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Recognition Method of Lung Nodules using Blood Vessel Extraction Techniques and 3D Object Models

机译:使用血管提取技术和3D对象模型的肺结节识别方法

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In this paper, we propose a method for reducing false positives in X-ray CT images using ridge shadow extraction techniques and 3D geometric object models. Suspicious shadows are detected by our variable N-quoit (VNQ) filter, which is a type of mathematical morphology filter. This filter can detect lung cancer shadows with the sensitivity over 95[%], but it also detects many false positives which are mainly related to blood vessel shadows. We have developed two algorithms to distinguish lung nodule shadows from blood vessel shadows. In the first algorithm, the ridge shadows, which come from blood vessels, are emphasized by our Tophat by Partial Reconstruction filter which is also a type of mathematical morphology filter. And then, the region of the ridge shadow is extracted using binary distance transformation. In the second algorithm, we propose a recognition method of nodules using 3D geometric lung nodule and blood vessel models. The anatomical knowledge about the 3D structures of nodules and blood vessels can be reflected in recognition process. By applying our new method to actual CT images (37 patient images), a good result has been acquired.
机译:在本文中,我们提出了一种利用脊暗影提取技术和3D几何对象模型来减少X射线CT图像中的误报的方法。我们的可变N-QUOIT(VNQ)过滤器检测可疑阴影,这是一种数学形态过滤器。该过滤器可以检测肺癌阴影,灵敏度超过95 [%],但它还检测到与血管阴影相关的许多误报。我们开发了两种算法,以区分血管阴影的肺结核阴影。在第一算法中,我们的Tophat通过部分重建过滤器强调来自血管的脊阴影,这也是一种数学形态学滤波器。然后,使用二进制距离变换提取脊阴影的区域。在第二种算法中,我们提出了一种使用3D几何肺结节和血管模型的结节识别方法。关于结节和血管的3D结构的解剖学知识可以反映在识别过程中。通过将我们的新方法应用于实际CT图像(37个患者图像),已经获得了良好的结果。

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