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Atrial fibrillation detection using heart rate variability and atrial activity: A hybrid approach

机译:使用心率变异性和心房活动的心房颤动检测:一种混合方法

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Goal: Develop a real-time hybrid scheme for the automatic detection of atrial fibrillation (AF), based on the RR interval (RRI) time series and the atrial activity (AA) derived from the electrocardiogram (ECG) signals. Method: The whole scheme was developed and tested on the MIT-BIH AF database (AFDB). First the R-peak detection and the filtering was performed. Following, all features regarding the RRI time series and AA were extracted. These features were then fed into three popular classifiers (boosted trees (BoT), random forest (RF), and linear discriminant analysis (LDA) with random subspace method (RSM)). Sampling training and test data from the same subject (23 overall) was strictly avoided. Furthermore, for each ECG, individual performance statistics were analyzed to elaborate on the subject-wise performance dependencies. Results: From a 4-fold cross validation (CV) analysis, the RF classifier provided the best results with a sensitivity (Sn), specificity (Sp), accuracy (Acc), and F-1 score of 98.0%, 97.4%, 97.6%, and 97.1%, respectively for the AF prediction. Test results on individual ECG's however, have slightly reduced these performances to 95.9%, 96.1%, 97.4% and 88.4%, respectively. Conclusion: Using the RRI features alone were found to provide satisfying prediction performance of the model. The addition of AA features to the model enhanced the model performance by up to 3%. Overall, the results obtained in this study are comparable or even superior to the state-of-the-art algorithms using RRI and AA based features. Significance The hybrid model allows us to detect AF even with regular RRI. The performance was evaluated under real-world conditions, and no manual labelling, exclusion, or pre-processing was performed. Furthermore, we evaluated the performance for each ECG individually and kept the subjects strictly unknown for the classifier. Finally, we show that the overall performance on a data set, especially from a standard CV, results in an overoptimistic estimation.
机译:目标:基于RR间隔(RRI)时间序列和来自心电图(ECG)信号的沟通活动(AA),开发用于自动检测心房颤动(AF)的实时混合方案。方法:在MIT-BIH AF数据库(AFDB)上开发并测试了整个方案。首先进行R峰值检测和滤波。以下情况提取有关RRI时间序列和AA的所有功能。然后将这些特征送入三种流行的分类器(促进树木(机器人),随机森林(RF)和随机判别分析(LDA),随机子空间方法(RSM))。严格避免采样培训和来自同一主题(总体23个)的测试数据。此外,对于每个心电图,分析各个性能统计数据以详细说明主题明智的性能依赖性。结果:从4倍交叉验证(CV)分析,RF分类器提供了灵敏度(SN),特异性(SP),精度(ACC)和F-1分数为98.0%,97.4%的最佳效果。 97.6%和97.1%用于AF预测。然而,单个心电图的测试结果略微将这些表现略微降低至95.9%,96.1%,97.4%和88.4%。结论:仅发现使用RRI特征来提供令人满意的模型预测性能。添加到模型的AA功能将模型性能增强高达3%。总体而言,本研究中获得的结果是使用RRI和基于AA的特征的可比性甚至优于最先进的算法。杂种模型的意义允许我们常规RRI甚至可以检测AF。在真实世界的条件下评估性能,没有进行手动标记,排除或预处理。此外,我们对分类器的单独评估每个ECG的性能,并将受试者保留为分类器。最后,我们表明数据集上的整体性能,尤其是标准简历,导致过度估算。

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