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Segmentation of lung lesion Nodules using DICOM with structuring elements and noise-a comparative study

机译:带有结构元素和噪声的DICOM分割肺部病变结节-对比研究

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摘要

Lung cancer is one of the major considerations that the field of science and medicine has to overcome. Various medical imaging modalities like X-ray, CT, chest radiography, SPECT, NM, MRI, CT, US, PET and optical modalities like Endoscopy, Microscopy or Photography exists to identify the presence of disease. Automated Computer Aided Diagnosing (CAD) system is more useful tool for advanced decision making in radiology. CAD system performs diagnosis and detection of malignancy from suspect regions in medical image. Aggregation of cells (Nodules) is unusual appearances that are numerous, clustered, irregularly shaped and sized and branching in orientation. Detection sensitivity of cancer depends on identification of malignant nodules. Major challenge lies in the lesion ROI segmentation during the clinical evaluations. For clinical work flow medical images are stored in PACS. In this paper the nodules are extracted from the DICOM lung image in the noise environment such as Gaussian, salt and pepper, Poisson and speckle using different edge detection operators such as Gaussian, Average, Laplacian and Sobel. To increase the reliability, contour detection is followed by morphological analysis with various sizes of the Disk and Diamond structuring element and watershed algorithm. These results enable to analyze the accuracy of nodule extraction from DICOM images and the impact of the noise during Diagnosis.
机译:肺癌是科学和医学领域必须克服的主要考虑因素之一。存在各种医学成像模式,如X射线,CT,胸部放射线照相,SPECT,NM,MRI,CT,US,PET和光学模式(如内窥镜检查,显微镜检查或摄影),以识别疾病的存在。自动化计算机辅助诊断(CAD)系统是用于放射学高级决策的更有用的工具。 CAD系统可对医学图像中可疑区域的恶性肿瘤进行诊断和检测。细胞的聚集(结节)是不寻常的外观,数量众多,成簇,形状不规则且大小不一且在方向上分支。癌症的检测敏感性取决于恶性结节的鉴定。主要挑战在于临床评估期间病变的ROI分割。对于临床工作流程,医学图像存储在PACS中。在本文中,使用高斯,平均值,拉普拉斯和索贝尔等不同的边缘检测算子,在高斯,盐和胡椒,泊松和斑点等噪声环境中,从DICOM肺部图像中提取结节。为了提高可靠性,轮廓检测之后是使用各种大小的Disk and Diamond结构元素和分水岭算法进行形态分析。这些结果使得能够分析从DICOM图像中提取结节的准确性以及诊断过程中噪声的影响。

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