Image‐domain material decomposition for dual‐energy CT using unsupervised learning with data‐fidelity loss

Author:

Peng Junbo1,Chang Chih‐Wei1,Xie Huiqiao2,Qiu Richard L. J.1,Roper Justin1,Wang Tonghe2,Ghavidel Beth1,Tang Xiangyang3,Yang Xiaofeng1

Affiliation:

1. Department of Radiation Oncology and Winship Cancer Institute Emory University Atlanta Georgia USA

2. Department of Medical Physics Memorial Sloan Kettering Cancer Center New York New York USA

3. Department of Radiology and Imaging Sciences and Winship Cancer Institute Emory University Atlanta Georgia USA

Abstract

AbstractBackgroundDual‐energy computed tomography (DECT) and material decomposition play vital roles in quantitative medical imaging. However, the decomposition process may suffer from significant noise amplification, leading to severely degraded image signal‐to‐noise ratios (SNRs). While existing iterative algorithms perform noise suppression using different image priors, these heuristic image priors cannot accurately represent the features of the target image manifold. Although deep learning‐based decomposition methods have been reported, these methods are in the supervised‐learning framework requiring paired data for training, which is not readily available in clinical settings.PurposeThis work aims to develop an unsupervised‐learning framework with data‐measurement consistency for image‐domain material decomposition in DECT.MethodsThe proposed framework combines iterative decomposition and deep learning‐based image prior in a generative adversarial network (GAN) architecture. In the generator module, a data‐fidelity loss is introduced to enforce the measurement consistency in material decomposition. In the discriminator module, the discriminator is trained to differentiate the low‐noise material‐specific images from the high‐noise images. In this scheme, paired images of DECT and ground‐truth material‐specific images are not required for the model training. Once trained, the generator can perform image‐domain material decomposition with noise suppression in a single step.ResultsIn the simulation studies of head and lung digital phantoms, the proposed method reduced the standard deviation (SD) in decomposed images by 97% and 91% from the values in direct inversion results. It also generated decomposed images with structural similarity index measures (SSIMs) greater than 0.95 against the ground truth. In the clinical head and lung patient studies, the proposed method suppressed the SD by 95% and 93% compared to the decomposed images of matrix inversion.ConclusionsSince the invention of DECT, noise amplification during material decomposition has been one of the biggest challenges, impeding its quantitative use in clinical practice. The proposed method performs accurate material decomposition with efficient noise suppression. Furthermore, the proposed method is within an unsupervised‐learning framework, which does not require paired data for model training and resolves the issue of lack of ground‐truth data in clinical scenarios.

Funder

National Institutes of Health

Publisher

Wiley

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