Schlaikjer Malene, Jensen Jørgen Arendt
Orsted*DTU, Technical University of Denmark, DK-2800 Kgs. Lyngby, Denmark.
IEEE Trans Ultrason Ferroelectr Freq Control. 2004 Jan;51(1):80-92. doi: 10.1109/tuffc.2004.1268470.
The aspect of correlation among the blood velocities in time and space has not received much attention in previous blood velocity estimators. The theory of fluid mechanics predicts this property of the blood flow. Additionally, most estimators based on a cross-correlation analysis are limited on the maximum velocity detectable. This is due to the occurrence of multiple peaks in the cross-correlation function. In this study a new estimator (CMLE), which is based on correlation (C) properties inherited from fluid flow and maximum likelihood estimation (MLE), is derived and evaluated on a set of simulated and in vivo data from the carotid artery. The estimator is meant for two-dimensional (2-D) color flow imaging. The resulting mathematical relation for the estimator consists of two terms. The first term performs a cross-correlation analysis on the signal segment in the radio frequency (RF)-data under investigation. The flow physic properties are exploited in the second term, as the range of velocity values investigated in the cross-correlation analysis are compared to the velocity estimates in the temporal and spatial neighborhood of the signal segment under investigation. The new estimator has been compared to the cross-correlation (CC) estimator and the previously developed maximum likelihood estimator (MLE). The results show that the CMLE can handle a larger velocity search range and is capable of estimating even low velocity levels from tissue motion. The CC and the MLE produce incorrect velocity estimates due to the multiple peaks, when the velocity search range is increased above the maximum detectable velocity. The root-mean square error (RMS) on the velocity estimates for the simulated data is on the order of 7 cm/s (14%) for the CMLE, and it is comparable to the RMS for the CC and the MLE. When the velocity search range is set to twice the limit of the CC and the MLE, the number of incorrect velocity estimates are 0, 19.1, and 7.2% for the CMLE, CC, and MLE, respectively. The ability to handle a larger search range and estimating low velocity levels was confirmed on in vivo data.
在以往的血流速度估计器中,血流速度在时间和空间上的相关性方面并未受到太多关注。流体力学理论预测了血流的这一特性。此外,大多数基于互相关分析的估计器在可检测的最大速度方面存在限制。这是由于互相关函数中会出现多个峰值。在本研究中,基于从流体流动继承的相关性(C)属性和最大似然估计(MLE),推导了一种新的估计器(CMLE),并在一组来自颈动脉的模拟数据和体内数据上进行了评估。该估计器用于二维(2-D)彩色血流成像。估计器的最终数学关系由两项组成。第一项对所研究的射频(RF)数据中的信号段进行互相关分析。第二项利用了血流物理特性,因为在互相关分析中研究的速度值范围与所研究信号段的时间和空间邻域中的速度估计值进行了比较。将新估计器与互相关(CC)估计器和先前开发的最大似然估计器(MLE)进行了比较。结果表明,CMLE可以处理更大的速度搜索范围,并且能够从组织运动中估计出甚至很低的速度水平。当速度搜索范围增加到超过最大可检测速度时,由于多个峰值,CC和MLE会产生错误的速度估计。对于模拟数据,CMLE速度估计的均方根误差(RMS)约为7 cm/s(14%),与CC和MLE的RMS相当。当速度搜索范围设置为CC和MLE极限的两倍时,CMLE、CC和MLE的错误速度估计数量分别为0、19.1和