EDPVR 是否代表心肌组织僵硬度?努力获得更好的定义

Rana Raza Mehdi, Emilio A. Mendiola, Vahid Naeini, Gaurav Choudhary, Reza Avazmohammadi
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引用次数: 0

摘要

准确评估心肌组织僵硬度对心脏病的诊断和预后至关重要。从舒张末期压力-容积关系(EDPVR)中获得的左心室舒张僵硬度($\beta$)一直被用作心肌僵硬度的代表性指标。EDPVR 可通过基于图像的室内反优化来估计心肌组织的内在刚度。然而,作为器官水平的指标,$\beta$是否能准确代表健康和患病心肌的组织水平心肌组织僵硬度仍是一个未知数。我们开发了一种基于建模的方法,利用心肌的双参数材料模型(用 $a_f$ 和 $b_f$ 表示),在基于模拟的双心室心脏模型中生成不同材料参数的 EDPVR。我们的结果表明,$\beta$与材料参数之间的关系因参数范围而异。有趣的是,$\beta$对$a_f$的敏感性很低,一旦在几种LV几何形状中平均化,甚至在$a_f$值很小的情况下与$a_f$呈负相关。这些发现要求对 EDPVR 衍生的指标代表组织水平心肌僵硬度的可靠性和混杂性进行严格评估。我们的研究结果还强调了探索基于图像的硅内框架的必要性,该框架有望提供高保真和潜在的无创心肌僵硬度评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Does EDPVR Represent Myocardial Tissue Stiffness? Toward a Better Definition
Accurate assessment of myocardial tissue stiffness is pivotal for the diagnosis and prognosis of heart diseases. Left ventricular diastolic stiffness ($\beta$) obtained from the end-diastolic pressure-volume relationship (EDPVR) has conventionally been utilized as a representative metric of myocardial stiffness. The EDPVR can be employed to estimate the intrinsic stiffness of myocardial tissues through image-based in-silico inverse optimization. However, whether $\beta$, as an organ-level metric, accurately represents the tissue-level myocardial tissue stiffness in healthy and diseased myocardium remains elusive. We developed a modeling-based approach utilizing a two-parameter material model for the myocardium (denoted by $a_f$ and $b_f$) in image-based in-silico biventricular heart models to generate EDPVRs for different material parameters. Our results indicated a variable relationship between $\beta$ and the material parameters depending on the range of the parameters. Interestingly, $\beta$ showed a very low sensitivity to $a_f$, once averaged across several LV geometries, and even a negative correlation with $a_f$ for small values of $a_f$. These findings call for a critical assessment of the reliability and confoundedness of EDPVR-derived metrics to represent tissue-level myocardial stiffness. Our results also underscore the necessity to explore image-based in-silico frameworks, promising to provide a high-fidelity and potentially non-invasive assessment of myocardial stiffness.
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