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计算机模拟血栓形成:前沿、挑战、未解决的问题和里程碑。

Modeling thrombosis in silico: Frontiers, challenges, unresolved problems and milestones.

机构信息

M.V. Lomonosov Moscow State University, 119991 Moscow, Russia; RUDN University, ul. Miklukho-Maklaya 6, Moscow, 117198, Russia.

Institute for Cardiovascular and Metabolic Research, School of Biological Sciences, University of Reading, Berkshire, RG6 6AX, United Kingdom.

出版信息

Phys Life Rev. 2018 Nov;26-27:57-95. doi: 10.1016/j.plrev.2018.02.005. Epub 2018 Mar 5.

DOI:10.1016/j.plrev.2018.02.005
PMID:29550179
Abstract

Hemostasis is a complex physiological mechanism that functions to maintain vascular integrity under any conditions. Its primary components are blood platelets and a coagulation network that interact to form the hemostatic plug, a combination of cell aggregate and gelatinous fibrin clot that stops bleeding upon vascular injury. Disorders of hemostasis result in bleeding or thrombosis, and are the major immediate cause of mortality and morbidity in the world. Regulation of hemostasis and thrombosis is immensely complex, as it depends on blood cell adhesion and mechanics, hydrodynamics and mass transport of various species, huge signal transduction networks in platelets, as well as spatiotemporal regulation of the blood coagulation network. Mathematical and computational modeling has been increasingly used to gain insight into this complexity over the last 30 years, but the limitations of the existing models remain profound. Here we review state-of-the-art-methods for computational modeling of thrombosis with the specific focus on the analysis of unresolved challenges. They include: a) fundamental issues related to physics of platelet aggregates and fibrin gels; b) computational challenges and limitations for solution of the models that combine cell adhesion, hydrodynamics and chemistry; c) biological mysteries and unknown parameters of processes; d) biophysical complexities of the spatiotemporal networks' regulation. Both relatively classical approaches and innovative computational techniques for their solution are considered; the subjects discussed with relation to thrombosis modeling include coarse-graining, continuum versus particle-based modeling, multiscale models, hybrid models, parameter estimation and others. Fundamental understanding gained from theoretical models are highlighted and a description of future prospects in the field and the nearest possible aims are given.

摘要

止血是一种复杂的生理机制,其作用是在任何情况下维持血管的完整性。它的主要成分是血小板和凝血网络,它们相互作用形成止血塞,即细胞聚集体和凝胶状纤维蛋白凝块的组合,在血管损伤时止血。止血和血栓形成的紊乱会导致出血或血栓形成,是世界上主要的即时死亡和发病原因。止血和血栓形成的调节非常复杂,因为它依赖于血细胞的粘附和力学、各种物质的流体动力学和质量传输、血小板中巨大的信号转导网络以及凝血网络的时空调节。在过去的 30 年中,数学和计算建模越来越多地被用于深入了解这种复杂性,但现有模型的局限性仍然很深。在这里,我们回顾了血栓形成的计算建模的最新方法,特别关注分析未解决的挑战。它们包括:a)与血小板聚集物和纤维蛋白凝胶的物理相关的基本问题;b)用于解决结合细胞粘附、流体动力学和化学的模型的计算挑战和限制;c)生物奥秘和未知的过程参数;d)时空网络调节的生物物理复杂性。考虑了相对经典的方法和用于解决这些方法的创新计算技术;讨论的主题与血栓建模有关,包括粗粒化、连续体与基于粒子的建模、多尺度模型、混合模型、参数估计等。突出了从理论模型中获得的基本理解,并给出了该领域的未来展望和最近可能的目标。

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