2023
DOI: 10.1002/mp.16628
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An unsupervised two‐step training framework for low‐dose computed tomography denoising

Abstract: BackgroundAlthough low‐dose computed tomography (CT) imaging has been more widely adopted in clinical practice to reduce radiation exposure to patients, the reconstructed CT images tend to have more noise, which impedes accurate diagnosis. Recently, deep neural networks using convolutional neural networks to reduce noise in the reconstructed low‐dose CT images have shown considerable improvement. However, they need a large number of paired normal‐ and low‐dose CT images to fully train the network via supervise… Show more

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