Methods Inf Med 2010; 49(05): 453-457
DOI: 10.3414/ME09-02-0030
Special Topic – Original Articles
Schattauer GmbH

Assessing Frequency Domain Causality in Cardiovascular Time Series with Instantaneous Interactions

L. Faes
1   Department of Physics, University of Trento, Trento, Italy
,
G. Nollo
1   Department of Physics, University of Trento, Trento, Italy
› Author Affiliations
Further Information

Publication History

received: 05 October 2009

accepted: 12 September 2009

Publication Date:
17 January 2018 (online)

Summary

Background: The partial directed coherence (PDC) is commonly used to assess in the frequency domain the existence of causal relations between two time series measured in conjunction with a set of other time series. Although the multivariate autoregressive (MVAR) model traditionally used for PDC computation accounts only for lagged effects, instantaneous effects cannot be neglected in the analysis of cardiovascular time series.

Objectives: We propose the utilization of an extended MVAR model for PDC computation, in order to improve the evaluation of frequency domain causality in the presence of zero-lag correlations among multivariate time series.

Methods: A procedure for the identification of a MVAR model combining instantaneous and lagged effects is introduced. The coefficients of the extended model are used to estimate an extended PDC (EPDC). EPDC is compared to the traditional PDC on a simulated MVAR process and on real cardiovascular variability series.

Results: Simulation results evidence that the presence of zero-lag correlations may produce misleading PDC profiles, while the correct causality patterns can be recovered using EPDC. Application on real data leads to spectral causality estimates which are better interpretable in terms of the known cardiovascular physiology using EPDC than PDC.

Conclusions: This study emphasizes the necessity of including instantaneous effects in the MVAR model used for the computation of PDC in the presence of significant zero-lag correlations in multivariate time series.

 
  • References

  • 1 Porta A, Aletti F, Vallais F, Baselli G. Multimodal signal processing for the analysis of cardiovascular variability. Philos Transact A 2009; 367: 391-409.
  • 2 Granger CWJ. Investigating causal relations by econometric models and cross-spectral methods. Econometrica 1969; 37: 424-438.
  • 3 Baselli G, Cerutti S, Livraghi M, Meneghini C, Pagani M, Rimoldi O. Causal relationship between heart rate and arterial blood pressure variability signals. Med Biol Eng Comput 1988; 26: 374-378.
  • 4 Porta A, Furlan R, Rimoldi O, Pagani M, Malliani A, van de Borne P. Quantifying the strength of the linear causal coupling in closed loop interacting cardiovascular variability signals. Biol Cybern 2002; 86: 241-251.
  • 5 Nollo G, Faes L, Porta A, Antolini R, Ravelli F. Exploring directionality in spontaneous heart period and systolic pressure variability interactions in humans: implications in the evaluation of the baroreflex gain. Am J Physiol 2005; 288: H1777-H1785.
  • 6 Baccala LA, Sameshima K. Partial directed coherence: a new concept in neural structure determination. Biol Cybern 2001; 84: 463-474.
  • 7 Korhonen I, Mainardi L, Loula P, Carrault G, Basel-li G, Bianchi A. Linear multivariate models for physiological signal analysis: theory. Comput Meth Prog Biomed 1996; 51: 85-94.
  • 8 Kay SM. Modern spectral estimation. Theory & application. Englewood Cliffs, New Jersey: Prentice Hall; 1988
  • 9 Baselli G, Porta A, Rimoldi O, Pagani M, Cerutti S. Spectral decomposition in multichannel recordings based on multivariate parametric identification. IEEE Trans Biomed Eng 1997; 44: 1092-1101.
  • 10 Baccalà LA, Sameshima K, Takahashi DY. Generalized partial directed coherence. Proc 15th IEEE Conf Digital Signal Processing, Cardiff, UK: 2007. pp 163-166.
  • 11 Baselli G, Cerutti S, Badilini F, Biancardi L, Porta A, Pagani M, Lombardi F, Rimoldi O, Furlan R, Malliani A. Model for the assessment of heart period and arterial pressure variability interactions and of respiration influences. Med Biol Eng Comput 1994; 32: 143-152.
  • 12 Nollo G, Faes L, Porta A, Pellegrini B, Ravelli F, Del Greco M, Disertori M, Antolini R. Evidence of unbalanced regulatory mechanism of heart rate and systolic pressure after acute myocardial infarction. Am J Physiol 2002; 83: H1200-H1207.
  • 13 Montano N, Gnecchi Ruscone T, Porta A, Lombardi F, Pagani M, Malliani A. Power spectrum analysis of heart rate variability to assess the changes in sympathovagal balance during graded orthostatic tilt. Circulation 1994; 90: 1826-1831.
  • 14 Saul JP, Berger RD, Albrecht P, Stein SP, Chen MH, Cohen RJ. Transfer function analysis of the circulation: unique insights into cardiovascular regulation. Am J Physiol 1991; 261: H1231-H1245.