Department of Radiology, Lausanne University Hospital (CHUV) and University of Lausanne (UNIL), Rue de Bugnon 46, BH-7-84, 1011, Lausanne, Switzerland.
Advanced Clinical Imaging Technology (ACIT), Siemens Healthcare AG, Lausanne, Switzerland.
J Cardiovasc Magn Reson. 2021 Mar 29;23(1):33. doi: 10.1186/s12968-021-00717-4.
Radial self-navigated (RSN) whole-heart coronary cardiovascular magnetic resonance angiography (CCMRA) is a free-breathing technique that estimates and corrects for respiratory motion. However, RSN has been limited to a 1D rigid correction which is often insufficient for patients with complex respiratory patterns. The goal of this work is therefore to improve the robustness and quality of 3D radial CCMRA by incorporating both 3D motion information and nonrigid intra-acquisition correction of the data into a framework called focused navigation (fNAV).
We applied fNAV to 500 data sets from a numerical simulation, 22 healthy subjects, and 549 cardiac patients. In each of these cohorts we compared fNAV to RSN and respiratory resolved extradimensional golden-angle radial sparse parallel (XD-GRASP) reconstructions of the same data. Reconstruction times for each method were recorded. Motion estimate accuracy was measured as the correlation between fNAV and ground truth for simulations, and fNAV and image registration for in vivo data. Percent vessel sharpness was measured in all simulated data sets and healthy subjects, and a subset of patients. Finally, subjective image quality analysis was performed by a blinded expert reviewer who chose the best image for each in vivo data set and scored on a Likert scale 0-4 in a subset of patients by two reviewers in consensus.
The reconstruction time for fNAV images was significantly higher than RSN (6.1 ± 2.1 min vs 1.4 ± 0.3, min, p < 0.025) but significantly lower than XD-GRASP (25.6 ± 7.1, min, p < 0.025). Overall, there is high correlation between the fNAV and reference displacement estimates across all data sets (0.73 ± 0.29). For simulated data, healthy subjects, and patients, fNAV lead to significantly sharper coronary arteries than all other reconstruction methods (p < 0.01). Finally, in a blinded evaluation by an expert reviewer fNAV was chosen as the best image in 444 out of 571 data sets (78%; p < 0.001) and consensus grades of fNAV images (2.6 ± 0.6) were significantly higher (p < 0.05) than uncorrected (1.7 ± 0.7), RSN (1.9 ± 0.6), and XD-GRASP (1.8 ± 0.8).
fNAV is a promising technique for improving the quality of RSN free-breathing 3D whole-heart CCMRA. This novel approach to respiratory self-navigation can derive 3D nonrigid motion estimations from an acquired 1D signal yielding statistically significant improvement in image sharpness relative to 1D translational correction as well as XD-GRASP reconstructions. Further study of the diagnostic impact of this technique is therefore warranted to evaluate its full clinical utility.
径向自导航(RSN)全心冠状动脉心血管磁共振血管造影(CCMRA)是一种自由呼吸技术,可估计和校正呼吸运动。然而,RSN 仅限于 1D 刚性校正,对于呼吸模式复杂的患者来说,这种校正往往不够。因此,这项工作的目标是通过将 3D 运动信息和数据的非刚性采集内校正纳入称为聚焦导航(fNAV)的框架,来提高 3D 径向 CCMRA 的稳健性和质量。
我们将 fNAV 应用于 500 个来自数值模拟、22 个健康受试者和 549 个心脏患者的数据集中。在这些队列中的每一个中,我们都将 fNAV 与 RSN 和相同数据的呼吸分辨多维角度径向稀疏并行(XD-GRASP)重建进行了比较。记录了每种方法的重建时间。运动估计准确性通过 fNAV 与模拟数据的地面实况之间的相关性以及 fNAV 与体内数据的图像配准来测量。在所有模拟数据集和健康受试者中以及部分患者中测量了血管锐利度百分比。最后,由一位盲审专家进行主观图像质量分析,该专家为每个体内数据集选择了最佳图像,并在部分患者中由两位审阅者以共识的方式在 0-4 的李克特量表上进行评分。
fNAV 图像的重建时间明显长于 RSN(6.1±2.1 min 比 1.4±0.3 min,p<0.025),但明显短于 XD-GRASP(25.6±7.1 min,p<0.025)。总体而言,所有数据集之间的 fNAV 和参考位移估计之间具有高度相关性(0.73±0.29)。对于模拟数据、健康受试者和患者,fNAV 导致冠状动脉明显更锐利,优于所有其他重建方法(p<0.01)。最后,在一位专家审阅者的盲法评估中,在 571 个数据集中的 444 个数据集中(78%;p<0.001)选择了 fNAV 作为最佳图像,并且 fNAV 图像的共识等级(2.6±0.6)明显高于(p<0.05)未校正(1.7±0.7)、RSN(1.9±0.6)和 XD-GRASP(1.8±0.8)。
fNAV 是一种有前途的技术,可提高 RSN 自由呼吸 3D 全心 CCMRA 的质量。这种新的呼吸自导航方法可以从采集的 1D 信号中得出 3D 非刚性运动估计,与 1D 平移校正和 XD-GRASP 重建相比,在图像锐度方面具有统计学意义的提高。因此,需要进一步研究该技术的诊断影响,以评估其全部临床实用性。