Son Jeongeun, Du Yuncheng, Du Dongping
Annu Int Conf IEEE Eng Med Biol Soc. 2018 Jul;2018:5450-5453. doi: 10.1109/EMBC.2018.8513608.
Models of cardiac electrophysiology are useful for studying heart functions and cardiac disease mechanisms. However, cardiac models often have a great level of complexity, and it is often computationally prohibitive to simulate tissue and organ activities in a real-time fashion. To address the challenge, simplified models such as Aliev-Panfilov model are developed to reduce model complexity, while providing necessary details of cardiac functions. Simplified models may induce uncertainty, which can deteriorate the accuracy and reliability of cardiac models. In addition, model parameters are calibrated with noisy data and cannot be known with certainty. It is important to assess the effect of parametric uncertainty on model predictions. For the probabilistic, time-invariant parametric uncertainty, a generalized polynomial chaos (gPC) expansion-based method is presented in this work to quantify and propagate uncertainty onto model predictions. Using gPC, a measure of confidence in model predictions can be quickly estimated. As compared with sampling-based uncertainty propagation techniques, e.g., Monte Carlo (MC) simulations, the gPC-based method in this work shows its advantages in terms of computational efficiency and accuracy, which has the potentials for dealing with complicated cardiac models, e.g., 2D tissue and 3D organ models.
心脏电生理模型对于研究心脏功能和心脏病发病机制很有用。然而,心脏模型通常具有很高的复杂性,实时模拟组织和器官活动在计算上往往是 prohibitive 的。为应对这一挑战,开发了诸如阿利耶夫 - 潘菲洛夫模型等简化模型,以降低模型复杂性,同时提供心脏功能的必要细节。简化模型可能会引入不确定性,这会降低心脏模型的准确性和可靠性。此外,模型参数是用有噪声的数据校准的,无法确切知晓。评估参数不确定性对模型预测的影响很重要。对于概率性、时不变参数不确定性,本文提出了一种基于广义多项式混沌(gPC)展开的方法,以量化不确定性并将其传播到模型预测中。使用 gPC,可以快速估计对模型预测的置信度。与基于采样的不确定性传播技术(例如蒙特卡罗(MC)模拟)相比,本文基于 gPC 的方法在计算效率和准确性方面显示出优势,具有处理复杂心脏模型(例如二维组织和三维器官模型)的潜力。