journal article Dec 26, 2018

Cycle‐consistent adversarial denoising network for multiphase coronary CT angiography

Medical Physics Vol. 46 No. 2 pp. 550-562 · Wiley
Abstract
PurposeIn multiphase coronary CT angiography (CTA), a series of CT images are taken at different levels of radiation dose during the examination. Although this reduces the total radiation dose, the image quality during the low‐dose phases is significantly degraded. Recently, deep neural network approaches based on supervised learning technique have demonstrated impressive performance improvement over conventional model‐based iterative methods for low‐dose CT. However, matched low‐ and routine‐dose CT image pairs are difficult to obtain in multiphase CT. To address this problem, we aim at developing a new deep learning framework.MethodWe propose an unsupervised learning technique that can remove the noise of the CT images in the low‐dose phases by learning from the CT images in the routine dose phases. Although a supervised learning approach is not applicable due to the differences in the underlying heart structure in two phases, the images are closely related in two phases, so we propose a cycle‐consistent adversarial denoising network to learn the mapping between the low‐ and high‐dose cardiac phases.ResultsExperimental results showed that the proposed method effectively reduces the noise in the low‐dose CT image while preserving detailed texture and edge information. Moreover, thanks to the cyclic consistency and identity loss, the proposed network does not create any artificial features that are not present in the input images. Visual grading and quality evaluation also confirm that the proposed method provides significant improvement in diagnostic quality.ConclusionsThe proposed network can learn the image distributions from the routine‐dose cardiac phases, which is a big advantage over the existing supervised learning networks that need exactly matched low‐ and routine‐dose CT images. Considering the effectiveness and practicability of the proposed method, we believe that the proposed can be applied for many other CT acquisition protocols.
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Details
Published
Dec 26, 2018
Vol/Issue
46(2)
Pages
550-562
License
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Funding
National Research Council of Science and Technology Award: CAP‐13‐3‐KERI
Ministry of Trade, Industry and Energy
Cite This Article
Eunhee Kang, Hyun Jung Koo, Joon Bum Seo, et al. (2018). Cycle‐consistent adversarial denoising network for multiphase coronary CT angiography. Medical Physics, 46(2), 550-562. https://doi.org/10.1002/mp.13284