Razeghi Orod, Heinrich Mattias, Fastl Thomas E, Corrado Cesare, Karim Rashed, De Vecchi Adelaide, Banks Tom, Donnelly Patrick, Behar Jonathan M, Gould Justin, Rajani Ronak, Rinaldi Christopher A, Niederer Steven
School of Biomedical Engineering and Imaging Sciences, King's College London, London, UK.
Insitute of Medical Informatics, University of Lübeck, Lübeck, Germany.
Sci Rep. 2021 Mar 11;11(1):5718. doi: 10.1038/s41598-021-84935-x.
Recent dose reduction techniques have made retrospective computed tomography (CT) scans more applicable and extracting myocardial function from cardiac computed tomography (CCT) images feasible. However, hyperparameters of generic image intensity-based registration techniques, which are used for tracking motion, have not been systematically optimised for this modality. There is limited work on their validation for measuring regional strains from retrospective gated CCT images and open-source software for motion analysis is not widely available. We calculated strain using our open-source platform by applying an image registration warping field to a triangulated mesh of the left ventricular endocardium. We optimised hyperparameters of two registration methods to track the wall motion. Both methods required a single semi-automated segmentation of the left ventricle cavity at end-diastolic phase. The motion was characterised by the circumferential and longitudinal strains, as well as local area change throughout the cardiac cycle from a dataset of 24 patients. The derived motion was validated against manually annotated anatomical landmarks and the calculation of strains were verified using idealised problems. Optimising hyperparameters of registration methods allowed tracking of anatomical measurements with a mean error of 6.63% across frames, landmarks, and patients, comparable to an intra-observer error of 7.98%. Both registration methods differentiated between normal and dyssynchronous contraction patterns based on circumferential strain ([Formula: see text], [Formula: see text]). To test whether a typical 10 temporal frames sampling of retrospective gated CCT datasets affects measuring cardiac mechanics, we compared motion tracking results from 10 and 20 frames datasets and found a maximum error of [Formula: see text]. Our findings show that intensity-based registration techniques with optimal hyperparameters are able to accurately measure regional strains from CCT in a very short amount of time. Furthermore, sufficient sensitivity can be achieved to identify heart failure patients and left ventricle mechanics can be quantified with 10 reconstructed temporal frames. Our open-source platform will support increased use of CCT for quantifying cardiac mechanics.
最近的剂量减少技术使回顾性计算机断层扫描(CT)扫描更具适用性,并且从心脏计算机断层扫描(CCT)图像中提取心肌功能变得可行。然而,用于跟踪运动的基于通用图像强度的配准技术的超参数尚未针对这种模态进行系统优化。关于它们在从回顾性门控CCT图像测量区域应变方面的验证工作有限,并且用于运动分析的开源软件也未广泛可用。我们通过将图像配准变形场应用于左心室内膜的三角测量网格,使用我们的开源平台计算应变。我们优化了两种配准方法的超参数以跟踪壁运动。两种方法都需要在舒张末期对左心室腔进行单次半自动分割。通过对24名患者的数据集进行分析,运动由圆周应变和纵向应变以及整个心动周期中的局部面积变化来表征。将推导的运动与手动标注的解剖标志进行验证,并使用理想化问题验证应变计算。优化配准方法的超参数允许跟踪解剖测量,跨帧、标志和患者的平均误差为6.63%,与观察者内误差7.98%相当。两种配准方法都基于圆周应变([公式:见原文],[公式:见原文])区分正常和不同步收缩模式。为了测试回顾性门控CCT数据集典型的10个时间帧采样是否会影响心脏力学测量,我们比较了10帧和20帧数据集的运动跟踪结果,发现最大误差为[公式:见原文]。我们的研究结果表明,具有最佳超参数的基于强度的配准技术能够在极短的时间内准确测量CCT中的区域应变。此外,可以实现足够的灵敏度来识别心力衰竭患者,并且可以用10个重建的时间帧量化左心室力学。我们的开源平台将支持增加使用CCT来量化心脏力学。