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用于提高心率变异性时频分析准确性的个体时间相关频谱边界。

Individual time-dependent spectral boundaries for improved accuracy in time-frequency analysis of heart rate variability.

作者信息

Goren Yael, Davrath Linda R, Pinhas Itzhak, Toledo Eran, Akselrod Solange

机构信息

The Abramson Center for Medical Physics, Sackler Faculty of Exact Sciences, Tel-Aviv University, Israel.

出版信息

IEEE Trans Biomed Eng. 2006 Jan;53(1):35-42. doi: 10.1109/TBME.2005.859784.

Abstract

Heart rate variability (HRV) is a major noninvasive technique for evaluating the autonomic nervous system (ANS). Use of time-frequency approach to analyze HRV allows investigating the ANS behavior from the power integrals, as a function of time, in both steady-state and non steady-state. Power integrals are examined mainly in the low-frequency and the high-frequency bands. Traditionally, constant boundaries are chosen to determine the frequency bands of interest. However, these ranges are individual, and can be strongly affected by physiologic conditions (body position, breathing frequency). In order to determine the dynamic boundaries of the frequency bands more accurately, especially during autonomic challenges, we developed an algorithm for the detection of individual time-dependent spectral boundaries (ITSB). The ITSB was tested on recordings from a series of standard autonomic maneuvers with rest periods between them, and the response to stand was compared to the known physiological response. A major advantage of the ITSB is the ability to reliably define the mid-frequency range, which provides the potential to investigate the physiologic importance of this range.

摘要

心率变异性(HRV)是评估自主神经系统(ANS)的一种主要非侵入性技术。使用时频方法分析HRV能够从功率积分来研究ANS行为,功率积分是时间的函数,涵盖稳态和非稳态情况。主要在低频和高频波段检查功率积分。传统上,选择固定边界来确定感兴趣的频段。然而,这些范围因人而异,并且会受到生理状况(身体姿势、呼吸频率)的强烈影响。为了更准确地确定频段的动态边界,尤其是在自主神经挑战期间,我们开发了一种用于检测个体时间依赖性频谱边界(ITSB)的算法。在一系列标准自主操作的记录上对ITSB进行了测试,这些操作之间有休息期,并将站立反应与已知的生理反应进行了比较。ITSB的一个主要优点是能够可靠地定义中频范围,这为研究该范围的生理重要性提供了潜力。

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