基于细胞学习自动机的ct扫描图像肺癌诊断

Nooshin Hadavi, Md. Jan Nordin, Ali Shojaeipour
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引用次数: 52

摘要

近年来,肺癌夺去了许多人的生命。肺癌的早期诊断可以帮助医生治疗病人并使他们活下去。检测肺癌最常用的方法是使用计算机断层扫描(CT)图像。由计算机和医学科学相结合而产生的系统被称为计算机辅助诊断(CAD)。肺癌诊断采用CAD系统,将肺部CT图像作为输入,基于算法帮助医生进行图像分析。在CAD的帮助下,医生可以做出最后的决定。本文研究了基于细胞学习自动机的肺癌自动检测方法。图像包含一些不需要的数据和一些对处理很重要的特征;预处理通过去除失真和增强重要特征来改善图像。本系统采用肺部CT扫描,采用Gabor滤波、区域生长等预处理方法对CT图像进行改进。根据特征进行预处理,提取肺癌结节。将上述步骤得到的图像输入到细胞学习自动机格中进行训练,使其具有检测肺癌的能力。实验结果表明,该方法能有效降低系统的误差率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Lung cancer diagnosis using CT-scan images based on cellular learning automata
Lung cancer has killed many people in recent years. Early diagnosis of lung cancer can help doctors to treat patients and keep them alive. The most common way to detect lung cancer is using the Computed Tomography (CT) image. The systems that are created by the integration of computers and medical science are called Computer Aided Diagnosis (CAD). A CAD system that is adopted for the diagnosis lung cancer, uses lung CT images as input and based on an algorithm helps doctors to perform an image analysis. With the help of CAD, doctors can make the final decision. This paper is a study concerning automatic detection of lung cancer by using cellular learning automata. Images include some unwanted data and some feature that are important for processing; pre-processing improves images by removing distortion and enhance the important features. This system used lung CT scan so we applied some pre-processing method such as Gabor filter and region growing to improve CT images. After pre-processing step according features the lung cancer nodule was extracted. The obtained image through previous steps was entered to cellular learning automata lattice for training and making them possess the ability to detect lung cancer. The obtained results show, the proposed approach can reduce the error rate.
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