Department of Biological Systems Engineering, University of Nebraska-Lincoln, Lincoln, NE, USA.
IEEE Trans Ultrason Ferroelectr Freq Control. 2009 Dec;56(12):2624-9. doi: 10.1109/TUFFC.2009.1353.
Feature tracking is an algorithm for estimating blood flow velocity and tissue motion using pulse-echo ultrasound. In contrast to cross-correlation speckle-tracking techniques, feature tracking identifies features at discrete locations and corresponds them from frame to frame. Prior studies have demonstrated that feature-tracking estimates exhibit lower variance than those obtained by the conventional autocorrelation method and require less computational complexity than either speckle tracking or autocorrelation. To date, not much attention has been paid to the process by which trackable features (normally local maxima) are selected from the set of all available features. In the selection process, it is desired to minimize flow estimate variance while providing sufficient spatial and temporal coverage of flow area. Flow studies were performed with a blood flow phantom, 3.5-MHz spherically focused transducer, and a pulser/receiver. Values were selected for the amplitude threshold (based on the RMS value) and width thresholds (based on the wavelength corresponding to transducer center frequency). The performance of this method using different threshold values was evaluated by the estimate standard deviation and number of features available to track. Results show that an optimal width threshold occurs at about 40 to 45% of the transmission wavelength, while a trade-off exists between amplitude thresholds and spatial flow field coverage. Both the standard deviation of estimated velocities and number of available features decrease with increasing threshold (either amplitude or width). This affords a user a method of determining optimal feature tracking thresholds depending on the specific flow application. Judicious selection of feature thresholds can decrease the estimate standard deviation by more than 25%.
特征跟踪是一种使用脉冲回波超声估计血流速度和组织运动的算法。与互相关散斑跟踪技术相比,特征跟踪在离散位置识别特征,并将它们从一帧对应到另一帧。先前的研究表明,特征跟踪估计的方差比传统自相关方法获得的估计方差低,并且比散斑跟踪或自相关方法的计算复杂度低。迄今为止,对于从所有可用特征中选择可跟踪特征(通常是局部最大值)的过程,并没有太多关注。在选择过程中,希望在提供足够的流动区域空间和时间覆盖的同时最小化流动估计方差。使用血流体模、3.5MHz 球形聚焦换能器和脉冲发生器/接收器进行了流动研究。根据均方根值选择幅度阈值(基于幅度阈值)和宽度阈值(基于与换能器中心频率对应的波长)。通过估计标准偏差和可用于跟踪的特征数量评估了这种方法使用不同阈值的性能。结果表明,最优宽度阈值出现在大约 40%到 45%的传输波长,而幅度阈值和空间流场覆盖之间存在折衷。估计速度的标准偏差和可用特征的数量都随着阈值(幅度或宽度)的增加而减小。这为用户提供了一种根据特定流动应用确定最佳特征跟踪阈值的方法。明智地选择特征阈值可以将估计标准偏差降低 25%以上。