基于深度学习方法的无症状心房颤动检测与分类

B. Rajesh, Allam Mohan
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引用次数: 1

摘要

心电图是诊断心律失常的标准方法。异常,如无症状心房颤动,这是由不规则的心脏周期引起的,是借助于心电图信号数据检测。更快,更准确的结果,从自动分类和检测心电心律失常信号被认为是必不可少的。通过应用各种预处理技术和深度学习能力,提高了模型速度和鲁棒性。各种深度学习方法在不同心电信号数据集上的性能得到了许多研究者的关注。但他们忽视了在将数据输入深度学习模型之前进行数据预处理的重要性。本研究提出了一种残差网络(ResNet)架构,该架构使用重采样和数据增强技术的组合来提高训练稳定性。结果证明,ResNet在PhysioNet MIT-BIH心律失常数据集上产生更高的准确率,用于ECG数据分类。
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A Silent Cardiac Atrial Fibrillation Detection and Classification using Deep Learning Approach
The electrocardiogram (ECG is a standard method for diagnosing irregular heart rhythms. Abnormalities, such as silent cardiac atrial fibrillation, which is caused by an irregular cardiac cycle, are detected with the aid of ECG signal data. Faster and more accurate results from automated classification and detection of the ECG arrhythmia signal are considered essential. Improvements in model speed and robustness have been achieved through the application of various pre-processing techniques and deep learning abilities. Many researchers have paid attention to the performance of various deep learning approaches on different datasets of ECG signals. But they have overlooked the significance of data pre-processing before feeding it to deep learning models. This research proposes a Residual Network (ResNet) architecture that increases training stability using a combination of resampling and data augmentation techniques. The results have proven that ResNet produces higher accuracy on the PhysioNet MIT-BIH Arrhythmia dataset for the classification of ECG data.
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