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AFA-Recur: an ESC EORP AFA-LT registry machine-learning web calculator predicting atrial fibrillation recurrence after ablation

AIMS: Atrial fibrillation (AF) recurrence during the first year after catheter ablation remains common. Patient-specific prediction of arrhythmic recurrence would improve patient selection, and, potentially, avoid futile interventions. Available prediction algorithms, however, achieve unsatisfactory...

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Autores principales: Saglietto, Andrea, Gaita, Fiorenzo, Blomstrom-Lundqvist, Carina, Arbelo, Elena, Dagres, Nikolaos, Brugada, Josep, Maggioni, Aldo Pietro, Tavazzi, Luigi, Kautzner, Josef, De Ferrari, Gaetano Maria, Anselmino, Matteo
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Oxford University Press 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10103564/
https://www.ncbi.nlm.nih.gov/pubmed/36006664
http://dx.doi.org/10.1093/europace/euac145
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author Saglietto, Andrea
Gaita, Fiorenzo
Blomstrom-Lundqvist, Carina
Arbelo, Elena
Dagres, Nikolaos
Brugada, Josep
Maggioni, Aldo Pietro
Tavazzi, Luigi
Kautzner, Josef
De Ferrari, Gaetano Maria
Anselmino, Matteo
author_facet Saglietto, Andrea
Gaita, Fiorenzo
Blomstrom-Lundqvist, Carina
Arbelo, Elena
Dagres, Nikolaos
Brugada, Josep
Maggioni, Aldo Pietro
Tavazzi, Luigi
Kautzner, Josef
De Ferrari, Gaetano Maria
Anselmino, Matteo
author_sort Saglietto, Andrea
collection PubMed
description AIMS: Atrial fibrillation (AF) recurrence during the first year after catheter ablation remains common. Patient-specific prediction of arrhythmic recurrence would improve patient selection, and, potentially, avoid futile interventions. Available prediction algorithms, however, achieve unsatisfactory performance. Aim of the present study was to derive from ESC-EHRA Atrial Fibrillation Ablation Long-Term Registry (AFA-LT) a machine-learning scoring system based on pre-procedural, easily accessible clinical variables to predict the probability of 1-year arrhythmic recurrence after catheter ablation. METHODS AND RESULTS: Patients were randomly split into a training (80%) and a testing cohort (20%). Four different supervised machine-learning models (decision tree, random forest, AdaBoost, and k-nearest neighbour) were developed on the training cohort and hyperparameters were tuned using 10-fold cross validation. The model with the best discriminative performance on the testing cohort (area under the curve—AUC) was selected and underwent further optimization, including re-calibration. A total of 3128 patients were included. The random forest model showed the best performance on the testing cohort; a 19-variable version achieved good discriminative performance [AUC 0.721, 95% confidence interval (CI) 0.680–0.764], outperforming existing scores (e.g. APPLE score: AUC 0.557, 95% CI 0.506–0.607). Platt scaling was used to calibrate the model. The final calibrated model was implemented in a web calculator, freely available at http://afarec.hpc4ai.unito.it/. CONCLUSION: AFA-Recur, a machine-learning-based probability score predicting 1-year risk of recurrent atrial arrhythmia after AF ablation, achieved good predictive performance, significantly better than currently available tools. The calculator, freely available online, allows patient-specific predictions, favouring tailored therapeutic approaches for the individual patient.
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spelling pubmed-101035642023-04-15 AFA-Recur: an ESC EORP AFA-LT registry machine-learning web calculator predicting atrial fibrillation recurrence after ablation Saglietto, Andrea Gaita, Fiorenzo Blomstrom-Lundqvist, Carina Arbelo, Elena Dagres, Nikolaos Brugada, Josep Maggioni, Aldo Pietro Tavazzi, Luigi Kautzner, Josef De Ferrari, Gaetano Maria Anselmino, Matteo Europace Clinical Research AIMS: Atrial fibrillation (AF) recurrence during the first year after catheter ablation remains common. Patient-specific prediction of arrhythmic recurrence would improve patient selection, and, potentially, avoid futile interventions. Available prediction algorithms, however, achieve unsatisfactory performance. Aim of the present study was to derive from ESC-EHRA Atrial Fibrillation Ablation Long-Term Registry (AFA-LT) a machine-learning scoring system based on pre-procedural, easily accessible clinical variables to predict the probability of 1-year arrhythmic recurrence after catheter ablation. METHODS AND RESULTS: Patients were randomly split into a training (80%) and a testing cohort (20%). Four different supervised machine-learning models (decision tree, random forest, AdaBoost, and k-nearest neighbour) were developed on the training cohort and hyperparameters were tuned using 10-fold cross validation. The model with the best discriminative performance on the testing cohort (area under the curve—AUC) was selected and underwent further optimization, including re-calibration. A total of 3128 patients were included. The random forest model showed the best performance on the testing cohort; a 19-variable version achieved good discriminative performance [AUC 0.721, 95% confidence interval (CI) 0.680–0.764], outperforming existing scores (e.g. APPLE score: AUC 0.557, 95% CI 0.506–0.607). Platt scaling was used to calibrate the model. The final calibrated model was implemented in a web calculator, freely available at http://afarec.hpc4ai.unito.it/. CONCLUSION: AFA-Recur, a machine-learning-based probability score predicting 1-year risk of recurrent atrial arrhythmia after AF ablation, achieved good predictive performance, significantly better than currently available tools. The calculator, freely available online, allows patient-specific predictions, favouring tailored therapeutic approaches for the individual patient. Oxford University Press 2022-08-25 /pmc/articles/PMC10103564/ /pubmed/36006664 http://dx.doi.org/10.1093/europace/euac145 Text en © The Author(s) 2022. Published by Oxford University Press on behalf of the European Society of Cardiology. https://creativecommons.org/licenses/by/4.0/This is an Open Access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted reuse, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Clinical Research
Saglietto, Andrea
Gaita, Fiorenzo
Blomstrom-Lundqvist, Carina
Arbelo, Elena
Dagres, Nikolaos
Brugada, Josep
Maggioni, Aldo Pietro
Tavazzi, Luigi
Kautzner, Josef
De Ferrari, Gaetano Maria
Anselmino, Matteo
AFA-Recur: an ESC EORP AFA-LT registry machine-learning web calculator predicting atrial fibrillation recurrence after ablation
title AFA-Recur: an ESC EORP AFA-LT registry machine-learning web calculator predicting atrial fibrillation recurrence after ablation
title_full AFA-Recur: an ESC EORP AFA-LT registry machine-learning web calculator predicting atrial fibrillation recurrence after ablation
title_fullStr AFA-Recur: an ESC EORP AFA-LT registry machine-learning web calculator predicting atrial fibrillation recurrence after ablation
title_full_unstemmed AFA-Recur: an ESC EORP AFA-LT registry machine-learning web calculator predicting atrial fibrillation recurrence after ablation
title_short AFA-Recur: an ESC EORP AFA-LT registry machine-learning web calculator predicting atrial fibrillation recurrence after ablation
title_sort afa-recur: an esc eorp afa-lt registry machine-learning web calculator predicting atrial fibrillation recurrence after ablation
topic Clinical Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10103564/
https://www.ncbi.nlm.nih.gov/pubmed/36006664
http://dx.doi.org/10.1093/europace/euac145
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