A deep convolutional neural network using directional wavelets for low-dose X-ray CT reconstruction
Eunhee Kang, Junhong Min, Jong Chul Ye

TL;DR
This paper introduces a novel deep CNN that operates on wavelet coefficients to effectively reduce noise in low-dose X-ray CT images, improving diagnostic reliability while being computationally efficient.
Contribution
It presents the first deep learning architecture specifically designed for low-dose CT reconstruction that leverages directional wavelet transforms and residual learning for superior noise suppression.
Findings
Effectively removes complex CT noise patterns.
Outperforms image domain CNN in noise reduction efficiency.
Achieved second place in AAPM Low-Dose CT Challenge.
Abstract
Due to the potential risk of inducing cancers, radiation dose of X-ray CT should be reduced for routine patient scanning. However, in low-dose X-ray CT, severe artifacts usually occur due to photon starvation, beamhardening, etc, which decrease the reliability of diagnosis. Thus, high quality reconstruction from low-dose X-ray CT data has become one of the important research topics in CT community. Conventional model-based denoising approaches are, however, computationally very expensive, and image domain denoising approaches hardly deal with CT specific noise patterns. To address these issues, we propose an algorithm using a deep convolutional neural network (CNN), which is applied to wavelet transform coefficients of low-dose CT images. Specifically, by using a directional wavelet transform for extracting directional component of artifacts and exploiting the intra- and inter-band…
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