Motion artifact correction in cardiac CT using cross-phase temporospatial information and synergistic attention gate and spatial transformer sub-networks

Author:

Gong Hao,Ahmed Zaki,Chang ShaojieORCID,Koons Emily K,Thorne Jamison E,Rajiah Prabhakar,Foley Thomas A,Fletcher Joel G,McCollough Cynthia H,Leng Shuai

Abstract

Abstract Objectives. To improve quality of coronary CT angiography (CCTA) images using a generalizable motion-correction algorithm. Approach. A neural network with attention gate and spatial transformer (ATOM) was developed to correct coronary motion. Phantom and patient CCTA images (39 males, 32 females, age range 19–92, scan date 02/2020 to 10/2021) retrospectively collected from dual-source CT were used to create training, development, and testing sets corresponding to 140- and 75 ms temporal resolution, with 75 ms images as labels. To test generalizability, ATOM was deployed for locally adaptive motion-correction in both 140- and 75 ms patient images. Objective metrics were used to assess motion-corrupted and corrected phantom and patient images, including structural-similarity-index (SSIM), dice-similarity-coefficient (DSC), peak-signal-noise-ratio (PSNR), and normalized root-mean-square-error (NRMSE). In objective quality assessment, ATOM was compared with several baseline networks, including U-net, U-net plus attention gate, U-net plus spatial transformer, VDSR, and ResNet. Two cardiac radiologists independently interpreted motion-corrupted and -corrected images at 75 and 140 ms in a blinded fashion and ranked diagnostic image quality (worst to best: 1–4, no ties). Main results. ATOM improved quality metrics (p < 0.05) before/after correction: in phantom, SSIM 0.87/0.95, DSC 0.85/0.93, PSNR 19.4/22.5, NRMSE 0.38/0.27; in patient images, SSIM 0.82/0.88, DSC 0.88/0.90, PSNR 30.0/32.0, NRMSE 0.16/0.12. ATOM provided more consistent improvement of objective image quality, compared to the presented baseline networks. The motion-corrected images received better ranks than un-corrected at the same temporal resolution (p < 0.05): 140 ms images 1.65/2.25, and 75 ms images 3.1/3.2. The motion-corrected 75 ms images received the best rank in 65% of testing cases. A fair-to-good inter-reader agreement was observed (Kappa score 0.58). Significance. ATOM reduces motion artifacts, improving visualization of coronary arteries. This algorithm can be used to virtually improve temporal resolution in both single- and dual-source CT.

Funder

National Institutes of Health

Publisher

IOP Publishing

Subject

Radiology, Nuclear Medicine and imaging,Radiological and Ultrasound Technology

Reference27 articles.

1. Quantitative assessment of motion effects in dual-source dual-energy CT and dual-source photon-counting detector CT;Ahmed,2022

2. Improved visualization of the coronary arteries using motion correction during vasodilator stress CT myocardial perfusion imaging;Balaney;Eur. J. Radiol.,2019

3. Dual-source CT: effect of heart rate, heart rate variability, and calcification on image quality and diagnostic accuracy;Brodoefel;Radiology,2008

4. Multiple Cause of Death on CDC WONDER Online Database 1999-2020;Centers for Disease Control and Prevention (CDC),2021

5. Motion Artifact Recognition and Quantification in Coronary CT Angiography using Convolutional Neural Networks;Elss,2018a

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