验证心脏应变成像的模拟心脏模型模型

Tanmay Mukherjee, Muhammad Usman, Rana Raza Mehdi, Emilio Mendiola, Jacques Ohayon, Diana Lindquist, Dipan Shah, Sakthivel Sadayappan, Roderic Pettigrew, Reza Avazmohammadi
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引用次数: 0

摘要

作为心脏功能的结构指标,心脏应变的量化在临床诊断中越来越普遍。然而,高度异质性的四维(4D)心脏运动对精确的 "区域 "应变量化提出了挑战,并导致估计应变因成像模式和后处理算法的不同而存在巨大差异,从而限制了应变作为心脏功能障碍增量生物标志物的转化潜力。目前仍亟需一个可行的基准来成功复制复杂的四维心脏运动学,以确定应变计算算法的可靠性。在这项研究中,我们提出了一个由有限元(FE)模拟得出的内模拟心脏模型,以验证 4D 区域应变的量化。首先,作为概念验证,我们用精确解法创建了纯扭转状态下空心厚壁圆柱体的合成磁共振(MR)图像,并证明可以恢复扭转角的 "地面实况 "值,扭转角也是心脏的一个关键运动学指标。接下来,我们使用小鼠专用的心脏运动学有限元模拟,通过对左心室(LV)的不同切面进行采样,合成动态磁共振图像。在这两个问题中,我们使用最近开发的非刚性图像配准(NRIR)框架计算了应变。此外,我们还通过对各种左心室配置进行室内实验,研究了图像质量对扭曲区域应变计算的影响。我们的研究为区域应变计算的标准化提供了一个严谨可行的工具,以提高其作为增量生物标记物的临床影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
In-silico heart model phantom to validate cardiac strain imaging
The quantification of cardiac strains as structural indices of cardiac function has a growing prevalence in clinical diagnosis. However, the highly heterogeneous four-dimensional (4D) cardiac motion challenges accurate “regional” strain quantification and leads to sizable differences in the estimated strains depending on the imaging modality and post-processing algorithm, limiting the translational potential of strains as incremental biomarkers of cardiac dysfunction. There remains a crucial need for a feasible benchmark that successfully replicates complex 4D cardiac kinematics to determine the reliability of strain calculation algorithms. In this study, we propose an in-silico heart phantom derived from finite element (FE) simulations to validate the quantification of 4D regional strains. First, as a proof-of-concept exercise, we created synthetic magnetic resonance (MR) images for a hollow thick-walled cylinder under pure torsion with an exact solution and demonstrated that “ground-truth” values can be recovered for the twist angle, which is also a key kinematic index in the heart. Next, we used mouse-specific FE simulations of cardiac kinematics to synthesize dynamic MR images by sampling various sectional planes of the left ventricle (LV). Strains were calculated using our recently developed non-rigid image registration (NRIR) framework in both problems. Moreover, we studied the effects of image quality on distorting regional strain calculations by conducting in-silico experiments for various LV configurations. Our studies offer a rigorous and feasible tool to standardize regional strain calculations to improve their clinical impact as incremental biomarkers.
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