Radial basis function neural networks for the characterization of heart rate variability dynamics

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摘要

This study introduces new neural network based methods for the assessment of the dynamics of the heart rate variability (HRV) signal. The heart rate regulation is assessed as a dynamical system operating in chaotic regimes. Radial-basis function (RBF) networks are applied as a tool for learning and predicting the HRV dynamics. HRV signals are analyzed from normal subjects before and after pharmacological autonomic nervous system (ANS) blockade and from diabetic patients with dysfunctional ANS. The heart rate of normal subjects presents notable predictability. The prediction error is minimized, in fewer degrees of freedom, in the case of diabetic patients. However, for the case of pharmacological ANS blockade, although correlation dimension approaches indicate significant reduction in complexity, the RBF networks fail to reconstruct adequately the underlying dynamics. The transient attributes of the HRV dynamics under the pharmacological disturbance is elucidated as the explanation for the prediction inability.

论文关键词:Neural network learning,Nonlinear prediction,Nonlinear dynamics,Autonomic nervous system,Heart rate,Heart rate variability

论文评审过程:Received 23 March 1998, Revised 17 June 1998, Accepted 18 August 1998, Available online 10 March 1999.

论文官网地址:https://doi.org/10.1016/S0933-3657(98)00055-4