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Regional Context-Sensitive Support Vector Machine Classifier to Improve Automated Identification of Regional Patterns of Diffuse Interstitial Lung Disease

机译:区域上下文敏感支持向量机分类器以提高对弥漫性间质性肺疾病区域模式的自动识别

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摘要

We propose the use of a context-sensitive support vector machine (csSVM) to enhance the performance of a conventional support vector machine (SVM) for identifying diffuse interstitial lung disease (DILD) in high-resolution computerized tomography (HRCT) images. Nine hundred rectangular regions of interest (ROIs), each 20 × 20 pixels in size and consisting of 150 ROIs representing six regional disease patterns (normal, ground-glass opacity, reticular opacity, honeycombing, emphysema, and consolidation), were marked by two experienced radiologists using consensus HRCT images of various DILD. Twenty-one textual and shape features were evaluated to characterize the ROIs. The csSVM classified an ROI by simultaneously using the decision value of each class and information from the neighboring ROIs, such as neighboring region feature distances and class differences. Sequential forward-selection was used to select the relevant features. To validate our results, we used 900 ROIs with fivefold cross-validation and 84 whole lung images categorized by a radiologist. The accuracy of the proposed method for ROI and whole lung classification (89.88 ± 0.02%, and 60.30 ± 13.95%, respectively) was significantly higher than that provided by the conventional SVM classifier (87.39 ± 0.02%, and 57.69 ± 13.31%, respectively; paired t test, p < 0.01, and p < 0.01, respectively). We conclude that our csSVM provides better overall quantification of DILD.
机译:我们建议使用上下文相关支持向量机(csSVM)来增强常规支持向量机(SVM)在高分辨率计算机断层扫描(HRCT)图像中识别弥漫性间质性肺病(DILD)的性能。九百个矩形感兴趣区域(ROI),每个大小为20××pixels20像素,由150个ROI组成,分别代表六个区域疾病模式(正常,毛玻璃样浑浊,网状浑浊,蜂窝状,肺气肿和固结),其中两个经验丰富的放射科医生使用各种DILD的HRCT共识图像。评价了21个文本和形状特征以表征ROI。 csSVM通过同时使用每个类别的决策值和来自邻近ROI的信息(例如邻近区域特征距离和类别差异)对ROI进行分类。顺序前向选择用于选择相关功能。为了验证我们的结果,我们使用了具有五重交叉验证的900个ROI和由放射科医生分类的84张全肺图像。所提出的ROI和全肺分类方法的准确率(分别为89.88%±0.02%和60.30%±13.95%)显着高于常规SVM分类器的准确性(分别为87.39%±0.02%和57.69%±13.31%)。 ;配对t检验,分别为p <0.01和p <0.01。我们得出结论,我们的csSVM提供了更好的DILD整体量化。

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