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基于新型熵指标预测手术消融后长期房颤复发:术前心电图分析的见解

Novel Entropy-Based Metrics for Long-Term Atrial Fibrillation Recurrence Prediction Following Surgical Ablation: Insights from Preoperative Electrocardiographic Analysis.

作者信息

Escribano Pilar, Ródenas Juan, García Manuel, Hornero Fernando, Gracia-Baena Juan M, Alcaraz Raúl, Rieta José J

机构信息

Research Group in Electronic, Biomedical and Telecommunication Engineering, University of Castilla-La Mancha, 02071 Albacete, Spain.

Cardiovascular Surgery Department, Hospital Clínico Universitario de Valencia, 46010 Valencia, Spain.

出版信息

Entropy (Basel). 2023 Dec 27;26(1):0. doi: 10.3390/e26010028.

Abstract

Atrial fibrillation (AF) is a prevalent cardiac arrhythmia often treated concomitantly with other cardiac interventions through the Cox-Maze procedure. This highly invasive intervention is still linked to a long-term recurrence rate of approximately 35% in permanent AF patients. The aim of this study is to preoperatively predict long-term AF recurrence post-surgery through the analysis of atrial activity (AA) organization from non-invasive electrocardiographic (ECG) recordings. A dataset comprising ECGs from 53 patients with permanent AF who had undergone Cox-Maze concomitant surgery was analyzed. The AA was extracted from the lead V1 of these recordings and then characterized using novel predictors, such as the mean and standard deviation of the relative wavelet energy (RWEm and RWEs) across different scales, and an entropy-based metric that computes the stationary wavelet entropy variability (SWEnV). The individual predictors exhibited limited predictive capabilities to anticipate the outcome of the procedure, with the SWEnV yielding a classification accuracy (Acc) of 68.07%. However, the assessment of the RWEs for the seventh scale (RWEs7), which encompassed frequencies associated with the AA, stood out as the most promising individual predictor, with sensitivity (Se) and specificity (Sp) values of 80.83% and 67.09%, respectively, and an Acc of almost 75%. Diverse multivariate decision tree-based models were constructed for prediction, giving priority to simplicity in the interpretation of the forecasting methodology. In fact, the combination of the SWEnV and RWEs7 consistently outperformed the individual predictors and excelled in predicting post-surgery outcomes one year after the Cox-Maze procedure, with Se, Sp, and Acc values of approximately 80%, thus surpassing the results of previous studies based on anatomical predictors associated with atrial function or clinical data. These findings emphasize the crucial role of preoperative patient-specific ECG signal analysis in tailoring post-surgical care, enhancing clinical decision making, and improving long-term clinical outcomes.

摘要

心房颤动(AF)是一种常见的心律失常,常通过Cox迷宫手术与其他心脏干预措施同时进行治疗。这种高侵入性干预措施在永久性房颤患者中的长期复发率仍约为35%。本研究的目的是通过分析无创心电图(ECG)记录中的心房活动(AA)组织,术前预测手术后房颤的长期复发情况。分析了一个数据集,该数据集包含53例接受Cox迷宫联合手术的永久性房颤患者的心电图。从这些记录的V1导联提取AA,然后使用新的预测指标进行特征描述,例如不同尺度上相对小波能量(RWEm和RWEs)的均值和标准差,以及一种基于熵的指标,该指标计算平稳小波熵变异性(SWEnV)。各个预测指标预测手术结果的能力有限,SWEnV的分类准确率(Acc)为68.07%。然而,对涵盖与AA相关频率的第七尺度的RWEs(RWEs7)的评估是最有前景的个体预测指标,其敏感性(Se)和特异性(Sp)值分别为80.83%和67.09%,Acc几乎达到75%。构建了多种基于多元决策树的模型进行预测,优先考虑预测方法解释的简单性。事实上,SWEnV和RWEs7的组合始终优于个体预测指标,在预测Cox迷宫手术后一年的手术结果方面表现出色,Se、Sp和Acc值约为80%,从而超过了以往基于与心房功能或临床数据相关的解剖学预测指标的研究结果。这些发现强调了术前针对患者的心电图信号分析在定制术后护理、加强临床决策和改善长期临床结果方面的关键作用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/155a/11154238/ba757dd4f6db/entropy-26-00028-g001.jpg

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