摘要

The proposed spectral CT method solves the constrained one-step spectralCT reconstruction(cOSSCIR) optimization problem to estimate basismaterial maps while modeling the nonlinear X-ray detection process and enforcing convex constraints on the basis map images. In order to apply the optimization-based reconstruction approach to experimental data, the presented method empirically estimates the effective energy-window spectra using a calibration procedure. The amplitudes of the estimated spectra were further optimized as part of the reconstruction process to reduce ring artifacts. A validation approach was developed to select constraint parameters. The proposed spectral CT method was evaluated through simulations and experiments with a photon-counting detector. Basis material map images were successfully reconstructed using the presented empirical spectral modeling and cOSSCIR optimization approach. In simulations, the cOSSCIR approach accurately reconstructed the basismap images (<1% error). In experiments, the proposed method estimated the lowdensity polyethylene region of the basis maps with 0.5% error in the PMMA image and 4% error in the aluminum image. For the Teflon region, the experimental results demonstrated8% and 31% error in the PMMA and aluminum basismaterialmaps, respectively, comparedwith-24% and 126% error without estimation of the effective energy window spectra, with residual errors likely due to insufficient modeling of detector effects. The cOSSCIR algorithm estimated thematerial decompositionangle towithin 1.3 degree error, where, for reference, the difference in angle between PMMA andmuscle tissue is 2.1 degrees. The joint estimation of spectral-response scaling coefficients and basismaterial maps was found to reduce ring artifacts in both a phantom and tissue specimen. The presented validation procedure demonstrated feasibility for the automated determination of algorithm constraint parameters.

  • 出版日期2017-9