首页> 外文期刊>Medical Physics >Development and evaluation of a computer-aided diagnostic scheme for lung nodule detection in chest radiographs by means of two-stage nodule enhancement with support vector classification.
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Development and evaluation of a computer-aided diagnostic scheme for lung nodule detection in chest radiographs by means of two-stage nodule enhancement with support vector classification.

机译:通过辅助支持向量分类的两阶段结节增强技术,开发和评估用于胸部X光片中肺结节检测的计算机辅助诊断方案。

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PURPOSE: To develop a computer-aided detection (CADe) scheme for nodules in chest radiographs (CXRs) with a high sensitivity and a low false-positive (FP) rate. METHODS: The authors developed a CADe scheme consisting of five major steps, which were developed for improving the overall performance of CADe schemes. First, to segment the lung fields accurately, the authors developed a multisegment active shape model. Then, a two-stage nodule-enhancement technique was developed for improving the conspicuity of nodules. Initial nodule candidates were detected and segmented by using the clustering watershed algorithm. Thirty-one shape-, gray-level-, surface-, and gradient-based features were extracted from each segmented candidate for determining the feature space, including one of the new features based on the Canny edge detector to eliminate a major FP source caused by rib crossings. Finally, a nonlinear support vector machine (SVM) with a Gaussian kernel was employed for classification of the nodule candidates. RESULTS: To evaluate and compare the scheme to other published CADe schemes, the authors used a publicly available database containing 140 nodules in 140 CXRs and 93 normal CXRs. The CADe scheme based on the SVM classifier achieved sensitivities of 78.6% (110/140) and 71.4% (100/140) with averages of 5.0 (1165/233) FPs/image and 2.0 (466/233) FPs/image, respectively, in a leave-one-out cross-validation test, whereas the CADe scheme based on a linear discriminant analysis classifier had a sensitivity of 60.7% (85/140) at an FP rate of 5.0 FPs/image. For nodules classified as "very subtle" and "extremely subtle," a sensitivity of 57.1% (24/42) was achieved at an FP rate of 5.0 FPs/image. When the authors used a database developed at the University of Chicago, the sensitivities was 83.3% (40/48) and 77.1% (37/48) at an FP rate of 5.0 (240/48) FPs/image and 2.0 (96/48) FPs/image, respectively. CONCLUSIONS: These results compare favorably to those described for other commercial and non-commercial CADe nodule detection systems.
机译:目的:为胸片(CXR)中的结节开发一种计算机辅助检测(CADe)方案,该方案具有高灵敏度和低假阳性(FP)率。方法:作者开发了一个由五个主要步骤组成的CADe方案,这些步骤旨在提高CADe方案的整体性能。首先,为了准确分割肺野,作者建立了一个多段活动形状模型。然后,开发了一种两阶段的结节增强技术,以提高结节的醒目性。通过使用聚类分水岭算法对初始的结节候选进行检测和分割。从每个分割的候选对象中提取了31个基于形状,灰度,表面和渐变的特征以确定特征空间,其中包括基于Canny边缘检测器的新特征之一,以消除引起的主要FP源通过肋骨穿越。最后,采用具有高斯核的非线性支持向量机(SVM)对候选结节进行分类。结果:为了评估该方案并将其与其他已发布的CADe方案进行比较,作者使用了一个公开可用的数据库,其中包含140个CXR和93个正常CXR中的140个结核。基于SVM分类器的CADe方案的灵敏度分别为78.6%(110/140)和71.4%(100/140),平均分别为5.0(1165/233)FP /图像和2.0(466/233)FP /图像。 ,在留一法交叉验证测试中,而基于线性判别分析分类器的CADe方案在5.0 FPs /图像的FP率下具有60.7%(85/140)的灵敏度。对于分类为“非常微妙”和“极微妙”的结节,FP率为5.0 FPs /图像时,灵敏度为57.1%(24/42)。当作者使用在芝加哥大学开发的数据库时,在FP率为5.0(240/48)FP /图像和2.0(96/96 FP)的情况下,灵敏度分别为83.3%(40/48)和77.1%(37/48)。 48)FP /图像。结论:这些结果与其他商业和非商业CADe结节检测系统所描述的结果相比具有优势。

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