Bulent Ecevit University, Department of Electrical and Electronics Engineering, Zonguldak, Turkey.
Izmir Katip Celebi University, Department of Biomedical Engineering, Cigli, Izmir, Turkey.
Comput Biol Med. 2014 Feb;45:72-9. doi: 10.1016/j.compbiomed.2013.11.016. Epub 2013 Dec 4.
In this study, the best combination of short-term heart rate variability (HRV) measures was investigated to distinguish 29 patients with congestive heart failure from 54 healthy subjects in the control group. In the analysis performed, wavelet packet transform based frequency-domain measures and several non-linear parameters were used in addition to standard HRV measures. The backward elimination and unpaired statistical analysis methods were used to select the best one among all possible combinations of these measures. Five distinct typical classifiers with different parameters were evaluated in discriminating these two groups using the leave-one-out cross validation method. Each algorithm was tested 30 times to determine the repeatability of the results. The results imply that the backward elimination method gives better performance when compared to the statistical significance method in the feature selection stage. The best performance (82.75%, 96.29%, and 91.56% for the sensitivity, specificity, and accuracy) was obtained by using the SVM classifier with 27 selected features including non-linear and wavelet-based measures.
在这项研究中,研究人员探讨了最佳的短期心率变异性 (HRV) 测量组合,以区分 29 名充血性心力衰竭患者和 54 名对照组健康受试者。在进行的分析中,除了标准的 HRV 测量外,还使用了基于小波包变换的频域测量和几个非线性参数。使用向后消除和非配对统计分析方法,从这些措施的所有可能组合中选择最佳的一个。使用留一交叉验证法,使用具有不同参数的五个不同的典型分类器来区分这两组。每种算法都经过 30 次测试,以确定结果的可重复性。结果表明,与特征选择阶段的统计显著性方法相比,向后消除方法的性能更好。使用 SVM 分类器(包含 27 个选择的特征,包括非线性和基于小波的测量)可获得最佳性能(敏感性为 82.75%、特异性为 96.29%和准确性为 91.56%)。