Cargando…

Nonlinear analysis of the heartbeats in public patient ECGs using an automated PD2i algorithm for risk stratification of arrhythmic death

Heart rate variability (HRV) reflects both cardiac autonomic function and risk of arrhythmic death (AD). Reduced indices of HRV based on linear stochastic models are independent risk factors for AD in post-myocardial infarct cohorts. Indices based on nonlinear deterministic models have a significant...

Descripción completa

Detalles Bibliográficos
Autores principales: Skinner, James E, Anchin, Jerry M, Weiss, Daniel N
Formato: Texto
Lenguaje:English
Publicado: Dove Medical Press 2008
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2504053/
https://www.ncbi.nlm.nih.gov/pubmed/18728829
_version_ 1782158352527130624
author Skinner, James E
Anchin, Jerry M
Weiss, Daniel N
author_facet Skinner, James E
Anchin, Jerry M
Weiss, Daniel N
author_sort Skinner, James E
collection PubMed
description Heart rate variability (HRV) reflects both cardiac autonomic function and risk of arrhythmic death (AD). Reduced indices of HRV based on linear stochastic models are independent risk factors for AD in post-myocardial infarct cohorts. Indices based on nonlinear deterministic models have a significantly higher sensitivity and specificity for predicting AD in retrospective data. A need exists for nonlinear analytic software easily used by a medical technician. In the current study, an automated nonlinear algorithm, the time-dependent point correlation dimension (PD2i), was evaluated. The electrocardiogram (ECG) data were provided through an National Institutes of Health-sponsored internet archive (PhysioBank) and consisted of all 22 malignant arrhythmia ECG files (VF/VT) and 22 randomly selected arrhythmia files as the controls. The results were blindly calculated by automated software (Vicor 2.0, Vicor Technologies, Inc., Boca Raton, FL) and showed all analyzable VF/VT files had PD2i < 1.4 and all analyzable controls had PD2i > 1.4. Five VF/VT and six controls were excluded because surrogate testing showed the RR-intervals to contain noise, possibly resulting from the low digitization rate of the ECGs. The sensitivity was 100%, specificity 85%, relative risk > 100; p < 0.01, power > 90%. Thus, automated heartbeat analysis by the time-dependent nonlinear PD2i-algorithm can accurately stratify risk of AD in public data made available for competitive testing of algorithms.
format Text
id pubmed-2504053
institution National Center for Biotechnology Information
language English
publishDate 2008
publisher Dove Medical Press
record_format MEDLINE/PubMed
spelling pubmed-25040532008-08-26 Nonlinear analysis of the heartbeats in public patient ECGs using an automated PD2i algorithm for risk stratification of arrhythmic death Skinner, James E Anchin, Jerry M Weiss, Daniel N Ther Clin Risk Manag Original Research Heart rate variability (HRV) reflects both cardiac autonomic function and risk of arrhythmic death (AD). Reduced indices of HRV based on linear stochastic models are independent risk factors for AD in post-myocardial infarct cohorts. Indices based on nonlinear deterministic models have a significantly higher sensitivity and specificity for predicting AD in retrospective data. A need exists for nonlinear analytic software easily used by a medical technician. In the current study, an automated nonlinear algorithm, the time-dependent point correlation dimension (PD2i), was evaluated. The electrocardiogram (ECG) data were provided through an National Institutes of Health-sponsored internet archive (PhysioBank) and consisted of all 22 malignant arrhythmia ECG files (VF/VT) and 22 randomly selected arrhythmia files as the controls. The results were blindly calculated by automated software (Vicor 2.0, Vicor Technologies, Inc., Boca Raton, FL) and showed all analyzable VF/VT files had PD2i < 1.4 and all analyzable controls had PD2i > 1.4. Five VF/VT and six controls were excluded because surrogate testing showed the RR-intervals to contain noise, possibly resulting from the low digitization rate of the ECGs. The sensitivity was 100%, specificity 85%, relative risk > 100; p < 0.01, power > 90%. Thus, automated heartbeat analysis by the time-dependent nonlinear PD2i-algorithm can accurately stratify risk of AD in public data made available for competitive testing of algorithms. Dove Medical Press 2008-04 2008-04 /pmc/articles/PMC2504053/ /pubmed/18728829 Text en © 2008 Skinner et al, publisher and licensee Dove Medical Press Ltd.
spellingShingle Original Research
Skinner, James E
Anchin, Jerry M
Weiss, Daniel N
Nonlinear analysis of the heartbeats in public patient ECGs using an automated PD2i algorithm for risk stratification of arrhythmic death
title Nonlinear analysis of the heartbeats in public patient ECGs using an automated PD2i algorithm for risk stratification of arrhythmic death
title_full Nonlinear analysis of the heartbeats in public patient ECGs using an automated PD2i algorithm for risk stratification of arrhythmic death
title_fullStr Nonlinear analysis of the heartbeats in public patient ECGs using an automated PD2i algorithm for risk stratification of arrhythmic death
title_full_unstemmed Nonlinear analysis of the heartbeats in public patient ECGs using an automated PD2i algorithm for risk stratification of arrhythmic death
title_short Nonlinear analysis of the heartbeats in public patient ECGs using an automated PD2i algorithm for risk stratification of arrhythmic death
title_sort nonlinear analysis of the heartbeats in public patient ecgs using an automated pd2i algorithm for risk stratification of arrhythmic death
topic Original Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2504053/
https://www.ncbi.nlm.nih.gov/pubmed/18728829
work_keys_str_mv AT skinnerjamese nonlinearanalysisoftheheartbeatsinpublicpatientecgsusinganautomatedpd2ialgorithmforriskstratificationofarrhythmicdeath
AT anchinjerrym nonlinearanalysisoftheheartbeatsinpublicpatientecgsusinganautomatedpd2ialgorithmforriskstratificationofarrhythmicdeath
AT weissdanieln nonlinearanalysisoftheheartbeatsinpublicpatientecgsusinganautomatedpd2ialgorithmforriskstratificationofarrhythmicdeath