Applying independent component analysis to heart rate and blood pressure variations

H.W. Chili, C. Hsu
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引用次数: 2

Abstract

The variations of heart rate (HR) and blood pressure (BP) reflect autonomic control. Most studies used spectral analysis and time-domain statistics to assess autonomic functions. Such methods provide some parameters to represent sympathetic and vagal activities. Independent component analysis (ICA) is a statistical signal processing method for blind separation. Assume that HR and BP pressure variations are linearly composed by some independent hidden signals and these hidden signals represent some meaningful physiological signals such as cardiac nervous outflow and hormonal level. Applying ICA to HR and BP variations signals will be expected to extract these hidden signals. In this study, the HR and BP variations data of six subjects were measured and the beat-to-beat RR intervals, systolic BP, and diastolic BP were considered as the mixed signals to be decomposed. The results from ICA showed that these signals were decomposed to noise component, dominate oscillation component and slow-changed component. Dominate oscillation component is similar to the spectral component observed from traditional spectral analysis but show a de-noised form. The physiological meaning of slow-changed component remains to be further studied. This study shows that ICA will be helpful for HR and BP variation analysis
将独立成分分析应用于心率和血压变化
心率(HR)和血压(BP)的变化反映了自主控制。大多数研究使用频谱分析和时域统计来评估自主神经功能。这种方法提供了一些参数来表示交感神经和迷走神经的活动。独立分量分析(ICA)是一种用于盲分离的统计信号处理方法。假设HR和BP的变化是由一些独立的隐藏信号线性组成的,这些隐藏信号代表了一些有意义的生理信号,如心脏神经流出量和激素水平。将ICA应用于HR和BP变化信号将有望提取这些隐藏信号。本研究测量了6名受试者的心率和血压变化数据,将搏动间期、收缩压和舒张压作为混合信号进行分解。ICA分析结果表明,这些信号被分解为噪声分量、主导振荡分量和慢变分量。主导振荡分量与传统频谱分析中观测到的频谱分量相似,但表现为去噪形式。慢变组分的生理意义有待进一步研究。本研究表明,ICA有助于HR和BP的变异分析
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