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首页> 外文期刊>EURASIP journal on advances in signal processing >Multimodal Pressure-Flow Analysis: Application of Hilbert Huang Transform in Cerebral Blood Flow Regulation
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Multimodal Pressure-Flow Analysis: Application of Hilbert Huang Transform in Cerebral Blood Flow Regulation

机译:多峰压力流分析:Hilbert Huang变换在脑血流调节中的应用

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Quantification of nonlinear interactions between two nonstationary signals presents a computational challenge in different research fields, especially for assessments of physiological systems. Traditional approaches that are based on theories of stationary signals cannot resolve nonstationarity-related issues and, thus, cannot reliably assess nonlinear interactions in physiological systems. In this review we discuss a new technique called multimodal pressure flow (MMPF) method that utilizes Hilbert-Huang transformation to quantify interaction between nonstationary cerebral blood flow velocity (BFV) and blood pressure (BP) for the assessment of dynamic cerebral autoregulation (CA). CA is an important mechanism responsible for controlling cerebral blood flow in responses to fluctuations in systemic BP within a few heart-beats. The MMPF analysis decomposes BP and BFV signals into multiple empirical modes adaptively so that the fluctuations caused by a specific physiologic process can be represented in a corresponding empirical mode. Using this technique, we showed that dynamic CA can be characterized by specific phase delays between the decomposed BP and BFV oscillations, and that the phase shifts are significantly reduced in hypertensive, diabetics and stroke subjects with impaired CA. Additionally, the new technique can reliably assess CA using both induced BP/BFV oscillations during clinical tests and spontaneous BP/BFV fluctuations during resting conditions.
机译:量化两个非平稳信号之间的非线性相互作用在不同的研究领域提出了计算难题,尤其是对生理系统的评估。基于平稳信号理论的传统方法无法解决与平稳性相关的问题,因此无法可靠地评估生理系统中的非线性相互作用。在这篇综述中,我们讨论了一种称为多峰压力流(MMPF)方法的新技术,该方法利用希尔伯特-黄(Hilbert-Huang)变换来量化非平稳性脑血流速度(BFV)和血压(BP)之间的相互作用,以评估动态脑自动调节(CA) 。 CA是一种重要的机制,负责在少数心跳内响应系统性BP的波动来控制脑部血流。 MMPF分析将BP和BFV信号自适应地分解为多个经验模式,从而可以在相应的经验模式下表示由特定生理过程引起的波动。使用这种技术,我们显示出动态CA可以通过分解的BP和BFV振荡之间的特定相位延迟来表征,并且在CA受损的高血压,糖尿病和中风患者中,相移显着降低。此外,这项新技术可以利用临床测试期间诱发的BP / BFV振荡和静息状态下的自发BP / BFV波动来可靠地评估CA。

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