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用于模拟静息和运动状态下腹部及下肢血流的分形网络模型。

Fractal network model for simulating abdominal and lower extremity blood flow during resting and exercise conditions.

作者信息

Steele Brooke N, Olufsen Mette S, Taylor Charles A

机构信息

Joint Department of Biomedical Engineering, NC State University & UNC-Chapel Hill, Raleigh, NC 27695-7115, USA.

出版信息

Comput Methods Biomech Biomed Engin. 2007 Feb;10(1):39-51. doi: 10.1080/10255840601068638.

Abstract

We present a one-dimensional (1D) fluid dynamic model that can predict blood flow and blood pressure during exercise using data collected at rest. To facilitate accurate prediction of blood flow, we developed an impedance boundary condition using morphologically derived structured trees. Our model was validated by computing blood flow through a model of large arteries extending from the thoracic aorta to the profunda arteries. The computed flow was compared against measured flow in the infrarenal (IR) aorta at rest and during exercise. Phase contrast-magnetic resonance imaging (PC-MRI) data was collected from 11 healthy volunteers at rest and during steady exercise. For each subject, an allometrically-scaled geometry of the large vessels was created. This geometry extends from the thoracic aorta to the femoral arteries and includes the celiac, superior mesenteric, renal, inferior mesenteric, internal iliac and profunda arteries. During rest, flow was simulated using measured supraceliac (SC) flow at the inlet and a uniform set of impedance boundary conditions at the 11 outlets. To simulate exercise, boundary conditions were modified. Inflow data collected during steady exercise was specified at the inlet and the outlet boundaries were adjusted as follows. The geometry of the structured trees used to compute impedance was scaled to simulate the effective change in the cross-sectional area of resistance vessels and capillaries due to exercise. The resulting computed flow through the IR aorta was compared to measured flow. This method produces good results with a mean difference between paired data to be 1.1 +/- 7 cm(3) s(- 1) at rest and 4.0 +/- 15 cm(3) s(- 1) at exercise. While future work will improve on these results, this method provides groundwork with which to predict the flow distributions in a network due to physiologic regulation.

摘要

我们提出了一种一维(1D)流体动力学模型,该模型可以使用静息时收集的数据预测运动期间的血流和血压。为了便于准确预测血流,我们使用形态学衍生的结构化树开发了一种阻抗边界条件。我们的模型通过计算从胸主动脉延伸至股深动脉的大动脉模型中的血流进行了验证。将计算得到的血流与静息和运动期间肾下(IR)主动脉的实测血流进行了比较。从11名健康志愿者在静息和稳定运动期间收集了相位对比磁共振成像(PC-MRI)数据。对于每个受试者,创建了大血管的异速生长比例几何模型。该几何模型从胸主动脉延伸至股动脉,包括腹腔干、肠系膜上动脉、肾动脉、肠系膜下动脉、髂内动脉和股深动脉。在静息期间,使用入口处测量的腹腔上(SC)血流和11个出口处统一的阻抗边界条件来模拟血流。为了模拟运动,修改了边界条件。在入口处指定稳定运动期间收集的流入数据,并对出口边界进行如下调整。用于计算阻抗的结构化树的几何模型进行缩放,以模拟运动引起的阻力血管和毛细血管横截面积的有效变化。将通过IR主动脉得到的计算血流与实测血流进行比较。该方法产生了良好的结果,配对数据之间的平均差异在静息时为1.1±7 cm³ s⁻¹,在运动时为4.0±15 cm³ s⁻¹。虽然未来的工作将改进这些结果,但该方法为预测由于生理调节导致的网络中的血流分布提供了基础。

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