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关于脉动流中瞬态周期性不稳定性的量化与可视化

On the quantification and visualization of transient periodic instabilities in pulsatile flows.

作者信息

Khan Muhammad Owais, Chnafa Christophe, Gallo Diego, Molinari Filippo, Morbiducci Umberto, Steinman David A, Valen-Sendstad Kristian

机构信息

Department of Mechanical and Industrial Engineering, University of Toronto, Toronto, ON, Canada; Computational Cardiac Modeling Department, Simula Research Laboratory, Lysaker, Norway.

Department of Mechanical and Industrial Engineering, University of Toronto, Toronto, ON, Canada.

出版信息

J Biomech. 2017 Feb 8;52:179-182. doi: 10.1016/j.jbiomech.2016.12.037. Epub 2016 Dec 31.

Abstract

Turbulent-like flows without cycle-to-cycle variations are more frequently being reported in studies of cardiovascular flows. The associated stimuli might be of mechanobiological relevance, but how to quantify them objectively is not obvious. Classical Reynolds decomposition, where the flow is separated into mean and fluctuating velocity components, is not applicable as the phase-average is zero. We therefore expanded on established techniques and present the idea, analogous to Reynolds decomposition, to decompose a flow with transient instabilities into low- versus high frequency components, respectively, to discriminate flow instabilities from the underlying cardiac pulsatility. Transient wall shear stress and velocity signals derived from computational fluid dynamic simulations were transferred to the frequency domain. A high-pass filter was applied to subtract the 99% most-energy-containing frequencies, which gave a cut-off frequency of 25Hz. We introduce here the spectral power index, and compute the fluctuating kinetic energy, based on the high-pass filtered velocity components, both being frequency-based operators. The efficacy was evaluated in an aneurysm model for multiple flow rates demonstrating transition to turbulent-like flows. The frequency-based operators were found to better correlate with the qualitatively observed flow instabilities compared to conventional descriptors, like time-averaged wall shear stress or oscillatory shear index. We demonstrate how the high frequencies beyond the physiological range could be analyzed and/or transferred back to the time domain for quantification and visualization purposes. We have introduced general frequency-based operators, easily extendable to other cardiovascular territories based on a posteriori heuristic filtering that allows for separation, isolation, and quantification of cycle-invariant turbulent-like flows.

摘要

在心血管血流研究中,越来越频繁地报道了没有逐周期变化的类湍流。相关刺激可能具有机械生物学相关性,但如何客观地量化它们并不明显。经典的雷诺分解将血流分为平均速度分量和脉动速度分量,由于相位平均为零,因此不适用。因此,我们扩展了现有技术,提出了一种类似于雷诺分解的想法,即将具有瞬态不稳定性的血流分别分解为低频和高频分量,以区分血流不稳定性与潜在的心脏搏动。从计算流体动力学模拟中导出的瞬态壁面剪应力和速度信号被转换到频域。应用高通滤波器减去包含99%能量的最高频率,截止频率为25Hz。我们在此引入频谱功率指数,并基于高通滤波后的速度分量计算脉动动能,两者都是基于频率的算子。在一个动脉瘤模型中评估了多种流速下向类湍流转变的有效性。与传统描述符(如时间平均壁面剪应力或振荡剪应力指数)相比,发现基于频率的算子与定性观察到的血流不稳定性具有更好的相关性。我们展示了如何分析生理范围之外的高频并/或将其转换回时域以进行量化和可视化。我们引入了基于频率的通用算子,基于后验启发式滤波可轻松扩展到其他心血管区域,该滤波允许对周期不变的类湍流进行分离、隔离和量化。

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