首页> 外文期刊>Journal of Medical Imaging and Health Informatics >Lung Nodules Detection System Using Support Vector Machine Classifier Combined Linear Discriminant Analysis-Based Feature Selection with Rule-Based Feature Pruning
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Lung Nodules Detection System Using Support Vector Machine Classifier Combined Linear Discriminant Analysis-Based Feature Selection with Rule-Based Feature Pruning

机译:肺结结检测系统使用支持向量机分类器组合基于线性判别分析的特征选择,具有基于规则的特征修剪

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摘要

Early nodule detection is significant for the diagnosis and clinical treatment of lung cancer. An efficient computer-aided detection system is developed to detect lung nodules in computed tomography scan image. In order to highlight lesion area, lung parenchyma segmentation including bronchial removal and contour pruning is implemented by iterative threshold and rolling ball algorithm. Mean-shift algorithm is applied to further smooth and enhance inner-structures of lung parenchyma. To effectively reduce false positive nodules, hybrid features are extracted using the rule-based feature pruning technology, they are regarded as input samples of SVM classifier to distinguish nodules from nodule candidates. Numerous experiments are conducted on a large dataset from lung image database consortium by various classifies, the diagnosis results demonstrate that the proposed nodule detection system achieves a promising classification accuracy, sensitivity and specificity in overall performance.
机译:早期结节检测对于肺癌的诊断和临床治疗是显着的。 开发了一种有效的计算机辅助检测系统以检测计算机断层扫描图像中的肺结节。 为了突出病变区域,通过迭代阈值和滚珠算法来实现包括支气管移除和轮廓修剪的肺实质分割。 平均换档算法应用于进一步平滑且增强肺实质的内部结构。 为了有效地降低假阳性结节,使用基于规则的特征修剪技术提取混合特征,它们被认为是SVM分类器的输入样本,以区分来自结节候选的结节。 通过各种分类在肺图像数据库联盟的大型数据集上进行了许多实验,诊断结果表明,所提出的结节检测系统实现了有希望的分类精度,敏感性和整体性能特异性。

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