来自相邻扫描线的后向散射超声射频回波分析用于表面粗糙度表征:一个幻影研究

A. Jamzad, F. Akbarifar, S. Setarehdan
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引用次数: 2

摘要

超声检查,作为一种无创和廉价的常规,可以选择的模式,在粗糙度表征体内结石的管理治疗方法。在这项研究中,我们研究了利用后向散射射频数据区分粗糙度水平的可能性,这些数据可能包含比b模式图像更多的信息。为此,我们改进了传统的医用超声设备,并记录了由4条标准砂纸条组成的粗糙度模体的射频数据。我们提出相邻扫描线的两个回波差包含了成像表面粗糙度的信息。因此,我们计算了从两个相邻回波中提取的时间和光谱特征的欧几里得距离。然后,采用贝叶斯分类器、线性分类器和最近邻分类器(NN)对粗糙度进行分类。结果表明,光谱特征和1-NN分类器的分类效果最好。利用所有特征和1-NN分类器获得的最高平均性能为99.17%,证明了通过获取和比较相邻回波进行粗糙度识别的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of backscattered ultrasound rf echoes from adjacent scan lines for surface roughness characterization: a phantom study
Ultrasonography, as a noninvasive and inexpensive routine, can be the modality of choice in roughness characterization of internal body stones for managing treatment methods. In this study, we have investigated the possibility of differentiating roughness levels utilizing backscattered RF data which presumably contain more information than the B-mode images. For this purpose, we modified a conventional medical ultrasound device and recorded RF data from a roughness phantom consisting of 4 standard sandpaper strips. We proposed that the difference of two echoes from adjacent scan lines contains information about the roughness of the imaging surface. Hence, we calculated the Euclidean distance of temporal and spectral features extracted from two adjacent echoes. Then, 3 classifiers of Bayesian, linear, and 1-Nearest Neighbor (NN) were employed for roughness differentiation. The results show that spectral features and 1-NN classifier had the best performance among others. The highest average performance of 99.17%, obtained using all features along with the 1-NN classifier, proves the feasibility of roughness discrimination by acquiring and comparing adjacent echoes.
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