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Atrial fibrillation classification from a short single lead ECG recording using hierarchical classifier

机译:使用分层分类器从短单导联心电图记录中进行心房颤动分类

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Atrial fibrillation (AF), one of the most common cardiac arrhythmias, can be diagnosed using electrocardiography. We present a data-driven model to automatically detect the occurrence of atrial fibrillation on a single lead electrocardiogram (ECG). Our model incorporates a wide range of features including heart rate variability in the time and frequency domain, spectral power analysis and statistical modeling of atrial activity. We use an over-sampling strategy to balance the dataset across different categories. We design a hierarchical classification model to predict an ECG signal as either AF, normal, noisy or an alternative rhythm. The best performance was achieved with a hierarchical bagged ensemble classifier, with an average F score of0.7855 over all samples.
机译:心房颤动(AF)是最常见的心律不齐之一,可使用心电图仪进行诊断。我们提出了一种数据驱动的模型,以自动检测单导联心电图(ECG)上房颤的发生。我们的模型具有多种功能,包括时域和频域的心率变异性,频谱功率分析和心房活动的统计模型。我们使用过度采样策略来平衡不同类别的数据集。我们设计了一种分级分类模型,以预测ECG信号是否为AF,正常,嘈杂或其他节律。使用分层袋装集成分类器可获得最佳性能,所有样本的平均F得分为0.7855。

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