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Rhythm and quality classification from short ECGs recorded using a mobile device

机译:使用移动设备记录的短ECG的节奏和质量分类

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Introduction: Atrial fibrillation (AF) is the most common sustained cardiac arrhythmia. Its prevalence is 12% of the general population and it is associated with increased risk of mortality and morbidity. Methods: The AliveCor mobile electrocardiogram (ECG) device was used to collect data. The Physionet Challenge aimed to create an intelligent algorithm for automated rhythm and quality classification. A database of 8528 single lead ECG was used for training and a closed database of 3658 ECG recordings was used for testing the participants algorithms on the Challenge server. The RR interval time-series was first estimated using a R-peak detector. Signal quality was estimated on a second-by-second basis and the continuous sub-segment with the highest quality was selected for further analysis. A number of features were estimated: heart rate variability (time domain based, fragmentation, coefficient of sample entropy etc.), ECG morphology (QRS length, QT interval etc.) and the presence of ectopic beats. The features were used to train support vector machine classifiers in a one-vs.-rest approach. Results: For the final score of the challenge we obtained an overall F ι measure on the test set of 0.80. Conclusion: The feature based machine learning approach showed high performance in distinguishing between the different rhythms represented in the Challenge. This opens the horizon for computer automated interpretation of single lead mobile ECG.
机译:简介:心房颤动(AF)是最常见的持续心律失常。它的患病率为一般人群的12 \%,它与增加的死亡率和发病风险增加有关。方法:使用AliveCor移动心电图(ECG)设备来收集数据。物理体挑战旨在为自动节律和质量分类创建智能算法。 8528个单引线ECG的数据库用于培训,并使用3658个ECG录制的关闭数据库用于测试挑战服务器上的参与者算法。首先使用R峰值检测器估计RR间隔时间序列。信号质量在第二次逐步估算,选择具有最高质量的连续子段进行进一步分析。估计了许多特征:心率变异性(基于时域,片段化,样品熵系数等),ECG形态(QRS长度,QT间隔等)和异位节拍的存在。这些功能用于培训一个与休息方法的支持向量机分类器。结果:对于挑战的最终得分,我们在测试组0.80的测试集中获得了整体F 1测量。结论:基于特征的机器学习方法在挑战中不同节奏的区分时显示出高性能。这为单个引导移动ECG的计算机自动解释打开了地平线。

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