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Improved noise reduction in photon-counting detector CT using prior knowledge-aware iterative denoising neural network.
Chang, Shaojie; Marsh, Jeffrey F; Koons, Emily K; Gong, Hao; McCollough, Cynthia H; Leng, Shuai.
Afiliação
  • Chang S; Mayo Clinic, Department of Radiology, Rochester, Minnesota, United States.
  • Marsh JF; Mayo Clinic, Department of Radiology, Rochester, Minnesota, United States.
  • Koons EK; Mayo Clinic, Department of Radiology, Rochester, Minnesota, United States.
  • Gong H; Mayo Clinic, Department of Radiology, Rochester, Minnesota, United States.
  • McCollough CH; Mayo Clinic, Department of Radiology, Rochester, Minnesota, United States.
  • Leng S; Mayo Clinic, Department of Radiology, Rochester, Minnesota, United States.
J Med Imaging (Bellingham) ; 11(Suppl 1): S12804, 2024 Dec.
Article em En | MEDLINE | ID: mdl-38799270
ABSTRACT

Purpose:

We aim to reduce image noise in high-resolution (HR) virtual monoenergetic images (VMIs) from photon-counting detector (PCD) CT scans by developing a prior knowledge-aware iterative denoising neural network (PKAID-Net) that efficiently exploits the unique noise characteristics of VMIs at different energy (keV) levels.

Approach:

PKAID-Net offers two major features first, it utilizes a lower-noise VMI (e.g., 70 keV) as a prior input; second, it iteratively constructs a refined training dataset to improve the neural network's denoising performance. In each iteration, the denoised image from the previous module serves as an updated target image, which is included in the dataset for the subsequent training iteration. Our study includes 10 patient coronary CT angiography exams acquired on a clinical dual-source PCD-CT (NAEOTOM Alpha, Siemens Healthineers). The HR VMIs were reconstructed at 50, 70, and 100 keV, using a sharp vascular kernel (Bv68) and thin (0.6 mm) slice thickness (0.3 mm increment). PKAID-Net's performance was evaluated in terms of image noise, spatial detail preservation, and quantitative accuracy.

Results:

PKAID-Net achieved a noise reduction of 96% compared to filtered back projection and 65% relative to iterative reconstruction, all while preserving spatial and spectral fidelity and maintaining a natural noise texture. The iterative refinement of PCD-CT data during the training process substantially enhanced the robustness of deep learning-based denoising compared to the original method, which resulted in some spatial detail loss.

Conclusions:

The PKAID-Net provides substantial noise reduction while maintaining spatial and spectral fidelity of the HR VMIs from PCD-CT.
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Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Idioma: En Revista: J Med Imaging (Bellingham) Ano de publicação: 2024 Tipo de documento: Article

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Idioma: En Revista: J Med Imaging (Bellingham) Ano de publicação: 2024 Tipo de documento: Article