Liu Tongtong, Li Peng, Liu Yuanyuan, Zhang Huan, Li Yuanyang, Jiao Yu, Liu Changchun, Karmakar Chandan, Liang Xiaohong, Ren Mengli, Wang Xinpei
School of Control Science and Engineering, Shandong University, Jinan 250061, China.
Division of Sleep and Circadian Disorders, Brigham and Women's Hospital, Boston, MA 02115, USA.
Entropy (Basel). 2021 May 21;23(6):642. doi: 10.3390/e23060642.
Heart sound signals reflect valuable information about heart condition. Previous studies have suggested that the information contained in single-channel heart sound signals can be used to detect coronary artery disease (CAD). But accuracy based on single-channel heart sound signal is not satisfactory. This paper proposed a method based on multi-domain feature fusion of multi-channel heart sound signals, in which entropy features and cross entropy features are also included. A total of 36 subjects enrolled in the data collection, including 21 CAD patients and 15 non-CAD subjects. For each subject, five-channel heart sound signals were recorded synchronously for 5 min. After data segmentation and quality evaluation, 553 samples were left in the CAD group and 438 samples in the non-CAD group. The time-domain, frequency-domain, entropy, and cross entropy features were extracted. After feature selection, the optimal feature set was fed into the support vector machine for classification. The results showed that from single-channel to multi-channel, the classification accuracy has increased from 78.75% to 86.70%. After adding entropy features and cross entropy features, the classification accuracy continued to increase to 90.92%. The study indicated that the method based on multi-domain feature fusion of multi-channel heart sound signals could provide more information for CAD detection, and entropy features and cross entropy features played an important role in it.
心音信号反映了有关心脏状况的有价值信息。先前的研究表明,单通道心音信号中包含的信息可用于检测冠状动脉疾病(CAD)。但基于单通道心音信号的准确性并不令人满意。本文提出了一种基于多通道心音信号多域特征融合的方法,其中还包括熵特征和交叉熵特征。共有36名受试者参与了数据收集,包括21名CAD患者和15名非CAD受试者。对于每个受试者,同步记录五通道心音信号5分钟。经过数据分割和质量评估,CAD组留下553个样本,非CAD组留下438个样本。提取了时域、频域、熵和交叉熵特征。经过特征选择后,将最优特征集输入支持向量机进行分类。结果表明,从单通道到多通道,分类准确率从78.75%提高到了86.70%。添加熵特征和交叉熵特征后,分类准确率继续提高到90.92%。该研究表明,基于多通道心音信号多域特征融合的方法可为CAD检测提供更多信息,熵特征和交叉熵特征在其中发挥了重要作用。