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Deep neural network based approach for ECG classification using hybrid differential features and active learning

机译:使用混合差分特征和主动学习的基于深度神经网络的ECG分类方法

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摘要

A novel active learning-based electrocardiogram (ECG) signal classification method using eigenvalues and deep learning is proposed. Six statistical features relating to ECG beat intervals are calculated separately for each heartbeat. Both statistical features and eigenvalues of ECG beats are combined into a single feature vector. The eigenvalues of ECG beats are used as an input to denoising autoencoder (DAE). Weighted ECG beat intervals are calculated by using ten-fold cross-validation approach. To learn an efficient feature representation from the hybrid feature vector, DAE is used in an unsupervised way. After completing the feature learning procedure, a softmax regression layer is added on the top of the resulting hidden layer of DAE, and thus a suitable deep neural network (DNN) architecture is built. The learned features obtained from the autoencoder layers are fed to the softmax regression layer for classification. To update weights of the proposed eigenvalues-based DNN model, ECG beats are labelled by the medical expert are used. In order to determine the most informative beats, entropy and Breaking-Ties are also used as selection criteria. The proposed method is evaluated in terms of ECG beats classes. The classification performance of the authors' proposed model is also compared with the several conventional machine learning classifiers.
机译:提出了一种基于特征值和深度学习的主动学习型心电图信号分类新方法。针对每个心跳分别计算与ECG跳动间隔有关的六个统计特征。 ECG搏动的统计特征和特征值都组合到单个特征向量中。 ECG拍的特征值用作去噪自动编码器(DAE)的输入。使用十重交叉验证方法计算加权的心电图搏动间隔。为了从混合特征向量中学习有效的特征表示,以无监督的方式使用DAE。完成特征学习过程后,将softmax回归层添加到DAE的所得隐藏层的顶部,从而构建合适的深度神经网络(DNN)体系结构。从自动编码器层获得的学习特征被馈送到softmax回归层进行分类。为了更新建议的基于特征值的DNN模型的权重,使用由医学专家标记的ECG搏动。为了确定最有用的拍子,熵和Breaking-Ties也用作选择标准。建议的方法根据心电图节律分类进行评估。作者提出的模型的分类性能也与几种传统的机器学习分类器进行了比较。

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