Publication:
Outcome Analysis in Elective Electrical Cardioversion of Atrial Fibrillation Patients: Development and Validation of a Machine Learning Prognostic Model.

dc.contributor.authorNuñez-Garcia, Jean C
dc.contributor.authorSánchez-Puente, Antonio
dc.contributor.authorSampedro-Gómez, Jesús
dc.contributor.authorVicente-Palacios, Victor
dc.contributor.authorJiménez-Navarro, Manuel
dc.contributor.authorOterino-Manzanas, Armando
dc.contributor.authorJiménez-Candil, Javier
dc.contributor.authorDorado-Diaz, P Ignacio
dc.date.accessioned2024-02-27T15:07:17Z
dc.date.available2024-02-27T15:07:17Z
dc.date.issued2022-05-07
dc.description.abstractBackground: The integrated approach to electrical cardioversion (EC) in atrial fibrillation (AF) is complex; candidates can resolve spontaneously while waiting for EC, and post-cardioversion recurrence is high. Thus, it is especially interesting to avoid the programming of EC in patients who would restore sinus rhythm (SR) spontaneously or present early recurrence. We have analyzed the whole elective EC of the AF process using machine-learning (ML) in order to enable a more realistic and detailed simulation of the patient flow for decision making purposes. Methods: The dataset consisted of electronic health records (EHRs) from 429 consecutive AF patients referred for EC. For analysis of the patient outcome, we considered five pathways according to restoring and maintaining SR: (i) spontaneous SR restoration, (ii) pharmacologic-cardioversion, (iii) direct-current cardioversion, (iv) 6-month AF recurrence, and (v) 6-month rhythm control. We applied ML classifiers for predicting outcomes at each pathway and compared them with the CHA2DS2-VASc and HATCH scores. Results: With the exception of pathway (iii), all ML models achieved improvements in comparison with CHA2DS2-VASc or HATCH scores (p < 0.01). Compared to the most competitive score, the area under the ROC curve (AUC-ROC) was: 0.80 vs. 0.66 for predicting (i); 0.71 vs. 0.55 for (ii); 0.64 vs. 0.52 for (iv); and 0.66 vs. 0.51 for (v). For a threshold considered optimal, the empirical net reclassification index was: +7.8%, +47.2%, +28.2%, and +34.3% in favor of our ML models for predicting outcomes for pathways (i), (ii), (iv), and (v), respectively. As an example tool of generalizability of ML models, we deployed our algorithms in an open-source calculator, where the model would personalize predictions. Conclusions: An ML model improves the accuracy of restoring and maintaining SR predictions over current discriminators. The proposed approach enables a detailed simulation of the patient flow through personalized predictions.
dc.format.number9es_ES
dc.format.volume11es_ES
dc.identifier.doi10.3390/jcm11092636
dc.identifier.issn2077-0383
dc.identifier.journalJournal of clinical medicinees_ES
dc.identifier.otherhttp://hdl.handle.net/10668/21282
dc.identifier.pubmedID35566761es_ES
dc.identifier.urihttp://hdl.handle.net/20.500.12105/18642
dc.language.isoeng
dc.rights.accessRightsopen accesses_ES
dc.rights.licenseAttribution 4.0 International*
dc.rights.urihttp://creativecommons.org/licenses/by/4.0/*
dc.subjectatrial fibrillation
dc.subjectelectrical cardioversion
dc.subjectmachine-learning
dc.subjectpharmacologic cardioversion
dc.subjectrhythm control
dc.titleOutcome Analysis in Elective Electrical Cardioversion of Atrial Fibrillation Patients: Development and Validation of a Machine Learning Prognostic Model.
dc.typeresearch article
dc.type.hasVersionVoR
dspace.entity.typePublication

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