| Literature DB >> 29061181 |
Yi Xin1, Yizhang Zhao2.
Abstract
BACKGROUND: This study proposed an effective method based on the wavelet multi-scale α-entropy features of heart rate variability (HRV) for the recognition of paroxysmal atrial fibrillation (PAF). This new algorithm combines wavelet decomposition and non-linear analysis methods. The PAF signal, the signal distant from PAF, and the normal sinus signals can be identified and distinguished by extracting the characteristic parameters from HRV signals and analyzing their quantification indexes. The original ECG signals for QRS detection and HRV signal extraction are first processed. The features from the HRV signals are extracted as feature vectors using the wavelet multi-scale entropy. A support vector machine-based classifier is used for PAF prediction.Entities:
Keywords: HRV analysis; Multi-scale wavelet entropy; PAF; SVM
Mesh:
Year: 2017 PMID: 29061181 PMCID: PMC5654099 DOI: 10.1186/s12938-017-0406-z
Source DB: PubMed Journal: Biomed Eng Online ISSN: 1475-925X Impact factor: 2.819
Fig. 1Algorithm process
Fig. 2The mean and standard deviation of PAF classification with ergodic generalized entropy order α
Fig. 3a–c show the classification box plot of HRV signals of the PAF segments and segments distant from PAF with D2, D6 and D8 wavelet entropy, respectively
Fig. 4The mean and standard deviation of PAF classification with ergodic generalized entropy order α
Fig. 5a–c show the classification box plot of HRV signals of PAF-episode and normal ones with D1, D2 and D8 wavelet entropy, respectively, where S stands for PAF segments, while T stands for normal ones
Classification results of α = 0.3 and methods based on wavelet entropy feature, time-domain feature, frequency-domain feature, and wavelet-energy feature
| Correct rate (%) | Sensitivity (%) | Specificity (%) | |
|---|---|---|---|
| Time | 82.20 ± 2.04 | 77.68 ± 1.98 | 86.72 ± 3.50 |
| Frequency | 57.96 ± 4.93 | 48.84 ± 6.63 | 67.08 ± 7.75 |
| SampEn | 64.32 ± 1.96 | 76.36 ± 3.90 | 52.28 ± 1.03 |
| Wavelet Energy | 87.50 ± 2.10 | 93.68 ± 2.68 | 81.32 ± 3.12 |
| Wavelet Entropy |
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Italic values indicate the highest classification correct rate, specificity or sensitivity among different methods
Classification results of α = 0.3 and methods based on wavelet entropy feature, time-domain feature, frequency-domain feature, and wavelet-energy feature
| Correct rate (%) | Sensitivity (%) | Specificity (%) | |
|---|---|---|---|
| Time | 87.40 ± 2.06 |
| 79.36 ± 3.10 |
| Frequency | 69.51 ± 3.63 | 68.24 ± 4.88 | 72.04 ± 4.97 |
| SampEn | 66.88 ± 1.34 | 74.62 ± 1.77 | 51.40 ± 1.54 |
| Wavelet Energy | 40.40 ± 1.84 | 17.04 ± 3.32 | 87.12 ± 5.90 |
| Wavelet Entropy |
| 89.86 ± 2.04 |
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Italic values indicate the highest classification correct rate, specificity or sensitivity among different methods