School of Information Science and Engineering, FuJian University of Technology, Xueyuan Road 3, Fuzhou 350118, China.
School of Instrument Science and Engineering, Southeast University, Sipailou 2, Nanjing 210096, China.
J Healthc Eng. 2017;2017:4108720. doi: 10.1155/2017/4108720. Epub 2017 May 7.
Heartbeat classification is a crucial step for arrhythmia diagnosis during electrocardiographic (ECG) analysis. The new scenario of wireless body sensor network- (WBSN-) enabled ECG monitoring puts forward a higher-level demand for this traditional ECG analysis task. Previously reported methods mainly addressed this requirement with the applications of a shallow structured classifier and expert-designed features. In this study, modified frequency slice wavelet transform (MFSWT) was firstly employed to produce the time-frequency image for heartbeat signal. Then the deep learning (DL) method was performed for the heartbeat classification. Here, we proposed a novel model incorporating automatic feature abstraction and a deep neural network (DNN) classifier. Features were automatically abstracted by the stacked denoising auto-encoder (SDA) from the transferred time-frequency image. DNN classifier was constructed by an encoder layer of SDA and a softmax layer. In addition, a deterministic patient-specific heartbeat classifier was achieved by fine-tuning on heartbeat samples, which included a small subset of individual samples. The performance of the proposed model was evaluated on the MIT-BIH arrhythmia database. Results showed that an overall accuracy of 97.5% was achieved using the proposed model, confirming that the proposed DNN model is a powerful tool for heartbeat pattern recognition.
心跳分类是心电图(ECG)分析中心律失常诊断的关键步骤。在无线体传感器网络(WBSN)启用的 ECG 监测的新场景下,对这一传统 ECG 分析任务提出了更高的要求。以前的报道方法主要通过浅层结构分类器和专家设计的特征的应用来满足这一要求。在这项研究中,首先采用改进的频切片小波变换(MFSWT)生成心跳信号的时频图像。然后采用深度学习(DL)方法进行心跳分类。在这里,我们提出了一种新的模型,该模型结合了自动特征抽象和深度神经网络(DNN)分类器。特征由堆叠去噪自动编码器(SDA)从转移的时频图像中自动抽象出来。DNN 分类器由 SDA 的编码器层和 softmax 层构成。此外,通过对包含个体样本的一小部分的心跳样本进行微调,实现了确定性的患者特定心跳分类器。在所提出的模型上评估了其在麻省理工学院-比奇心律失常数据库上的性能。结果表明,所提出的模型的整体准确率达到 97.5%,这证实了所提出的 DNN 模型是一种用于心跳模式识别的强大工具。