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An efective fractal-tree closure model for simulating blood flow in large arterial networks

机译:一种有效的大动脉网络中模拟血流的分形树闭合模型

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摘要

The aim of the present work is to address the closure problem for hemodynamic simulations by developing a exible and effective model that accurately distributes flow in the downstream vasculature and can stably provide a physiological pressure out flow boundary condition. To achieve this goal, we model blood flow in the sub-pixel vasculature by using a non-linear 1D model in self-similar networks of compliant arteries that mimic the structure and hierarchy of vessels in the meso-vascular regime (radii 500 μm – 10 μm). We introduce a variable vessel length-to-radius ratio for small arteries and arterioles, while also addressing non-Newtonian blood rheology and arterial wall viscoelasticity effects in small arteries and arterioles. This methodology aims to overcome substantial cut-off radius sensitivities, typically arising in structured tree and linearized impedance models. The proposed model is not sensitive to out flow boundary conditions applied at the end points of the fractal network, and thus does not require calibration of resistance/capacitance parameters typically required for out flow conditions.The proposed model convergences to a periodic state in two cardiac cycles even when started from zero-flow initial conditions. The resulting fractal-trees typically consist of thousands to millions of arteries, posing the need for efficient parallel algorithms. To this end, we have scaled up a Discontinuous Galerkin solver that utilizes the MPI/OpenMP hybrid programming paradigm to thousands of computer cores, and can simulate blood flow in networks of millions of arterial segments at the rate of one cycle per 5 minutes. The proposed model has been extensively tested on a large and complex cranial network with 50 parent, patient-specific arteries and 21 outlets to which fractal trees where attached, resulting to a network of up to 4,392,484 vessels in total, and a detailed network of the arm with 276 parent arteries and 103 outlets (a total of 702,188 vessels after attaching the fractal trees), returning physiological flow and pressure wave predictions without requiring any parameter estimation or calibration procedures.We present a novel methodology to overcome substantial cut-off radius sensitivities
机译:本工作的目的是通过开发一种有效的模型来解决血液动力学模拟的封闭问题,该模型可以准确地在下游脉管系统中分配流量,并可以稳定地提供生理上的压力流边界条件。为了实现这一目标,我们在顺应性动脉的自相似网络中使用非线性一维模型对亚像素脉管系统中的血流进行建模,该模型模拟中脉管系统(半径为500μm– 10微米)。我们为小型动脉和小动脉引入了可变的血管长度与半径之比,同时还解决了非牛顿血液流变学和小型动脉和小动脉的动脉壁粘弹性效应。这种方法旨在克服通常在结构树和线性化阻抗模型中出现的临界半径敏感度。该模型对分形网络端点处的流出边界条件不敏感,因此不需要校准流出条件通常所需的电阻/电容参数,该模型收敛到两个心脏的周期性状态即使从零流量初始条件开始也可以循环。生成的分形树通常包含数千到数百万个动脉,这就需要高效的并行算法。为此,我们已经扩大了不连续Galerkin解算器的规模,该解算器将MPI / OpenMP混合编程范例应用于数千个计算机核心,并且可以每5分钟一个周期的速率模拟数百万个动脉网段的血液流动。所提议的模型已在大型复杂的颅骨网络上进行了广泛测试,该网络具有50条针对患者的父母专用动脉和21个分形树相连的出口,从而形成了总共多达4,392,484个血管的网络,以及一个详细的臂具有276条主动脉和103条出口(附着分形树后总计702,188支血管),无需任何参数估计或校准程序即可返回生理流量和压力波预测结果。我们提出了一种新颖的方法来克服实质性的临界半径敏感性

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