Biomedical Engineering Faculty, AmirKabir University of Technology, Tehran Polytechnic, 424 Hafez Ave., Tehran, Iran.
Comput Biol Med. 2011 Jun;41(6):411-9. doi: 10.1016/j.compbiomed.2011.04.003. Epub 2011 May 4.
Many methods for automatic heartbeat classification have been applied and reported in literature, but relatively few of them concerned with patient independent classification because of the less significant results compared to patient dependent ones. In this work, using phase space reconstruction in order to classify five heartbeat types can fill this gap to some extent. In the first and second method, Reconstructed phase space (RPS) is modeled by the Gaussian mixture model (GMM) and bins, respectively, and then classified by classic Bayesian classifier. In the third method, RPS is directly used to train predictor time-delayed neural networks (TDNN) and classified based on minimum prediction error. All three methods highly outperform the results reported before, for patient independent heartbeat classification. The best result is achieved using GMM-Bayes method with 92.5% classification accuracy.
许多用于自动心跳分类的方法已经在文献中得到了应用和报道,但由于与患者相关的分类相比,患者独立的分类结果不太显著,因此相对较少。在这项工作中,使用相空间重构来对五种心跳类型进行分类可以在一定程度上填补这一空白。在第一种和第二种方法中,分别使用高斯混合模型 (GMM) 和箱线图对重构相空间 (RPS) 进行建模,然后使用经典的贝叶斯分类器进行分类。在第三种方法中,直接使用 RPS 来训练预测时滞神经网络 (TDNN),并根据最小预测误差进行分类。所有三种方法在患者独立的心跳分类方面都显著优于之前的报告结果。使用 GMM-Bayes 方法可以达到 92.5%的分类准确率,这是最好的结果。