Brusseau Elisabeth, Kybic Jan, Deprez Jean-François, Basset Olivier
CREATIS INSA-Lyon, France.
IEEE Trans Med Imaging. 2008 Feb;27(2):145-60. doi: 10.1109/TMI.2007.897408.
In this paper, a 2-D locally regularized strain estimation method for imaging deformation of soft biological tissues from radio-frequency (RF) ultrasound (US) data is introduced. Contrary to most 2-D techniques that model the compression-induced local displacement as a 2-D shift, our algorithm also considers a local scaling factor in the axial direction. This direction-dependent model of tissue motion and deformation is induced by the highly anisotropic resolution of RF US images. Optimal parameters are computed through the constrained maximization of a similarity criterion defined as the normalized correlation coefficient. Its value at the solution is then used as an indicator of estimation reliability, the probability of correct estimation increasing with the correlation value. In case of correlation loss, the estimation integrates an additional constraint, imposing local continuity within displacement and strain fields. Using local scaling factors and regularization increase the method's robustness with regard to decorrelation noise, resulting in a wider range of precise measurements. Results on simulated US data from a mechanically homogeneous medium subjected to successive uniaxial loadings demonstrate that our method is theoretically able to accurately estimate strains up to 17%. Experimental strain images of phantom and cut specimens of bovine liver clearly show the harder inclusions.
本文介绍了一种用于从射频(RF)超声(US)数据成像软生物组织变形的二维局部正则化应变估计方法。与大多数将压缩引起的局部位移建模为二维平移的二维技术不同,我们的算法还考虑了轴向的局部缩放因子。这种与方向相关的组织运动和变形模型是由RF US图像的高度各向异性分辨率引起的。通过定义为归一化相关系数的相似性准则的约束最大化来计算最优参数。然后将其在解处的值用作估计可靠性的指标,正确估计的概率随相关值增加。在相关性损失的情况下,估计整合了一个额外的约束,即在位移和应变场中施加局部连续性。使用局部缩放因子和正则化提高了该方法对去相关噪声的鲁棒性,从而实现了更广泛的精确测量范围。对承受连续单轴载荷的机械均匀介质的模拟US数据的结果表明,我们的方法理论上能够准确估计高达17%的应变。牛肝体模和切割标本的实验应变图像清楚地显示了较硬的内含物。