IVCVMay 6, 2019

DLIMD: Dictionary Learning based Image-domain Material Decomposition for spectral CT

arXiv:1905.02567v22 citations
Originality Synthesis-oriented
AI Analysis

This work addresses material identification for clinical applications like brain angiography and tumor recognition, but it appears incremental as it builds on existing dictionary learning and constraint techniques.

The authors tackled the problem of improving material decomposition accuracy and image quality in spectral CT by developing a dictionary learning based image-domain method (DLIMD), which was evaluated with physical phantom and preclinical experiments to show enhanced performance.

The potential huge advantage of spectral computed tomography (CT) is its capability to provide accuracy material identification and quantitative tissue information. This can benefit clinical applications, such as brain angiography, early tumor recognition, etc. To achieve more accurate material components with higher material image quality, we develop a dictionary learning based image-domain material decomposition (DLIMD) for spectral CT in this paper. First, we reconstruct spectral CT image from projections and calculate material coefficients matrix by selecting uniform regions of basis materials from image reconstruction results. Second, we employ the direct inversion (DI) method to obtain initial material decomposition results, and a set of image patches are extracted from the mode-1 unfolding of normalized material image tensor to train a united dictionary by the K-SVD technique. Third, the trained dictionary is employed to explore the similarities from decomposed material images by constructing the DLIMD model. Fourth, more constraints (i.e., volume conservation and the bounds of each pixel within material maps) are further integrated into the model to improve the accuracy of material decomposition. Finally, both physical phantom and preclinical experiments are employed to evaluate the performance of the proposed DLIMD in material decomposition accuracy, material image edge preservation and feature recovery.

Foundations

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