The Institute of Cancer Research, London SW7 3RP, UK.
The Institute of Cancer Research, London SW7 3RP, UK.
Ultrasonics. 2021 Mar;111:106302. doi: 10.1016/j.ultras.2020.106302. Epub 2020 Nov 20.
In vivo ultrasound attenuation coefficient measurements are of interest as they can provide insight into tissue pathology. They are also needed so that measurements of the tissue's frequency dependent ultrasound backscattering coefficient may be corrected for attenuation. In vivo measurements of the attenuation coefficient are challenging because it has to be estimated from the depth dependent decay of backscatter signals that display a large degree of magnitude variation. In this study we describe and evaluate an improved backscatter method to estimate ultrasound attenuation which is tolerant to the presence of some backscatter inhomogeneity. This employs an automated algorithm to segment and remove atypically strong echoes to lessen the potential bias these may introduce on the attenuation coefficient estimates. The benefit of the algorithm was evaluated by measuring the frequency dependent attenuation coefficient of a gelatine phantom containing randomly distributed cellulose scatterers as a homogeneous backscattering component and planar pieces of cooked leek to provide backscattering inhomogeneities. In the phantom the segmentation algorithm was found to improve the accuracy and precision of attenuation coefficient estimates by up to 80% and 90%, respectively. The effect of the algorithm was then measured invivo using 32 radiofrequency B-mode datasets from the breasts of two healthy female volunteers, producing a 5 to 25% reduction in mean attenuation coefficient estimates and a 30 to 50% reduction in standard deviation of attenuation coefficient across different positions within each breast. The results suggest that the segmentation algorithm may improve the accuracy and precision of attenuation coefficient estimates invivo.
体内超声衰减系数的测量很有意义,因为它可以深入了解组织病理学。还需要对组织的频率相关超声背散射系数进行测量,以便对衰减进行修正。由于必须根据背散射信号随深度的衰减来估计衰减系数,而这些信号的幅度变化很大,因此体内衰减系数的测量具有挑战性。在这项研究中,我们描述并评估了一种改进的回波方法,以估计对一些背散射不均匀性具有容忍度的超声衰减。该方法采用自动算法对异常强回波进行分割和去除,以减少这些回波可能对衰减系数估计产生的潜在偏差。通过测量含有随机分布纤维素散射体的明胶体模的频率相关衰减系数来评估算法的益处,这些散射体作为均匀的背散射成分,以及煮熟的韭菜片提供背散射不均匀性。在体模中,分割算法将衰减系数估计的准确性和精密度分别提高了 80%和 90%。然后,使用两名健康女性志愿者的 32 个射频 B 模式数据集在体内测量该算法的效果,导致平均衰减系数估计值降低了 5%至 25%,并且在每个乳房的不同位置上衰减系数的标准差降低了 30%至 50%。结果表明,该分割算法可能会提高体内衰减系数估计的准确性和精密度。