Shi Manhong, He Hongxin, Geng Wanchen, Wu Rongrong, Zhan Chaoying, Jin Yanwen, Zhu Fei, Ren Shumin, Shen Bairong
Center for Systems Biology, Soochow University, Suzhou, China.
College of Information and Network Engineering, Anhui Science and Technology University, Fengyang, China.
Front Physiol. 2020 Feb 25;11:118. doi: 10.3389/fphys.2020.00118. eCollection 2020.
Sudden cardiac death (SCD), which can deprive a person of life within minutes, is a destructive heart abnormality. Thus, providing early warning information for patients at risk of SCD, especially those outside hospitals, is essential. In this study, we investigated the performances of ensemble empirical mode decomposition (EEMD)-based entropy features on SCD identification. EEMD-based entropy features were obtained by using the following technology: (1) EEMD was performed on HRV beats to decompose them into intrinsic mode functions (IMFs), (2) five entropy parameters, namely Rényi entropy (RenEn), fuzzy entropy (FuEn), dispersion Entropy (DisEn), improved multiscale permutation entropy (IMPE), and Renyi distribution entropy(RdisEn), were computed from the first four IMFs obtained, which were named EEMD-based entropy features. Additionally, an automated scheme combining EEMD-based entropy and classical linear (time and frequency domains) features was proposed with the intention of detecting SCD early by analyzing 14 min (at seven successive intervals of 2 min) heart rate variability (HRV) in signals from a normal population and subjects at risk of SCD. Firstly, EEMD-based entropy and classical linear measurements were extracted from HRV beats, and then the integrated measurements were ranked by various methodologies, i.e., -test, entropy, receiver-operating characteristics (ROC), Wilcoxon, and Bhattacharyya. Finally, these ranked features were fed into a k-Nearest Neighbor algorithm for classification. Compared with several state-of-the-art methods, the proposed scheme firstly predicted subjects at risk of SCD up to 14 min earlier with an accuracy of 96.1%, a sensitivity of 97.5%, and a specificity of 94.4% 14 min before SCD onset. The simulation results exhibited that EEMD-based entropy estimators showed significant difference between SCD patients and normal individuals and outperformed the classical linear estimators in SCD detection, the EEMD-based FuEn and IMPE indexes were particularly useful assessments for identification of patients at risk of SCD and can be used as novel indices to reveal the disorders of rhythm variations of the autonomic nervous system when affected by SCD.
心脏性猝死(SCD)可在数分钟内夺走人的生命,是一种极具破坏性的心脏异常情况。因此,为有SCD风险的患者,尤其是院外患者提供早期预警信息至关重要。在本研究中,我们调查了基于总体经验模态分解(EEMD)的熵特征在SCD识别方面的性能。基于EEMD的熵特征通过以下技术获得:(1)对心率变异性(HRV)搏动进行EEMD,将其分解为固有模态函数(IMF);(2)从获得的前四个IMF中计算五个熵参数,即雷尼熵(RenEn)、模糊熵(FuEn)、离散熵(DisEn)、改进的多尺度排列熵(IMPE)和雷尼分布熵(RdisEn),这些被命名为基于EEMD的熵特征。此外,还提出了一种将基于EEMD的熵与经典线性(时域和频域)特征相结合的自动化方案,旨在通过分析正常人群和有SCD风险受试者信号中14分钟(连续七个2分钟间隔)的心率变异性(HRV)来早期检测SCD。首先,从HRV搏动中提取基于EEMD的熵和经典线性测量值,然后通过各种方法,即t检验、熵、受试者工作特征(ROC)、威尔科克森检验和巴塔查里亚检验,对综合测量值进行排序。最后,将这些排序后的特征输入k近邻算法进行分类。与几种最先进的方法相比,所提出的方案首先能在SCD发作前14分钟更早地预测有SCD风险的受试者,准确率为96.1%,灵敏度为97.5%,特异性为94.4%。模拟结果表明,基于EEMD的熵估计器在SCD患者和正常个体之间显示出显著差异,并且在SCD检测方面优于经典线性估计器,基于EEMD的FuEn和IMPE指标对于识别有SCD风险的患者特别有用,并且可以用作揭示受SCD影响时自主神经系统节律变化紊乱的新指标。