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A Novel Framework for Estimating Time-Varying Multivariate Autoregressive Models and Application to Cardiovascular Responses to Acute Exercise

机译:估算随时间变化的多元自回归模型的新框架及其在急性运动对心血管反应中的应用

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Objective: We present a novel modeling framework for identifying time-varying (TV) couplings between time-series of biomedical relevance. Methods: The proposed methodology is based on multivariate autoregressive (MVAR) models, which have been extensively used to study couplings between biosignals. Contrary to the standard estimation methods that assume time-invariant relationships, we propose a modified recursive Kalman filter (KF) to track changes in the model parameters. We perform model order selection and hyperparameter optimization simultaneously using Genetic Algorithms, greatly improving accuracy and computation time. In addition, we address the effect of residual heteroscedasticity, possibly associated with event-related changes or phase transitions during a given experimental protocol, on the TV-MVAR coupling measures by using Generalized Autoregressive Conditional Heteroskedasticity (GARCH) models to fit the TV-MVAR residuals. Results: Using simulated data, we show that the proposed framework yields more accurate parameter estimates compared to the conventional KF, particularly when the true system parameters exhibit different rate of variations over time. Furthermore, by accounting for heteroskedasticity, we obtain more accurate estimates of the strength and directionality of the underlying couplings. We also use our approach to investigate TV hemodynamic interactions during exercise in young and old healthy adults, as well as individuals with chronic stroke. We extract TV coupling patterns that reflect well known exercise-induced effects on the underlying regulatory mechanisms with excellent time resolution. Conclusion and Significance: The proposed modeling framework can be used to efficiently quantify TV couplings between biosignals. It is fully automated and does not require prior knowledge of the system TV characteristics.
机译:目的:我们提出了一种新颖的建模框架,用于识别生物医学相关性的时间序列之间的时变(TV)耦合。方法:所提出的方法基于多变量自回归(MVAR)模型,该模型已广泛用于研究生物信号之间的耦合。与假定时不变关系的标准估计方法相反,我们提出了一种改进的递归卡尔曼滤波器(KF)来跟踪模型参数的变化。我们使用遗传算法同时执行模型顺序选择和超参数优化,从而大大提高了准确性和计算时间。此外,我们通过使用广义自回归条件异方差(GARCH)模型拟合TV-MVAR,解决了残余异方差在给定实验方案期间可能与事件相关的变化或相变相关的影响对TV-MVAR耦合措施的影响。残差。结果:使用模拟数据,我们表明,与常规KF相比,所提出的框架可产生更准确的参数估计,尤其是当真实系统参数随时间变化的速率不同时。此外,通过考虑异方差,我们可以获得对基础耦合的强度和方向性的更准确的估计。我们还使用我们的方法来调查健康的年轻人和老年人以及慢性中风患者在运动过程中的电视血流动力学相互作用。我们提取电视耦合模式,以良好的时间分辨率反映出众所周知的运动对基础调节机制的影响。结论和意义:所提出的建模框架可用于有效量化生物信号之间的电视耦合。它是完全自动化的,不需要系统TV特性的先验知识。

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