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动脉组织机械生物学反应的计算机模拟预测:在血管成形术和支架置入术中的应用。

In silico prediction of the mechanobiological response of arterial tissue: application to angioplasty and stenting.

作者信息

Boyle Colin J, Lennon Alexander B, Prendergast Patrick J

机构信息

Trinity Centre for Bioengineering, School of Engineering, University of Dublin, Trinity College, Dublin, Ireland.

出版信息

J Biomech Eng. 2011 Aug;133(8):081001. doi: 10.1115/1.4004492.

Abstract

One way to restore physiological blood flow to occluded arteries involves the deformation of plaque using an intravascular balloon and preventing elastic recoil using a stent. Angioplasty and stent implantation cause unphysiological loading of the arterial tissue, which may lead to tissue in-growth and reblockage; termed "restenosis." In this paper, a computational methodology for predicting the time-course of restenosis is presented. Stress-induced damage, computed using a remaining life approach, stimulates inflammation (production of matrix degrading factors and growth stimuli). This, in turn, induces a change in smooth muscle cell phenotype from contractile (as exists in the quiescent tissue) to synthetic (as exists in the growing tissue). In this paper, smooth muscle cell activity (migration, proliferation, and differentiation) is simulated in a lattice using a stochastic approach to model individual cell activity. The inflammation equations are examined under simplified loading cases. The mechanobiological parameters of the model were estimated by calibrating the model response to the results of a balloon angioplasty study in humans. The simulation method was then used to simulate restenosis in a two dimensional model of a stented artery. Cell activity predictions were similar to those observed during neointimal hyperplasia, culminating in the growth of restenosis. Similar to experiment, the amount of neointima produced increased with the degree of expansion of the stent, and this relationship was found to be highly dependant on the prescribed inflammatory response. It was found that the duration of inflammation affected the amount of restenosis produced, and that this effect was most pronounced with large stent expansions. In conclusion, the paper shows that the arterial tissue response to mechanical stimulation can be predicted using a stochastic cell modeling approach, and that the simulation captures features of restenosis development observed with real stents. The modeling approach is proposed for application in three dimensional models of cardiovascular stenting procedures.

摘要

恢复闭塞动脉的生理血流的一种方法是使用血管内球囊使斑块变形,并使用支架防止弹性回缩。血管成形术和支架植入会导致动脉组织的非生理性负荷,这可能会导致组织向内生长和再阻塞,即“再狭窄”。本文提出了一种预测再狭窄时间进程的计算方法。使用剩余寿命方法计算的应力诱导损伤会刺激炎症(基质降解因子和生长刺激因子的产生)。反过来,这会导致平滑肌细胞表型从收缩型(如在静止组织中存在)转变为合成型(如在生长组织中存在)。在本文中,使用随机方法在晶格中模拟平滑肌细胞的活动(迁移、增殖和分化),以对单个细胞活动进行建模。在简化的加载情况下研究炎症方程。通过将模型响应校准到人体球囊血管成形术研究的结果来估计模型的力学生物学参数。然后使用该模拟方法在带支架动脉的二维模型中模拟再狭窄。细胞活动预测与在新生内膜增生过程中观察到的结果相似,最终导致再狭窄的生长。与实验相似,新生内膜产生的量随着支架扩张程度的增加而增加,并且发现这种关系高度依赖于规定的炎症反应。研究发现,炎症持续时间会影响产生的再狭窄量,并且这种影响在支架大幅扩张时最为明显。总之,本文表明可以使用随机细胞建模方法预测动脉组织对机械刺激的反应,并且该模拟捕捉了真实支架观察到的再狭窄发展特征。该建模方法被提议应用于心血管支架置入手术的三维模型中。

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