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Shape Analysis of Consecutive Beats May Help in the Automated Detection of Atrial Fibrillation

机译:连续搏动的形状分析可能有助于自动检测心房颤动

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Background: Atrial fibrillation (AF) is associated with a higher risk of heart failure or death. AF may be episodic and patients with suspected AF are equipped with Holter ECG devices for several days. However, automated detection of AF in an ECG signal remains problematic, as was shown by the results of the PhysioNet Challenge 2017. Here, we introduce a simple yet robust logistic regression model for AF detection. Method: The detrended signal is filtered (1-35 Hz) and normalized. QRS detection based on envelograms (10-35 Hz) reveals QRS complexes. Five features are extracted from the ECG signal describing RR stability as well as the shape stability of areas preceding QRS complexes. Features were extracted for 1,517 recordings from the PhysioNet Challenge 2017 public dataset (758 AF recordings and 759 recordings with normal rhythm, other arrhythmia or noisy signal). The recordings were split in a 70/30 % ratio for the purposes of training and testing. Results: The results showed a sensitivity and specificity of 93 % and 90 %, respectively (AUC 0.96). The presented model was also tested on the MIT-AFDB public database, showing sensitivity and specificity of 89 % and 88 %, respectively. However, tests on an independent private dataset revealed lower specificity when pathologies which are not widely present in the training dataset are common in the tested ECG signal.
机译:背景:心房颤动(AF)与心力衰竭或死亡的风险较高。 AF可能是情节性的,并且疑似AF的患者配备了几天的Holter ECG器件。然而,ECG信号中的AF的自动检测仍然有问题,如2017年的物理赛挑战结果所示。在这里,我们介绍了一种用于AF检测的简单且鲁棒的逻辑回归模型。方法:滤波(1-35Hz)和归一化的次化信号。基于包膜(10-35Hz)的QRS检测显示QRS复合物。从描述RR稳定性的ECG信号中提取五个特征,以及QRS复合物前面的区域的形状稳定性。从PhysoioNet Chalrenge 2017公共数据集中提取了1,517次录音的功能(758 AF记录和具有正常节律,其他心律失常或嘈杂信号的759次录音)。录音以70/30%的比例分为70/30%,以便培训和测试的目的。结果:结果表明敏感性和特异性分别为93%和90%(AUC 0.96)。呈现的模型也在MIT-AFDB公共数据库上进行测试,分别显示敏感性和特异性89%和88%。然而,当在经过测试的ECG信号中常见的训练数据集不广泛存在的病态时,对独立私有数据集的测试显示出较低的特异性。

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