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心肌灌注分布与冠状动脉压力和血流信号:与多尺度建模相关的临床意义综述。

Myocardial perfusion distribution and coronary arterial pressure and flow signals: clinical relevance in relation to multiscale modeling, a review.

机构信息

Department of Biomedical Engineering and Physics, Academic Medical Center, University of Amsterdam, Meibergdreef 9, 1105 AZ, Amsterdam, The Netherlands.

出版信息

Med Biol Eng Comput. 2013 Nov;51(11):1271-86. doi: 10.1007/s11517-013-1088-8. Epub 2013 Jul 27.

Abstract

Coronary artery disease, CAD, is associated with both narrowing of the epicardial coronary arteries and microvascular disease, thereby limiting coronary flow and myocardial perfusion. CAD accounts for almost 2 million deaths within the European Union on an annual basis. In this paper, we review the physiological and pathophysiological processes underlying clinical decision making in coronary disease as well as the models for interpretation of the underlying physiological mechanisms. Presently, clinical decision making is based on non-invasive magnetic resonance imaging, MRI, of myocardial perfusion and invasive coronary hemodynamic measurements of coronary pressure and Doppler flow velocity signals obtained during catheterization. Within the euHeart project, several innovations have been developed and applied to improve diagnosis-based understanding of the underlying biophysical processes. Specifically, MRI perfusion data interpretation has been advanced by the gradientogram, a novel graphical representation of the spatiotemporal myocardial perfusion gradient. For hemodynamic data, functional indices of coronary stenosis severity that do not depend on maximal vasodilation are proposed and the Valsalva maneuver for indicating the extravascular resistance component of the coronary circulation has been introduced. Complementary to these advances, model innovation has been directed to the porous elastic model coupled to a one-dimensional model of the epicardial arteries. The importance of model development is related to the integration of information from different modalities, which in isolation often result in conflicting treatment recommendations.

摘要

冠状动脉疾病(CAD)与心外膜冠状动脉狭窄和微血管疾病有关,从而限制了冠状动脉血流和心肌灌注。CAD 每年导致欧盟近 200 万人死亡。在本文中,我们回顾了冠心病临床决策背后的生理和病理生理过程,以及解释潜在生理机制的模型。目前,临床决策是基于心肌灌注的无创磁共振成像(MRI)和导管插入期间获得的冠状动脉压力和多普勒血流速度信号的有创冠状动脉血流动力学测量。在 euHeart 项目中,已经开发并应用了多项创新技术来改善基于诊断的对潜在生物物理过程的理解。具体而言,通过梯度图(一种时空心肌灌注梯度的新图形表示),改进了 MRI 灌注数据的解释。对于血流动力学数据,提出了不依赖于最大血管扩张的冠状动脉狭窄严重程度的功能指数,并引入了瓦尔萨尔瓦动作来指示冠状动脉循环的血管外阻力成分。作为这些进展的补充,模型创新已针对多孔弹性模型与心外膜动脉的一维模型相结合进行了指导。模型开发的重要性与来自不同模式的信息的整合有关,这些信息孤立地往往会导致相互冲突的治疗建议。

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