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Overlapping Node Discovery for Improving Classification of Lung Nodules

机译:重叠节点发现,用于改善肺结核分类

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Distinguishing malignant lung nodules from benign nodules is an important aspect of lung cancer diagnosis. In this paper, we propose an automatic method to classify lung nodules into four different types, i.e. well-circumscribed, juxta-vascular, juxta-pleural and pleural-tail. Additionally, since the morphology of lung nodules forms a continuum between the different types, our proposed method is superior to previous methods that classify single nodules into a single type. First, a weighted similarity network is constructed based on the SVM with probability estimates, turning the 128-length SIFT descriptor to a 4-length probability vector against the four types. Then, the classification of nodules while identifying those with overlapping types is made using the weighed Clique Percolation Method (CPMw). We evaluate the proposed method on low-dose CT images from ELCAP. Our results show that there is more overlap between well-circumscribed and juxta-vascular, and between juxta-pleural and pleural tail. Also, quantitative comparisons among various methods demonstrate highly effective nodule classification results by identifying the overlapping nodule types.
机译:区分恶性肺结核来自良性结节是肺癌诊断的重要方面。在本文中,我们提出了一种将肺结节分类为四种不同类型的自动方法,即均匀覆盖,Juxta-血管,Juxta-胸胸和胸膜尾。另外,由于肺结节的形态形成不同类型之间的连续体,所以我们所提出的方法优于先前的方法将单个结节分类为单一类型。首先,基于具有概率估计的SVM构造加权相似度网络,将128长度SIFT描述符转到对四种类型的4长度概率矢量。然后,使用称重的Clique Percolation方法(CPMW)进行结节的分类而识别具有重叠类型的结节。我们评估来自ELCAP的低剂量CT图像的提出方法。我们的结果表明,良好的覆盖和juxta-血管之间以及Juxta-胸膜和胸膜之间有更多重叠。此外,各种方法之间的定量比较通过识别重叠的结节类型来证明高效的结节分类结果。

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