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首页> 外文期刊>IEEE Transactions on Ultrasonics, Ferroelectrics, and Frequency Control >Simplified inverse filter tracking algorithm for estimating the mean trabecular bone spacing
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Simplified inverse filter tracking algorithm for estimating the mean trabecular bone spacing

机译:用于估计平均小梁骨间距的简化逆滤波器跟踪算法

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Ultrasonic backscatter signals provide useful information relevant to bone tissue characterization. Trabecular bone microstructures have been considered as quasi-periodic tissues with a collection of regular and diffuse scatterers. This paper investigates the potential of a novel technique using a simplified inverse filter tracking (SIFT) algorithm to estimate mean trabecular bone spacing (MTBS) from ultrasonic backscatter signals. In contrast to other frequency-based methods, the SIFT algorithm is a time-based method and utilizes the amplitude and phase information of backscatter echoes, thus retaining the advantages of both the autocorrelation and the cepstral analysis techniques. The SIFT algorithm was applied to backscatter signals from simulations, phantoms, and bovine trabeculae in vitro. The estimated MTBS results were compared with those of the autoregressive (AR) cepstrum and quadratic transformation (QT) . The SIFT estimates are better than the AR cepstrum estimates and are comparable with the QT values. The study demonstrates that the SIFT algorithm has the potential to be a reliable and robust method for the estimation of MTBS in the presence of a small signal-to-noise ratio, a large spacing variation between regular scatterers, and a large scattering strength ratio of diffuse scatterers to regular ones.
机译:超声反向散射信号提供与骨组织表征有关的有用信息。小梁的骨微结构已被认为是准周期性组织,具有规则的和分散的散射体。本文研究了使用简化的逆滤波器跟踪(SIFT)算法从超声反向散射信号估计平均小梁骨间距(MTBS)的新技术的潜力。与其他基于频率的方法相比,SIFT算法是基于时间的方法,它利用了反向散射回波的幅度和相位信息,因此保留了自相关和倒谱分析技术的优势。 SIFT算法已应用于模拟,体模和牛小梁的体外反向散射信号。将估计的MTBS结果与自回归(AR)倒谱和二次变换(QT)的结果进行比较。 SIFT估计值优于AR倒谱估计值,并且与QT值相当。研究表明,在信噪比小,规则散射体之间的间距变化大以及散射强度比大的情况下,SIFT算法有可能成为一种可靠且鲁棒的MTBS估计方法。将散射体扩散到常规散射体。

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