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Conventional, Bayesian, and Modified Prony's methods for characterizing fast and slow waves in equine cancellous bone

机译:传统,贝叶斯和改良Prony方法表征马松质骨中快波和慢波

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摘要

Conventional, Bayesian, and the modified least-squares Prony's plus curve-fitting (MLSP + CF) methods were applied to data acquired using 1 MHz center frequency, broadband transducers on a single equine cancellous bone specimen that was systematically shortened from 11.8 mm down to 0.5 mm for a total of 24 sample thicknesses. Due to overlapping fast and slow waves, conventional analysis methods were restricted to data from sample thicknesses ranging from 11.8 mm to 6.0 mm. In contrast, Bayesian and MLSP + CF methods successfully separated fast and slow waves and provided reliable estimates of the ultrasonic properties of fast and slow waves for sample thicknesses ranging from 11.8 mm down to 3.5 mm. Comparisons of the three methods were carried out for phase velocity at the center frequency and the slope of the attenuation coefficient for the fast and slow waves. Good agreement among the three methods was also observed for average signal loss at the center frequency. The Bayesian and MLSP + CF approaches were able to separate the fast and slow waves and provide good estimates of the fast and slow wave properties even when the two wave modes overlapped in both time and frequency domains making conventional analysis methods unreliable.
机译:常规,贝叶斯方法和改进的最小二乘Prony加曲线拟合(MLSP + CF)方法应用于在单个马松质骨标本上使用1 MHz中心频率,宽带换能器采集的数据,该系统从11.8mm缩短至0.5毫米,共24个样品厚度。由于快波和慢波重叠,常规分析方法仅限于厚度范围从11.8mm至6.0mm的数据。相比之下,贝叶斯方法和MLSP + CF方法成功分离了快波和慢波,并为样本厚度从11.8mm到3.5 mm的快波和慢波的超声特性提供了可靠的估计。对中心频率的相速度和快,慢波的衰减系数斜率进行了三种方法的比较。对于中心频率处的平均信号损耗,这三种方法之间也观察到了很好的一致性。即使当两种波模式在时域和频域重叠时,传统的分析方法也不可靠,贝叶斯方法和MLSP + CF方法仍能够将快波和慢波分开,并对快波和慢波特性提供良好的估计。

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