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Feature Subset Selection for Improving the Performance of False Positive Reduction in Lung Nodule CAD

机译:特征子集选择以提高肺结节CAD假阳性减少的性能

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摘要

We propose a feature subset selection method based on genetic algorithms to improve the performance of false positive reduction in lung nodule computer-aided detection (CAD). It is coupled with a classifier based on support vector machines. The proposed approach determines automatically the optimal size of the feature set, and chooses the most relevant features from a feature pool. Its performance was tested using a lung nodule database (52 true nodules and 443 false ones) acquired by multislice CT scans. From 23 features calculated for each detected structure, the suggested method determined ten to be the optimal feature subset size, and selected the most relevant ten features. A support vector machine classifier trained with the optimal feature subset resulted in 100% sensitivity and 56.4% specificity using an independent validation set. Experiments show significant improvement achieved by a system incorporating the proposed method over a system without it. This approach can be also applied to other machine learning problems; e.g. computer-aided diagnosis of lung nodules.
机译:我们提出了一种基于遗传算法的特征子集选择方法,以提高肺结节计算机辅助检测(CAD)假阳性减少的性能。它与基于支持向量机的分类器结合在一起。所提出的方法自动确定功能集的最佳大小,并从功能库中选择最相关的功能。使用通过多层CT扫描获得的肺结节数据库(52个真实结节和443个假结节)测试了其性能。从为每个检测到的结构计算的23个特征中,建议的方法确定10个为最佳特征子集大小,并选择最相关的10个特征。使用最佳特征子集训练的支持向量机分类器使用独立的验证集可实现100%的敏感性和56.4%的特异性。实验表明,通过将提出的方法与没有该方法的系统相结合的系统,可以实现显着的改进。这种方法也可以应用于其他机器学习问题。例如肺结节的计算机辅助诊断。

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