首页> 外文会议>Annual International Conference of the IEEE Engineering in Medicine and Biology Society >A new Frequency Domain Measure of Causality based on Partial Spectral Decomposition of Autoregressive Processes and its Application to Cardiovascular Interactions*
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A new Frequency Domain Measure of Causality based on Partial Spectral Decomposition of Autoregressive Processes and its Application to Cardiovascular Interactions*

机译:基于自回归过程的部分频谱分解的因果关系频域度量及其在心血管相互作用中的应用 *

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We present a new method to quantify in the frequency domain the strength of directed interactions between linear stochastic processes. This issue is traditionally addressed by the directed coherence (DC), a popular causality measure derived from the spectral representation of vector autoregressive (AR) processes. Here, to overcome intrinsic limitations of the DC when it needs to be objectively quantified within specific frequency bands, we propose an approach based on spectral decomposition, which allows to isolate oscillatory components related to the pole representation of the vector AR process in the Z-domain. Relating the causal and non-causal power content of these components we obtain a new spectral causality measure, denoted as pole-specific spectral causality (PSSC). In this study, PSSC is compared with DC in the context of cardiovascular variability analysis, where evaluation of the spectral causality from arterial pressure to heart period variability is of interest to assess baroreflex modulation in the low frequency band (0.04-0-15 Hz). Using both a theoretical example in which baroreflex interactions are simulated, and real cardiovascular variability series measured from a group of healthy subjects during a postural challenge, we show that – compared with DC– PSSC leads to a frequency-specific evaluation of spectral causality which is more objective and more focused on the frequency band of interest.
机译:我们提出了一种在频域中量化线性随机过程之间的有向相互作用的强度的新方法。传统上,此问题是通过有向相干(DC)解决的,它是从矢量自回归(AR)过程的频谱表示中得出的一种流行的因果关系度量。在这里,为了克服需要在特定频带内进行客观量化的DC的固有局限性,我们提出了一种基于频谱分解的方法,该方法可以隔离与Z轴中矢量AR过程的极点表示有关的振荡分量。领域。关联这些组件的因果和非因果功率含量,我们获得了一种新的频谱因果关系度量,称为极点特定频谱因果关系(PSSC)。在这项研究中,在心血管变异性分析的背景下,将PSSC与DC进行了比较,其中评估从动脉压到心脏周期变异性的频谱因果关系对于评估低频带(0.04-0-15 Hz)的压力反射调制很重要。 。使用模拟压力反射相互作用的理论示例以及在姿势挑战期间从一组健康受试者中测得的真实心血管变异性序列,我们表明–与DC – PSSC相比,可以对频谱的因果关系进行特定频率的评估,这是更客观,更专注于感兴趣的频段。

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