Improve myocardial strain estimation based on deformable groupwise registration with a locally low-rank dissimilarity metric.

IF 3.2 3区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING BMC Medical Imaging Pub Date : 2024-12-05 DOI:10.1186/s12880-024-01519-7
Haiyang Chen, Juan Gao, Zhuo Chen, Chenhao Gao, Sirui Huo, Meng Jiang, Jun Pu, Chenxi Hu
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Abstract

Background: Current mainstream cardiovascular magnetic resonance-feature tracking (CMR-FT) methods, including optical flow and pairwise registration, often suffer from the drift effect caused by accumulative tracking errors. Here, we developed a CMR-FT method based on deformable groupwise registration with a locally low-rank (LLR) dissimilarity metric to improve myocardial tracking and strain estimation accuracy.

Methods: The proposed method, Groupwise-LLR, performs feature tracking by iteratively updating the entire displacement field across all cardiac phases to minimize the sum of the patchwise signal ranks of the deformed movie. The method was compared with alternative CMR-FT methods including the Farneback optical flow, a sequentially pairwise registration method, and a global low rankness-based groupwise registration method via a simulated dataset (n = 20), a public cine data set (n = 100), and an in-house tagging-MRI patient dataset (n = 16). The proposed method was also compared with two general groupwise registration methods, nD + t B-Splines and pTVreg, in simulations and in vivo tracking.

Results: On the simulated dataset, Groupwise-LLR achieved the lowest point tracking errors (p = 0.13 against pTVreg for the temporally averaged point tracking errors in the long-axis view, and p < 0.05 for all other cases), voxelwise strain errors (all p < 0.05), and global strain errors (p = 0.05 against pTVreg for the longitudinal global strain errors, and p < 0.05 for all other cases). On the public dataset, Groupwise-LLR achieved the lowest contour tracking errors (all p < 0.05), reduced the drift effect in late-diastole, and preserved similar inter-observer reproducibility as the alternative methods. On the patient dataset, Groupwise-LLR correlated better with tagging-MRI for radial strains than the other CMR-FT methods in multiple myocardial segments and levels.

Conclusions: The proposed Groupwise-LLR reduces the drift effect and provides more accurate myocardial tracking and strain estimation than the alternative methods. The method may thus facilitate a more accurate estimation of myocardial strains for clinical assessments of cardiac function.

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基于局部低秩不相似度度量的可变形分组配准改进心肌应变估计。
背景:目前主流的心血管磁共振特征跟踪(CMR-FT)方法,包括光流和成对配准,往往存在累积跟踪误差引起的漂移效应。在这里,我们开发了一种基于局部低秩(LLR)不相似度度量的可变形分组配准的CMR-FT方法,以提高心肌跟踪和应变估计的准确性。方法:提出的方法,Groupwise-LLR,通过迭代更新所有心脏相的整个位移场来进行特征跟踪,以最小化变形电影的补丁信号秩之和。通过模拟数据集(n = 20)、公共电影数据集(n = 100)和内部标记mri患者数据集(n = 16),将该方法与其他CMR-FT方法(包括Farneback光流、顺序成对配准方法和基于全局低秩的分组配准方法)进行比较。在仿真和体内跟踪方面,将该方法与常用的两种群体配准方法(nD + t b样条和pTVreg)进行了比较。结果:在模拟数据集上,Groupwise-LLR获得了最低的点跟踪误差(p = 0.13相对于ptvregg在长轴视图下的时间平均点跟踪误差)。结论:提出的Groupwise-LLR减少了漂移效应,提供了比替代方法更准确的心肌跟踪和应变估计。因此,该方法可能有助于更准确地估计心功能的临床评估心肌株。
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来源期刊
BMC Medical Imaging
BMC Medical Imaging RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING-
CiteScore
4.60
自引率
3.70%
发文量
198
审稿时长
27 weeks
期刊介绍: BMC Medical Imaging is an open access journal publishing original peer-reviewed research articles in the development, evaluation, and use of imaging techniques and image processing tools to diagnose and manage disease.
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