT图像生成的去噪CT图像以及有噪声的CT图像。去噪框架还包含一个渐进模块,该模块通过多阶段小波变换有效去除噪声,而不牺牲边缘和细节等高频率成分。
与七种LDCT去噪算法相比,我们对实验结果进行了定量和定性评估,并对每个网络模块和损失函数进行了消融实验。在AAPM数据集上,与对比的无监督方法相比,我们的去噪框架具有出色的去噪性能,将峰值信噪比(PSNR)从29.622提高到30.671,结构相似性指数(SSIM)从0.8544提高到0.9199。PCCNN的去噪结果相对最优且具有统计学意义。在定性结果比较中,PCCNN没有引入额外的模糊和伪影,生成的图像具有更高的分辨率和完整的细节保留,并且图像的整体结构纹理更接近NDCT。在视觉评估中,PCCNN在噪声抑制、对比度保留和病变辨别方面取得了相对平衡的结果。
广泛的实验验证表明,我们的方案实现了与监督学习方法相当的重建结果,并且在图像质量和医学诊断可接受性方面表现良好。