de Chazal Philip, O'Dwyer Maria, Reilly Richard B
Department of Electronic and Electrical Engineering, University College Dublin, Belfield, Dublin 4, Ireland.
IEEE Trans Biomed Eng. 2004 Jul;51(7):1196-206. doi: 10.1109/TBME.2004.827359.
A method for the automatic processing of the electrocardiogram (ECG) for the classification of heartbeats is presented. The method allocates manually detected heartbeats to one of the five beat classes recommended by ANSI/AAMI EC57:1998 standard, i.e., normal beat, ventricular ectopic beat (VEB), supraventricular ectopic beat (SVEB), fusion of a normal and a VEB, or unknown beat type. Data was obtained from the 44 nonpacemaker recordings of the MIT-BIH arrhythmia database. The data was split into two datasets with each dataset containing approximately 50,000 beats from 22 recordings. The first dataset was used to select a classifier configuration from candidate configurations. Twelve configurations processing feature sets derived from two ECG leads were compared. Feature sets were based on ECG morphology, heartbeat intervals, and RR-intervals. All configurations adopted a statistical classifier model utilizing supervised learning. The second dataset was used to provide an independent performance assessment of the selected configuration. This assessment resulted in a sensitivity of 75.9%, a positive predictivity of 38.5%, and a false positive rate of 4.7% for the SVEB class. For the VEB class, the sensitivity was 77.7%, the positive predictivity was 81.9%, and the false positive rate was 1.2%. These results are an improvement on previously reported results for automated heartbeat classification systems.
提出了一种用于自动处理心电图(ECG)以进行心跳分类的方法。该方法将人工检测到的心跳分配到ANSI/AAMI EC57:1998标准推荐的五个心跳类别之一,即正常心跳、室性异位搏动(VEB)、室上性异位搏动(SVEB)、正常与VEB的融合或未知心跳类型。数据来自MIT-BIH心律失常数据库的44个非起搏器记录。数据被分成两个数据集,每个数据集包含来自22个记录的大约50,000次心跳。第一个数据集用于从候选配置中选择分类器配置。比较了处理从两个心电图导联导出的特征集的12种配置。特征集基于心电图形态、心跳间期和RR间期。所有配置都采用了利用监督学习的统计分类器模型。第二个数据集用于对所选配置进行独立的性能评估。该评估得出SVEB类的灵敏度为75.9%,阳性预测值为38.5%,假阳性率为4.7%。对于VEB类,灵敏度为77.7%,阳性预测值为81.9%,假阳性率为1.2%。这些结果比之前报道的自动心跳分类系统的结果有所改进。