IEEE Trans Ultrason Ferroelectr Freq Control. 2019 Mar;66(3):481-492. doi: 10.1109/TUFFC.2019.2898628. Epub 2019 Feb 11.
While in vivo acoustic radiation force impulse (ARFI)-induced peak displacement (PD) has been demonstrated to have high sensitivity and specificity for differentiating soft from stiff plaque components in patients with carotid plaque, the parameter exhibits poorer performance for distinguishing between plaque features with similar stiffness. To improve discrimination of carotid plaque features relative to PD, we hypothesize that signal correlation and signal-to-noise ratio (SNR) can be combined, outright or via displacement variance. Plaque feature detection by displacement variance, evaluated as the decadic logarithm of the variance of acceleration and termed "log(VoA)," was compared to that achieved by exploiting SNR, cross correlation coefficient, and ARFI-induced PD outcome metrics. Parametric images were rendered for 25 patients undergoing carotid endarterectomy, with spatially matched histology confirming plaque composition and structure. On average, across all plaques, log(VoA) was the only outcome metric with values that statistically differed between regions of lipid-rich necrotic core (LRNC), intraplaque hemorrhage (IPH), collagen (COL), and calcium (CAL). Further, log(VoA) achieved the highest contrast-to-noise ratio (CNR) for discriminating between LRNC and IPH, COL and CAL, and grouped soft (LRNC and IPH) and stiff (COL and CAL) plaque components. More specifically, relative to the previously demonstrated ARFI PD parameter, log(VoA) achieved 73% higher CNR between LRNC and IPH and 59% higher CNR between COL and CAL. These results suggest that log(VoA) enhances the differentiation of LRNC, IPH, COL, and CAL in human carotid plaques, in vivo, which is clinically relevant to improving stroke risk prediction and medical management.
虽然体内声辐射力脉冲 (ARFI) 诱导的峰值位移 (PD) 已被证明对区分颈动脉斑块中软斑块和硬斑块成分具有高灵敏度和特异性,但该参数在区分具有相似刚度的斑块特征方面表现出较差的性能。为了提高相对于 PD 的颈动脉斑块特征的区分能力,我们假设可以直接或通过位移方差来组合信号相关和信噪比 (SNR)。通过位移方差评估的斑块特征检测,作为加速度方差的十进制对数,并称为“log(VoA)”,与利用 SNR、互相关系数和 ARFI 诱导的 PD 结果指标进行的检测进行了比较。为 25 名接受颈动脉内膜切除术的患者生成了参数图像,空间匹配的组织学证实了斑块组成和结构。平均而言,在所有斑块中,log(VoA)是唯一一种在富含脂质的坏死核心 (LRNC)、斑块内出血 (IPH)、胶原 (COL) 和钙 (CAL) 区域之间具有统计学差异的结果指标。此外,log(VoA)在区分 LRNC 和 IPH、COL 和 CAL 以及分组软 (LRNC 和 IPH) 和硬 (COL 和 CAL) 斑块成分方面实现了最高的对比噪声比 (CNR)。更具体地说,与之前证明的 ARFI PD 参数相比,log(VoA)在 LRNC 和 IPH 之间实现了 73%更高的 CNR,在 COL 和 CAL 之间实现了 59%更高的 CNR。这些结果表明,log(VoA)增强了体内人颈动脉斑块中 LRNC、IPH、COL 和 CAL 的区分能力,这对改善中风风险预测和医疗管理具有临床意义。