Self­-supervised denoising of projection data for low-­dose cone-­beam CT

Authors
Choi, KihwanKim, Seung HyoungKim, Sungwon
Issue Date
2023-10
Publisher
American Association of Physicists in Medicine
Citation
Medical Physics, v.50, no.10, pp.6319 - 6333
Abstract
Background Convolutional neural networks (CNNs) have shown promising results in image denoising tasks. While most existing CNN-based methods depend on supervised learning by directly mapping noisy inputs to clean targets, high-quality references are often unavailable for interventional radiology such as cone-beam computed tomography (CBCT). Purpose In this paper, we propose a novel self-supervised learning method that reduces noise in projections acquired by ordinary CBCT scans. Methods With a network that partially blinds input, we are able to train the denoising model by mapping the partially blinded projections to the original projections. Additionally, we incorporate noise-to-noise learning into the self-supervised learning by mapping the adjacent projections to the original projections. With standard image reconstruction methods such as FDK-type algorithms, we can reconstruct high-quality CBCT images from the projections denoised by our projection-domain denoising method. Results In the head phantom study, we measure peak signal-to-noise ratio (PSNR) and structural similarity index measure (SSIM) values of the proposed method along with the other denoising methods and uncorrected low-dose CBCT data for a quantitative comparison both in projection and image domains. The PSNR and SSIM values of our self-supervised denoising approach are 27.08 and 0.839, whereas those of uncorrected CBCT images are 15.68 and 0.103, respectively. In the retrospective study, we assess the quality of interventional patient CBCT images to evaluate the projection-domain and image-domain denoising methods. Both qualitative and quantitative results indicate that our approach can effectively produce high-quality CBCT images with low-dose projections in the absence of duplicate clean or noisy references. Conclusions Our self-supervised learning strategy is capable of restoring anatomical information while efficiently removing noise in CBCT projection data.
Keywords
COMPUTED-TOMOGRAPHY; IMAGE-RECONSTRUCTION; NOISE-REDUCTION; QUALITY; NETWORK; REPAIR; cone-beam CT; dose reduction; model fusion; projection-domain denoising; self-supervised learning
ISSN
0094-2405
URI
https://pubs.kist.re.kr/handle/201004/79817
DOI
10.1002/mp.16421
Appears in Collections:
KIST Article > 2023
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