Literature DB >> 35341300

LU-Net: combining LSTM and U-Net for sinogram synthesis in sparse-view SPECT reconstruction.

Si Li1, Wenquan Ye1, Fenghuan Li1.   

Abstract

Lowering the dose in single-photon emission computed tomography (SPECT) imaging to reduce the radiation damage to patients has become very significant. In SPECT imaging, lower radiation dose can be achieved by reducing the activity of administered radiotracer, which will lead to projection data with either sparse projection views or reduced photon counts per view. Direct reconstruction of sparse-view projection data may lead to severe ray artifacts in the reconstructed image. Many existing works use neural networks to synthesize the projection data of sparse-view to address the issue of ray artifacts. However, these methods rarely consider the sequence feature of projection data along projection view. This work is dedicated to developing a neural network architecture that accounts for the sequence feature of projection data at adjacent view angles. In this study, we propose a network architecture combining Long Short-Term Memory network (LSTM) and U-Net, dubbed LU-Net, to learn the mapping from sparse-view projection data to full-view data. In particular, the LSTM module in the proposed network architecture can learn the sequence feature of projection data at adjacent angles to synthesize the missing views in the sinogram. All projection data used in the numerical experiment are generated by the Monte Carlo simulation software SIMIND. We evenly sample the full-view sinogram and obtain the 1/2-, 1/3- and 1/4-view projection data, respectively, representing three different levels of view sparsity. We explore the performance of the proposed network architecture at the three simulated view levels. Finally, we employ the preconditioned alternating projection algorithm (PAPA) to reconstruct the synthesized projection data. Compared with U-Net and traditional iterative reconstruction method with total variation regularization as well as PAPA solver (TV-PAPA), the proposed network achieves significant improvement in both global and local quality metrics.

Entities:  

Keywords:  LSTM ; SPECT reconstruction ; U-Net ; sinogram synthesis ; sparse-view sinogram

Mesh:

Year:  2022        PMID: 35341300     DOI: 10.3934/mbe.2022200

Source DB:  PubMed          Journal:  Math Biosci Eng        ISSN: 1547-1063            Impact factor:   2.080


  1 in total

1.  Ultra high speed SPECT bone imaging enabled by a deep learning enhancement method: a proof of concept.

Authors:  Boyang Pan; Na Qi; Qingyuan Meng; Jiachen Wang; Siyue Peng; Chengxiao Qi; Nan-Jie Gong; Jun Zhao
Journal:  EJNMMI Phys       Date:  2022-06-13
  1 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.