Department of Biomedical Engineering, Tarbiat Modares University, Tehran, Iran.
Department of Biomedical Engineering, Tarbiat Modares University, Tehran, Iran.
Comput Methods Programs Biomed. 2015 Nov;122(2):191-8. doi: 10.1016/j.cmpb.2015.08.007. Epub 2015 Aug 24.
The aims of this study are summarized in the following items: first, to investigate the class discrimination power of long-term heart rate variability (HRV) features for risk assessment in patients suffering from congestive heart failure (CHF); second, to introduce the most discriminative features of HRV to discriminate low risk patients (LRPs) and high risk patients (HRPs), and third, to examine the influence of feature dimension reduction in order to achieve desired accuracy of the classification. We analyzed two public Holter databases: 12 data of patients suffering from mild CHF (NYHA class I and II), labeled as LRPs and 32 data of patients suffering from severe CHF (NYHA class III and IV), labeled as HRPs. A K-nearest neighbor classifier was used to evaluate the performance of feature set in the classification. Moreover, to reduce the number of features as well as the overlap of the samples of two classes in feature space, we used generalized discriminant analysis (GDA) as a feature extraction method. By applying GDA to the discriminative nonlinear features, we achieved sensitivity and specificity of 100% having the least number of features. Finally, the results were compared with other similar conducted studies regarding the performance of feature selection procedure and classifier besides the number of features used in training.
首先,调查长期心率变异性(HRV)特征对充血性心力衰竭(CHF)患者风险评估的分类能力;其次,引入最具判别力的 HRV 特征来区分低危患者(LRPs)和高危患者(HRPs);第三,检查特征降维的影响,以达到分类的期望精度。我们分析了两个公开的 Holter 数据库:12 名患有轻度 CHF(NYHA Ⅰ和Ⅱ级)的患者数据,标记为 LRPs,32 名患有严重 CHF(NYHA Ⅲ和Ⅳ级)的患者数据,标记为 HRPs。使用 K-最近邻分类器评估特征集在分类中的性能。此外,为了减少特征数量以及特征空间中两类样本的重叠,我们使用广义判别分析(GDA)作为特征提取方法。通过将 GDA 应用于判别非线性特征,我们实现了具有最少特征数量的 100%的灵敏度和特异性。最后,除了训练中使用的特征数量外,还将结果与其他类似的特征选择过程和分类器进行了比较。