Saiz-Vivo Javier, Corino Valentina D A, Hatala Robert, de Melis Mirko, Mainardi Luca T
Medtronic Bakken Research Center B.V., Maastricht, Netherlands.
Department of Electronics, Information and Bioengineering, Politecnico di Milano, Milan, Italy.
Front Physiol. 2021 May 25;12:672896. doi: 10.3389/fphys.2021.672896. eCollection 2021.
Single-procedure catheter ablation success rate is as low as 52% in atrial fibrillation (AF) patients. This study evaluated the feasibility of using clinical data and heart rate variability (HRV) features extracted from an implantable cardiac monitor (ICM) to predict recurrences in patients prior to undergoing catheter ablation for AF. HRV-derived features were extracted from the 500 beats preceding the AF onset and from the first 2 min of the last AF episode recorded by an ICM of 74 patients (67% male; 57 ± 12 years; 26% non-paroxysmal AF; 57% AF recurrence) before undergoing their first AF catheter ablation. Two types of classification algorithm were studied to predict AF recurrence: single classifiers including support vector machines, classification and regression trees, and K-nearest neighbor classifiers as well as ensemble classifiers. The sequential forward floating search algorithm was used to select the optimum feature set for each classification method. The optimum weighted voting method, which used an optimum combination of the single classifiers, was the best overall classifier (accuracy = 0.82, sensitivity = 0.76, and specificity = 0.87). Clinical and HRV features can be used to predict rhythm outcome using an ensemble classifier which would enable a more effective pre-ablation patient triage that could reduce the economic and personal burden of the procedure by increasing the success rate of first catheter ablation.
在心房颤动(AF)患者中,单次导管消融成功率低至52%。本研究评估了利用临床数据和从植入式心脏监测器(ICM)提取的心率变异性(HRV)特征来预测AF患者在接受导管消融术前复发情况的可行性。HRV衍生特征是从74例患者(67%为男性;57±12岁;26%为非阵发性AF;57%有AF复发)首次进行AF导管消融术前,由ICM记录的AF发作前500次心跳以及最后一次AF发作的前2分钟提取的。研究了两种分类算法来预测AF复发:包括支持向量机、分类与回归树以及K近邻分类器的单一分类器,以及集成分类器。采用顺序前向浮动搜索算法为每种分类方法选择最优特征集。使用单一分类器的最优组合的最优加权投票方法是总体上最好的分类器(准确率=0.82,灵敏度=0.76,特异性=0.87)。临床和HRV特征可用于使用集成分类器预测节律结果,这将实现更有效的消融术前患者分类,通过提高首次导管消融的成功率来减轻该手术的经济和个人负担。