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使用流形学习方法对高强度聚焦超声热疗进行实时监测。

Real-time monitoring of high-intensity focused ultrasound thermal therapy using the manifold learning method.

作者信息

Rangraz Parisa, Behnam Hamid, Sobhebidari Pooya, Tavakkoli Jahan

机构信息

Department of Biomedical Engineering, Science and Research Branch, Islamic Azad University, Tehran, Iran.

出版信息

Ultrasound Med Biol. 2014 Dec;40(12):2841-50. doi: 10.1016/j.ultrasmedbio.2014.07.021.

Abstract

High-intensity focused ultrasound (HIFU) induces thermal lesions by increasing the tissue temperature in a tight focal region. The main ultrasound imaging techniques currently used to monitor HIFU treatment are standard pulse-echo B-mode ultrasound imaging, ultrasound temperature estimation and elastography-based methods. The present study was carried out on ex vivo animal tissue samples, in which backscattered radiofrequency (RF) signals were acquired in real time at time instances before, during and after HIFU treatment. The manifold learning algorithm, a non-linear dimensionality reduction method, was applied to RF signals whichconstruct B-mode images to detect the HIFU-induced changes among the image frames obtained during HIFU treatment. In this approach, the embedded non-linear information in the region of interest of sequential images is represented in a 2-D manifold with the Isomap algorithm, and each image is depicted as a point on the reconstructed manifold. Four distinct regions are chosen in the manifold corresponding to the four phases of HIFU treatment (before HIFU treatment, during HIFU treatment, immediately after HIFU treatment and 10-min after HIFU treatment). It was found that disorganization of the points is achieved by increasing the acoustic power, and if the thermal lesion has been formed, the regions of points related to pre- and post-HIFU significantly differ. Moreover, the manifold embedding was repeated on 2-D moving windows in RF data envelopes related to pre- and post-HIFU exposure data frames. It was concluded that if mean values of the points related to pre- and post-exposure frames in the reconstructed manifold are estimated, and if the Euclidean distance between these two mean values is calculated and the sliding window is moved and this procedure is repeated for the whole image, a new image based on the Euclidean distance can be formed in which the HIFU thermal lesion is detectable.

摘要

高强度聚焦超声(HIFU)通过在紧密聚焦区域提高组织温度来诱导热损伤。目前用于监测HIFU治疗的主要超声成像技术是标准脉冲回波B模式超声成像、超声温度估计和基于弹性成像的方法。本研究是在离体动物组织样本上进行的,在HIFU治疗前、治疗期间和治疗后实时采集反向散射射频(RF)信号。流形学习算法是一种非线性降维方法,应用于构建B模式图像的RF信号,以检测HIFU治疗期间获得的图像帧之间HIFU诱导的变化。在这种方法中,连续图像感兴趣区域中的嵌入非线性信息通过等距映射算法在二维流形中表示,每个图像被描绘为重建流形上的一个点。在流形中选择四个不同区域,对应于HIFU治疗的四个阶段(HIFU治疗前、HIFU治疗期间、HIFU治疗后立即和HIFU治疗后10分钟)。研究发现,通过增加声功率可实现点的无序排列,并且如果形成了热损伤,与HIFU治疗前后相关的点区域会有显著差异。此外,在与HIFU暴露前后数据帧相关的RF数据包的二维移动窗口上重复进行流形嵌入。得出的结论是,如果估计重建流形中与暴露前后帧相关的点的平均值,如果计算这两个平均值之间的欧几里得距离,移动滑动窗口并对整个图像重复此过程,就可以形成基于欧几里得距离的新图像,其中HIFU热损伤是可检测的。

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