TL;DR
This paper introduces a comprehensive deep learning framework for low dose CT denoising, incorporating a novel convolutional module, a noise-aware loss function, and a self-attention based discriminator, achieving superior results.
Contribution
The study presents three novel components: a neighborhood similarity convolutional module, a noise-aware MSE loss, and a self-attention based discriminator, advancing low dose CT denoising techniques.
Findings
Significant improvement over existing methods on NIH-AAPM-Mayo dataset.
Enhanced preservation of structural details in denoised images.
Effective handling of non-stationary noise in low dose CT images.
Abstract
The explosive rise of the use of Computer tomography (CT) imaging in medical practice has heightened public concern over the patient's associated radiation dose. However, reducing the radiation dose leads to increased noise and artifacts, which adversely degrades the scan's interpretability. Consequently, an advanced image reconstruction algorithm to improve the diagnostic performance of low dose ct arose as the primary concern among the researchers, which is challenging due to the ill-posedness of the problem. In recent times, the deep learning-based technique has emerged as a dominant method for low dose CT(LDCT) denoising. However, some common bottleneck still exists, which hinders deep learning-based techniques from furnishing the best performance. In this study, we attempted to mitigate these problems with three novel accretions. First, we propose a novel convolutional module as…
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Taxonomy
MethodsAttentive Walk-Aggregating Graph Neural Network
