Abstract

In clinical medical applications, sparse-view computed tomography (CT) imaging is an effective method for reducing radiation doses. The iterative reconstruction method is usually adopted for sparse-view CT. In the process of optimizing the iterative model, the approach of directly solving the quadratic penalty function of the objective function can be expected to perform poorly. Compared with the direct solution method, the alternating direction method of multipliers (ADMM) algorithm can avoid the ill-posed problem associated with the quadratic penalty function. However, the regularization items, sparsity transform, and parameters in the traditional ADMM iterative model need to be manually adjusted. In this paper, we propose a data-driven ADMM reconstruction method that can automatically optimize the above terms that are difficult to choose within an iterative framework. The main contribution of this paper is that a modified U-net represents the sparse transformation, and the prior information and related parameters are automatically trained by the network. Based on a comparison with other state-of-the-art reconstruction algorithms, the qualitative and quantitative results show the effectiveness of our method for sparse-view CT image reconstruction. The experimental results show that the proposed method performs well in streak artifact elimination and detail structure preservation. The proposed network can deal with a wide range of noise levels and has exceptional performance in low-dose reconstruction tasks.

Highlights

  • Computed tomography (CT) is a nondestructive testing method that is widely used in medical, industrial, and material applications as well as other fields

  • When I0 is greater than 5 × 105, our network can effectively eliminate noise

  • In order to overcome the difficulty with choosing prior information and parameters in the model-driven reconstruction method, an efficient reconstruction network based on the alternating direction method of multipliers (ADMM) for sparse-view CT images is proposed

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Summary

Introduction

Computed tomography (CT) is a nondestructive testing method that is widely used in medical, industrial, and material applications as well as other fields. With its variety of applications in clinical medicine, the problem of X-ray radiation has aroused broad public concern [1,2]. Following the as low as reasonably achievable (ALARA) guidelines, researchers have aimed to use all kinds of techniques to reduce radiation doses while maintaining image quality [3]. There are two strategies for radiation dose reduction. One strategy is to minimize the X-ray flux by reducing the tube current and exposure time of the X-ray tube [4]. The other approach is to reduce the number of projection views [5]. Sparse-view CT is an effective method for realizing low-dose scanning. We focus on methods for obtaining high-quality images from sparse-view CT

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