| Literature DB >> 22877316 |
Raúl Alcaraz1, José Joaquín Rieta.
Abstract
BACKGROUND: Atrial fibrillation (AF) is the most common supraventricular arrhythmia in the clinical practice, being the subject of intensive research.Entities:
Mesh:
Year: 2012 PMID: 22877316 PMCID: PMC3444389 DOI: 10.1186/1475-925X-11-46
Source DB: PubMed Journal: Biomed Eng Online ISSN: 1475-925X Impact factor: 2.819
Mean and standard deviation of CTM values for non-terminating and terminating AF groups, statistical significance (p value), sensitivity, specificity, accuracy and result from the LOOCV approach for each studied wavelet family
| Haar | 0.939±0.062 | 0.795±0.060 | <0.001 | 92.31% | 91.67% | 92% | 92% |
| Daubechies (5) | 0.936±0.060 | 0.792±0.059 | <0.001 | 92.31% | 91.67% | 92% | 92% |
| Coiflet (3) | 0.931±0.060 | 0.793±0.046 | <0.001 | 92.31% | 91.67% | 92% | 92% |
| Biorthogonal (4.4) | 0.943±0.054 | 0.798±0.050 | < 0.001 | 92.31% | 91.67% | 92% | 92% |
| Reverse Biorthogonal | 0.928±0.059 | 0.789±0.049 | < 0.001 | 92.31% | 91.67% | 92% | 92% |
| (4.4) | | | | | | | |
| Symlets (5) | 0.931±0.060 | 0.791±0.058 | < 0.001 | 92.31% | 91.67% | 92% | 92% |
Mean and standard deviation of CTM values for patients relapsing to AF and maintaining NSR during the first month post-cardioversion, statistical significance (p value), sensitivity, specificity, accuracy and result from the LOOCV approach for each studied wavelet family
| Haar | 0.698±0.047 | 0.819±0.071 | < 0.001 | 80.48% | 81.81% | 80.95% | 79.37% |
| Daubechies (5) | 0.693±0.051 | 0.818±0.069 | < 0.001 | 80.48% | 81.81% | 80.95% | 79.37% |
| Coiflet (3) | 0.688±0.052 | 0.810±0.066 | < 0.001 | 80.48% | 81.81% | 80.95% | 79.37% |
| Biorthogonal (4.4) | 0.691±0.052 | 0.812±0.067 | < 0.001 | 80.48% | 81.81% | 80.95% | 79.37% |
| Reverse Biorthogonal (4.4) | 0.690±0.053 | 0.813±0.067 | < 0.001 | 80.48% | 81.81% | 80.95% | 79.37% |
| Symlets (5) | 0.691±0.052 | 0.808±0.065 | < 0.001 | 80.48% | 81.81% | 80.95% | 79.37% |
Figure 1Results for PAF prediction.(a) ROC curve constructed with the obtained CTM values for PAF patients from the seventh discrete scale wavelet coefficients of the AA signal. Biorthogonal wavelet family of order (4,4) and a ρvalue of 3.3 times the standard deviation of analyzed data were used as parameters for CTM computation. The CTM value providing the highest accuracy was selected as optimum threshold, which has been marked with symbol ∙. (b) Classification into terminating and non-terminating PAF episodes.
Figure 2Representative plots for PAF prediction. Typical ECG interval together with its extracted AA signal and the wavelet coefficient vector corresponding with the seventh discrete scale together with its scatter plot of first differences for (a) a non-terminating and (b) other terminating PAF episode.
Figure 3Results for ECV result prediction.(a) ROC curve constructed with the obtained CTM values for persistent AF patients from the seventh discrete scale wavelet coefficients of the AA signal. Biorthogonal wavelet family of order (4,4) and a ρvalue of 4 times the standard deviation of analyzed data were used as parameters for CTM computation. The CTM value providing the highest accuracy was selected as optimum threshold, which has been marked with symbol ∙. (b) Classification into patients resulting in NSR and relapsing to AF after 4 weeks following ECV.
Figure 4Representative plots for ECV result prediction. Typical ECG interval together with its extracted AA signal and the wavelet coefficient vector corresponding with the seventh discrete scale together with its scatter plot of first differences for (a) a patient who maintained NSR and (b) other relapsing to AF during the first month post-cardioversion
Comparison between the most recent studies presented to predict PAF termination
| This work | Cinc/Challenge 2004 [ | CTM from the first differences scatter plot of the wavelet coefficient vector associated to the AF frequency scale of the AA | 96% |
| Alcaraz & Rieta 2009 [ | Cinc/Challenge 2004 [ | Regularity analysis via SampEn from the MAW of the AA signal | 93% |
| Sun & Wang 2008 [ | Cinc/Challenge 2004 [ | Combination of features extracted from the ECG recurrence plot quantification making use of a multilayer perceptron neural network | 96% |
| Alcaraz & Rieta 2008 [ | Cinc/Challenge 2004 [ | Regularity analysis via SampEn of time and wavelet domains of the AA | 93% |
| Alcaraz | Own Database with 50 episodes: 21 non-terminating and 29 terminating | Analysis of time and frequency parameters obtained from the AA | 92% |
| Nilsson | Cinc/Challenge 2004 [ | Analysis of time and frequency parameters and non-linear indices obtained from the AA | 90% |
| Petrutiu | Cinc/Challenge 2004 [ | Experimental combination of AA peak power evolution within the two last seconds of the episode with the DAF | 93% |
Comparison between the most recent studies presented to predict ECV outcome
| This work | Own database with 63 patients: 31 relapsed to AF, 22 maintained NSR and 10 presented unsuccessful ECV | CTM from the first differences scatter plot of the wavelet coefficient vector associated to the AF frequency scale of the AA | 86% |
| Alcaraz | Own database with 63 patients: 31 relapsed to AF, 22 maintained NSR and 10 presented unsuccessful ECV | Combination of | 90% |
| Alcaraz & Rieta 2009 [ | Own database with 63 patients: 31 relapsed to AF, 22 maintained NSR and 10 presented unsuccessful ECV | Discriminant model based on time and frequency parameters obtained from the AA | 86% |
| Alcaraz & Rieta 2008 [ | Own database with 40 patients: 21 relapsed to AF, 14 maintained NSR and 5 presented unsuccessful ECV | Regularity analysis via SampEn of time and wavelet domains of the AA | 94% |
| Watson | Own database with 30 patients: 17 relapsed to AF and 13 maintained NSR | Non-parametric combination of several wavelet transform-based statistical markers | 93% |
| Holmqvist | Own database with 54 patients: 30 relapsed to AF and 24 maintained NSR | Assessment of the atrial harmonic decay with time-frequency analysis of the ECG | 70% |
| Zohar | Own database with 44 patients: 21 relapsed to AF and 23 maintained NSR | Non-deterministisc model based on genetic programming | 84% |
| Berg | Own database with 66 patients: 32 relapsed to AF, 22 maintained NSR and 12 presented unsuccessful ECV | Analysis of 3D RR intervals as a quantifier of AF organization | 52% |