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A new method for false-positive reduction in detection of lung nodules in CT images

机译:CT图像中肺结节假阳性减少的新方法

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This paper proposes a novel approach for false-positive reduction in lung nodule detection based on structure relationship analysis between nodule candidate and vessel, and the modified surface normal overlap descriptor. On one hand, a large number of false nodules attached to vessels can be removed by analyzing the relationship between nodule candidates and their attached tissues. On the other hand, Low-contrast nonsolid nodules are discriminated from the candidates with modified surface normal overlap descriptor. The proposed method has been trained and validated on a clinical dataset of 90 thoracic CT scans using a low dose levels that contain 90 nodules (62 solid nodules, 25 ground-glass opacity nodules and 3 mixed nodules) determined by a ground truth reading process.
机译:本文基于结节候选与血管之间的结构关系分析,以及改进的表面法向重叠描述子,提出了一种新的肺结节假阳性减少方法。一方面,可以通过分析结节候选物及其附着组织之间的关系来去除附着在血管上的大量假结节。另一方面,将低对比度非固态结节与具有修改后的表面法向重叠描述符的候选对象区分开。该方法已在90例胸部CT扫描的临床数据集上经过训练和验证,该临床数据集使用低剂量水平通过地面真相读取过程确定,其中包含90个结节(62个实性结节,25个毛玻璃样混浊结节和3个混合结节)。

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