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Mass Detection in Lung CT Images using Region Growing Segmentation and Decision Making based on Fuzzy Systems

机译:基于模糊系统的区域增长分割与决策的肺部CT图像质量检测

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Lung cancer is distinguished by presenting one of the highest incidences and one of the highest rates of mortality among all other types of cancers. Detecting and curing the disease in the early stages provides the patients with a high chance of survival. In order to help specialists in the search and recognition of the lung nodules in tomography images, a good number of research centers have been developed in computer-aided detection (CAD) systems for automating the procedures. This work aims at detecting lung nodules automatically through computerized tomography images. Accordingly, this article aim at presenting a method to improve the efficiency of the lung cancer diagnosis system, through proposing a region growing segmentation method to segment CT scan lung images and, then, cancer recognition by FIS (Fuzzy Inference System). The proposed method consists of three steps. The first step was pre-processing for enhancing contrast, removing noise, and pictures less corrupted by Linear-Filtering. In second step, the region growing segmentation method was used to segment the CT images. In third step, we have developed an expert system for decision making which differentiates between normal, benign, malignant or advanced abnormality findings. The FIS can be of great help in diagnosing any abnormality in the medical images. This step was done by extracting the features such as area and color (gray values) and given to the FIS as input. This system utilizes fuzzy membership functions which can be stated in the form of if-then rules for finding the type of the abnormality. Finally, the analysis step will be discussed and the accuracy of the method will be determined. Our experiments show that the average sensitivity of the proposed method is more than 95%.
机译:在所有其他类型的癌症中,肺癌的特点是发病率最高,死亡率最高。在早期发现并治愈该疾病为患者提供了很高的生存机会。为了帮助专家在断层扫描图像中搜索和识别肺结节,已经在计算机辅助检测(CAD)系统中建立了许多研究中心,以使程序自动化。这项工作旨在通过计算机断层扫描图像自动检测肺结节。因此,本文旨在通过提出一种区域增长分割方法来分割CT扫描肺图像,然后通过FIS(模糊推理系统)识别癌症,提出一种提高肺癌诊断系统效率的方法。所提出的方法包括三个步骤。第一步是进行预处理,以增强对比度,消除噪点和减少线性滤波损坏的图片。第二步,使用区域增长分割方法对CT图像进行分割。第三步,我们开发了一个决策专家系统,可以区分正常,良性,恶性或晚期异常发现。 FIS对诊断医学图像中的任何异常可能有很大的帮助。通过提取诸如面积和颜色(灰度值)之类的特征并将其提供给FIS作为输入来完成此步骤。该系统利用模糊隶属度函数,该函数可以用if-then规则的形式表示,以查找异常的类型。最后,将讨论分析步骤并确定该方法的准确性。我们的实验表明,该方法的平均灵敏度超过95%。

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