American Journal of Cardiology
Volume 107, Issue 10 , Pages 1494-1497, 15 May 2011

A Simple Method to Detect Atrial Fibrillation Using RR Intervals

This work was presented in part at the 31st Annual Scientific Sessions of the Heart Rhythm Society, Denver, Colorado, May 12 to 15, 2010, and published in abstract form (Heart Rhythm 2010;7(suppl):S387, PO6–16).

  • Jie Lian, PhD

      Affiliations

    • Micro Systems Engineering, Inc., Lake Oswego, Oregon
    • Corresponding Author InformationCorresponding author: Tel: 503-744-8634; fax: 503-635-9610
  • ,
  • Lian Wang, MS

      Affiliations

    • Providence Heart and Vascular Institute, Portland, Oregon
  • ,
  • Dirk Muessig, PhD

      Affiliations

    • Micro Systems Engineering, Inc., Lake Oswego, Oregon

Received 17 December 2010; received in revised form 18 January 2011; accepted 18 January 2011. published online 21 March 2011.

Implantable loop recorders have been developed for long-term monitoring of cardiac arrhythmia, but their accuracy for atrial fibrillation (AF) detection is unsatisfactory. We sought to develop and evaluate a simple method for detecting AF using RR intervals. The new AF detection algorithm is based on a map that plots RR intervals versus change of RR intervals (RdR). The map is divided by a grid with 25-ms resolution in 2 axes and nonempty cells are counted to classify AF and non-AF episodes. We evaluated the performance of the method using 4 PhysioNet databases: MIT-BIH AF database, MIT-BIH arrhythmia database, MIT-BIH normal sinus rhythm (NSR) database, and NSR RR interval database (total 145 patients, 1,826 hours NSR, 96 hours AF, and 11 hours other rhythms). Each record is divided into consecutive windows containing 32, 64, or 128 RR intervals. AF detection is performed for each window and classification results are compared to annotations. A window is labeled true AF if >1/2 of cycles in the window are annotated as AF or non-AF otherwise. The RdR map shows signature patterns corresponding to various heart rhythms. Optimal nonempty cell cut-off threshold for AF detection was determined by receiver operating characteristic curve analysis, which yields excellent sensitivity and specificity for window sizes 32 (94.4% and 92.6%, respectively), 64 (95.8% and 94.3%), and 128 (95.9% and 95.4%). In conclusion, a single metric derived from the RdR map can achieve robust AF detection within as few as 32 heart beats.

 

 This work is fully supported by Biotronik SE and Co. KG, Berlin, Germany.

PII: S0002-9149(11)00340-7

doi:10.1016/j.amjcard.2011.01.028

American Journal of Cardiology
Volume 107, Issue 10 , Pages 1494-1497, 15 May 2011