Huang Chengwu, Ren Tian-Ling, Luo Jianwen
IEEE Trans Ultrason Ferroelectr Freq Control. 2014 Dec;61(12):2001-18. doi: 10.1109/TUFFC.2014.006597.
Quantification of arterial stiffness, such as pulse wave velocity (PWV), is increasingly used in the risk assessment of cardiovascular disease. Pulse wave imaging (PWI) is an emerging ultrasound-based technique to noninvasively measure the local PWV instead of the global PWV, as in conventional methods. In PWI, several key parameters, including the frame rate of ultrasound imaging, motion estimation rate (MER), number of scan lines, image width, PWV value, and sonographic signal-to-noise ratio (SNRs), play an important but still unclear role in the accuracy and precision of PWV measurement. In this study, computer simulations were performed to investigate the fundamental effects of these parameters on the PWV measurement. The pulse waveform was estimated by speckle tracking on ultrasound RF signals acquired at a frame rate of 2083 Hz from a location on the common carotid artery of a healthy subject. By applying different time delays on the estimated waveform based on specific PWI parameters, the pulse waveforms at others locations were simulated. Ultrasound RF signals of the artery during the pulse wave propagation were generated from a 2-D convolutional image formation model. The PWI technique was applied to estimate the PWV at different values of frame rate, MER, number of scan lines, image width, PWV, and SNRs. The performance of the PWV estimation was evaluated by measuring the relative error, coefficient of variation (CV) and coefficient of determination (R(2)). The results showed that PWVs could be correctly measured when the frame rate was higher than a certain value (i.e., minimum frame rate), below which the estimated error increased rapidly. The minimum frame rate required for PWV estimation was found to increase with the value of PWV. An optimal MER was found (i.e., about 200 Hz) and allowed better performance of PWV measurement. The CV of PWV estimation decreased and R(2) increased with number of scan lines and image width, indicating that the performance of the PWV estimation could be improved with a larger number of scan lines and image width. For a given sufficiently high frame rate, a higher PWV value was found to deteriorate the PWV estimation, as indicated by an increasing CV and decreasing R(2). The simulation results were in good agreement with the theoretical analysis. Finally, high-quality PWV estimation could be obtained as long as the SNRs was higher than about 30 dB. The quantitative effects of the key parameters obtained from this study might provide important guidelines for parameter optimization in ultrasound-based local PWV measurement in vivo.
动脉僵硬度的量化,如脉搏波速度(PWV),在心血管疾病风险评估中的应用越来越广泛。脉搏波成像(PWI)是一种新兴的基于超声的技术,用于非侵入性测量局部PWV,而非传统方法中的整体PWV。在PWI中,几个关键参数,包括超声成像的帧率、运动估计率(MER)、扫描线数量、图像宽度、PWV值和超声信噪比(SNRs),在PWV测量的准确性和精确性方面发挥着重要但仍不明确的作用。在本研究中,进行了计算机模拟以研究这些参数对PWV测量的基本影响。通过对从健康受试者颈总动脉某一位置以2083 Hz帧率采集的超声射频信号进行散斑跟踪来估计脉搏波形。基于特定的PWI参数对估计波形施加不同的时间延迟,从而模拟其他位置的脉搏波形。利用二维卷积图像形成模型生成脉搏波传播过程中动脉的超声射频信号。应用PWI技术在不同的帧率、MER、扫描线数量、图像宽度、PWV和SNRs值下估计PWV。通过测量相对误差、变异系数(CV)和决定系数(R(2))来评估PWV估计的性能。结果表明,当帧率高于某一值(即最小帧率)时,PWV能够被正确测量,低于该值时估计误差迅速增加。发现PWV估计所需的最小帧率随PWV值的增加而增加。找到了一个最佳MER(即约200 Hz),其能使PWV测量表现更佳。随着扫描线数量和图像宽度的增加,PWV估计的CV降低而R(2)增加,这表明增加扫描线数量和图像宽度可改善PWV估计的性能。对于给定的足够高的帧率,较高的PWV值会使PWV估计变差,表现为CV增加和R(2)降低。模拟结果与理论分析高度吻合。最后,只要SNRs高于约30 dB,就能获得高质量的PWV估计。本研究获得的关键参数的定量影响可能为体内基于超声的局部PWV测量中的参数优化提供重要指导。