From the Department of Radiology, West China Hospital of Sichuan University, Chengdu.
United Imaging Healthcare, Shanghai, China.
J Comput Assist Tomogr. 2023;47(6):898-905. doi: 10.1097/RCT.0000000000001504. Epub 2023 Jul 22.
This study aimed to evaluate the clinical performance of a deep learning-based motion correction algorithm (MCA) in projection domain for coronary computed tomography angiography (CCTA).
A total of 192 patients who underwent CCTA examinations were included and divided into 2 groups based on the average heart rate (HR): group 1, 82 patients with HR of <75 beats per minute; group 2, 110 patients with HR of ≥75 beats per minute. The CCTA images were reconstructed with and without MCA. The subjective image quality was graded in terms of vessel visualization, sharpness, diagnostic confidence, and overall image quality using a 5-point scale, where cases with all scores of ≥3 were deemed interpretable. Objective image quality was measured through signal-to-noise ratio and contrast-to-noise ratio in regions relative to the vessels. The image quality scores for 2 reconstructions and effective dose between 2 groups were compared.
The mean effective dose was similar between 2 groups. Neither group showed significant difference on objective image quality for 2 reconstructions. Images reconstructed with and without MCA were both found interpretable for group 1, whereas the subjective image quality was significantly improved by the MCA for all 4 metrics in group 2, with the interpretability increased from 80.91% to 99.09%. Compared with group 1, group 2 showed similar interpretability and diagnostic confidence, despite inferior overall image quality.
In CCTA examinations, the deep learning-based MCA is capable of improving the image quality and diagnostic confidence for patients with increased HR to a similar level as for those with low HR.
本研究旨在评估一种基于深度学习的投影域运动校正算法(MCA)在冠状动脉 CT 血管造影(CCTA)中的临床性能。
共纳入 192 例接受 CCTA 检查的患者,根据平均心率(HR)分为 2 组:组 1,82 例 HR<75 次/分;组 2,110 例 HR≥75 次/分。分别对未校正和校正后的 CCTA 图像进行重建。采用 5 分制对血管可视化、锐利度、诊断信心和整体图像质量进行主观评分,所有评分≥3 分的病例视为可解读。采用相对血管的信噪比和对比噪声比测量客观图像质量。比较 2 组间的图像质量评分和有效剂量。
2 组的平均有效剂量相似。2 组在 2 种重建图像的客观图像质量上均无显著差异。组 1 中校正前后的图像均为可解读,而组 2 中校正后所有 4 项指标的主观图像质量均有显著改善,可解读率从 80.91%提高至 99.09%。与组 1 相比,组 2 尽管整体图像质量较差,但在可解读性和诊断信心方面相似。
在 CCTA 检查中,基于深度学习的 MCA 能够提高 HR 增加患者的图像质量和诊断信心,使其达到与 HR 较低患者相似的水平。