| Literature DB >> 32535735 |
Pietro Bonizzi1, Olivier Meste2, Stef Zeemering3,4, Joël Karel5, Theo Lankveld3,4, Harry Crijns3,4, Ulrich Schotten3,4, Ralf Peeters5.
Abstract
ECG-based representation of atrial fibrillation (AF) progression is currently limited. We propose a novel framework for a more sensitive noninvasive characterization of the AF substrate during persistent AF. An atrial activity (AA) recurrence signal is computed from body surface potential map (BSPM) recordings, and a set of characteristic indices is derived from it which captures the short- and long-term recurrent behaviour in the AA patterns. A novel measure of short- and long-term spatial variability of AA propagation is introduced, to provide an interpretation of the above indices, and to test the hypothesis that the variability in the oscillatory content of AA is due mainly to a spatially uncoordinated propagation of the AF waveforms. A simple model of atrial signal dynamics is proposed to confirm this hypothesis, and to investigate a possible influence of the AF substrate on the short-term recurrent behaviour of AA propagation. Results confirm the hypothesis, with the model also revealing the above influence. Once the characteristic indices are normalized to remove this influence, they show to be significantly associated with AF recurrence 4 to 6 weeks after electrical cardioversion. Therefore, the proposed framework improves noninvasive AF substrate characterization in patients with a very similar substrate. Graphical Abstract Schematic representation of the proposed framework for the noninvasive characterization of short-term atrial signal dynamics during persistent AF. The proposed framework shows that the faster the AA is propagating, the more stable its propagation paths are in the short-term (larger values of Speed in the bottom right plot should be interpreted as lower speed of propagation of the corresponding AA propagation patters).Entities:
Keywords: Atrial fibrillation progression; Atrial fibrillation substrate complexity; Electrocardiography; Propagation patterns; Recurrence analysis
Mesh:
Year: 2020 PMID: 32535735 PMCID: PMC7417421 DOI: 10.1007/s11517-020-02190-0
Source DB: PubMed Journal: Med Biol Eng Comput ISSN: 0140-0118 Impact factor: 2.602
Fig. 1Schematic representation of the construction of a multi-variable AA recurrence signal r(p), starting from AA signals extracted from ECG recordings. A visualization of the matrix R is also provided (bottom-left)
Fig. 2r(p)( curves from two consecutive blocks in a patient (n.u. is normalized units). The characteristic indices P1, P2, , and are shown on the left plot, with the two vertical lines defining the interval for the computation of the LTR index
Fig. 3Example of calculation of SVAAP from the spectrum of a matrix. Indicated with an arrow is the point that minimizes the distance with the origin. n.u., normalized units (by scaling all singular values by )
Fig. 4Examples of real and simulated pseudo-AA signal (top; only the first 400 samples are displayed), r(p)( and signals (middle), and amplitude spectra (bottom), from a patient and from model (2), with d and v optimized on the patient as described in the main text
Fig. 5Scatter plots of l-SVAAP vs. LTR (left), s-SVAAP vs. |P1| (middle), and s-SVAAP vs. P2 (right). The corresponding lines of best fit and the Pearson correlation coefficients r are also shown
Fig. 6Scatter plot of (left) and (right) vs. , for different values of f
Fig. 7Scatter plot of vs. (left) and vs. (right). The corresponding lines of best fit and the Pearson correlation coefficients r are also shown
State-of-the-art parameters for the AF recurrent and non recurrent patients
| Parameter | AF recurr | Non-AF recurr | |
|---|---|---|---|
| Spatial complexity (average count) | 12.58 (5.17) | 11.83 (5.83) | 0.2209 |
| Variability of spatial complexity (SD of count) | 1.22 (1.12) | 1.03 (0.85) | 0.9916 |
| Spatio-temporal stationarity (n.u.) | 0.79 (0.20) | 0.80 (0.18) | 0.4240 |
| Dominant frequency (Hz) | 6.44 (0.79) | 6.54 (0.85) | 0.7784 |
| Spectral concentration (n.u.) | 0.53 (0.1) | 0.49 (0.08) | 0.1081 |
| Spectral variability (n.u.) | 0.42 (0.17) | 0.42 (0.13) | 0.4651 |
| Multi-variate organization index (n.u.) | 0.24 (0.02) | 0.25 (0.03) | 0.1398 |
| Multi-variate spectral entropy (n.u.) | 9.38 (0.08) | 9.38 (0.09) | 0.0940 |
| Sample entropy (n.u.) | 0.50 (0.02) | 0.49 (0.02) | 0.1976 |
| f-wave amplitude (a.u.) | 0.02 (0.01) | 0.02 (0.01) | 0.9732 |
| f-wave power (a.u.) | 251.06 (42.70) | 244.86 (56.50) | 0.4469 |
| Harmonic energy (n.u.) | 0.20 (0.08) | 0.17 (0.09) | 0.1446 |
Results are shown as median(IQR), and the p values from the corresponding univariate logistic regression models are also reported