Literature DB >> 32746003

Non-Invasive Characterization of Atrial Flutter Mechanisms Using Recurrence Quantification Analysis on the ECG: A Computational Study.

Giorgio Luongo, Steffen Schuler, Armin Luik, Tiago P Almeida, Diogo C Soriano, Olaf Dossel, Axel Loewe.   

Abstract

OBJECTIVE: Atrial flutter (AFl) is a common arrhythmia that can be categorized according to different self-sustained electrophysiological mechanisms. The non-invasive discrimination of such mechanisms would greatly benefit ablative methods for AFl therapy as the driving mechanisms would be described prior to the invasive procedure, helping to guide ablation. In the present work, we sought to implement recurrence quantification analysis (RQA) on 12-lead ECG signals from a computational framework to discriminate different electrophysiological mechanisms sustaining AFl.
METHODS: 20 different AFl mechanisms were generated in 8 atrial models and were propagated into 8 torso models via forward solution, resulting in 1,256 sets of 12-lead ECG signals. Principal component analysis was applied on the 12-lead ECGs, and six RQA-based features were extracted from the most significant principal component scores in two different approaches: individual component RQA and spatial reduced RQA.
RESULTS: In both approaches, RQA-based features were significantly sensitive to the dynamic structures underlying different AFl mechanisms. Hit rate as high as 67.7% was achieved when discriminating the 20 AFl mechanisms. RQA-based features estimated for a clinical sample suggested high agreement with the results found in the computational framework.
CONCLUSION: RQA has been shown an effective method to distinguish different AFl electrophysiological mechanisms in a non-invasive computational framework. A clinical 12-lead ECG used as proof of concept showed the value of both the simulations and the methods. SIGNIFICANCE: The non-invasive discrimination of AFl mechanisms helps to delineate the ablation strategy, reducing time and resources required to conduct invasive cardiac mapping and ablation procedures.

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Year:  2021        PMID: 32746003     DOI: 10.1109/TBME.2020.2990655

Source DB:  PubMed          Journal:  IEEE Trans Biomed Eng        ISSN: 0018-9294            Impact factor:   4.538


  3 in total

1.  Machine learning enables noninvasive prediction of atrial fibrillation driver location and acute pulmonary vein ablation success using the 12-lead ECG.

Authors:  Giorgio Luongo; Luca Azzolin; Steffen Schuler; Massimo W Rivolta; Tiago P Almeida; Juan P Martínez; Diogo C Soriano; Armin Luik; Björn Müller-Edenborn; Amir Jadidi; Olaf Dössel; Roberto Sassi; Pablo Laguna; Axel Loewe
Journal:  Cardiovasc Digit Health J       Date:  2021-04

2.  Using Machine Learning to Characterize Atrial Fibrotic Substrate From Intracardiac Signals With a Hybrid in silico and in vivo Dataset.

Authors:  Jorge Sánchez; Giorgio Luongo; Mark Nothstein; Laura A Unger; Javier Saiz; Beatriz Trenor; Armin Luik; Olaf Dössel; Axel Loewe
Journal:  Front Physiol       Date:  2021-07-05       Impact factor: 4.566

3.  Hybrid machine learning to localize atrial flutter substrates using the surface 12-lead electrocardiogram.

Authors:  Giorgio Luongo; Gaetano Vacanti; Vincent Nitzke; Deborah Nairn; Claudia Nagel; Diba Kabiri; Tiago P Almeida; Diogo C Soriano; Massimo W Rivolta; Ghulam André Ng; Olaf Dössel; Armin Luik; Roberto Sassi; Claus Schmitt; Axel Loewe
Journal:  Europace       Date:  2022-07-21       Impact factor: 5.486

  3 in total

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