Reconstructing Cardiac Wave Dynamics From Myocardial Motion Data.

Computing in cardiology Pub Date : 2020-09-01 Epub Date: 2021-02-10 DOI:10.22489/CinC.2020.216
Christopher B Beam, Cristian A Linte, Niels F Otani
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引用次数: 1

Abstract

Various models exist to predict the active stresses and membrane potentials within cardiac muscle tissue. However, there exist no methods to reliably measure active stresses, nor do there exist ways to measure transmural membrane potentials that are suitable for in vivo usage. Prior work has devised a linear model to map from the active stresses within the tissue to displacements [1]. In situations where measurements of tissue displacements are entirely precise, we are able to naively solve for the active stresses from the measurements with ease. However, real measurement processes always carry some associated random error and, in the presence of this error, our naive solution to this inverse problem fails. In this work we propose the use of the Ensemble Transform Kalman Filter to more reliably solve this inverse problem. This technique is faster than other related Kalman Filter techniques while still generating high quality estimates which improve on our naive solution. We demonstrate, using in silico simulations, that the Ensemble Transform Kalman Filter produces errors whose standard deviation is an order of magnitude smaller than the least-squares solution.

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从心肌运动数据重构心波动力学。
目前已有多种模型用于预测心肌组织内的主动应力和膜电位。然而,目前还没有可靠的测量主动应力的方法,也没有适合体内使用的测量跨壁膜电位的方法。先前的工作已经设计了一个线性模型,从组织内的主动应力映射到位移[1]。在组织位移测量完全精确的情况下,我们可以轻松地从测量中简单地求解出活动应力。然而,实际的测量过程总是带有一些相关的随机误差,在这种误差的存在下,我们对这个逆问题的朴素解就失败了。在这项工作中,我们提出使用集合变换卡尔曼滤波器来更可靠地解决这个逆问题。该技术比其他相关的卡尔曼滤波技术更快,同时仍然产生高质量的估计,这改进了我们的朴素解决方案。我们使用计算机模拟证明,集成变换卡尔曼滤波器产生的误差的标准差比最小二乘解小一个数量级。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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