Department of Electronic Engineering, Fudan University, Shanghai 200433, People's Republic of China. Authors contributed equally to this work.
Physiol Meas. 2020 Jun 10;41(5):055007. doi: 10.1088/1361-6579/ab86d7.
The localization of origins of premature ventricular contraction (PVC) is the key factor for the success of ablation of ventricular arrhythmias. Existing methods rely heavily on manual extraction of PVC beats, which limits their application to the automatic PVC recognition from long-term data recorded by ECG monitors before and during operation. In addition, research identifying PVC sources in the whole ventricle have not been reported. The purpose of this study was to validate the feasibility of localization of origins of PVC in the whole ventricle and to explore an automatic algorithm for recognition of PVC beats based on long-term 12-lead ECG.
This study included 249 patients with spontaneous PVCs or pacing-induced PVCs. A novel algorithm was used to automatically extract PVC beats from a massive amount of original ECG data, which was collected by different acquisition devices. After clustering and labelling, 374 sample groups, each containing dozens to hundreds of PVC beats, formed the entire dataset of 11 categories corresponding to 11 regions of PVC origins in the whole ventricle. To choose the best classification model for the current task, four machine learning methods, support vector machine (SVM), random forest (RF), gradient-boosting decision tree (GBDT) and Gaussian naïve Bayes (GNB), were compared by randomly selecting 70% of the entire dataset (sample groups = 257) for training and the remaining 30% (sample groups = 117) for testing. The average performance of each model was estimated by the bootstrap method using 1000 resampling trials.
For PVC beat recognition, the achieved testing accuracy, sensitivity and specificity is 97.6%, 98.3% and 96.7%, respectively. For localization purpose, the achieved testing accuracy varies slightly from 70.7% to 74.1% among four classifiers, and when neighboring regions were combined, the testing rank accuracy is improved to a range of 91.5% to 93.2%.
The proposed algorithm can automatically recognize PVC beats and map them to one of the 11 regions in the whole ventricle. Owing to the high accuracy of PVC beat recognition and the capability to target the potential PVC origins in multi regions, it is expected to be a predominant technique being used in clinical settings to automatically analyze huge ECG data before and during operation so as to replace the tedious manual identification.
室性早搏(PVC)起源的定位是室性心律失常消融成功的关键因素。现有的方法主要依赖于手动提取 PVC 搏动,这限制了它们在自动识别 ECG 监测仪记录的长期术前和术中 PVC 中的应用。此外,尚无研究报道在整个心室中识别 PVC 起源的方法。本研究旨在验证在整个心室中定位 PVC 起源的可行性,并探索一种基于长期 12 导联 ECG 的 PVC 搏动自动识别算法。
本研究纳入了 249 例自发性 PVC 或起搏诱导性 PVC 患者。一种新算法用于从大量原始 ECG 数据中自动提取 PVC 搏动,这些数据由不同的采集设备采集。聚类和标记后,374 个样本组,每个样本组包含数十至数百个 PVC 搏动,形成了整个数据集,共 11 个类别,对应于整个心室中 11 个 PVC 起源区域。为了选择当前任务的最佳分类模型,我们比较了四种机器学习方法,包括支持向量机(SVM)、随机森林(RF)、梯度提升决策树(GBDT)和高斯朴素贝叶斯(GNB),通过随机选择整个数据集的 70%(样本组=257)进行训练,其余 30%(样本组=117)用于测试。使用 1000 次重采样试验的引导法估计每个模型的平均性能。
对于 PVC 搏动识别,测试的准确率、灵敏度和特异性分别为 97.6%、98.3%和 96.7%。对于定位目的,四种分类器的测试准确率在 70.7%到 74.1%之间略有差异,当相邻区域合并时,测试的秩准确率提高到 91.5%到 93.2%的范围。
提出的算法可以自动识别 PVC 搏动,并将其映射到整个心室的 11 个区域之一。由于 PVC 搏动识别的高准确率和针对多个区域潜在 PVC 起源的能力,它有望成为一种主要技术,用于在术前和术中自动分析大量 ECG 数据,以取代繁琐的手动识别。