Literature DB >> 35677468

Improving coronary artery imaging in single source CT with cardiac motion correction using attention and spatial transformer based neural networks.

Hao Gong1, Zaki Ahmed1, Thorne E Jamison1, Joel G Fletcher1, Cynthia H McCollough1, Shuai Leng1.   

Abstract

Motion artifact is a major challenge in cardiac CT which hampers accurate delineation of key anatomic (e.g. coronary lumen) and pathological features (e.g. stenosis). Conventional motion correction techniques are limited on patients with high / irregular heart rate, due to simplified modeling of CT systems and cardiac motion. Emerging deep learning based cardiac motion correction techniques have demonstrated the potential of further quality improvement. Yet, many methods require CT projection data or advanced motion simulation tools that are not readily available. We aim to develop an image-domain motion-correction method, using convolutional neural network (CNN) integrated with customized attention and spatial transformer techniques. Forty cardiac CT exams acquired from a clinical dual-source CT system were retrospectively collected to generate training (n=26) and testing (n=14) sets. Dual-source data uniquely allow image reconstruction with different temporal resolutions from the same patient scan. Slow temporal resolution (140ms; equivalent to single-source CT (SSCT) half scan) and fast temporal resolution (75ms; dual source) images were reconstructed to generate paired samples of motion-corrupted and reference images. The combinations of 2 training-inference strategies and 3 CNNs were evaluated: strategy #1 - whole-heart images in training / inference; strategy #2 - vessel patches in training / inference; CNN #1 - attention only; CNN #2 - spatial-transformer (STN) only; CNN #3 - attention & STN synergy. Testing data showed that CNN #3 with strategy #2 provided relatively better performance: improving vessel delineation, increasing structural similarity index from 0.85 to 0.91, and reducing mean CT number error of lumen by 71.0%. Our method could improve the image quality in cardiac exams with SSCT.

Entities:  

Keywords:  Cardiac Computed Tomography; attention; deep learning; motion artifact; spatial transformer

Year:  2022        PMID: 35677468      PMCID: PMC9172910          DOI: 10.1117/12.2611794

Source DB:  PubMed          Journal:  Proc SPIE Int Soc Opt Eng        ISSN: 0277-786X


  6 in total

1.  Motion estimation and correction in cardiac CT angiography images using convolutional neural networks.

Authors:  T Lossau Née Elss; H Nickisch; T Wissel; R Bippus; H Schmitt; M Morlock; M Grass
Journal:  Comput Med Imaging Graph       Date:  2019-06-14       Impact factor: 4.790

2.  Deep-learning lesion and noise insertion for virtual clinical trial in Chest CT.

Authors:  Hao Gong; Jeffrey F Marsh; Jamison Thorne; Shuai Leng; Cynthia H McCollough; Joel G Fletcher; Lifeng Yu
Journal:  Proc SPIE Int Soc Opt Eng       Date:  2021-02-15

3.  Deep-learning-based direct inversion for material decomposition.

Authors:  Hao Gong; Shengzhen Tao; Kishore Rajendran; Wei Zhou; Cynthia H McCollough; Shuai Leng
Journal:  Med Phys       Date:  2020-10-30       Impact factor: 4.071

4.  Deep-learning-based direct synthesis of low-energy virtual monoenergetic images with multi-energy CT.

Authors:  Hao Gong; Jeffrey F Marsh; Karen N D'Souza; Nathan R Huber; Kishore Rajendran; Joel G Fletcher; Cynthia H McCollough; Shuai Leng
Journal:  J Med Imaging (Bellingham)       Date:  2021-04-19

5.  Attention gated networks: Learning to leverage salient regions in medical images.

Authors:  Jo Schlemper; Ozan Oktay; Michiel Schaap; Mattias Heinrich; Bernhard Kainz; Ben Glocker; Daniel Rueckert
Journal:  Med Image Anal       Date:  2019-02-05       Impact factor: 8.545

  6 in total

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