Using machine learning to enhance prediction of atrial fibrillation recurrence after catheter ablation

Author:

Brahier Mark S.12ORCID,Zou Fengwei3,Abdulkareem Musa456,Kochi Shwetha1,Migliarese Frank7,Thomaides Athanasios8,Ma Xiaoyang1,Wu Colin9,Sandfort Veit10,Bergquist Peter J.8,Srichai Monvadi B.8,Piccini Jonathan P.2ORCID,Petersen Steffen E.45611ORCID,Vargas Jose D.112

Affiliation:

1. Georgetown University Medical Center Washington DC USA

2. Duke University Hospital Durham North Carolina USA

3. Montefiore Medical Center Bronx New York USA

4. Barts Heart Centre Barts Health National Health Service (NHS) Trust London United Kingdom

5. National Institute for Health Research (NIHR) Barts Biomedical Research Centre, William Harvey Research Institute Queen Mary University of London London United Kingdom

6. Health Data Research UK London United Kingdom

7. Naval Medical Center San Diego California USA

8. MedStar Heart and Vascular Institute Washington DC USA

9. National Heart, Lung, and Blood Institute Bethesda Maryland USA

10. Stanford Medicine Stanford California USA

11. The Alan Turing Institute London United Kingdom

12. Veterans Affairs Medical Center Washington DC USA

Abstract

AbstractBackgroundTraditional risk scores for recurrent atrial fibrillation (AF) following catheter ablation utilize readily available clinical and echocardiographic variables and yet have limited discriminatory capacity. Use of data from cardiac imaging and deep learning may help improve accuracy and prediction of recurrent AF after ablation.MethodsWe evaluated patients with symptomatic, drug‐refractory AF undergoing catheter ablation. All patients underwent pre‐ablation cardiac computed tomography (cCT). LAVi was computed using a deep‐learning algorithm. In a two‐step analysis, random survival forest (RSF) was used to generate prognostic models with variables of highest importance, followed by Cox proportional hazard regression analysis of the selected variables. Events of interest included early and late recurrence.ResultsAmong 653 patients undergoing AF ablation, the most important factors associated with late recurrence by RSF analysis at 24 (+/−18) months follow‐up included LAVi and early recurrence. In total, 5 covariates were identified as independent predictors of late recurrence: LAVi (HR per mL/m2 1.01 [1.01–1.02]; p < .001), early recurrence (HR 2.42 [1.90–3.09]; p < .001), statin use (HR 1.38 [1.09–1.75]; p = .007), beta‐blocker use (HR 1.29 [1.01–1.65]; p = .043), and adjunctive cavotricuspid isthmus ablation [HR 0.74 (0.57–0.96); p = .02]. Survival analysis demonstrated that patients with both LAVi >66.7 mL/m2 and early recurrence had the highest risk of late recurrence risk compared with those with LAVi <66.7 mL/m2 and no early recurrence (HR 4.52 [3.36–6.08], p < .001).ConclusionsMachine learning‐derived, full volumetric LAVi from cCT is the most important pre‐procedural risk factor for late AF recurrence following catheter ablation. The combination of increased LAVi and early recurrence confers more than a four‐fold increased risk of late recurrence.

Publisher

Wiley

Subject

Cardiology and Cardiovascular Medicine

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