Choi H G, Mukkamala R, Moody G B, Mark R G
Kumoh National Univ. of Tech., Kumi, Korea.
Comput Cardiol. 2001;28:53-6.
Numerous studies of short-term beat-to-beat variability in cardiovascular signals have not resolved the debate about the completeness of linear analysis techniques. This aim of this paper is to evaluate further the role of nonlinearities in short-term, beat-to-beat variability. We compared linear autoregressive moving average (ARMA) and nonlinear neural network (NN) models for predicting instantaneous heart rate (HR) and mean arterial blood pressure (BP) from past HR and BP. To evaluate these models, we used HR and BP time series from the MIMIC database. Experimental results indicate that NN-based nonlinearities do not play a significant role and suggest that ARMA linear analysis techniques provide adequate characterization of the system dynamics responsible for generating short-term, beat-to-beat variability.
许多关于心血管信号短期逐搏变异性的研究尚未解决关于线性分析技术完整性的争论。本文的目的是进一步评估非线性在短期逐搏变异性中的作用。我们比较了线性自回归移动平均(ARMA)模型和非线性神经网络(NN)模型,以根据过去的心率(HR)和平均动脉血压(BP)预测瞬时心率(HR)和平均动脉血压(BP)。为了评估这些模型,我们使用了MIMIC数据库中的HR和BP时间序列。实验结果表明,基于神经网络的非线性因素不起显著作用,并表明ARMA线性分析技术能够充分表征负责产生短期逐搏变异性的系统动力学。