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通过统计仿真实现左心室生物力学模型中的快速参数推断。

Fast parameter inference in a biomechanical model of the left ventricle by using statistical emulation.

作者信息

Davies Vinny, Noè Umberto, Lazarus Alan, Gao Hao, Macdonald Benn, Berry Colin, Luo Xiaoyu, Husmeier Dirk

机构信息

University of Glasgow UK.

German Centre for Neurodegenerative Diseases Bonn Germany.

出版信息

J R Stat Soc Ser C Appl Stat. 2019 Nov;68(5):1555-1576. doi: 10.1111/rssc.12374. Epub 2019 Sep 20.

Abstract

A central problem in biomechanical studies of personalized human left ventricular modelling is estimating the material properties and biophysical parameters from clinical measurements in a timeframe that is suitable for use within a clinic. Understanding these properties can provide insight into heart function or dysfunction and help to inform personalized medicine. However, finding a solution to the differential equations which mathematically describe the kinematics and dynamics of the myocardium through numerical integration can be computationally expensive. To circumvent this issue, we use the concept of emulation to infer the myocardial properties of a healthy volunteer in a viable clinical timeframe by using magnetic resonance image data. Emulation methods avoid computationally expensive simulations from the left ventricular model by replacing the biomechanical model, which is defined in terms of explicit partial differential equations, with a surrogate model inferred from simulations generated before the arrival of a patient, vastly improving computational efficiency at the clinic. We compare and contrast two emulation strategies: emulation of the computational model outputs and emulation of the loss between the observed patient data and the computational model outputs. These strategies are tested with two interpolation methods, as well as two loss functions. The best combination of methods is found by comparing the accuracy of parameter inference on simulated data for each combination. This combination, using the output emulation method, with local Gaussian process interpolation and the Euclidean loss function, provides accurate parameter inference in both simulated and clinical data, with a reduction in the computational cost of about three orders of magnitude compared with numerical integration of the differential equations by using finite element discretization techniques.

摘要

个性化人体左心室建模的生物力学研究中的一个核心问题是,要在适合临床使用的时间范围内,根据临床测量结果估算材料特性和生物物理参数。了解这些特性有助于洞察心脏功能或功能障碍,并为个性化医疗提供参考。然而,通过数值积分来求解以数学方式描述心肌运动学和动力学的微分方程,计算成本可能很高。为了规避这个问题,我们利用仿真概念,通过使用磁共振图像数据,在可行的临床时间范围内推断健康志愿者的心肌特性。仿真方法通过用在患者到来之前生成的模拟所推断出的替代模型,取代用显式偏微分方程定义的生物力学模型,避免了左心室模型中计算成本高昂的模拟,极大地提高了临床计算效率。我们比较并对比了两种仿真策略:计算模型输出的仿真和观察到的患者数据与计算模型输出之间损失的仿真。这些策略用两种插值方法以及两种损失函数进行了测试。通过比较每种组合在模拟数据上的参数推断准确性,找到了最佳方法组合。这种组合使用输出仿真方法、局部高斯过程插值和欧几里得损失函数,在模拟数据和临床数据中都能提供准确的参数推断,与使用有限元离散化技术对方程进行数值积分相比,计算成本降低了约三个数量级。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/bacd/6856984/b4b50332f38d/RSSC-68-1555-g001.jpg

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