Literature DB >> 35512654

A geometry-guided multi-beamlet deep learning technique for CT reconstruction.

Ke Lu1,2, Lei Ren3, Fang-Fang Yin1,2,4.   

Abstract

Purpose. Previous studies have proposed deep-learning techniques to reconstruct CT images from sinograms. However, these techniques employ large fully-connected (FC) layers for projection-to-image domain transformation, producing large models requiring substantial computation power, potentially exceeding the computation memory limit. Our previous work proposed a geometry-guided-deep-learning (GDL) technique for CBCT reconstruction that reduces model size and GPU memory consumption. This study further develops the technique and proposes a novel multi-beamlet deep learning (GMDL) technique of improved performance. The study compares the proposed technique with the FC layer-based deep learning (FCDL) method and the GDL technique through low-dose real-patient CT image reconstruction.Methods. Instead of using a large FC layer, the GMDL technique learns the projection-to-image domain transformation by constructing many small FC layers. In addition to connecting each pixel in the projection domain to beamlet points along the central beamlet in the image domain as GDL does, these smaller FC layers in GMDL connect each pixel to beamlets peripheral to the central beamlet based on the CT projection geometry. We compare ground truth images with low-dose images reconstructed with the GMDL, the FCDL, the GDL, and the conventional FBP methods. The images are quantitatively analyzed in terms of peak-signal-to-noise-ratio (PSNR), structural-similarity-index-measure (SSIM), and root-mean-square-error (RMSE).Results. Compared to other methods, the GMDL reconstructed low-dose CT images show improved image quality in terms of PSNR, SSIM, and RMSE. The optimal number of peripheral beamlets for the GMDL technique is two beamlets on each side of the central beamlet. The model size and memory consumption of the GMDL model is less than 1/100 of the FCDL model.Conclusion. Compared to the FCDL method, the GMDL technique is demonstrated to be able to reconstruct real patient low-dose CT images of improved image quality with significantly reduced model size and GPU memory requirement.
© 2022 IOP Publishing Ltd.

Entities:  

Keywords:  CT; deep learning; fully connected layer; reconstruction

Mesh:

Year:  2022        PMID: 35512654      PMCID: PMC9194758          DOI: 10.1088/2057-1976/ac6d12

Source DB:  PubMed          Journal:  Biomed Phys Eng Express        ISSN: 2057-1976


  15 in total

1.  Image reconstruction and image quality evaluation for a 64-slice CT scanner with z-flying focal spot.

Authors:  T G Flohr; K Stierstorfer; S Ulzheimer; H Bruder; A N Primak; C H McCollough
Journal:  Med Phys       Date:  2005-08       Impact factor: 4.071

2.  Prior image constrained compressed sensing (PICCS): a method to accurately reconstruct dynamic CT images from highly undersampled projection data sets.

Authors:  Guang-Hong Chen; Jie Tang; Shuai Leng
Journal:  Med Phys       Date:  2008-02       Impact factor: 4.071

3.  Image reconstruction by domain-transform manifold learning.

Authors:  Bo Zhu; Jeremiah Z Liu; Stephen F Cauley; Bruce R Rosen; Matthew S Rosen
Journal:  Nature       Date:  2018-03-21       Impact factor: 49.962

4.  Deep Learning Computed Tomography: Learning Projection-Domain Weights From Image Domain in Limited Angle Problems.

Authors:  Tobias Wurfl; Mathis Hoffmann; Vincent Christlein; Katharina Breininger; Yixin Huang; Mathias Unberath; Andreas K Maier
Journal:  IEEE Trans Med Imaging       Date:  2018-06       Impact factor: 10.048

5.  Simultaneous algebraic reconstruction technique (SART): a superior implementation of the art algorithm.

Authors:  A H Andersen; A C Kak
Journal:  Ultrason Imaging       Date:  1984-01       Impact factor: 1.578

6.  Low dose CBCT reconstruction via prior contour based total variation (PCTV) regularization: a feasibility study.

Authors:  Yingxuan Chen; Fang-Fang Yin; Yawei Zhang; You Zhang; Lei Ren
Journal:  Phys Med Biol       Date:  2018-04-19       Impact factor: 3.609

7.  Learning to Reconstruct Computed Tomography Images Directly From Sinogram Data Under A Variety of Data Acquisition Conditions.

Authors:  Yinsheng Li; Ke Li; Chengzhu Zhang; Juan Montoya; Guang-Hong Chen
Journal:  IEEE Trans Med Imaging       Date:  2019-04-11       Impact factor: 10.048

8.  Multi-detector CT imaging: impact of virtual tube current reduction and sparse sampling on detection of vertebral fractures.

Authors:  Nico Sollmann; Kai Mei; Dennis M Hedderich; Christian Maegerlein; Felix K Kopp; Maximilian T Löffler; Claus Zimmer; Ernst J Rummeny; Jan S Kirschke; Thomas Baum; Peter B Noël
Journal:  Eur Radiol       Date:  2019-03-22       Impact factor: 5.315

9.  Low-dose CT image and projection dataset.

Authors:  Taylor R Moen; Baiyu Chen; David R Holmes; Xinhui Duan; Zhicong Yu; Lifeng Yu; Shuai Leng; Joel G Fletcher; Cynthia H McCollough
Journal:  Med Phys       Date:  2020-12-16       Impact factor: 4.071

Review 10.  The evolution of image reconstruction for CT-from filtered back projection to artificial intelligence.

Authors:  Martin J Willemink; Peter B Noël
Journal:  Eur Radiol       Date:  2018-10-30       Impact factor: 5.315

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