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A Probabilistic Framework for Ultrasound Image Decomposition

机译:超声图像分解的概率框架

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Image segmentation and tissue characterization are fundamental tasks of computer-aided diagnosis (CAD) in medical ultrasound imaging. As an initial step, such algorithms are usually based on extraction of pertinent features from the acquired ultrasound data. Typically, these features are computed directly from localized image segments, thereby representing local statistical properties of the image. However, the process of image formation of medical ultrasound suggests that such an approach could result in a variety of unwanted artifacts (such as excessively smooth segmentation boundaries or misclassification) at subsequent stages of the algorithm. In this work, we propose to first decompose the observed images into a number of their statistically distinct components. The decomposition is based on the maximum-a-posteriori (MAP) statistical framework which has been derived based on the signal and noise models appropriate for the ultrasound setting. Subsequently, each resulting component is used separately to extract a set of its corresponding features. When retrieved in this way (rather than directly from the observed image), the combined set of resulting features is shown to be capable of better discriminating between different tissue types. Examples of in silico simulations and in vivo experiments are provided to illustrate the practical usefulness of this technique for improving the results of ultrasound image segmentation.
机译:图像分割和组织表征是医学超声成像中计算机辅助诊断(CAD)的基本任务。作为第一步,这种算法通常基于从采集的超声数据中提取相关特征。通常,这些特征是直接从局部图像片段中计算出来的,从而代表了图像的局部统计特性。但是,医学超声的图像形成过程表明,这种方法可能会在算法的后续阶段导致各种不想要的伪影(例如过分平滑的分割边界或错误分类)。在这项工作中,我们建议先将观察到的图像分解为许多统计上不同的分量。分解基于最大后验(MAP)统计框架,该框架是根据适合超声设置的信号和噪声模型得出的。随后,每个结果组件分别用于提取其相应特征的集合。当以此方式(而不是直接从观察到的图像)进行检索时,结果特征的组合集显示出能够更好地区分不同的组织类型。提供计算机模拟和体内实验的示例,以说明该技术对改善超声图像分割结果的实际实用性。

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