Abstract

In this paper, a total variation (TV) minimization strategy is proposed to overcome the problem of sparse spatial resolution and large amounts of noise in low dose positron emission tomography (PET) imaging reconstruction. Two types of objective function were established based on two statistical models of measured PET data, least-square (LS) TV for the Gaussian distribution and Poisson-TV for the Poisson distribution. To efficiently obtain high quality reconstructed images, the alternating direction method (ADM) is used to solve these objective functions. As compared with the iterative shrinkage/thresholding (IST) based algorithms, the proposed ADM can make full use of the TV constraint and its convergence rate is faster. The performance of the proposed approach is validated through comparisons with the expectation-maximization (EM) method using synthetic and experimental biological data. In the comparisons, the results of both LS-TV and Poisson-TV are taken into consideration to find which models are more suitable for PET imaging, in particular low-dose PET. To evaluate the results quantitatively, we computed bias, variance, and the contrast recovery coefficient (CRC) and drew profiles of the reconstructed images produced by the different methods. The results show that both Poisson-TV and LS-TV can provide a high visual quality at a low dose level. The bias and variance of the proposed LS-TV and Poisson-TV methods are 20% to 74% less at all counting levels than those of the EM method. Poisson-TV gives the best performance in terms of high-accuracy reconstruction with the lowest bias and variance as compared to the ground truth (14.3% less bias and 21.9% less variance). In contrast, LS-TV gives the best performance in terms of the high contrast of the reconstruction with the highest CRC.

Highlights

  • Positron emission tomography (PET) is a nuclear image modality that can produce 3D functional images of biological processes inside the human body [1]

  • Assuming piecewise constant behavior of PET images, we introduce total variation (TV) regularization into PET reconstruction

  • This paper presented a TV-constraint reconstruction algorithm for low dose PET image reconstruction

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Summary

Introduction

Positron emission tomography (PET) is a nuclear image modality that can produce 3D functional images of biological processes inside the human body [1]. PET has become an indispensable tool in cardiac/brain research and cancer diagnosis/treatment. The reconstruction of low-dose PET images has remained a challenge because of the large amount. PET Reconstruction and Total Variation patient can be accessed at http://web.eecs.umich. PET Reconstruction and Total Variation patient can be accessed at http://web.eecs.umich. edu/~fessler/result/et/pet,emis/

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