School of Biomedical Engineering and Imaging Sciences, King's College London, London, UK.
Insigneo Institute for in-silico Medicine and Department of Computer Science, University of Sheffield, Sheffield, UK.
Philos Trans A Math Phys Eng Sci. 2020 Jun 12;378(2173):20190334. doi: 10.1098/rsta.2019.0334. Epub 2020 May 25.
Cardiac contraction is the result of integrated cellular, tissue and organ function. Biophysical cardiac models offer a systematic approach for studying these multi-scale interactions. The computational cost of such models is high, due to their multi-parametric and nonlinear nature. This has so far made it difficult to perform model fitting and prevented global sensitivity analysis (GSA) studies. We propose a machine learning approach based on Gaussian process emulation of model simulations using probabilistic surrogate models, which enables model parameter inference via a Bayesian history matching (HM) technique and GSA on whole-organ mechanics. This framework is applied to model healthy and aortic-banded hypertensive rats, a commonly used animal model of heart failure disease. The obtained probabilistic surrogate models accurately predicted the left ventricular pump function ( = 0.92 for ejection fraction). The HM technique allowed us to fit both the control and diseased virtual bi-ventricular rat heart models to magnetic resonance imaging and literature data, with model outputs from the constrained parameter space falling within 2 SD of the respective experimental values. The GSA identified Troponin C and cross-bridge kinetics as key parameters in determining both systolic and diastolic ventricular function. This article is part of the theme issue 'Uncertainty quantification in cardiac and cardiovascular modelling and simulation'.
心脏收缩是细胞、组织和器官功能综合作用的结果。生物物理心脏模型为研究这些多尺度相互作用提供了一种系统的方法。由于其多参数和非线性的性质,这些模型的计算成本很高。这使得模型拟合变得困难,并阻止了全局敏感性分析(GSA)研究。我们提出了一种基于概率代理模型的高斯过程模拟的机器学习方法,该方法使用概率代理模型来模拟模型仿真,通过贝叶斯历史匹配(HM)技术和整体器官力学的 GSA 来实现模型参数推断。该框架应用于模拟健康和主动脉带高血压大鼠,这是心力衰竭疾病常用的动物模型。所获得的概率代理模型准确地预测了左心室泵功能(射血分数为 0.92)。HM 技术允许我们将对照和患病的虚拟双心室大鼠心脏模型拟合到磁共振成像和文献数据中,受约束参数空间中的模型输出值落在相应实验值的 2 个标准差内。GSA 确定肌钙蛋白 C 和横桥动力学是决定收缩和舒张心室功能的关键参数。本文是“心脏和心血管建模与仿真中的不确定性量化”主题问题的一部分。