Morales John, Borzée Pascal, Testelmans Dries, Buyse Bertien, Van Huffel Sabine, Varon Carolina
STADIUS Center for Dynamical Systems, Signal Processing and Data Analytics, Department of Electrical Engineering (ESAT), KU Leuven, Leuven, Belgium.
Leuven.AI - KU Leuven Institute for AI, KU Leuven, Leuven, Belgium.
Front Physiol. 2021 Feb 5;12:623781. doi: 10.3389/fphys.2021.623781. eCollection 2021.
Respiratory sinus arrhythmia (RSA) is a form of cardiorespiratory coupling. It is observed as changes in the heart rate in synchrony with the respiration. RSA has been hypothesized to be due to a combination of linear and nonlinear effects. The quantification of the latter, in turn, has been suggested as a biomarker to improve the assessment of several conditions and diseases. In this study, a framework to quantify RSA using support vector machines is presented. The methods are based on multivariate autoregressive models, in which the present samples of the heart rate variability are predicted as combinations of past samples of the respiration. The selection and tuning of a kernel in these models allows to solve the regression problem taking into account only the linear components, or both the linear and the nonlinear ones. The methods are tested in simulated data as well as in a dataset of polysomnographic studies taken from 110 obstructive sleep apnea patients. In the simulation, the methods were able to capture the nonlinear components when a weak cardiorespiratory coupling occurs. When the coupling increases, the nonlinear part of the coupling is not detected and the interaction is found to be of linear nature. The trends observed in the application in real data show that, in the studied dataset, the proposed methods captured a more prominent linear interaction than the nonlinear one.
呼吸性窦性心律不齐(RSA)是一种心肺耦合形式。它表现为心率随呼吸同步变化。RSA被认为是线性和非线性效应共同作用的结果。反过来,对后者的量化被提议作为一种生物标志物,以改善对多种病症和疾病的评估。在本研究中,提出了一种使用支持向量机量化RSA的框架。这些方法基于多元自回归模型,其中心率变异性的当前样本被预测为呼吸过去样本的组合。在这些模型中内核的选择和调整允许仅考虑线性成分或同时考虑线性和非线性成分来解决回归问题。这些方法在模拟数据以及来自110名阻塞性睡眠呼吸暂停患者的多导睡眠图研究数据集中进行了测试。在模拟中,当发生弱心肺耦合时,这些方法能够捕捉到非线性成分。当耦合增加时,耦合的非线性部分未被检测到,并且发现相互作用是线性性质的。在实际数据应用中观察到的趋势表明,在所研究的数据集中,所提出的方法捕捉到的线性相互作用比非线性相互作用更显著。