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Solitary pulmonary nodules classification based on tumor size and volume of nodules

机译:基于肿瘤大小和结节体积的孤独的肺结节分类

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Among five main type of cancer lung cancer is one of causing health hazards in both men and women all over the world. Advanced techniques of Computed Tomography and medical images play an important role in clinically detection of lung cancer tumors in all TNM stages. Efficient Computer Aided Detection (CADe) systems help the radiologist in early detection and diagnosis of lung cancer. The objective of this paper is to develop efficient CADe system using iterative thresholding method for segmentation and freeman chain code algorithm to repair the boundary of separated lung regions. Region growing algorithm is used to extract tumor region from lung regions. Tumor shape, size, whole tumor volume and solid part tumor volume are important factors. These factors are computed in this research work to determine prognosis of tumor. Developed CADe system is evaluated using CT thoracic lung images from Lung Image Database Consortium and Reference Image (LIDC) and Reference Image Database to Evaluate Response (RIDER).
机译:五种主要类型的癌症肺癌是造成​​世界各地男女的健康危害之一。计算机断层摄影和医学图像的先进技术在临床检测所有TNM阶段的肺癌肿瘤中发挥着重要作用。高效的计算机辅助检测(CADE)系统帮助放射科学专员在早期检测和诊断肺癌。本文的目的是利用迭代阈值方法开发高效的CADE系统,用于修复分离肺区的边界。地区生长算法用于从肺区中提取肿瘤区。肿瘤形状,尺寸,全肿瘤体积和固体肿瘤体积是重要因素。在本研究工作中计算了这些因素,以确定肿瘤的预后。使用来自肺图像数据库联盟和参考图像(LIDC)和参考图像数据库的CT胸肺图像评估开发的CADE系统,以及参考图像数据库来评估响应(骑车者)。

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