Literature DB >> 24252119

A novel method for real-time atrial fibrillation detection in electrocardiograms using multiple parameters.

Xiaochuan Du1, Nini Rao, Mengyao Qian, Dingyu Liu, Jie Li, Wei Feng, Lixue Yin, Xu Chen.   

Abstract

BACKGROUND: Automatic detection of atrial fibrillation (AF) in electrocardiograms (ECGs) is beneficial for AF diagnosis, therapy, and management. In this article, a novel method of AF detection is introduced. Most current methods only utilize the RR interval as a critical parameter to detect AF; thus, these methods commonly confuse AF with other arrhythmias.
METHODS: We used the average number of f waves in a TQ interval as a characteristic parameter in our robust, real-time AF detection method. Three types of clinical ECG data, including ECGs from normal, AF, and non-AF arrhythmia subjects, were downloaded from multiple open access databases to validate the proposed method.
RESULTS: The experimental results suggested that the method could distinguish between AF and normal ECGs with accuracy, sensitivity, and positive predictive values (PPVs) of 93.67%, 94.13%, and 98.69%, respectively. These values are comparable to those of related methods. The method was also able to distinguish between AF and non-AF arrhythmias and had performance indexes (accuracy 94.62%, sensitivity 94.13%, and PPVs 97.67%) that were considerably better than those of other methods.
CONCLUSIONS: Our proposed method has prospects as a practical tool enabling clinical diagnosis, treatment, and monitoring of AF. ©2013 Wiley Periodicals, Inc.

Entities:  

Keywords:  accuracy; atrial fibrillation; detection; electrocardiogram (ECG); real-time

Mesh:

Year:  2013        PMID: 24252119      PMCID: PMC6932470          DOI: 10.1111/anec.12111

Source DB:  PubMed          Journal:  Ann Noninvasive Electrocardiol        ISSN: 1082-720X            Impact factor:   1.468


  15 in total

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9.  Subclinical atrial fibrillation and the risk of stroke.

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Review 10.  How can we best detect atrial fibrillation?

Authors:  K Harris; D Edwards; J Mant
Journal:  J R Coll Physicians Edinb       Date:  2012
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  5 in total

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