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Autonomous detection of solitary pulmonary nodules on CT images for computer-aided diagnosis

机译:在CT图像上自主检测孤立的肺结节以进行计算机辅助诊断

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摘要

In this paper, algorithms of ROI segmentation, feature selecting and classifying were studied, and a novel scheme has been proposed to detect solitary pulmonary nodules on CT images. ROIs are segmented based on multi-scale morphological filtering method, features of ROI are selected using separability of probability, and ROIs are classified to nodule or non-nodule by improved Mahalanobis distance. Twenty clinical cases were tested in this study, the sensitivity of nodule detection is 94.6%. Experiment results indicated that lung nodule detection using the proposed algorithms is with high sensitivity and low false positive rate, it can provide helpful information for automatic detection of pulmonary nodules in a computer-aided diagnosis(CAD) system.
机译:本文研究了ROI分割,特征选择和分类算法,提出了一种在CT图像上检测孤立性肺结节的新方案。基于多尺度形态学滤波方法对ROI进行分割,利用概率的可分离性选择ROI的特征,并通过改进的Mahalanobis距离将ROI分为结节或非结节。本研究检测了20例临床病例,结节检测的敏感性为94.6%。实验结果表明,所提算法对肺结节的检测具有较高的灵敏度和较低的假阳性率,可为计算机辅助诊断(CAD)系统中肺结节的自动检测提供有益的信息。

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