Empirical mode decomposition of heart rate variability. A methodological study

K. Schiecke, D. Piper, S. Buerger, L. Leistritz, M. Feucht, H. Witte
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引用次数: 5

Abstract

Aim of this study is to investigate advantages and disadvantages of empirical mode decomposition (EMD) approaches for the investigation of heart rate variability (HRV). Signal-adaptive approaches like EMD can be used to separate components of HRV which are associated with cardiovascular regulatory mechanisms. Two EMD approaches, standard EMD and complete empirical mode decomposition (CEMD) are used to decompose the HRV of children during temporal lobe epilepsy (TLE; 10 min recordings of 18 children). As nonlinear properties are preserved by EMD, analysis of nonlinear predictability of HRV components is applied resulting in a nonlinear, time-variant, frequency-selective examination of HRV. Especially mode mixing problems are investigated. Complementary analysis steps are suggested to detect their occurrence. CEMD is able to better separate defined HRV components and to reduce, but not completely solve, mode mixing. Nonlinear analysis of CEMD based HRV components results in more distinct differences between specific seizure-related states.
心率变异性的经验模式分解。方法学研究
本研究的目的是探讨经验模态分解(EMD)方法在心率变异性(HRV)研究中的优缺点。EMD等信号自适应方法可用于分离与心血管调节机制相关的HRV成分。采用标准EMD和完全经验模态分解(CEMD)两种EMD方法对儿童颞叶癫痫(TLE;18个孩子的10分钟录音)。由于EMD保留了非线性特性,因此对HRV分量的非线性可预测性进行了分析,从而对HRV进行了非线性、时变、频率选择性的检查。特别研究了模态混合问题。建议采用补充分析步骤来检测它们的发生。CEMD能够更好地分离已定义的HRV组件,减少但不能完全解决模态混合。基于CEMD的HRV成分的非线性分析结果表明,特定癫痫相关状态之间存在更明显的差异。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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