Title :
Multi-Material Decomposition Using Statistical Image Reconstruction for Spectral CT
Author :
Yong Long ; Fessler, Jeffrey A.
Author_Institution :
Univ. of Michigan-SJTU Joint Inst., Shanghai Jiao Tong Univ., Shanghai, China
Abstract :
Spectral computed tomography (CT) provides information on material characterization and quantification because of its ability to separate different basis materials. Dual-energy (DE) CT provides two sets of measurements at two different source energies. In principle, two materials can be accurately decomposed from DECT measurements. However, many clinical and industrial applications require three or more material images. For triple-material decomposition, a third constraint, such as volume conservation, mass conservation or both, is required to solve three sets of unknowns from two sets of measurements. The recently proposed flexible image-domain (ID) multi-material decomposition) method assumes each pixel contains at most three materials out of several possible materials and decomposes a mixture pixel by pixel. We propose a penalized-likelihood (PL) method with edge-preserving regularizers for each material to reconstruct multi-material images using a similar constraint from sinogram data. We develop an optimization transfer method with a series of pixel-wise separable quadratic surrogate (PWSQS) functions to monotonically decrease the complicated PL cost function. The PWSQS algorithm separates pixels to allow simultaneous update of all pixels, but keeps the basis materials coupled to allow faster convergence rate than our previous proposed material- and pixel-wise SQS algorithms. Comparing with the ID method using 2-D fan-beam simulations, the PL method greatly reduced noise, streak and cross-talk artifacts in the reconstructed basis component images, and achieved much smaller root mean square errors.
Keywords :
computerised tomography; image reconstruction; mean square error methods; medical image processing; optimisation; 2D fan-beam simulations; DECT; PWSQS; computed tomography; cross-talk artifacts; edge-preserving regularizers; flexible image-domain method; mass conservation; material-wise SQS algorithms; multimaterial decomposition; noise reduction; optimization transfer method; penalized-likelihood method; pixel-wise SQS algorithms; pixel-wise separable quadratic surrogate functions; root mean square errors; sinogram data; spectral CT; statistical image reconstruction; streak artifacts; triple-material decomposition; volume conservation; Attenuation; Computed tomography; Cost function; Image reconstruction; Materials; Vectors; Dual-energy computed tomography (CT); multi-material decomposition; optimization transfer; spectral CT; statistical image reconstruction;
Journal_Title :
Medical Imaging, IEEE Transactions on
DOI :
10.1109/TMI.2014.2320284