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Machine learning of multiscale active force generation models for the efficient simulation of cardiac electromechanics

机译:多尺度主动力生成模型的机器学习,用于高效仿真心电图机电

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High fidelity (HF) mathematical models describing the generation of active force in the cardiac muscle tissue typically feature a large number of state variables to capture the intrinsically complex underlying subcellular mechanisms. With the aim of drastically reducing the computational burden associated with the numerical solution of these models, we propose a machine learning method that builds a reduced order model (ROM); this is obtained as the best-approximation of the HF model within a class of candidate differential equations based on Artificial Neural Networks (ANNs). Within a semiphysical (gray-box) approach, an ANN learns the dynamics of the HF model from input-output pairs generated by the HF model itself (i.e. non-intrusively), being additionally informed with some a priori knowledge about the HF model. The ANN-based ROM, with just two internal variables, can accurately reproduce the results of the HF model, that instead features more than 2000 variables, under several physiological and pathological working regimes of the cell. We then propose a multiscale 3D cardiac electromechanical model, wherein active force generation is described by means of the previously trained ANN. We achieve a very favorable balance between accuracy of the result (order of 10(-3) for the main cardiac biomarkers) and computational efficiency (with a speedup of about one order of magnitude), still relying on a biophysically detailed description of the microscopic force generation phenomenon. (C) 2020 The Author(s). Published by Elsevier B.V.
机译:高保真(HF)描述心肌组织中的活性力产生的数学模型通常具有大量状态变量,以捕获内在的底层亚细胞机制。旨在急剧减少与这些模型的数值解决方案相关的计算负担,我们提出了一种机器学习方法,该方法构建了秩序级(ROM);这是基于人工神经网络(ANNS)的一类候选微分方程内的HF模型的最佳近似。在半胱氨酸(灰度盒)方法中,ANN从HF模型本身生成的输入输出对(即非侵入性)了解HF模型的动态,并且另外还通知了关于HF模型的一些先验知识。只有两个内部变量的基于ANN的ROM可以准确地再现HF模型的结果,而是在细胞的几个生理和病理工作制度下具有大于2000多个变量。然后,我们提出了一种多尺度3D心脏机电模型,其中通过先前培训的ANN描述了主动力产生。我们在结果的准确性之间实现了非常有利的平衡(主要心脏生物标志物的10(-3)的顺序)和计算效率(加速约为一个级数),仍然依赖于微观的生物物质详细描述力产生现象。 (c)2020提交人。由elsevier b.v出版。

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