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首页> 外文期刊>Medical and Biological Engineering and Computing: Journal of the International Federation for Medical and Biological Engineering >Analysis of dynamic cerebral autoregulation using an ARX model based on arterial blood pressure and middle cerebral artery velocity simulation.
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Analysis of dynamic cerebral autoregulation using an ARX model based on arterial blood pressure and middle cerebral artery velocity simulation.

机译:使用基于动脉血压和大脑中动脉速度模拟的ARX模型对动态大脑自动调节进行分析。

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The study aimed to model the cerebrovascular system, using a linear ARX model based on data simulated by a comprehensive physiological model, and to assess the range of applicability of linear parametric models. Arterial blood pressure (ABP) and middle cerebral arterial blood flow velocity (MCAV) were measured from 11 subjects non-invasively, following step changes in ABP, using the thigh cuff technique. By optimising parameters associated with autoregulation, using a non-linear optimisation technique, the physiological model showed a good performance (r=0.83+/-0.14) in fitting MCAV. An additional five sets of measured ABP of length 236+/-154 s were acquired from a subject at rest. These were normalised and rescaled to coefficients of variation (CV=SD/mean) of 2% and 10% for model comparisons. Randomly generated Gaussian noise with standard deviation (SD) from 1% to 5% was added to both ABP and physiologically simulated MCAV (SMCAV), with 'normal' and 'impaired' cerebral autoregulation, to simulate the real measurement conditions. ABP and SMCAV were fitted by ARX modelling, and cerebral autoregulation was quantified by a 5 s recovery percentage R5% of the step responses of the ARX models. The study suggests that cerebral autoregulation can be assessed by computing the R5% of the step response of an ARX model of appropriate order, even when measurement noise is considerable.
机译:该研究旨在通过基于综合生理模型模拟的数据的线性ARX模型对脑血管系统进行建模,并评估线性参数模型的适用范围。使用大腿袖套技术,通过无创测量11位受试者的动脉血压(ABP)和大脑中动脉血流速度(MCAV)。通过使用非线性优化技术优化与自动调节相关的参数,该生理模型在拟合MCAV方面显示出良好的性能(r = 0.83 +/- 0.14)。从静止的受试者获得另外五组长度为236 +/- 154s的测量的ABP。将它们标准化并重新缩放为2%和10%的变异系数(CV = SD /平均值)以进行模型比较。将随机产生的标准偏差(SD)为1%至5%的高斯噪声添加到ABP和生理模拟的MCAV(SMCAV)中,并具有“正常”和“受损”的大脑自动调节功能,以模拟实际的测量条件。通过ARX模型对ABP和SMCAV进行拟合,并通过ARX模型的阶跃响应的5 s恢复百分比R5%对大脑的自动调节进行定量。研究表明,即使测量噪声相当大,也可以通过计算适当阶数的ARX模型的阶跃响应的R5%来评估大脑的自动调节能力。

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