Faes Luca, Nollo Giandomenico, Chon Ki H
Lab. Biosegnali, Dipartimento di Fisica, Università di Trento, via Sommarive 14, Povo, Trento, 38050, Italy,
Ann Biomed Eng. 2008 Mar;36(3):381-95. doi: 10.1007/s10439-008-9441-z. Epub 2008 Jan 29.
A method for assessing Granger causal relationships in bivariate time series, based on nonlinear autoregressive (NAR) and nonlinear autoregressive exogenous (NARX) models is presented. The method evaluates bilateral interactions between two time series by quantifying the predictability improvement (PI) of the output time series when the dynamics associated with the input time series are included, i.e., moving from NAR to NARX prediction. The NARX model identification was performed by the optimal parameter search (OPS) algorithm, and its results were compared to the least-squares method to determine the most appropriate method to be used for experimental data. The statistical significance of the PI was assessed using a surrogate data technique. The proposed method was tested with simulation examples involving short realizations of linear stochastic processes and nonlinear deterministic signals in which either unidirectional or bidirectional coupling and varying strengths of interactions were imposed. It was found that the OPS-based NARX model was accurate and sensitive in detecting imposed Granger causality conditions. In addition, the OPS-based NARX model was more accurate than the least squares method. Application to the systolic blood pressure and heart rate variability signals demonstrated the feasibility of the method. In particular, we found a bilateral causal relationship between the two signals as evidenced by the significant reduction in the PI values with the NARX model prediction compared to the NAR model prediction, which was also confirmed by the surrogate data analysis. Furthermore, we found significant reduction in the complexity of the dynamics of the two causal pathways of the two signals as the body position was changed from the supine to upright. The proposed is a general method, thus, it can be applied to a wide variety of physiological signals to better understand causality and coupling that may be different between normal and diseased conditions.
提出了一种基于非线性自回归(NAR)和非线性自回归外生(NARX)模型评估双变量时间序列格兰杰因果关系的方法。该方法通过量化当包含与输入时间序列相关的动态时输出时间序列的预测性改善(PI)来评估两个时间序列之间的双向相互作用,即从NAR预测转变为NARX预测。NARX模型识别通过最优参数搜索(OPS)算法进行,并将其结果与最小二乘法进行比较,以确定用于实验数据的最合适方法。使用替代数据技术评估PI的统计显著性。所提出的方法通过模拟示例进行测试,这些示例涉及线性随机过程的短实现和非线性确定性信号,其中施加了单向或双向耦合以及不同强度的相互作用。结果发现,基于OPS的NARX模型在检测施加的格兰杰因果关系条件方面准确且灵敏。此外,基于OPS的NARX模型比最小二乘法更准确。将该方法应用于收缩压和心率变异性信号证明了其可行性。特别是,我们发现与NAR模型预测相比,NARX模型预测的PI值显著降低,这证明了两个信号之间存在双向因果关系,替代数据分析也证实了这一点。此外,我们发现当身体位置从仰卧变为直立时,两个信号的两条因果路径的动态复杂性显著降低。所提出的方法是一种通用方法,因此,它可以应用于各种各样的生理信号,以更好地理解正常和患病状态下可能不同的因果关系和耦合。