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首页> 外文期刊>Biomedical and Health Informatics, IEEE Journal of >Recognizing Common CT Imaging Signs of Lung Diseases Through a New Feature Selection Method Based on Fisher Criterion and Genetic Optimization
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Recognizing Common CT Imaging Signs of Lung Diseases Through a New Feature Selection Method Based on Fisher Criterion and Genetic Optimization

机译:基于Fisher准则和遗传优化的特征选择新方法识别肺部常见CT影像征象

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Common CT imaging signs of lung diseases (CISLs) are defined as the imaging signs that frequently appear in lung CT images from patients and play important roles in the diagnosis of lung diseases. This paper proposes a new feature selection method based on FIsher criterion and genetic optimization, called FIG for short, to tackle the CISL recognition problem. In our FIG feature selection method, the Fisher criterion is applied to evaluate feature subsets, based on which a genetic optimization algorithm is developed to find out an optimal feature subset from the candidate features. We use the FIG method to select the features for the CISL recognition from various types of features, including bag-of-visual-words based on the histogram of oriented gradients, the wavelet transform-based features, the local binary pattern, and the CT value histogram. Then, the selected features cooperate with each of five commonly used classifiers including support vector machine (SVM), Bagging (Bag), Naïve Bayes (NB), -nearest neighbor (-NN), and AdaBoost (Ada) to classify the regions of interests (ROIs) in lung CT images into the CISL categories. In order to evaluate the proposed feature selection method and CISL recognition approach, we conducted the fivefold cross-validation experiments on a set of 511 ROIs captured from real lung CT images. For all the considered classifiers, our FIG method brought the better recognition performance than not only the full set of original features but also any single type of features. We further compared our FIG method with the feature selection method based on classification accuracy rate and genetic optimization (ARG). The advantages on computation effectiveness and efficiency of FIG over ARG are shown through experiments.
机译:常见的肺部疾病CT征象(CISL)被定义为经常出现在患者的肺部CT图像中并在肺部疾病的诊断中起重要作用的影像征象。提出了一种基于FIsher准则和遗传优化的特征选择方法,简称为FIG,以解决CISL识别问题。在我们的FIG特征选择方法中,将Fisher准则应用于评估特征子集,在此基础上开发了遗传优化算法,以从候选特征中找出最佳特征子集。我们使用FIG方法从各种类型的特征中选择用于CISL识别的特征,包括基于定向梯度直方图的视觉袋,基于小波变换的特征,局部二进制模式和CT值直方图。然后,所选要素与五个常用分类器(包括支持向量机(SVM),装袋(Bag),朴素贝叶斯(NB),-最近邻(-NN)和AdaBoost(Ada))配合使用,对以下区域进行分类将肺部CT图像中的兴趣(ROI)分为CISL类别。为了评估建议的特征选择方法和CISL识别方法,我们对从真实肺部CT图像捕获的511个ROI进行了五重交叉验证实验。对于所有考虑的分类器,我们的FIG方法不仅具有完整的原始特征集,而且具有任何单一类型的特征,都带来了更好的识别性能。我们进一步将FIG方法与基于分类准确率和遗传优化(ARG)的特征选择方法进行了比较。通过实验证明了图比ARG在计算效率和效率上的优势。

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