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一种用于在CT图像中检测肺结节的新型CAD系统方法。

A novel approach to CAD system for the detection of lung nodules in CT images.

作者信息

Javaid Muzzamil, Javid Moazzam, Rehman Muhammad Zia Ur, Shah Syed Irtiza Ali

机构信息

Department of Biomedical Engineering and Sciences, School of Mechanical and Manufacturing Engineering, National University of Sciences and Technology (NUST), Islamabad, Pakistan.

Department of North Medicine, Mayo Hospital, KEMU, Lahore, Pakistan.

出版信息

Comput Methods Programs Biomed. 2016 Oct;135:125-39. doi: 10.1016/j.cmpb.2016.07.031. Epub 2016 Jul 25.

Abstract

Detection of pulmonary nodule plays a significant role in the diagnosis of lung cancer in early stage that improves the chances of survival of an individual. In this paper, a computer aided nodule detection method is proposed for the segmentation and detection of challenging nodules like juxtavascular and juxtapleural nodules. Lungs are segmented from computed tomography (CT) images using intensity thresholding; brief analysis of CT image histogram is done to select a suitable threshold value for better segmentation results. Simple morphological closing is used to include juxtapleural nodules in segmented lung regions. K-means clustering is applied for the initial detection and segmentation of potential nodules; shape specific morphological opening is implemented to refine segmentation outcomes. These segmented potential nodules are then divided into six groups on the basis of their thickness and percentage connectivity with lung walls. Grouping not only helped in improving system's efficiency but also reduced computational time, otherwise consumed in calculating and analyzing unnecessary features for all nodules. Different sets of 2D and 3D features are extracted from nodules in each group to eliminate false positives. Small size nodules are differentiated from false positives (FPs) on the basis of their salient features; sensitivity of the system for small nodules is 83.33%. SVM classifier is used for the classification of large nodules, for which the sensitivity of the proposed system is 93.8% applying 10-fold cross-validation. Receiver Operating Characteristic (ROC) curve is used for the analysis of CAD system. Overall sensitivity of the system is 91.65% with 3.19 FPs per case, and accuracy is 96.22%. The system took 3.8 seconds to analyze each image.

摘要

肺结节的检测在肺癌早期诊断中起着重要作用,可提高个体的生存几率。本文提出了一种计算机辅助结节检测方法,用于分割和检测具有挑战性的结节,如血管旁和胸膜旁结节。使用强度阈值法从计算机断层扫描(CT)图像中分割出肺部;对CT图像直方图进行简要分析,以选择合适的阈值,获得更好的分割结果。采用简单的形态学闭运算将胸膜旁结节纳入分割后的肺区域。应用K均值聚类对潜在结节进行初始检测和分割;实施形状特定的形态学开运算以细化分割结果。然后,根据这些分割出的潜在结节的厚度及其与肺壁的连通百分比,将它们分为六组。分组不仅有助于提高系统效率,还减少了计算时间,否则计算和分析所有结节的不必要特征会消耗大量时间。从每组结节中提取不同的二维和三维特征集,以消除假阳性。根据小尺寸结节的显著特征将其与假阳性区分开来;该系统对小尺寸结节的敏感度为83.33%。使用支持向量机(SVM)分类器对大尺寸结节进行分类,在所提出的系统中,应用10折交叉验证时,其敏感度为93.8%。使用受试者工作特征(ROC)曲线对计算机辅助检测(CAD)系统进行分析。该系统的总体敏感度为91.65%,每例有3.19个假阳性,准确率为96.22%。该系统分析每张图像需要3.8秒。

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