2016
DOI: 10.1109/tmi.2016.2587661
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TICMR: Total Image Constrained Material Reconstruction via Nonlocal Total Variation Regularization for Spectral CT

Abstract: This work develops a material reconstruction method for spectral CT, namely Total Image Constrained Material Reconstruction (TICMR), to maximize the utility of projection data in terms of both spectral information and high signal-to-noise ratio (SNR). This is motivated by the following fact: when viewed as a spectrally-integrated measurement, the projection data can be used to reconstruct a total image without spectral information, which however has a relatively high SNR; when viewed as a spectrally-resolved m… Show more

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Cited by 46 publications
(40 citation statements)
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“…A natural idea is to use spectral CT that acquires multienergy measurements to achieve multiple basis material images. However, spectral CT requires either multiple scans which result in high radiation to patients and need complex processing (e.g., registration) of CT images at different energies, or specialized scanners which are expensive and not available clinically yet, such as energy‐sensitive photon‐counting detectors …”
Section: Introductionmentioning
confidence: 99%
“…A natural idea is to use spectral CT that acquires multienergy measurements to achieve multiple basis material images. However, spectral CT requires either multiple scans which result in high radiation to patients and need complex processing (e.g., registration) of CT images at different energies, or specialized scanners which are expensive and not available clinically yet, such as energy‐sensitive photon‐counting detectors …”
Section: Introductionmentioning
confidence: 99%
“…Because of the complex factors affecting photon-counting detection, experimental studies are required to effectively evaluate reconstruction algorithms. Several iterative spectral CT reconstruction approaches have been recently investigated on experimental data, for example demonstrating the potential to reduce noise [8], [21], perform material decomposition [22], and improve contrast-to-noise ratio [23]. To our knowledge, this paper presents the first experimental implementation of a spectral CT iterative algorithm that both models the nonlinear polyenergetic X-ray transmission while enforcing convex constraints on the basis maps.…”
Section: Introductionmentioning
confidence: 99%
“…Up to now, many considerable efforts to suppress noise-induced artifacts in DECT images and material-decomposed images have been reported (Rutherford et al 1976, Kalender et al 1988, Warp et al 2003, Leng et al 2011, Zeng et al 2016a, Niu et al 2014, Clark et al 2014, Dong et al 2014, Sukovic et al 2000, Petrongolo et al 2015, Zhang et al 2014, Long et al 2014, Zhang et al 2016a, Zhang et al 2016b, Szczykutowicz et al 2011, Liu et al 2016). Among them, projection or image domain denoising approaches were proposed to improve low-dose DECT images quality (Rutherford et al 1976, Kalender et al 1988, Warp et al 2003, Leng et al 2011, Zeng et al 2016a, Niu et al 2014, Clark et al 2014).…”
Section: Introductionmentioning
confidence: 99%
“…Although these approaches can suppress the noise to some extent, they often result in spatial resolution loss because the noise in DECT images does not obey a uniform distribution. By better modeling the projection data and the image geometry in the DECT imaging, statistical iterative reconstruction (SIR) algorithms have shown to be more robust than FBP algorithm in regard to the presence of noise-induced artifacts (Dong et al 2014, Sukovic et al 2000, Petrongolo et al 2015, Zhang et al 2014, Long et al 2014, Zhang et al 2016a, Szczykutowicz et al 2011, Liu et al 2016). Based on the maximum a posterior (MAP) estimation criteria, the SIR algorithms can be mathematically formulated with a cost function.…”
Section: Introductionmentioning
confidence: 99%