首页> 外文期刊>Medical and Biological Engineering and Computing: Journal of the International Federation for Medical and Biological Engineering >Performance of short-time spectral parametric methods for reducing the variance of the Doppler ultrasound mean instantaneous frequency estimation.
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Performance of short-time spectral parametric methods for reducing the variance of the Doppler ultrasound mean instantaneous frequency estimation.

机译:减少频谱多普勒超声的瞬时频谱参数方法的性能意味着瞬时频率估计。

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摘要

To achieve an accurate estimation of the instantaneous turbulent velocity fluctuations downstream of prosthetic heart valves in vivo, the variability of the spectral method used to measure the mean frequency shift of the Doppler signal (i.e. the Doppler velocity) should be minimised. This paper investigates the performance of various short-time spectral parametric methods such as the short-time Fourier transform, autoregressive modelling based on two different approaches, autoregressive moving average modelling based on the Steiglitz-McBride method, and Prony's spectral method. A simulated Doppler signal was used to evaluate the performance of the above mentioned spectral methods and Gaussian noise was added to obtain a set of signals with various signal-to-noise ratios. Two different parameters were used to evaluate the performance of each method in terms of variability and accurate matching of the theoretical Doppler mean instantaneous frequency variation within the cardiac cycle. Results show that autoregressive modelling outperforms the other investigated spectral techniques for window lengths varying between 1 and 10 ms. Among the autoregressive algorithms implemented, it is shown that the maximum entropy method based on a block data processing technique gives the best results for a signal-to-noise ratio of 20 dB. However, at 10 and 0 dB, the Levinson-Durbin algorithm surpasses the performance of the maximum entropy method. It is expected that the intrinsic variance of the spectral methods can be an important source of error for the estimation of the turbulence intensity. The range of this error varies from 0.38% to 24% depending on the parameters of the spectral method and the signal-to-noise ratio.
机译:为了准确估计体内人造心脏瓣膜下游的瞬时湍流速度波动,应将用于测量多普勒信号平均频移(即多普勒速度)的频谱方法的可变性降至最低。本文研究了各种短时频谱参数化方法的性能,例如短时傅立叶变换,基于两种不同方法的自回归建模,基于Steiglitz-McBride方法的自回归移动平均模型以及Prony频谱方法。使用模拟的多普勒信号来评估上述频谱方法的性能,并添加高斯噪声以获得具有各种信噪比的一组信号。使用两个不同的参数来评估每种方法在心动周期内的理论多普勒平均瞬时频率变化的可变性和精确匹配方面的性能。结果表明,对于1至10 ms的窗口长度,自回归建模优于其他研究的光谱技术。在实现的自回归算法中,表明基于块数据处理技术的最大熵方法在信噪比为20 dB时给出了最佳结果。但是,在10 dB和0 dB时,Levinson-Durbin算法的性能超过了最大熵方法的性能。可以预期,光谱方法的内在方差可能是估算湍流强度的重要误差来源。此误差的范围从0.38%到24%不等,具体取决于频谱方法的参数和信噪比。

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