Robust Denoising of Low-Dose CT Images using Convolutional Neural Networks

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TitreRobust Denoising of Low-Dose CT Images using Convolutional Neural Networks
Type de publicationConference Paper
Year of Publication2019
AuteursTrung NThanh, Hoan TDinh, Trung NLinh, Ha LManh
EditorBao VNQ, Quang PM, Hoa HV
Conference NamePROCEEDINGS OF 2019 6TH NATIONAL FOUNDATION FOR SCIENCE AND TECHNOLOGY DEVELOPMENT (NAFOSTED) CONFERENCE ON INFORMATION AND COMPUTER SCIENCE (NICS)
PublisherNatl Fdn Sci & Technol Dev; IEEE; IEEE Vietnam Sect; IEEE Commun Soc, Vietnam Chapter; Minist Informat & Commun S R; Vintech City; VNPT Technol; VINA OFC; VKX Co Ltd; POSTEF
Conference Location345 E 47TH ST, NEW YORK, NY 10017 USA
ISBN Number978-1-7281-5163-2
Mots-clésconvolutional neural network, low-dose CT, perception loss
Résumé

X-ray computed tomography (CT) images are widely used in medical diagnosis. A drawback of X-ray CT imaging is that the X-rays are harmful with high-dose. Reducing the X-ray dose can reduce the risks but introduce noise and artifacts in the reconstructed image. This paper presents a method, called FD-VGG for denoising of low-dose CT images. FD-VGG estimates the normal-dose image from the low-dose image and, hence, reduces noise and artifacts. In FD-VGG the loss function is defined by the combination of the mean square error (MSE) and perception loss. FD-VGG was trained on a dataset of 226200 low-dose and normal dose image pairs from 6 patients and evaluated on 100 low-dose images from 2 other patients. The corresponding normal dose images of these testing low-dose images are considered as standard images for quantitative evaluation. Two metrics namely PSNR and SSIM were used for objective evaluation. The experimental results showed that the proposed FD-VGG network was able to denoise low-dose images efficiently, in comparison with two state-of-the-art methods.