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首页> 外文期刊>Journal of Biomechanics >A computational model for prediction of clot platelet content in flow-diverted intracranial aneurysms
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A computational model for prediction of clot platelet content in flow-diverted intracranial aneurysms

机译:流动转向颅内动脉瘤中凝块血小板含量预测的计算模型

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摘要

Treatment of intracranial aneurysms with flow-diverting stents is a safe and minimally invasive technique. The goal is stable embolisation that facilitates stent endothelialisation, and elimination of the aneurysm. However, it is not fully understood why some aneurysms fail to develop a stable clot even with sufficient levels of flow reduction. Computational prediction of thrombus formation dynamics can help predict the post-operative response in such challenging cases. In this work, we propose a new model of thrombus formation and platelet dynamics inside intracranial aneurysms. Our novel contribution combines platelet activation and transport with fibrin generation, which is key to characterising stable and unstable thrombus. The model is based on two types of thrombus inside aneurysms: red thrombus (fibrin- and erythrocyte-rich) can be found in unstable clots, while white thrombus (fibrin- and platelet-rich) can be found in stable clots. The thrombus generation model is coupled to a CFD model and the flow-induced platelet index (FiPi) is defined as a quantitative measure of clot stability. Our model is validated against an in vitro phantom study of two flow-diverting stents with different sizing. We demonstrate that our model accurately predicts the lower thrombus stability in the oversized stent scenario. This opens possibilities for using computational simulations to improve endovascular treatment planning and reduce adverse events, such as delayed haemorrhage of flow-diverted aneurysms. (C) 2019 The Authors. Published by Elsevier Ltd.
机译:用流动转移支架治疗颅内动脉瘤是一种安全和微创技术。目标是稳定的栓塞,便于支架内皮化,并消除动脉瘤。然而,它不完全理解为什么一些动脉瘤也无法开发稳定的凝块,即使有足够的流量减少。血栓形成动态的计算预测可以帮助预测在这种挑战性案例中的术后响应。在这项工作中,我们提出了一种颅内动脉瘤内部血栓形成和血小板动力学模型。我们的新颖贡献将血小板激活和用纤维蛋白生成的运输结合了,这是表征稳定和不稳定血栓的关键。该模型基于动脉瘤中的两种血栓:红色血栓(纤维蛋白和红细胞)可以在不稳定的凝块中找到,而白色血栓(纤维蛋白和富含纤维蛋白和富含血小板)可以在稳定的凝块中找到。血栓生成模型耦合到CFD模型,并且流动诱导的血小板指数(FIPI)被定义为凝块稳定性的定量测量。我们的模型对两个流动转移支架的体外虚线研究验证了不同尺寸。我们展示了我们的模型准确地预测了超大的支架情景中的血栓稳定性。这将打开使用计算模拟以改善血管内治疗计划和减少不良事件的可能性,例如流动转移动脉瘤的延迟出血。 (c)2019年作者。 elsevier有限公司出版

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