Department of Radiology, University Regensburg, Franz-Josef-Strauss Allee 11, 93053, Regensburg, Germany.
Department of Radiology, Neuroradiology and Nuclear Medicine, Klinikum Nürnberg, Paracelsus Medical University, Nuremberg, Germany.
J Imaging Inform Med. 2024 Aug;37(4):1548-1556. doi: 10.1007/s10278-024-01033-w. Epub 2024 Mar 4.
Coronary computed tomography angiography (CCTA) is an essential part of the diagnosis of chronic coronary syndrome (CCS) in patients with low-to-intermediate pre-test probability. The minimum technical requirement is 64-row multidetector CT (64-MDCT), which is still frequently used, although it is prone to motion artifacts because of its limited temporal resolution and z-coverage. In this study, we evaluate the potential of a deep-learning-based motion correction algorithm (MCA) to eliminate these motion artifacts. 124 64-MDCT-acquired CCTA examinations with at least minor motion artifacts were included. Images were reconstructed using a conventional reconstruction algorithm (CA) and a MCA. Image quality (IQ), according to a 5-point Likert score, was evaluated per-segment, per-artery, and per-patient and was correlated with potentially disturbing factors (heart rate (HR), intra-cycle HR changes, BMI, age, and sex). Comparison was done by Wilcoxon-Signed-Rank test, and correlation by Spearman's Rho. Per-patient, insufficient IQ decreased by 5.26%, and sufficient IQ increased by 9.66% with MCA. Per-artery, insufficient IQ of the right coronary artery (RCA) decreased by 18.18%, and sufficient IQ increased by 27.27%. Per-segment, insufficient IQ in segments 1 and 2 decreased by 11.51% and 24.78%, respectively, and sufficient IQ increased by 10.62% and 18.58%, respectively. Total artifacts per-artery decreased in the RCA from 3.11 ± 1.65 to 2.26 ± 1.52. HR dependence of RCA IQ decreased to intermediate correlation in images with MCA reconstruction. The applied MCA improves the IQ of 64-MDCT-acquired images and reduces the influence of HR on IQ, increasing 64-MDCT validity in the diagnosis of CCS.
冠状动脉计算机断层血管造影术(CCTA)是低至中度术前概率慢性冠状动脉综合征(CCS)患者诊断的重要组成部分。最低技术要求是 64 排多层 CT(64-MDCT),尽管其时间分辨率和 z 覆盖范围有限,容易出现运动伪影,但仍经常使用。在这项研究中,我们评估了基于深度学习的运动校正算法(MCA)消除这些运动伪影的潜力。共纳入了 124 例至少存在轻微运动伪影的 64-MDCT 采集 CCTA 检查。使用常规重建算法(CA)和 MCA 对图像进行重建。根据 5 分李克特评分对每段、每支血管和每位患者的图像质量(IQ)进行评估,并与可能干扰因素(心率(HR)、心动周期内 HR 变化、BMI、年龄和性别)相关。采用 Wilcoxon 符号秩检验进行比较,Spearman 相关系数进行相关性分析。每位患者 MCA 后 IQ 不足减少 5.26%,充分增加 9.66%。右冠状动脉(RCA)MCA 后 IQ 不足减少 18.18%,充分增加 27.27%。1 段和 2 段 IQ 不足分别减少 11.51%和 24.78%,充分分别增加 10.62%和 18.58%。RCA 每支血管的总伪影从 3.11±1.65 减少到 2.26±1.52。MCA 重建后 RCA IQ 与 HR 的相关性降低至中度相关。应用 MCA 可提高 64-MDCT 采集图像的 IQ,并降低 HR 对 IQ 的影响,提高 64-MDCT 在 CCS 诊断中的有效性。