4.7 Article

Joint Reconstruction and Spectrum Refinement for Photon-Counting-Detector Spectral CT

期刊

IEEE TRANSACTIONS ON MEDICAL IMAGING
卷 42, 期 9, 页码 2653-2665

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TMI.2023.3261999

关键词

Detectors; Image reconstruction; Computed tomography; Photonics; Optimization; Imaging; Calibration; Spectral CT; photon-counting detector; iterative reconstruction; material decomposition; spectrum estimation

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Photon-counting detector CT (PCD-CT) is a revolutionary technology in the field of CT, with potential benefits in noise reduction, dose reduction, and material-specific imaging. However, inaccuracies in energy threshold calibration can lead to spectrum estimation errors and degrade the accuracy of reconstructions. This paper proposes a joint reconstruction and spectrum refinement algorithm (JoSR) that utilizes non-negative matrix factorization (NMF) to reduce the dimension of unknowns and improve the stability of solutions.
Photon-counting detector CT (PCD-CT) is a revolutionary technology in decades in the field of CT. Its potential benefits in lowering noise, dose reduction, and material-specific imaging enable completely new clinical applications. Spectral reconstruction of basis material maps requires knowledge of the x-ray spectrum and the spectral response calibration of the detector. However, spectrum estimation errors caused by inaccurate energy threshold calibration will degrade the accuracy of the reconstructions. Existing spectrum estimation methods are not adequately modeled for bias in energy threshold position. Besides, directly solving a big number of variables of the pixel-wise effective spectra for PCD is an ill-conditioned problem so that stable solution is hardly achievable. In this paper, we assumed the effective spectra variation across the detector mainly comes from the calibration error in the energy threshold positions as well as the intrinsic threshold distribution. We propose a joint reconstruction and spectrum refinement algorithm (JoSR) that introduces an innovative spectrum model based on non-negative matrix factorization (NMF) to significantly reduce the dimension of unknowns so that makes the problem well-conditioned. The polychromatic spectral imaging model and the basis material decomposition method together form an optimization objective. The proximal regularized block coordinate descent algorithm is adopted to deal with the non-convex optimization problem to ensure convergence. Simulation studies and experiments on a laboratory PCD-CT system validated the proposed JoSR method. The results demonstrate its advantages on image quality and quantitative accuracy over other state-of-the-art methods in the field.

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