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Computer-Aided Detection of Lung Nodules with Fuzzy Min-Max Neural Network for False Positive Reduction

机译:用模糊最小-最大神经网络进行肺结节的计算机辅助检测,以减少假阳性

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In this study, a technique for computer-aided diagnosis (CAD) systems to detect lung nodules in X-ray pulmonary computed tomography (CT) images is proposed. The adaptive border marching algorithm was implemented for lung volume segmentation. Region growing and rule based method were used to detect the nodules candidates. Then, we extracted a total of 11 features, including intensity features and geometry features, of these candidates. The fuzzy min-max neural network classifier with compensatory neurons (FMCN) was advanced by K-means clustering, for false-positive reduction. In hyper-space, the cluster is similar to hyperbox, thus the K-means clustering algorithm was implemented for determine the expansion coefficient (hyperbox size). Nineteen clinical cases involving a total of 5766 slice images were used in this study. 26 nodules out of 31 were detected by our CAD (the sensitivity about 84%), with the number of false-positive at approximately 2.6 per CT scan. The preliminary results show that our scheme can be regarded as a potential technique for CAD systems to detect nodules in pulmonary CT images.
机译:在这项研究中,提出了一种用于计算机辅助诊断(CAD)系统以检测X射线肺部计算机断层摄影(CT)图像中的肺结节的技术。自适应边界行进算法实现了肺体积分割。使用区域增长和基于规则的方法来检测候选结节。然后,我们提取了这些候选对象的总共11个特征,包括强度特征和几何特征。带有补偿神经元的模糊最小-最大神经网络分类器(FMCN)通过K-均值聚类进行了改进,用于假阳性归约。在超空间中,聚类类似于超盒,因此实施了K-means聚类算法来确定扩展系数(超盒大小)。在这项研究中使用了19例临床病例,共计5766个切片图像。通过我们的CAD检测出31个结节中的26个结节(敏感性约84%),每次CT扫描假阳性数约为2.6。初步结果表明,我们的方案可以被认为是CAD系统检测肺部CT图像中结节的一种潜在技术。

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