人工智能
降噪
模式识别(心理学)
计算机科学
图像质量
威尔科克森符号秩检验
非本地手段
滤波器(信号处理)
计算机视觉
维纳滤波器
卷积神经网络
图像(数学)
数学
图像去噪
统计
曼惠特尼U检验
作者
Jagrati Chaudhary,Ankita Phulia,Anil Pandey,Param D. Sharma,Chetan Patel
出处
期刊:Nuclear Medicine Communications
[Ovid Technologies (Wolters Kluwer)]
日期:2023-06-05
卷期号:44 (8): 682-690
被引量:2
标识
DOI:10.1097/mnm.0000000000001712
摘要
Introduction A DnCNN for image denoising trained with natural images is available in MATLAB. For Tc-99m DMSA images, any loss of clinical details during the denoising process will have serious consequences since denoised image is to be used for diagnosis. The objective of the study was to find whether this pre-trained DnCNN can be used for denoising Tc-99m DMSA images and compare its performance with block matching 3D (BM3D) filter. Materials and methods Two hundred forty-two Tc-99m DMSA images were denoised using BM3D filter (at sigma = 5, 10, 15, 20, and 25) and DnCNN. The original and denoised images were reviewed by two nuclear medicine physicians and also assessed objectively using the image quality metrics: SSIM, FSIM, MultiSSIM, PIQE, Blur, GCF, and Brightness. Wilcoxon signed-rank test was applied to find the statistically significant difference between the value of image quality metrics of the denoised images and the corresponding original images. Results Nuclear medicine physicians observed no loss of clinical information in DnCNN denoised image and superior image quality compared to its original and BM3D denoised images. Edges/boundaries of the scar were found to be well preserved, and doubtful scar became obvious in the denoised image. Objective assessment also showed that the quality of DnCNN denoised images was significantly better than that of original images at P -value <0.0001. Conclusion The pre-trained DnCNN available with MATLAB Deep Learning Toolbox can be used for denoising Tc-99m DMSA images, and the performance of DnCNN was found to be superior in comparison with BM3D filter.
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