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Automatic Detection of ECG Abnormalities by Using an Ensemble of Deep Residual Networks with Attention

机译:通过使用具有注意功能的深度残差网络集合自动检测ECG异常

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Heart disease is one of the most common diseases causing morbidity and mortality. Electrocardiogram (ECG) has been widely used for diagnosing heart diseases for its simplicity and non-invasive property. Automatic ECG analyzing technologies are expected to reduce human working load and increase diagnostic efficacy. However, there are still some challenges to be addressed for achieving this goal. In this study, we develop an algorithm to identify multiple abnormalities from 12-lead ECG recordings. In the algorithm pipeline, several preprocessing methods are firstly applied on the ECG data for denoising, augmentation and balancing recording numbers of variant classes. In consideration of efficiency and consistency of data length, the recordings are padded or truncated into a medium length, where the padding/truncating time windows are selected randomly to suppress overfitting. Then, the ECGs are used to train deep neural network (DNN) models with a novel structure that combines a deep residual network with an attention mechanism. Finally, an ensemble model is built based on these trained models to make predictions on the test data set. Our method is evaluated based on the test set of the First China ECG Intelligent Competition dataset by using the F_1 metric that is regarded as the harmonic mean between the precision and recall. The resultant overall F score of the algorithm is 0.875, showing a promising performance and potential for practical use.
机译:心脏病是引起发病和死亡的最常见疾病之一。心电图(ECG)由于其简单性和非侵入性特性而被广泛用于诊断心脏病。自动心电图分析技术有望减少人员工作量并提高诊断效率。然而,实现这一目标仍然有一些挑战需要解决。在这项研究中,我们开发了一种从12导联心电图记录中识别多种异常的算法。在算法流水线中,首先对ECG数据应用了几种预处理方法,以对变体类的记录数量进行降噪,增强和平衡。考虑到效率和数据长度的一致性,将记录填充或截断为中等长度,在其中随机选择填充/截断时间窗口以抑制过拟合。然后,ECG用于训练具有新颖结构的深层神经网络(DNN)模型,该结构将深层残差网络与注意力机制结合在一起。最后,基于这些训练过的模型构建集成模型,以对测试数据集进行预测。我们的方法是基于第一届中国心电图智能竞赛数据集的测试集,通过使用F_1指标进行评估的,该指标被视为精度和召回率之间的谐波均值。该算法的总F分数为0.875,显示出可喜的性能和实际应用潜力。

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