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Improved Multiscale Entropy Technique with Nearest-Neighbor Moving-Average Kernel for Nonlinear and Nonstationary Short-Time Biomedical Signal Analysis

机译:改进了多尺度熵技术,具有最近邻的移动平均内核,用于非线性和非间断的短时间生物医学信号分析

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摘要

Analysis of biomedical signals can yield invaluable information for prognosis, diagnosis, therapy evaluation, risk assessment, and disease prevention which is often recorded as short time series data that challenges existing complexity classification algorithms such as Shannon entropy (SE) and other techniques. The purpose of this study was to improve previously developed multiscale entropy (MSE) technique by incorporating nearest-neighbor moving-average kernel, which can be used for analysis of nonlinear and non-stationary short time series physiological data. The approach was tested for robustness with respect to noise analysis using simulated sinusoidal and ECG waveforms. Feasibility of MSE to discriminate between normal sinus rhythm (NSR) and atrial fibrillation (AF) was tested on a single-lead ECG. In addition, the MSE algorithm was applied to identify pivot points of rotors that were induced in ex vivo isolated rabbit hearts. The improved MSE technique robustly estimated the complexity of the signal compared to that of SE with various noises, discriminated NSR and AF on single-lead ECG, and precisely identified the pivot points of ex vivo rotors by providing better contrast between the rotor core and the peripheral region. The improved MSE technique can provide efficient complexity analysis of variety of nonlinear and nonstationary short-time biomedical signals.
机译:生物医学信号分析可以产生可宝贵的预后信息,诊断,治疗评估,风险评估和疾病预防,这些数据通常被记录为挑战现有的复杂性分类算法,如香农熵(SE)和其他技术。本研究的目的是通过结合最近邻的移动平均内核来改善先前开发的多尺度熵(MSE)技术,其可用于分析非线性和非静止的短时间序列生理数据。使用模拟正弦波和ECG波形对噪声分析进行稳健性测试该方法。在单引线心电图中测试了MSE以区分正常窦性节律(NSR)和心房颤动(AF)的可行性。另外,应用MSE算法以识别在离体孤立的兔心中诱导的转子的枢轴点。改进的MSE技术稳健地估计了与单引脚ECG的各种噪声的SE的信号的复杂性,并且通过在单引灯ECG上进行区分的NSR和AF,并通过在转子芯和转子芯之间提供更好的对比度来精确地识别出emVo转子的枢转点外围区域。改进的MSE技术可以提供各种非线性和非间断的短时生物医学信号的有效复杂性分析。

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