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Using machine learning to enhance prediction of atrial fibrillation recurrence after catheter ablation
被引:3
|作者:
Brahier, Mark S.
[1
,2
]
Zou, Fengwei
[3
]
Abdulkareem, Musa
[4
,5
,6
]
Kochi, Shwetha
[1
]
Migliarese, Frank
[7
]
Thomaides, Athanasios
[8
]
Ma, Xiaoyang
[1
]
Wu, Colin
[9
]
Sandfort, Veit
[10
]
Bergquist, Peter J.
Srichai, Monvadi B.
[8
]
Piccini, Jonathan P.
[2
]
Petersen, Steffen E.
[4
,5
,6
,11
]
Vargas, Jose D.
[1
,12
,13
]
机构:
[1] Georgetown Univ, Med Ctr, Washington, DC USA
[2] Duke Univ Hosp, Durham, NC USA
[3] Montefiore Med Ctr, Bronx, NY USA
[4] Barts Hlth Natl Hlth Serv NHS Trust, Barts Heart Ctr, London, England
[5] Queen Mary Univ London, Natl Inst Hlth Res NIHR, William Harvey Res Inst, Barts Biomed Res Ctr, London, England
[6] Hlth Data Res UK, London, England
[7] Naval Med Ctr, San Diego, CA USA
[8] MedStar Heart & Vasc Inst, Washington, DC USA
[9] NHLBI, Bethesda, MD USA
[10] Stanford Med, Stanford, CA USA
[11] Alan Turing Inst, London, England
[12] Vet Affairs Med Ctr, Washington, DC USA
[13] Washington DC Vet Affairs Med Ctr, 50 Irving St NW, Washington, DC 20422 USA
关键词:
atrial fibrillation;
cardiac computed tomography;
catheter ablation;
left atrium;
machine learning;
PULMONARY VEIN ISOLATION;
DELAYED CURE;
VOLUME;
STROKE;
RISK;
D O I:
10.1002/joa3.12927
中图分类号:
R5 [内科学];
学科分类号:
1002 ;
100201 ;
摘要:
Background: Traditional 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. Methods: We 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. Results: Among 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/m(2) 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/m(2) and early recurrence had the highest risk of late recurrence risk compared with those with LAVi <66.7 mL/m(2) and no early recurrence (HR 4.52 [3.36-6.08], p <.001). Conclusions: Machine 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.
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页码:868 / 875
页数:8
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