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Computer-aided detection of lung nodules: false positive reduction using a 3D gradient field method

机译:计算机辅助检测肺结节:使用3D梯度场法进行假阳性降低

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We are developing a computer-aided detection system to aid radiologists in diagnosing lung cancer in thoracic computed tomographic (CT) images. The purpose of this study was to improve the false-positive (FP) reduction stage of our algorithm by developing and incorporating a gradient field technique. This technique extracts 3D shape information from the gray-scale values within a volume of interest. The gradient field feature values are higher for spherical objects, and lower for elongated and irregularly-shaped objects. A data set of 55 thin CT scans from 40 patients was used to evaluate the usefulness of the gradient field technique. After initial nodule candidate detection and rule-based first stage FP reduction, there were 3487 FP and 65 true positive (TP) objects in our data set. Linear discriminant classifiers with and without the gradient field feature were designed for the second stage FP reduction. The accuracy of these classifiers was evaluated using the area Az under the receiver operating characteristic (ROC) curve. The Az values were 0.93 and 0.91 with and without the gradient field feature, respectively. The improvement with the gradient field feature was statistically significant (p=0.01).
机译:我们正在开发一种计算机辅助检测系统,以帮助放射科医师在胸上计算断层(CT)图像中的肺癌。本研究的目的是通过开发和结合梯度现场技术来改善我们算法的假阳性(FP)减少阶段。该技术从感兴趣的体积内从灰度值提取3D形状信息。球形物体的梯度场特征值较高,并且对于细长和不规则形状的物体降低。使用来自40名患者的55个薄CT扫描的数据集来评估梯度现场技术的有用性。在初始结节候选检测和规则的第一级FP减少之后,我们的数据集中有3487 FP和65个真正的正(TP)对象。设计了具有和不具有梯度现场特征的线性判别分类器用于第二级FP减少。使用接收器操作特性(ROC)曲线下的区域AZ评估这些分类器的准确性。 AZ值分别为0.93和0.91,分别有和没有梯度场特征。梯度场特征的改进是统计学上的显着性(P = 0.01)。

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