Faculty of Electrical Engineering and Communication, Department of Biomedical Engineering, Brno University of Technology, Technická 12, 616 00 Brno, Czechia. Institute of Scientific Instruments of the Czech Academy of Sciences, v.v.i., Královopolská 147, 612 64 Brno, Czechia. Author to whom any correspondence should be addressed.
Physiol Meas. 2018 Sep 13;39(9):094003. doi: 10.1088/1361-6579/aad9e7.
Use of wearable ECG devices for arrhythmia screening is limited due to poor signal quality, small number of leads and short records, leading to incorrect recognition of pathological events. This paper introduces a novel approach to classification (normal/'N', atrial fibrillation/'A', other/'O', and noisy/'P') of short single-lead ECGs recorded by wearable devices.
Various rhythm and morphology features are derived from the separate beats ('local' features) as well as the entire ECGs ('global' features) to represent short-term events and general trends respectively. Various types of atrial and ventricular activity, heart beats and, finally, ECG records are then recognised by a multi-level approach combining a support vector machine (SVM), decision tree and threshold-based rules.
The proposed features are suitable for the recognition of 'A'. The method is robust due to the noise estimation involved. A combination of radial and linear SVMs ensures both high predictive performance and effective generalisation. Cost-sensitive learning, genetic algorithm feature selection and thresholding improve overall performance. The generalisation ability and reliability of this approach are high, as verified by cross-validation on a training set and by blind testing, with only a slight decrease of overall F1-measure, from 0.84 on training to 0.81 on the tested dataset. 'O' recognition seems to be the most difficult (test F1-measures: 0.90/'N', 0.81/'A' and 0.72/'O') due to high inter-patient variability and similarity with 'N'.
These study results contribute to multidisciplinary areas, focusing on creation of robust and reliable cardiac monitoring systems in order to improve diagnosis, reduce unnecessary time-consuming expert ECG scoring and, consequently, ensure timely and effective treatment.
由于信号质量差、导联数量少和记录时间短,可穿戴心电图设备在心律失常筛查中的应用受到限制,导致病理事件的识别错误。本文介绍了一种新的分类方法(正常/'N'、心房颤动/'A'、其他/'O'和噪声/'P'),用于分类可穿戴设备记录的短单导联心电图。
从单独的心跳(“局部”特征)和整个心电图(“全局”特征)中提取各种节律和形态特征,分别表示短期事件和总体趋势。然后,通过结合支持向量机(SVM)、决策树和基于阈值的规则的多层次方法,识别各种类型的心房和心室活动、心跳,最终识别心电图记录。
所提出的特征适用于“ A”的识别。由于涉及噪声估计,该方法具有鲁棒性。径向和线性 SVM 的组合确保了高预测性能和有效的泛化能力。成本敏感学习、遗传算法特征选择和阈值处理提高了整体性能。通过在训练集上进行交叉验证和盲测,证明了该方法具有较高的泛化能力和可靠性,整体 F1 度量值仅略有下降,从训练集的 0.84 下降到测试数据集的 0.81。由于患者间变异性高且与“ N”相似,因此“ O”的识别似乎最为困难(测试 F1 度量值:0.90/'N'、0.81/'A'和 0.72/'O')。
这些研究结果有助于多学科领域,重点是创建稳健可靠的心脏监测系统,以改善诊断,减少不必要的耗时专家心电图评分,并确保及时有效的治疗。