Kar Julia, Zhong Xiaodong, Cohen Michael V, Cornejo Daniel Auger, Yates-Judice Angela, Rel Eduardo, Figarola Maria S
1 Departments of Mechanical Engineering and Pharmacology, University of South Alabama , Mobile, AL , USA.
2 MR R&D Collaborations, Siemens Healthcare Inc. , Atlanta, GA , USA.
Br J Radiol. 2018 Jul;91(1087):20170841. doi: 10.1259/bjr.20170841. Epub 2018 May 17.
Displacement ENcoding with Stimulated Echoes (DENSE) is an MRI technique developed to encode phase related to myocardial tissue displacements, and the displacement information directly applied towards detecting left-ventricular (LV) myocardial motion during the cardiac cycle. The purpose of this study is to present a novel, three-dimensional (3D) DENSE displacement-based and magnitude image quantization-based, semi-automated detection technique for myocardial wall motion, whose boundaries are used for rapid and automated computation of 3D myocardial strain.
The architecture of this boundary detection algorithm is primarily based on pixelwise spatiotemporal increments in LV tissue displacements during the cardiac cycle and further reinforced by radially searching for pixel-based image gradients in multithreshold quantized magnitude images. This spatiotemporal edge detection methodology was applied to all LV partitions and their subsequent timeframes that lead to full 3D LV reconstructions. It was followed by quantifications of 3D chamber dimensions and myocardial strains, whose rapid computation was the primary motivation behind developing this algorithm. A pre-existing two-dimensional (2D) semi-automated contouring technique was used in parallel to validate the accuracy of the algorithm and both methods tested on DENSE data acquired in (N = 14) healthy subjects. Chamber quantifications between methods were compared using paired t-tests and Bland-Altman analysis established regional strain agreements.
There were no significant differences in the results of chamber quantifications between the 3D semi-automated and existing 2D boundary detection techniques. This included comparisons of ejection fractions, which were 0.62 ± 0.04 vs 0.60 ± 0.06 (p = 0.23) for apical, 0.60 ± 0.04 vs 0.59 ± 0.05 (p = 0.76) for midventricular and 0.56 ± 0.04 vs 0.58 ± 0.05 (p = 0.07) for basal segments, that were quantified using the 3D semi-automated and 2D pre-existing methodologies, respectively. Bland-Altman agreement between regional strains generated biases of 0.01 ± 0.06, -0.01 ± 0.01 and 0.0 ± 0.06 for the radial, circumferential and longitudinal directions, respectively.
A new, 3D semi-automated methodology for contouring the entire LV and rapidly generating chamber quantifications and regional strains is presented that was validated in relation to an existing 2D contouring technique. Advances in knowledge: This study introduced a scientific tool for rapid, semi-automated generation of clinical information regarding shape and function in the 3D LV.
刺激回波位移编码(DENSE)是一种磁共振成像(MRI)技术,用于编码与心肌组织位移相关的相位,并且该位移信息可直接用于检测心动周期中的左心室(LV)心肌运动。本研究的目的是提出一种新颖的基于三维(3D)DENSE位移和基于幅度图像量化的半自动心肌壁运动检测技术,其边界用于快速自动计算3D心肌应变。
该边界检测算法的架构主要基于心动周期中LV组织位移的逐像素时空增量,并通过在多阈值量化幅度图像中径向搜索基于像素的图像梯度来进一步强化。这种时空边缘检测方法应用于所有LV分区及其后续时间帧,从而实现完整的3D LV重建。随后对3D腔室尺寸和心肌应变进行量化,快速计算是开发该算法的主要动机。同时使用预先存在的二维(2D)半自动轮廓技术来验证算法的准确性,并且两种方法都在(N = 14)名健康受试者获取的DENSE数据上进行了测试。使用配对t检验比较两种方法之间的腔室量化结果,并通过Bland-Altman分析确定区域应变一致性。
3D半自动和现有的2D边界检测技术在腔室量化结果上没有显著差异。这包括射血分数的比较,使用3D半自动和现有的2D方法分别量化的心尖段射血分数为0.62±0.04 vs 0.60±0.06(p = 0.23),心室中段为0.60±0.04 vs 0.59±0.05(p = 0.76),基底段为0.56±0.04 vs 0.58±0.05(p = 0.07)。区域应变之间的Bland-Altman一致性在径向、周向和纵向方向上分别产生偏差0.01±0.06、-0.01±0.01和0.0±0.06。
提出了一种用于勾勒整个LV轮廓并快速生成腔室量化和区域应变的新的3D半自动方法,并与现有的2D轮廓技术进行了验证。知识进展:本研究引入了一种科学工具,用于快速、半自动生成有关3D LV形状和功能的临床信息。