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Journal ArticleDOI

A unified statistical framework for material decomposition using multienergy photon counting x-ray detectors

TLDR
The proposed statistical framework of PCXD has been successfully applied for the energy optimization and decomposition of three material in a mammographic environment and experimental results using the physical breast phantom and ex vivo specimen support the practicality of the proposed algorithm.
Abstract
Purpose: Material decomposition using multienergy photon counting x-ray detectors (PCXD) has been an active research area over the past few years. Even with some success, the problem of optimal energy selection and three material decomposition including malignant tissue is still on going research topic, and more systematic studies are required. This paper aims to address this in a unified statistical framework in a mammographic environment. Methods: A unified statistical framework for energy level optimization and decomposition of three materials is proposed. In particular, an energy level optimization algorithm is derived using the theory of the minimum variance unbiased estimator, and an iterative algorithm is proposed for material composition as well as system parameter estimation under the unified statistical estimation framework. To verify the performance of the proposed algorithm, the authors performed simulation studies as well as real experiments using physical breast phantom andex vivo breast specimen. Quantitative comparisons using various performance measures were conducted, and qualitative performance evaluations for ex vivo breast specimen were also performed by comparing the ground-truth malignant tissue areas identified by radiologists. Results: Both simulation and real experiments confirmed that the optimized energy bins by the proposed method allow better material decomposition quality. Moreover, for the specimen thickness estimation errors up to 2 mm, the proposed method provides good reconstruction results in both simulation and realex vivo breast phantom experiments compared to existing methods. Conclusions: The proposed statistical framework of PCXD has been successfully applied for the energy optimization and decomposition of three material in a mammographic environment. Experimental results using the physical breast phantom andex vivo specimen support the practicality of the proposed algorithm.

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Citations
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Journal ArticleDOI

Sparse-View Spectral CT Reconstruction Using Spectral Patch-Based Low-Rank Penalty

TL;DR: This paper proposes a penalized maximum likelihood method using spectral patch-based low-rank penalty, which exploits the self-similarity of patches that are collected at the same position in spectral images and improves spectral images both qualitatively and quantitatively.
Journal ArticleDOI

Material decomposition with prior knowledge aware iterative denoising (MD-PKAID).

TL;DR: The phantom results show that the proposed MD-PKAID can reduce the root-mean-square-error of basis material quantification by 75% compared to the standard material decomposition based on matrix inversion, while preserving structural details and image resolution in the material-specific images.
Journal ArticleDOI

Estimation of basis line-integrals in a spectral distortion-modeled photon counting detector using low-order polynomial approximation of x-ray transmittance

TL;DR: A computationally efficient three-step estimator for calibration-based estimators using a low-order polynomial approximation of x-ray transmittance is proposed and it is proved that it converges to the unbiased solution under practical assumptions.
Dissertation

Méthodes statistiques de reconstruction tomographique spectrale pour des systèmes à détection spectrométrique de rayons X

TL;DR: In this article, a nouvelle methode reconstruction statistique appelee MLTR-ONE-STEP is presented, which permet de reconstruire the variabilite energetique du coefficient lineaire d’attenuation de l’objet etudie.
Patent

Joint estimation of tissue types and linear attenuation coefficients for computed tomography

TL;DR: In this paper, a new joint estimation framework employing MAP estimation based on pixel-based latent variables for tissue types was proposed, which combines the geometrical information described by latent MRF, statistical relation between tissue types and P-C coefficients, and Poisson noise models of PCD data, and makes possible the continuous Baysian estimation from detected photon counts.
References
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Journal ArticleDOI

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