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关于超声 B 扫描图像的组织响应建模。

On modeling the tissue response from ultrasonic B-scan images.

机构信息

Biomed. Eng. & Sci. Inst., Drexel Univ., Philadelphia, PA.

出版信息

IEEE Trans Med Imaging. 1996;15(4):479-90. doi: 10.1109/42.511751.

Abstract

The authors model tissue as a collection of point scatterers embedded in a uniform media, and show that the higher-order statistics (HOS) of the scatterer spacing distribution can be estimated from digitized radio frequency (RF) scan line segments and be used in obtaining tissue signatures. The authors assume that RF echoes are non-Gaussian, on the grounds of empirical/theoretical justifications presented in the literature. Based on their model for tissue microstructure, the authors develop schemes for the estimation of reasonable periodicity as well as correlations among nonperiodic scatterers, Using HOS of the scattered signal, the authors define as tissue "color" a quantity that describes the scatterer spatial correlations, show how to evaluate it from the higher-order correlations of the digitized RF scan line segments, and investigate its potential as a tissue signature. The tools employed, i.e., HOS, were chosen as the most appropriate ones because they suppress Gaussian processes, such as the one arising from the diffused scatterers. HOS, unlike second-order statistics, also preserve the Fourier-phase of the signature, the color of the tissue response. Working on simulated and clinical data, the authors show that the proposed periodicity estimation technique is superior to the widely used power spectrum and cepstrum techniques in terms of the accuracy of estimations. The authors also show that even when there is no significant periodicity in data, they are still able to characterize tissues using signatures based on the higher-order cumulant structure of the scatterer spacing distribution.

摘要

作者将组织建模为嵌入在均匀介质中的点散射体的集合,并表明可以从数字化射频 (RF) 扫描线段估计散射体间距分布的高阶统计量 (HOS),并将其用于获取组织特征。作者假设 RF 回波是非高斯的,这是基于文献中提出的经验/理论依据。基于他们的组织微观结构模型,作者开发了用于估计合理周期性以及非周期性散射体之间相关性的方案。利用散射信号的 HOS,作者将描述散射体空间相关性的量定义为组织“颜色”,展示如何从数字化 RF 扫描线段的高阶相关中评估它,并研究其作为组织特征的潜力。所使用的工具,即 HOS,被选为最合适的工具,因为它们抑制了高斯过程,例如来自漫散射体的过程。与二阶统计量不同,HOS 还保留了特征的傅里叶相位,即组织响应的颜色。在模拟和临床数据上的工作表明,所提出的周期性估计技术在估计精度方面优于广泛使用的功率谱和倒频谱技术。作者还表明,即使在数据中没有明显的周期性时,他们仍然能够使用基于散射体间距分布的高阶累积量结构的特征来表征组织。

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