Jump to ContentJump to Main Navigation

Online

99,00 € / $149.00*

* Prices subject to change. Shipping costs will be added if applicable.
Publication Date:
October 2006
ISSN:
1862-278X
DOI:
10.1515/BMT.2006.040

See all formats and pricing

Online
Individual Subscription Online only
Euro [D] 99.00
RRP for USA, Canada, Mexico
US$ 149.00 *
Print
Individual Subscription Online only
Euro [D] 506.00
RRP for USA, Canada, Mexico
US$ 759.00 *
Print + Online
Individual Subscription Online only
Euro [D] 608.00
RRP for USA, Canada, Mexico
US$ 911.00 *
*Prices subject to change. Shipping costs will be added if applicable.

Editor-in-Chief: Dössel, Olaf

Editorial Board Member: Augat, Peter / Bösiger, Peter / Gehring, Hartmut / Haueisen, Jens / Leonhardt, Steffen / Niederlag, Wolfgang / Radermacher, Klaus M. / Schmitz, Georg / Witte, Herbert / Boenick, Ulrich / Lenthe, Harry / Penzel, Thomas / Clasbrummel, Bernhard / Robitzki, Andrea A. / Scholz, Jörg / Snedeker, Jess G. / Wintermantel, Erich / Jockenhoevel, Stefan / Gilly, Hermann / Werner, Jürgen / Plank, Gernot / Stieglitz, Thomas

6 Issues per year

Increased IMPACT FACTOR 2011: 0.855
5-year IMPACT FACTOR: 0.745
Rank 56 out of 72 in category Biomedical Engineering and rank 20 out of 23 in category Medical Informatics in the 2011 Thomson Reuters Journal Citation Report/Science Edition

VolumeIssuePage

Issues

Modelling long-term heart rate variability: an ARFIMA approach

Argentina S. Leite1 / Ana Paula Rocha2 / M. Eduarda Silva3 / Ovídio Costa4

1.

2.

3.

4.

Corresponding author: Argentina Soeima Leite, Departamento de Matemática Aplicada, Faculdade de Ciências, Universidade do Porto, Rua do Campo Alegre 687, 4169-007 Porto, Portugal Phone: +351-220-100 869 Fax: +351-220-100 809

Citation Information: Biomedizinische Technik. Volume 51, Issue 4, Pages 215–219, ISSN (Online) 1862-278X, ISSN (Print) 0013-5585, DOI: 10.1515/BMT.2006.040, October 2006

Publication History:
Published Online:
2006-10-25

Abstract

Long-term heart rate variability (HRV) series can be described by time-variant autoregressive modelling. HRV recordings show dependence between distant observations that is not negligible, suggesting the existence of long-range correlations. In this work, selective adaptive segmentation combined with fractionally integrated autoregressive moving-average models is used to capture long memory in HRV recordings. This approach leads to an improved description of the low- and high-frequency components in HRV spectral analysis. Moreover, it is found that in the 24-h recording of a case report, the long-memory parameter presents a circadian variation, with different regimes for day and night periods.

Keywords: long-range correlations; selective adaptive segmentation; spectral analysis

Comments (0)

Please log in or register to comment.