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Evaluation of geometric feature descriptors for detection and classification of lung nodules in low dose CT scans of the chest

机译:在胸部低剂量CT扫描中评估几何特征描述符以检测和分类肺结节

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This paper examines the effectiveness of geometric feature descriptors, common in computer vision, for false positive reduction and for classification of lung nodules in low dose CT (LDCT) scans. A data-driven lung nodule modeling approach creates templates for common nodule types, using active appearance models (AAM); which are then used to detect candidate nodules based on optimum similarity measured by the normalized cross-correlation (NCC). Geometric feature descriptors (e.g., SIFT, LBP and SURF) are applied to the output of the detection step, in order to extract features from the nodule candidates, for further enhancement of output and possible reduction of false positives. Results on the clinical ELCAP database showed that the descriptors provide 2% enhancements in the specificity of the detected nodule above the NCC results when used in a k-NN classifier. Thus quantitative measures of enhancements of the performance of CAD models based on LDCT are now possible and are entirely model-based. Most importantly, our approach is applicable for classification of nodules into categories and pathologies.
机译:本文研究了计算机视觉中常见的几何特征描述符对于假阳性减少和低剂量CT(LDCT)扫描中肺结节分类的有效性。数据驱动的肺结节建模方法使用活动外观模型(AAM)创建常见结节类型的模板;然后根据归一化互相关(NCC)测得的最佳相似性将其用于检测候选结节。几何特征描述符(例如,SIFT,LBP和SURF)被应用于检测步骤的输出,以便从结节候选中提取特征,以进一步增强输出并可能减少假阳性。临床ELCAP数据库上的结果表明,在k-NN分类器中使用的描述符比NCC结果高2%。因此,基于LDCT的CAD模型性能增强的定量测量现在已成为可能,并且完全基于模型。最重要的是,我们的方法适用于将结节分类为类别和病理。

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