» Articles » PMID: 38159238

Multi-energy CT Material Decomposition Using Graph Model Improved CNN

Overview
Publisher Springer
Date 2023 Dec 30
PMID 38159238
Authors
Affiliations
Soon will be listed here.
Abstract

In spectral CT imaging, the coefficient image of the basis material obtained by the material decomposition technique can estimate the tissue composition, and its accuracy directly affects the disease diagnosis. Although the precision of material decomposition is increased by employing convolutional neural networks (CNN), extracting the non-local features from the CT image is restricted using the traditional CNN convolution operator. A graph model built by multi-scale non-local self-similar patterns is introduced into multi-material decomposition (MMD). We proposed a novel MMD method based on graph edge-conditioned convolution U-net (GECCU-net) to enhance material image quality. The GECCU-net focuses on developing a multi-scale encoder. At the network coding stage, three paths are applied to capture comprehensive image features. The local and non-local feature aggregation (LNFA) blocks are designed to integrate the local and non-local features from different paths. The graph edge-conditioned convolution based on non-Euclidean space excavates the non-local features. A hybrid loss function is defined to accommodate multi-scale input images and avoid over-smoothing of results. The proposed network is compared quantitatively with base CNN models on the simulated and real datasets. The material images generated by GECCU-net have less noise and artifacts while retaining more information on tissue. The Structural SIMilarity (SSIM) of the obtained abdomen and chest water maps reaches 0.9976 and 0.9990, respectively, and the RMSE reduces to 0.1218 and 0.4903 g/cm. The proposed method can improve MMD performance and has potential applications.

Citing Articles

Enhancing photon-counting computed tomography reconstruction via subspace dictionary learning and spatial sparsity regularization.

Xing Q, Cai A, Zheng Z, Li L, Yan B Quant Imaging Med Surg. 2025; 15(1):581-607.

PMID: 39838997 PMC: 11744124. DOI: 10.21037/qims-24-1248.


What to Expect (and What Not) from Dual-Energy CT Imaging Now and in the Future?.

Garcia-Figueiras R, Oleaga L, Broncano J, Tardaguila G, Fernandez-Perez G, Vano E J Imaging. 2024; 10(7).

PMID: 39057725 PMC: 11278514. DOI: 10.3390/jimaging10070154.

References
1.
Franco P, Spasiano C, Maino C, De Ponti E, Ragusi M, Giandola T . Principles and Applications of Dual-Layer Spectral CT in Gastrointestinal Imaging. Diagnostics (Basel). 2023; 13(10). PMC: 10217357. DOI: 10.3390/diagnostics13101740. View

2.
Geng M, Tian Z, Jiang Z, You Y, Feng X, Xia Y . PMS-GAN: Parallel Multi-Stream Generative Adversarial Network for Multi-Material Decomposition in Spectral Computed Tomography. IEEE Trans Med Imaging. 2020; 40(2):571-584. DOI: 10.1109/TMI.2020.3031617. View

3.
Kim B, Shim H, Baek J . A streak artifact reduction algorithm in sparse-view CT using a self-supervised neural representation. Med Phys. 2022; 49(12):7497-7515. DOI: 10.1002/mp.15885. View

4.
Niu S, Zhang Y, Zhong Y, Liu G, Lu S, Zhang X . Iterative reconstruction for photon-counting CT using prior image constrained total generalized variation. Comput Biol Med. 2018; 103:167-182. PMC: 6279481. DOI: 10.1016/j.compbiomed.2018.10.022. View

5.
Yang Q, Yan P, Zhang Y, Yu H, Shi Y, Mou X . Low-Dose CT Image Denoising Using a Generative Adversarial Network With Wasserstein Distance and Perceptual Loss. IEEE Trans Med Imaging. 2018; 37(6):1348-1357. PMC: 6021013. DOI: 10.1109/TMI.2018.2827462. View