Javadi Mehrdad
Department of Mechatronics Engineering, Islamic Azad University-South Tehran Branch , Tehran , Iran.
J Med Eng Technol. 2013 Nov;37(8):484-97. doi: 10.3109/03091902.2013.831493. Epub 2013 Sep 18.
Abstract In this paper, the supervised classification of the electrocardiogram (ECG) beats based on the fusion of several intelligent learning machines is described. For classification of ECG heartbeats, first, the QRS complexes are delineated by an efficient algorithm so as to identify the fiducial and J-locations of each complex. For each delineated QRS complex, a feature vector is established based on the geometrical properties of the complex waveform and its associated discrete-wavelet transform. Next, three different multi-layer perceptron back-propagation (MLP-BP) networks are trained with different topologies and intrinsic parameters. Afterwards, the outputs of MLP-BPs are used as the new feature space elements for training three adaptive fuzzy network inference systems (ANFIS) in order to increase the final accuracy. At the end, the outputs of ANFIS classifiers are voted based on majority for each input sample. The method was applied to seven arrhythmias (Normal, LBBB, RBBB, PVC, APB, VE, VF) which belong to the MIT-BIH Arrhythmia Database and the average accuracy value Acc=98.28% was achieved for the beat-level. Also, the proposed method was assessed to five arrhythmias (Normal, LBBB, RBBB, PVC, APB) according to validation standards of the American Heart Association (AHA) at record (subject) level and the average accuracy value Acc=73.39% was achieved. To evaluate performance quality of the new proposed hybrid learning machine, the obtained results were compared with similar peer-reviewed studies in this area.
摘要 本文描述了基于多种智能学习机器融合的心电图(ECG)搏动的监督分类。对于ECG心跳的分类,首先,通过一种高效算法描绘QRS复合波,以识别每个复合波的基准点和J点位置。对于每个描绘的QRS复合波,基于复合波波形的几何特性及其相关的离散小波变换建立特征向量。接下来,使用不同的拓扑结构和内在参数训练三个不同的多层感知器反向传播(MLP-BP)网络。之后,将MLP-BP的输出用作新的特征空间元素,用于训练三个自适应模糊网络推理系统(ANFIS),以提高最终准确率。最后,对每个输入样本,根据多数原则对ANFIS分类器的输出进行投票。该方法应用于属于麻省理工学院-比哈尔心律失常数据库的七种心律失常(正常、左束支传导阻滞、右束支传导阻滞、室性早搏、房性早搏、室性逸搏、室颤),在搏动水平上平均准确率Acc = 98.28%。此外,根据美国心脏协会(AHA)的验证标准,在记录(受试者)水平上对该方法进行了五种心律失常(正常、左束支传导阻滞、右束支传导阻滞、室性早搏、房性早搏)的评估,平均准确率Acc = 73.39%。为了评估新提出的混合学习机器的性能质量,将所得结果与该领域类似的同行评审研究进行了比较。