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A COMPREHENSIVE FRAMEWORK FOR AUTOMATIC DETECTION OF PULMONARY NODULES IN LUNG CT IMAGES

机译:自动检测肺部CT图像中肺结节的综合框架

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Solitary pulmonary nodules may indicate an early stage of lung cancer. Hence, the early detection of nodules is the most efficient way for saving the lives of patients. The aim of this paper is to present a comprehensive Computer Aided Diagnosis (CADx) framework for detection of the lung nodules in computed tomography images. The four major components of the developed framework are lung segmentation, identification of candidate nodules, classification and visualization. The process starts with segmentation of lung regions from the thorax. Then, inside the segmented lung regions, candidate nodules are identified using an approach based on multiple thresholds followed by morphological opening and 3D region growing algorithm. Finally, a combination of a rule-based procedure and support vector machine classifier (SVM) is utilized to classify the candidate nodules. The proposed CADx method was validated on CT images of 60 patients, containing the total of 211 nodules, selected from the publicly available Lung Image Database Consortium (LIDC) image dataset. Comparing to the other state of the art methods, the proposed framework demonstrated acceptable detection performance (Sensitivity: 0.80; Fp/Scan: 3.9). Furthermore, we visualize a range of anatomical structures including the 3D lung structure and the segmented nodules along with the Maximum Intensity Projection (MIP) volume rendering method that will enable the radiologists to accurately and easily estimate the distance between the lung structures and the nodules which are frequently difficult at best to recognize from CT images.
机译:孤立的肺结节可能预示着肺癌的早期。因此,早期发现结核是挽救患者生命的最有效方法。本文的目的是提供一个全面的计算机辅助诊断(CADx)框架,以检测计算机断层扫描图像中的肺结节。所开发框架的四个主要组成部分是肺分割,候选结节的识别,分类和可视化。该过程开始于从胸部分割肺区域。然后,在分割的肺区域内,使用基于多个阈值的方法识别候选结节,然后进行形态学开放和3D区域生长算法。最后,基于规则的过程和支持向量机分类器(SVM)的组合用于对候选结节进行分类。所提议的CADx方法在60例患者的CT图像上得到了验证,该图像包含总共211个结节,这些图像选自可公开获得的肺图像数据库协会(LIDC)图像数据集。与其他现有技术方法相比,所提出的框架证明了可接受的检测性能(灵敏度:0.80; Fp / Scan:3.9)。此外,我们可视化了一系列解剖结构,包括3D肺结构和分段的结节以及最大强度投影(MIP)体积渲染方法,这将使放射科医生能够准确,轻松地估算出肺结构与结节之间的距离,通常最多很难从CT图像中识别出来。

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