首页> 外文会议>Image Processing pt.2; Progress in Biomedical Optics and Imaging; vol.6 no.24 >A Classification Method of Liver Tumors based on Temporal Change of Hounsfield Unit in CT Images
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A Classification Method of Liver Tumors based on Temporal Change of Hounsfield Unit in CT Images

机译:基于CT图像中Hounsfield单位时间变化的肝肿瘤分类方法

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摘要

We present an automatic diagnosis method of liver cancer by using sequential images with contrast material of dynamic CT. Our method identifies and classifies liver tumors by extracting temporal change of CT values (Hounsfield Unit(HU)) of tumors from four kinds of CT images (i.e. plain CT, early phase, portal phase, late phase of dynamic CT images) in addition to morphological features of tumors. Automatic diagnosis of liver tumors is very difficult, because contrast of liver tumors is very small compared with liver background, shapes of tumors are diverse, and extraction of temporal change of CT values is very difficult due to morphological and contrast complexity of temporal change of tumor segments. Our method extracts temporal change of CT values of objects by mapping segments of same objects in different CT phase based on overlap ratio and position adjustment. We also implemented a graphical user interface for searching such images from an image database that include tumors similar to an image given as a search condition with respect to features of morphorogical and temporal change of contrast.
机译:我们提出了一种使用动态CT对比材料的连续图像来自动诊断肝癌的方法。我们的方法通过从四种CT图像(即动态CT图像的普通CT,早期,门静脉期,晚期)中提取四种肿瘤的CT值的时间变化(Hounsfield Unit(HU))来识别和分类肝肿瘤。肿瘤的形态特征。肝肿瘤的自动诊断非常困难,因为与肝背景相比,肝肿瘤的对比度非常小,肿瘤的形状各不相同,并且由于肿瘤的时间变化的形态和对比复杂性,很难提取CT值的时间变化段。我们的方法是基于重叠率和位置调整,通过映射不同CT相中相同对象的段来提取对象CT值的时间变化。我们还实现了图形用户界面,用于从图像数据库中搜索此类图像,其中包括与针对形态学和对比度的时间变化特征作为搜索条件给出的图像相似的肿瘤。

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