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Towards Quantifying Neurovascular Resilience

机译:量化神经血管弹性

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Whilst grading neurovascular abnormalities is critical for prompt surgical repair, no statistical markers are currently available for predicting the risk of adverse events, such as stroke, and the overall resilience of a network to vascular complications. The lack of compact, fast, and scalable simulations with network perturbations impedes the analysis of the vascular resilience to life-threatening conditions, surgical interventions and long-term follow-up. We introduce a graph-based approach for efficient simulations, which statistically estimates biornarkers from a series of perturbations on the patient-specific vascular network. Analog-equivalent circuits are derived from clinical angiographies. Vascular graphs embed mechanical attributes modelling the impedance of a tubular structure with stenosis, tortuosity and complete occlusions. We evaluate pressure and flow distributions, simulating healthy topologies and abnormal variants with perturbations in key pathological scenarios. These describe the intrinsic network resilience to pathology, and delineate the underlying cerebrovascular autoregulation mechanisms. Lastly, a putative graph sampling strategy is devised on the same formulation, to support the topological inference of uncertain neurovascular graphs.
机译:虽然对神经血管异常进行分级对于及时进行手术修复至关重要,但目前尚无统计标记可用于预测不良事件(如中风)的风险以及网络对血管并发症的总体适应能力。缺乏具有网络扰动的紧凑,快速和可扩展的模拟,阻碍了血管对生命威胁条件,手术干预和长期随访的适应力分析。我们引入了一种基于图的方法进行有效模拟,该方法从特定于患者的血管网络上的一系列扰动中统计地估计了生物探测器。模拟等效电路源自临床血管造影术。血管图嵌入了机械特性,该力学特性模拟了具有狭窄,曲折和完全闭塞的管状结构的阻抗。我们评估压力和流量分布,在关键病理情况下模拟健康的拓扑结构和带有扰动的异常变异。这些描述了内在的网络对病理学的适应力,并描绘了潜在的脑血管自动调节机制。最后,在相同的公式上设计了推定的图采样策略,以支持不确定的神经血管图的拓扑推断。

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