Method for Extracting Acoustic Shadows to Construct an Organ Composite Model in Ultrasound Images

Akihide Otsuka, N. Koizumi, Izumu Hosoi, H. Tsukihara, Yu Nishiyama
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引用次数: 1

Abstract

Ultrasound has a lot of advantages for observing diseased organ areas compared to other diagnostic imaging modalities. However, the presence of acoustic shadows in ultrasound images can impede the observation of the diseased area. Although the ultrasound probe can be oriented so that e.g. bones are avoided, this restricts the imaging field of view as well as favorable viewpoints for the affected area. To cope with these problems, we have designed a conceptual model with the aim of expanding the imaging range for diseased organ areas by assembling the images to complement areas with acoustic shadows. In this report, we propose a method for extracting a composed acoustic shadow element from ultrasound images of kidneys on the basis of ultrasound image generation and properties of bone-generated acoustic shadows. Experimental results show that our proposed method can locate and extract acoustic shadows with high accuracy.
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超声图像中声阴影提取构建器官复合模型的方法
与其他诊断成像方式相比,超声在观察病变器官区域方面具有许多优势。然而,超声图像中声阴影的存在会阻碍对病变区域的观察。虽然超声探头可以定向,以避免骨头等,但这限制了成像视野以及对受影响区域的有利视点。为了解决这些问题,我们设计了一个概念模型,旨在通过组合图像来补充声阴影区域,从而扩大病变器官区域的成像范围。本文在超声图像生成和骨生成声阴影特性的基础上,提出了一种从肾脏超声图像中提取复合声阴影元素的方法。实验结果表明,该方法能较准确地定位和提取声阴影。
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