Faes Luca, Chon Ki H, Nollo Giandomenico
IEEE Trans Biomed Eng. 2009 Feb;56(2):205-9. doi: 10.1109/TBME.2008.2008726. Epub 2008 Nov 7.
A method to perform time-varying (TV) nonlinear prediction of biomedical signals in the presence of nonstationarity is presented in this paper. The method is based on identification of TV autoregressive models through expansion of the TV coefficients onto a set of basis functions and on k-nearest neighbor local linear approximation to perform nonlinear prediction. The approach provides reasonable nonlinear prediction even for TV deterministic chaotic signals, which has been a daunting task to date. Moreover, the method is used in conjunction with a TV surrogate method to provide statistical validation that the presence of nonlinearity is not due to nonstationarity itself. The approach is tested on simulated linear and nonlinear signals reproducing both time-invariant (TIV) and TV dynamics to assess its ability to quantify TIV and TV degrees of predictability and detect nonlinearity. Applicative examples relevant to heart rate variability and EEG analyses are then illustrated.
本文提出了一种在存在非平稳性的情况下对生物医学信号进行时变(TV)非线性预测的方法。该方法基于通过将时变系数扩展到一组基函数上来识别时变自回归模型,并基于k近邻局部线性逼近进行非线性预测。即使对于时变确定性混沌信号,该方法也能提供合理的非线性预测,而这在迄今为止一直是一项艰巨的任务。此外,该方法与一种时变替代方法结合使用,以提供统计验证,即非线性的存在并非由于非平稳性本身。该方法在模拟的线性和非线性信号上进行测试,这些信号再现了时不变(TIV)和时变动态,以评估其量化TIV和时变可预测性程度以及检测非线性的能力。然后给出了与心率变异性和脑电图分析相关的应用示例。