心血管系统参数局部敏感性分析

R. Gul, S. Bernhard
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引用次数: 3

摘要

心血管疾病是当今医学的主要问题之一,世界范围内患者人数不断增加。为了治疗这些类型的疾病,事先了解心血管系统的功能和功能障碍对于在早期阶段识别疾病至关重要。数学建模是预测和研究心血管系统的有力工具。研究表明,将电路与流体流动类比的Windkessel模型是模拟人体心血管系统的有效方法。本研究的目的是推导出手臂动脉的计算心血管模型,并通过参数敏感性分析来分析血管网络结构的行为。敏感性分析对心血管模型的参数估计和简化至关重要。在优化实验设计(OED)中,灵敏度分析用于构建实验和相应的模型,以有效的方式解释心血管测量结果。在本文中,我们将灵敏度分析应用于手臂动脉的线性弹性模型,以找到指导我们估计心血管网络参数的敏感参数及其置信区间。为了计算可测量状态变量压力和流量的百分比影响,相对于心血管输入参数的百分比变化,我们使用规范。该方法使我们能够量化和验证灵敏度分析得到的结果。对血流阻力、动脉顺应性和血流惯量的敏感性表明,血流阻力和血管直径是最敏感的参数。这些参数在严重狭窄和动脉瘤的诊断中起着关键作用。相比之下,壁厚和弹性模量则不太敏感。
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Local sensitivity analysis of cardiovascular system parameters
Cardiovascular disease is one of the major problems in todays medicine and the number of patients increase worldwide. To treat these type of diseases, prior knowledge about function and dysfunction of the cardiovascular system is essential to identify the disease in an early stage. Mathematical modeling is a powerful tool for prediction and investigation of the cardiovascular system. It has been shown, that the Windkessel model, drawing an analogy between electrical circuits and fluid flow, is an eective method to model the human cardiovascular system. The aims of this work are the derivation of a computational cardiovascular model for the arm arteries, and to analyze the behavior of the vascular network structure by parameter sensitivity analysis. Sensitivity analysis is essential for parameter estimation and simplification of cardiovascular models. In optimal experiment design (OED) sensitivity analysis is used to construct experiments and corresponding models that allow the interpretation of cardiovascular measurements in an eective manner. In this paper we have applied sensitivity analysis to a linear elastic model of the arm arteries to find sensitive parameters and their confidence intervals that guide us to the estimation of cardiovascular network parameters. To calculate the percentage eect on the measurable state variables pressure and flow, with respect to percentage change in cardiovascular input parameters, we use norms. This method allows us to quantify and verify results obtained by sensitivity analysis. The sensitivities with respect to flow resistance, arterial compliance and flow inertia, reveal that the flow resistance and diameter of the vessels are most sensitive parameters. Those parameters play a key role in diagnoses of severe stenosis and aneurysms. In contrast, wall thickness and elastic modulus are found to be less sensitive.
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