Linear and nonlinear parametric model identification to assess granger causality in short-term cardiovascular interactions

L. Faes, G. Nollo, K.H. Chon
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引用次数: 12

Abstract

We assessed directional relationships between short RR interval and systolic arterial pressure (SAP) variability series according to the concept of Granger causality. Causality was quantified as the predictability improvement (PI) of a time series obtained when samples of the other series were used for prediction, i.e. moving from autoregressive (AR) to AR exogenous (ARX) prediction. AR and ARX predictions were performed both by linear and nonlinear parametric models. The PIs of RR given SAP and of SAP given RR, measuring baroreflex and mechanical couplings, were calculated in 15 healthy subjects in the resting supine and upright tilt positions. Using nonlinear models we found a bilateral interaction between the two series, unbalanced towards the mechanical direction at rest and balanced after tilt. The utilization of linear AR and ARX models led to higher prediction accuracy but comparable trends of predictability and causality measures.
评估短期心血管相互作用格兰杰因果关系的线性和非线性参数模型识别
根据格兰杰因果关系的概念,我们评估了短RR间期与收缩压(SAP)变异性系列之间的方向性关系。因果关系被量化为当使用其他序列的样本进行预测时获得的时间序列的可预测性改进(PI),即从自回归(AR)预测转向AR外生(ARX)预测。通过线性和非线性参数模型进行AR和ARX预测。计算15名健康受试者在静息仰卧位和直立倾斜位下,在SAP条件下RR的pi和在RR条件下SAP的pi,测量气压反射和机械耦合。利用非线性模型,我们发现了两个系列之间的双边相互作用,静止时向机械方向不平衡,倾斜后平衡。线性AR和ARX模型的使用导致了更高的预测精度,但可预测性和因果性度量的趋势可比较。
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