结合 CT 灌注成像和合成血管树的个性化冠状动脉和心肌血流模型

Karthik Menon, Muhammed Owais Khan, Zachary A. Sexton, Jakob Richter, Patricia K. Nguyen, Sachin B. Malik, Jack Boyd, Koen Nieman, Alison L. Marsden
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引用次数: 0

摘要

利用基于临床成像的解剖模型对冠状动脉血流进行计算模拟,是个性化治疗计划的新兴非侵入性工具。然而,目前的模拟面临着两个相关的挑战--由于排除了小于成像分辨率的动脉,基于图像的模型中的解剖结构不完整,以及缺乏由患者特定成像提供的个性化血流分布。我们引入了一个数据化、个性化和多尺度的血流模拟框架,涵盖大冠状动脉到心肌微血管。该框架包括基于图像的冠状动脉解剖,结合成像分辨率以下动脉的合成血管、使用达西模型模拟的心肌血流,以及以块参数网络表示的系统循环。我们提出了一种基于优化的方法,通过同化临床 CT 心肌灌注成像和心功能测量结果来生成特定患者的血流分布和模型参数,从而实现多尺度冠状动脉血流模拟的个性化。通过这项对六名患者进行的概念验证研究,我们发现所提出的个性化框架与纯粹基于解剖学的经验方法在血流分布和临床诊断指标方面存在巨大差异;这些误差无法事先预测。这表明虚拟治疗规划工具将受益于新兴成像方法带来的更多个性化信息。
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Personalized coronary and myocardial blood flow models incorporating CT perfusion imaging and synthetic vascular trees
Computational simulations of coronary artery blood flow, using anatomical models based on clinical imaging, are an emerging non-invasive tool for personalized treatment planning. However, current simulations contend with two related challenges – incomplete anatomies in image-based models due to the exclusion of arteries smaller than the imaging resolution, and the lack of personalized flow distributions informed by patient-specific imaging. We introduce a data-enabled, personalized and multi-scale flow simulation framework spanning large coronary arteries to myocardial microvasculature. It includes image-based coronary anatomies combined with synthetic vasculature for arteries below the imaging resolution, myocardial blood flow simulated using Darcy models, and systemic circulation represented as lumped-parameter networks. We propose an optimization-based method to personalize multiscale coronary flow simulations by assimilating clinical CT myocardial perfusion imaging and cardiac function measurements to yield patient-specific flow distributions and model parameters. Using this proof-of-concept study on a cohort of six patients, we reveal substantial differences in flow distributions and clinical diagnosis metrics between the proposed personalized framework and empirical methods based purely on anatomy; these errors cannot be predicted a priori. This suggests virtual treatment planning tools would benefit from increased personalization informed by emerging imaging methods.
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