Time-domain methods for quantifying dynamic cerebral blood flow autoregulation: Review and recommendations. A white paper from the Cerebrovascular Research Network (CARNet)
Kyriaki Kostoglou, Felipe Bello-Robles, Patrice Brassard, Max Chacon, Jurgen AHR Claassen, Marek Czosnyka, Jan-Willem Elting, Kun Hu, Lawrence Labrecque, Jia Liu, Vasilis Z Marmarelis, Stephen J Payne, Dae Cheol Shin, David Simpson, Jonathan Smirl, Ronney B Panerai, Georgios D Mitsis
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引用次数: 0
Abstract
Cerebral Autoregulation (CA) is an important physiological mechanism stabilizing cerebral blood flow (CBF) in response to changes in cerebral perfusion pressure (CPP). By maintaining an adequate, relatively constant supply of blood flow, CA plays a critical role in brain function. Quantifying CA under different physiological and pathological states is crucial for understanding its implications. This knowledge may serve as a foundation for informed clinical decision-making, particularly in cases where CA may become impaired. The quantification of CA functionality typically involves constructing models that capture the relationship between CPP (or arterial blood pressure) and experimental measures of CBF. Besides describing normal CA function, these models provide a means to detect possible deviations from the latter. In this context, a recent white paper from the Cerebrovascular Research Network focused on Transfer Function Analysis (TFA), which obtains frequency domain estimates of dynamic CA. In the present paper, we consider the use of time-domain techniques as an alternative approach. Due to their increased flexibility, time-domain methods enable the mitigation of measurement/physiological noise and the incorporation of nonlinearities and time variations in CA dynamics. Here, we provide practical recommendations and guidelines to support researchers and clinicians in effectively utilizing these techniques to study CA.
脑自动调节(CA)是一种重要的生理机制,可稳定脑血流(CBF)以应对脑灌注压(CPP)的变化。通过维持充足、相对恒定的血流供应,CA 在大脑功能中发挥着至关重要的作用。量化不同生理和病理状态下的 CA 对了解其影响至关重要。这些知识可作为临床决策的基础,尤其是在 CA 可能受损的情况下。CA 功能的量化通常涉及构建模型,以捕捉 CPP(或动脉血压)与 CBF 实验测量值之间的关系。除了描述正常的 CA 功能外,这些模型还提供了一种检测后者可能出现的偏差的方法。在此背景下,脑血管研究网络(Cerebrovascular Research Network)最近发布的一份白皮书重点介绍了传递函数分析(TFA),该方法可获得动态 CA 的频域估计值。在本文中,我们考虑使用时域技术作为替代方法。时域方法具有更高的灵活性,可以减轻测量/生理噪音,并将非线性和时间变化纳入 CA 动态分析。在此,我们将提供实用的建议和指南,以支持研究人员和临床医生有效利用这些技术来研究 CA。