Henley Brandon Christian, Shin Dae C, Zhang Rong, Marmarelis Vasilis Z
IEEE Trans Biomed Eng. 2017 May;64(5):1078-1088. doi: 10.1109/TBME.2016.2588438. Epub 2016 Jul 9.
As an extension to our study comparing a putative compartmental and data-based model of linear dynamic cerebral autoregulation (CA) and CO-vasomotor reactivity (VR), we study the CA-VR process in a nonlinear context.
We use the concept of principal dynamic modes (PDM) in order to obtain a compact and more easily interpretable input-output model. This in silico study permits the use of input data with a dynamic range large enough to simulate the classic homeostatic CA and VR curves using a putative structural model of the regulatory control of the cerebral circulation. The PDM model obtained using theoretical and experimental data are compared.
It was found that the PDM model was able to reflect accurately both the simulated static CA and VR curves in the associated nonlinear functions (ANFs). Similar to experimental observations, the PDM model essentially separates the pressure-flow relationship into a linear component with fast dynamics and nonlinear components with slow dynamics. In addition, we found good qualitative agreement between the PDMs representing the dynamic theoretical and experimental CO-flow relationship.
Under the modeling assumption and in light of other experimental findings, we hypothesize that PDMs obtained from experimental data correspond with passive fluid dynamical and active regulatory mechanisms.
Both hypothesis-based and data-based modeling approaches can be combined to offer some insight into the physiological basis of PDM model obtained from human experimental data. The PDM modeling approach potentially offers a practical way to quantify the status of specific regulatory mechanisms in the CA-VR process.
作为我们对线性动态脑自动调节(CA)和CO血管运动反应性(VR)的假定分区模型和基于数据的模型进行比较研究的扩展,我们在非线性背景下研究CA-VR过程。
我们使用主动态模式(PDM)的概念来获得一个紧凑且更易于解释的输入-输出模型。这项计算机模拟研究允许使用动态范围足够大的输入数据,以使用脑循环调节控制的假定结构模型来模拟经典的稳态CA和VR曲线。比较使用理论和实验数据获得的PDM模型。
发现PDM模型能够准确反映相关非线性函数(ANF)中模拟的静态CA和VR曲线。与实验观察结果类似,PDM模型基本上将压力-流量关系分为具有快速动力学的线性成分和具有缓慢动力学的非线性成分。此外,我们发现代表动态理论和实验CO-流量关系的PDM之间在定性上有良好的一致性。
在建模假设下并根据其他实验结果,我们假设从实验数据获得的PDM与被动流体动力学和主动调节机制相对应。
基于假设和基于数据的建模方法可以结合起来,以深入了解从人体实验数据获得的PDM模型的生理基础。PDM建模方法可能提供一种实用的方法来量化CA-VR过程中特定调节机制的状态。