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Characterization of solid pulmonary nodules using three-dimensional features

机译:使用三维特征表征固体肺结节

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摘要

With the development of high-resolution, multirow-detector CT scanners, the prospects for diagnosing and treating lung cancer at an early stage are much improved. However, it is often difficult to determine whether a nodule, especially a small nodule, is malignant from a single CT scan. We developed a computer-aided diagnostic algorithm to distinguish benign from malignant solid nodules based on features that can be extracted from a single CT scan. Our method uses 3D geometric and densitometric moment analysis of a segmented nodule image and surface curvature from a polygonal surface model of the nodule. After excluding features directly related to size, we computed a total of 28 features. Prior to classification, the number of features was reduced through stepwise feature selection. The features are used by two classifiers, κ-nearest-neighbors (κ-NN) and logistic regression. We used 48 malignant nodules whose status was determined by biopsy or resection, and 55 benign nodules determined to be clinically stable through two years of no change or biopsy. The κ-NN classifier achieved a sensitivity of 0.81 with a specificity of 0.76, while the logistic regression classifier achieved a sensitivity of 0.85 and a specificity of 0.80.
机译:随着高分辨率,多行CT扫描仪的发展,早期诊断和治疗肺癌的前景得到了很大改善。但是,通常难以通过单次CT扫描确定结节,尤其是小结节是否恶变。我们开发了一种计算机辅助诊断算法,根据可以从单次CT扫描中提取的特征来区分良性和恶性实性结节。我们的方法使用了3D几何和光密度矩分析,对节段的图像和结节的多边形表面模型的表面曲率进行了分析。排除与尺寸直接相关的要素后,我们总共计算了28个要素。分类之前,通过逐步选择特征来减少特征数量。这些功能由两个分类器使用,即κ最近邻(κ-NN)和逻辑回归。我们使用了48例通过活检或切除术确定其状态的恶性结节,以及55个经过两年无变化或活检后确定为临床稳定的良性结节。 κ-NN分类器的灵敏度为0.81,特异性为0.76,而逻辑回归分类器的灵敏度为0.85,特异性为0.80。

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