A New Pulmonary Nodules Computer-Aided Detection System in Chest CT Images Based on Adaptive Fuzzy C-Means Technology

Jinke Wang, Yuanzhi Cheng
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引用次数: 3

Abstract

This paper presents a new pulmonary nodules computer-aided detection system in chest CT images utilizing the adaptive fuzzy C-Means (AFCM) technologies. Since rough segmentation of nodules tends to result in high false positive (FP), the main purpose of this study is to reduce the false-positive of candidate nodules via the clustering and classifying approaches. The proposed scheme consists of three phases: pulmonary nodule identification, training nodules clustering, and testing nodules classification. Firstly, the lung parenchyma is extracted through neighborhood connected technology and masking processing, and by appropriate thresholding processing, the candidate nodules are identified. Then, for improving the performance in the training phase, we utilize the AFCM technology. Finally, the category of each testing candidate nodule is determined by Mahalanobis distance. We validated our method on 35 volumes of chest CT, which is subdivided into 20 training part and 15 testing part, and an approximate false-positive of 2.8 per scan is obtained in our experiment. The preliminary results prove that our scheme is a promising tool for pulmonary nodule detection.
基于自适应模糊c均值技术的新型胸部CT图像肺结节计算机辅助检测系统
本文提出了一种基于自适应模糊c均值(AFCM)技术的胸部CT图像肺结节计算机辅助检测系统。由于结节的粗糙分割容易导致高假阳性(FP),因此本研究的主要目的是通过聚类和分类方法来减少候选结节的假阳性。该方案包括三个阶段:肺结节识别、训练结节聚类和测试结节分类。首先,通过邻域连接技术和掩蔽处理提取肺实质,并通过适当的阈值处理识别候选结节;然后,为了提高训练阶段的性能,我们利用了AFCM技术。最后,根据马氏距离确定每个测试候选结节的类别。我们在35个容积的胸部CT上验证了我们的方法,这些CT被细分为20个训练部分和15个测试部分,我们的实验得到每次扫描的假阳性约为2.8。初步结果表明,该方法是一种很有前途的肺结节检测工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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