Literature DB >> 35371942

Two-stage deep learning network-based few-view image reconstruction for parallel-beam projection tomography.

Huiyuan Wang1,2, Nan Wang1,2, Hui Xie1,2, Lin Wang3, Wangting Zhou1,2, Defu Yang4, Xu Cao1,2, Shouping Zhu1,2, Jimin Liang5, Xueli Chen1,2.   

Abstract

Background: Projection tomography (PT) is a very important and valuable method for fast volumetric imaging with isotropic spatial resolution. Sparse-view or limited-angle reconstruction-based PT can greatly reduce data acquisition time, lower radiation doses, and simplify sample fixation modes. However, few techniques can currently achieve image reconstruction based on few-view projection data, which is especially important for in vivo PT in living organisms.
Methods: A 2-stage deep learning network (TSDLN)-based framework was proposed for parallel-beam PT reconstructions using few-view projections. The framework is composed of a reconstruction network (R-net) and a correction network (C-net). The R-net is a generative adversarial network (GAN) used to complete image information with direct back-projection (BP) of a sparse signal, bringing the reconstructed image close to reconstruction results obtained from fully projected data. The C-net is a U-net array that denoises the compensation result to obtain a high-quality reconstructed image.
Results: The accuracy and feasibility of the proposed TSDLN-based framework in few-view projection-based reconstruction were first evaluated with simulations, using images from the DeepLesion public dataset. The framework exhibited better reconstruction performance than traditional analytic reconstruction algorithms and iterative algorithms, especially in cases using sparse-view projection images. For example, with as few as two projections, the TSDLN-based framework reconstructed high-quality images very close to the original image, with structural similarities greater than 0.8. By using previously acquired optical PT (OPT) data in the TSDLN-based framework trained on computed tomography (CT) data, we further exemplified the migration capabilities of the TSDLN-based framework. The results showed that when the number of projections was reduced to 5, the contours and distribution information of the samples in question could still be seen in the reconstructed images. Conclusions: The simulations and experimental results showed that the TSDLN-based framework has strong reconstruction abilities using few-view projection images, and has great potential in the application of in vivo PT. 2022 Quantitative Imaging in Medicine and Surgery. All rights reserved.

Entities:  

Keywords:  Projection tomography (PT); deep learning; few-view reconstruction; sparse reconstruction; two-stage network; volumetric imaging

Year:  2022        PMID: 35371942      PMCID: PMC8923870          DOI: 10.21037/qims-21-778

Source DB:  PubMed          Journal:  Quant Imaging Med Surg        ISSN: 2223-4306


  41 in total

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Journal:  Med Phys       Date:  2017-10       Impact factor: 4.071

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Authors:  Tong Tong; Wenhui Huang; Kun Wang; Zicong He; Lin Yin; Xin Yang; Shuixing Zhang; Jie Tian
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Journal:  Nat Commun       Date:  2017-04-24       Impact factor: 14.919

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