Literature DB >> 23998759

Ventricular cycle length characteristics estimative of prolonged RR interval during atrial fibrillation.

Edward J Ciaccio1, Angelo B Biviano, Alok Gambhir, Andrew J Einstein, Hasan Garan.   

Abstract

BACKGROUND: When atrial fibrillation (AF) is incessant, imaging during a prolonged ventricular RR interval may improve image quality. It was hypothesized that long RR intervals could be predicted from preceding RR values.
METHODS: From the PhysioNet database, electrocardiogram RR intervals were obtained from 74 persistent AF patients. An RR interval lengthened by at least 250 ms beyond the immediately preceding RR interval (termed T0 and T1, respectively) was considered prolonged. A two-parameter scatterplot was used to predict the occurrence of a prolonged interval T0. The scatterplot parameters were: (1) RR variability (RRv) estimated as the average second derivative from 10 previous pairs of RR differences, T13-T2, and (2) Tm-T1, the difference between Tm, the mean from T13 to T2, and T1. For each patient, scatterplots were constructed using preliminary data from the first hour. The ranges of parameters 1 and 2 were adjusted to maximize the proportion of prolonged RR intervals within range. These constraints were used for prediction of prolonged RR in test data collected during the second hour.
RESULTS: The mean prolonged event was 1.0 seconds in duration. Actual prolonged events were identified with a mean positive predictive value (PPV) of 80% in the test set. PPV was >80% in 36 of 74 patients. An average of 10.8 prolonged RR intervals per 60 minutes was correctly identified.
CONCLUSIONS: A method was developed to predict prolonged RR intervals using two parameters and prior statistical sampling for each patient. This or similar methodology may help improve cardiac imaging in many longstanding persistent AF patients. ©2013, The Authors. Journal compilation ©2013 Wiley Periodicals, Inc.

Entities:  

Keywords:  PhysioNet; RR interval; atrial fibrillation; cycle length; imaging

Mesh:

Year:  2013        PMID: 23998759      PMCID: PMC4282186          DOI: 10.1111/pace.12261

Source DB:  PubMed          Journal:  Pacing Clin Electrophysiol        ISSN: 0147-8389            Impact factor:   1.976


  8 in total

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7.  Spectral profiles of complex fractionated atrial electrograms are different in longstanding and acute onset atrial fibrillation atrial electrogram spectra.

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Review 8.  The "post-64" era of coronary CT angiography: understanding new technology from physical principles.

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1.  Use of self-gated radial cardiovascular magnetic resonance to detect and classify arrhythmias (atrial fibrillation and premature ventricular contraction).

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