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Fast Detection of Ventricular Fibrillation and Ventricular Tachycardia in 1-Lead ECG from Three-Second Blocks

机译:从三秒区快速检测1导联心电图中的室颤和室性心动过速

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Background: Ventricular tachycardia (VT) is dangerous irregularity of heart rhythm. VT may evolve into ventricular fibrillation (VF) which often leads to cardiac death. Therefore, fast automated detection of VF/VT events is of the utmost importance. Here, we present a method detecting VT and ventricular fibrillation (VF) events suitable for real-time application on continuously incoming ECG data. Method: We designed a method for detection of VF/VT events in short-time (3 s), 1-lead ECG blocks. Five features are extracted from this block using analysis of ECG spectra, derivatives, amplitude measures and autocorrelation. The extracted features are fed into a logistic regression model showing the probability of a VF/VT event. The model was trained on the public PhysioNet CUDB dataset consisting of 393 automatically selected blocks. Results: The model (AUC 0.99) showed a sensitivity and specificity of 95 % and 97 %, respectively (5-fold cross-validation). The model was tested on the public PhysioNet VFDB dataset, showing specificity and sensitivity of 95 % and 83 %, respectively. Both the feature extraction code (Matlab format) and the model are publicly accessible and easy implementation of the logistic regression model predetermines it for real-time applications.
机译:背景:室性心动过速(VT)是危险的心律不齐。室速可能演变为心室纤颤(VF),通常会导致心源性死亡。因此,快速自动检测VF / VT事件至关重要。在这里,我们提出一种检测VT和心室纤颤(VF)事件的方法,适用于对连续传入的ECG数据进行实时应用。方法:我们设计了一种在短时间(3 s)的1导联ECG块中检测VF / VT事件的方法。使用ECG频谱,导数,幅度测量和自相关分析可从该模块中提取五个特征。提取的特征被输入到逻辑回归模型中,该模型显示VF / VT事件的概率。该模型在公共PhysioNet CUDB数据集上进行了训练,该数据集由393个自动选择的模块组成。结果:该模型(AUC 0.99)的敏感性和特异性分别为95%和97%(5倍交叉验证)。该模型在公共PhysioNet VFDB数据集上进行了测试,显示出特异性和敏感性分别为95%和83%。特征提取代码(Matlab格式)和模型都是可公开访问的,逻辑回归模型的易于实施为实时应用预先确定了它。

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