个性化和不确定性感知冠状动脉血流动力学模拟:从贝叶斯估计到改进的多保真度不确定性量化。

ArXiv Pub Date : 2024-09-03
Karthik Menon, Andrea Zanoni, Owais Khan, Gianluca Geraci, Koen Nieman, Daniele E Schiavazzi, Alison L Marsden
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引用次数: 0

摘要

背景:与仅依靠解剖成像相比,冠状动脉血流动力学的无创模拟改善了冠状动脉疾病的临床风险分层和治疗效果。然而,模拟通常使用经验方法在冠状动脉树中的动脉之间分配冠状动脉总流量,这忽略了患者的可变性、疾病的存在和其他临床因素。此外,在建模过程中,临床数据的不确定性往往没有考虑在内:我们提出了一种端到端不确定性感知管道,以便:(1)通过纳入血管特异性冠状动脉血流以及心脏功能,实现个性化冠状动脉血流模拟;(2)在考虑临床数据不确定性的同时,以更高的精度预测临床和生物力学相关量:方法:我们从临床 CT 心肌灌注成像中吸收特定患者的心肌血流测量数据,以估算特定分支的冠状动脉流量。使用自适应马尔可夫链蒙特卡洛采样法,利用临床数据中的模拟噪声来估计模型参数的联合后验分布。此外,还采用了一种新方法,将多保真度蒙特卡洛估计与非线性、数据驱动的降维相结合,确定了相关感兴趣量的后验预测分布。这改进了高保真和低保真模型输出之间的相关性:结果:我们的框架准确地再现了临床测量的心脏功能,以及在测量噪声不确定的情况下冠状动脉的分支流量。与单保真度蒙特卡洛估计和最先进的多保真度蒙特卡洛方法相比,我们观察到相关估计量的置信区间大幅缩小。这对于低保真和高保真模型预测之间相关性有限的相关量来说尤其如此。此外,在指定的置信度或方差条件下,拟议的多保真度蒙特卡罗估计器的计算成本明显低于传统估计器:所提出的冠状动脉血流动力学个性化和不确定性感知预测管道是基于常规临床测量和最近开发的 CT 心肌灌注成像技术。所提出的管道可显著提高精确度并降低计算成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Personalized and uncertainty-aware coronary hemodynamics simulations: From Bayesian estimation to improved multi-fidelity uncertainty quantification.

Background: Non-invasive simulations of coronary hemodynamics have improved clinical risk stratification and treatment outcomes for coronary artery disease, compared to relying on anatomical imaging alone. However, simulations typically use empirical approaches to distribute total coronary flow amongst the arteries in the coronary tree, which ignores patient variability, the presence of disease, and other clinical factors. Further, uncertainty in the clinical data often remains unaccounted for in the modeling pipeline.

Objective: We present an end-to-end uncertainty-aware pipeline to (1) personalize coronary flow simulations by incorporating vessel-specific coronary flows as well as cardiac function; and (2) predict clinical and biomechanical quantities of interest with improved precision, while accounting for uncertainty in the clinical data.

Methods: We assimilate patient-specific measurements of myocardial blood flow from clinical CT myocardial perfusion imaging to estimate branch-specific coronary artery flows. Simulated noise in the clinical data is used to estimate the joint posterior distributions of the model parameters using adaptive Markov Chain Monte Carlo sampling. Additionally, the posterior predictive distribution for the relevant quantities of interest is determined using a new approach combining multi-fidelity Monte Carlo estimation with non-linear, data-driven dimensionality reduction. This leads to improved correlations between high- and low-fidelity model outputs.

Results: Our framework accurately recapitulates clinically measured cardiac function as well as branch-specific coronary flows under measurement noise uncertainty. We observe substantial reductions in confidence intervals for estimated quantities of interest compared to single-fidelity Monte Carlo estimation and state-of-the-art multi-fidelity Monte Carlo methods. This holds especially true for quantities of interest that showed limited correlation between the low- and high-fidelity model predictions. In addition, the proposed multi-fidelity Monte Carlo estimators are significantly cheaper to compute than traditional estimators, under a specified confidence level or variance.

Conclusions: The proposed pipeline for personalized and uncertainty-aware predictions of coronary hemodynamics is based on routine clinical measurements and recently developed techniques for CT myocardial perfusion imaging. The proposed pipeline offers significant improvements in precision and reduction in computational cost.

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