An Effective COVID-19 CT Image Denoising Method Based on a Deep Convolutional Neural Network

Xiaojing Fan, Hanyue Liu, Chunsheng Zhang, Zichao Wang, Qingming Lin, Zhanjiang Lan, Mingyang Jiang, Jie Lian, Xueyan Chen
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Abstract

Faced with the global threat posed by SARS-CoV-2 (COVID-19), low-dose Computed tomography (LDCT), as the primary diagnostic tool, is often accompanied by high levels of noise. And this can easily interfere with the radiologist's assessment. Convolutional Neural Networks (CNN), as a method of deep learning, have been shown to have excellent effects in image denoising. Modified convolutional neural network algorithm to train the denoising model. Make the model to extract the highlighted features of the lesion region better and ensure its effectiveness in removing noise from COVID-19 lung CT images, preserving more important detail information of the images and reducing the adverse effects of denoising. We propose a CNN-based deformable convolutional denoising neural network (DCDNet). By combining deformable convolution methods with residual learning on the basis of CNN structure, more image detail features are retained in CT image denoising. According to the noise reduction evaluation index of PSNR, SSIM and RMSE, DCDNet shows excellent denoising performance for COVID-19 CT images. From the visual effect of denoising, DCDNet can effectively remove image noise and preserve more detailed features of lung lesions. The experimental results indicate that the DCDNet-trained model is more suitable for image denoising of COVID-19 than traditional image denoising algorithms under the same training set.
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基于深度卷积神经网络的新型冠状病毒CT图像去噪方法
面对严重急性呼吸系统综合征冠状病毒2型(新冠肺炎)造成的全球威胁,低剂量计算机断层扫描(LDCT)作为主要诊断工具,通常伴随着高水平的噪音。这很容易干扰放射科医生的评估。卷积神经网络(CNN)作为一种深度学习方法,已被证明在图像去噪方面具有良好的效果。改进卷积神经网络算法训练去噪模型。使模型更好地提取病变区域的突出特征,确保其在去除新冠肺炎肺部CT图像噪声方面的有效性,保留图像更重要的细节信息,减少去噪的不利影响。我们提出了一种基于CNN的可变形卷积去噪神经网络(DCDNet)。通过将可变形卷积方法与基于CNN结构的残差学习相结合,在CT图像去噪中保留了更多的图像细节特征。根据PSNR、SSIM和RMSE的降噪评价指标,DCDNet对新冠肺炎CT图像显示出良好的去噪性能。从去噪的视觉效果来看,DCDNet可以有效地去除图像噪声,保留肺部病变更详细的特征。实验结果表明,在相同的训练集下,DCDNet训练模型比传统的图像去噪算法更适合于新冠肺炎的图像去噪声。
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来源期刊
Recent Advances in Computer Science and Communications
Recent Advances in Computer Science and Communications Computer Science-Computer Science (all)
CiteScore
2.50
自引率
0.00%
发文量
142
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