医学
肺静脉
心房颤动
心脏病学
内科学
烧蚀
导管消融
射频消融术
试验预测值
阵发性心房颤动
预测值
曲线下面积
作者
Mark J. Mulder,Michiel J. B. Kemme,Luuk H.G.A. Hopman,Elif Kuşgözoğlu,Hatice Gülçiçek,Peter M. van de Ven,Herbert A. Hauer,Giovanni J. M. Tahapary,Marco J.W. Götte,Albert C. van Rossum,Cornelis P. Allaart
标识
DOI:10.1016/j.ijcard.2021.09.029
摘要
BackgroundA significant number of patients experience recurrent atrial fibrillation (AF) after ablation. Various risk scores have been described that may predict outcomes after AF ablation. In this study, we aimed to compare ten previously described risk scores with regard to their predictive value for post-ablation AF recurrence and procedural complications.MethodsA total of 482 AF patients (63% paroxysmal AF, 66% male, mean age 62 ± 9 years) undergoing initial radiofrequency pulmonary vein isolation (PVI) were included in the present analysis. Prior to ablation, all patients underwent both transthoracic echocardiography (TTE) and either cardiac CT imaging or CMR imaging. The following risk scores were calculated for each patient: APPLE, ATLAS, BASE-AF2, CAAP-AF, CHADS2, CHA2DS2-VASc, DR-FLASH, HATCH, LAGO and MB-LATER.ResultsMedian follow-up was 16 (12–31) months. AF recurrence after a 90-day blanking period was observed in 199 patients (41%), occurring after a median of 183 (124–360) days. AF recurrence was less frequent in paroxysmal AF patients compared to non-paroxysmal AF patients (34% vs. 54%, p < 0.001). Overall periprocedural complication rate was 6%. All scores, except the HATCH score, demonstrated statistically significant but poor predictive value for recurrent AF after ablation (area under curve [AUC] 0.553–0.669). CHA2DS2-VASc and CAAP-AF were the only risk scores with predictive value for procedural complications (AUC 0.616, p = 0.043; AUC 0.615, p = 0.044; respectively).ConclusionsCurrently available risk scores perform poorly in predicting outcomes after AF ablation. These data suggest that the utility of these scores for clinical decision-making is limited.
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