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PGNet: Projection generative network for sparse‐view reconstruction of projection‐based magnetic particle imaging

Background Magnetic particle imaging (MPI) is a novel tomographic imaging modality that scans the distribution of superparamagnetic iron oxide nanoparticles. However, it is time‐consuming to scan multiview two‐dimensional (2D) projections for three‐dimensional (3D) reconstruction in projection MPI,...

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Bibliographic Details
Published in:Medical physics (Lancaster) 2023-04, Vol.50 (4), p.2354-2371
Main Authors: Wu, Xiangjun, He, Bingxi, Gao, Pengli, Zhang, Peng, Shang, Yaxin, Zhang, Liwen, Zhong, Jing, Jiang, Jingying, Hui, Hui, Tian, Jie
Format: Article
Language:English
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Summary:Background Magnetic particle imaging (MPI) is a novel tomographic imaging modality that scans the distribution of superparamagnetic iron oxide nanoparticles. However, it is time‐consuming to scan multiview two‐dimensional (2D) projections for three‐dimensional (3D) reconstruction in projection MPI, such as computed tomography (CT). An intuitive idea is to use the sparse‐view projections for reconstruction to improve the temporal resolution. Tremendous progress has been made toward addressing the sparse‐view problem in CT, because of the availability of large data sets. For the novel tomography of MPI, to the best of our knowledge, studies on the sparse‐view problem have not yet been reported. Purpose The acquisition of multiview projections for 3D MPI imaging is time‐consuming. Our goal is to only acquire sparse‐view projections for reconstruction to improve the 3D imaging temporal resolution of projection MPI. Methods We propose to address the sparse‐view problem in projection MPI by generating novel projections. The data set we constructed consists of three parts: simulation data set (including 3000 3D data), four phantoms data, and an in vivo mouse data. The simulation data set is used to train and validate the network, and the phantoms and in vivo mouse data are used to test the network. When the number of novel generated projections meets the requirements of filtered back projection, the streaking artifacts will be absent from MPI tomographic imaging. Specifically, we propose a projection generative network (PGNet), that combines an attention mechanism, adversarial training strategy, and a fusion loss function and can generate novel projections based on sparse‐view real projections. To the best of our knowledge, we are the first to propose a deep learning method to attempt to overcome the sparse‐view problem in projection MPI. Results We compare our method with several sparse‐view methods on phantoms and in vivo mouse data and validate the advantages and effectiveness of our proposed PGNet. Our proposed PGNet enables the 3D imaging temporal resolution of projection MPI to be improved by 6.6 times, while significantly suppressing the streaking artifacts. Conclusion We proposed a deep learning method operated in projection domain to address the sparse‐view reconstruction of MPI, and the data scarcity problem in projection MPI reconstruction is alleviated by constructing a sparse‐dense simulated projection data set. By our proposed method, the number of
ISSN:0094-2405
2473-4209
DOI:10.1002/mp.16048