Atrial fibrillation remains a major cause of morbi-mortality, making mass screening desirable and leading industry to actively develop devices devoted to automatic AF detection. Because there is a tendency toward mobile devices, there is a need for an accurate, rapid method for studying short inter-beat interval time series for real-time automatic medical monitoring. We report a new methodology to efficiently select highly discriminative variables between physiological states, here a normal sinus rhythm or atrial fibrillation. We generate induced variables using the first ten time derivatives of an RR interval time series and formally express a new multivariate metric quantifying their discriminative power to drive state variable selection. When combined with a simple classifier, this new methodology results in 99.9% classification accuracy for 1-min RR interval time series (nâ=â7,400), with heart rate accelerations and jerks being the most discriminant variables. We show that the RR interval time series can be drastically reduced from 60âs to 3âs, with a classification accuracy of 95.0%. We show that heart rhythm characterization is facilitated by induced variables using time derivatives, which is a generic methodology that is particularly suitable to real-time medical monitoring.
Heart rhythm characterization through induced physiological variables.
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作者:Pons Jean-François, Haddi Zouhair, Deharo Jean-Claude, Charaï Ahmed, Bouchakour Rachid, Ouladsine Mustapha, Delliaux Stéphane
| 期刊: | Scientific Reports | 影响因子: | 3.900 |
| 时间: | 2017 | 起止号: | 2017 Jul 11; 7(1):5059 |
| doi: | 10.1038/s41598-017-04998-7 | ||
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