2023
DOI: 10.1002/acm2.14113
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Self‐adaption and texture generation: A hybrid loss function for low‐dose CT denoising

Abstract: BackgroundDeep learning has been successfully applied to low‐dose CT (LDCT) denoising. But the training of the model is very dependent on an appropriate loss function. Existing denoising models often use per‐pixel loss, including mean abs error (MAE) and mean square error (MSE). This ignores the difference in denoising difficulty between different regions of the CT images and leads to the loss of large texture information in the generated image.PurposeIn this paper, we propose a new hybrid loss function that a… Show more

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“…den Boer applied a powerful semi-automatic depiction workflow for denoising diffusion-weighted magnetic resonance imaging, featuring a stack of Residual AGC Attention Blocks with short skip connections as a feature extractor for recovering underlying subtle details and textures in images 13 . Wang utilized a hybrid loss function composed of Weighted Patch Loss (WPLoss) and High-Frequency Information Loss (HFLoss), considering the inclusion of texture details in high-frequency information 14 . These algorithms demonstrate their respective advantages and adaptability in different medical application scenarios, providing diverse solutions for medical image denoising.However, despite the progress demonstrated by these solutions, there are some shortcomings.…”
Section: Research Statusmentioning
confidence: 99%
“…den Boer applied a powerful semi-automatic depiction workflow for denoising diffusion-weighted magnetic resonance imaging, featuring a stack of Residual AGC Attention Blocks with short skip connections as a feature extractor for recovering underlying subtle details and textures in images 13 . Wang utilized a hybrid loss function composed of Weighted Patch Loss (WPLoss) and High-Frequency Information Loss (HFLoss), considering the inclusion of texture details in high-frequency information 14 . These algorithms demonstrate their respective advantages and adaptability in different medical application scenarios, providing diverse solutions for medical image denoising.However, despite the progress demonstrated by these solutions, there are some shortcomings.…”
Section: Research Statusmentioning
confidence: 99%