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首页> 外文期刊>Radiographics >Segmentation and Image Analysis of Abnormal Lungs at CT: Current Approaches, Challenges, and Future Trends
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Segmentation and Image Analysis of Abnormal Lungs at CT: Current Approaches, Challenges, and Future Trends

机译:CT异常肺的分割和图像分析:当前方法,挑战和未来趋势

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摘要

The computer-based process of identifying the boundaries of lung from surrounding thoracic tissue on computed tomographic (CT) images, which is called segmentation, is a vital first step in radiologic pulmonary image analysis. Many algorithms and software platforms provide image segmentation routines for quantification of lung abnormalities; however, nearly all of the current image segmentation approaches apply well only if the lungs exhibit minimal or no pathologic conditions. When moderate to high amounts of disease or abnormalities with a challenging shape or appearance exist in the lungs, computer-aided detection systems may be highly likely to fail to depict those abnormal regions because of inaccurate segmentation methods. In particular, abnormalities such as pleural effusions, consolidations, and masses often cause inaccurate lung segmentation, which greatly limits the use of image processing methods in clinical and research contexts. In this review, a critical summary of the current methods for lung segmentation on CT images is provided, with special emphasis on the accuracy and performance of the methods in cases with abnormalities and cases with exemplary pathologic findings. The currently available segmentation methods can be divided into five major classes: (a) thresholding-based, (b) region-based, (c) shapebased, (d) neighboring anatomy-guided, and (e) machine learning-based methods. The feasibility of each class and its shortcomings are explained and illustrated with the most common lung abnormalities observed on CT images. In an overview, practical applications and evolving technologies combining the presented approaches for the practicing radiologist are detailed. (C) RSNA, 2015
机译:在断层计算机断层扫描(CT)图像上,基于计算机的从周围胸腔组织中识别肺部边界的过程称为分割,这是放射学肺部图像分析中至关重要的第一步。许多算法和软件平台都提供了图像分割例程,用于量化肺部异常。但是,几乎所有当前的图像分割方法都只有在肺部表现出极少或没有病理状况的情况下才适用。当肺中存在中度到大量的具有挑战性形状或外观的疾病或异常时,由于分割方法不正确,计算机辅助检测系统很可能无法描绘出这些异常区域。特别是,诸如胸腔积液,结实和肿块之类的异常通常会导致肺分割不准确,这极大地限制了图像处理方法在临床和研究环境中的使用。在这篇综述中,提供了当前在CT图像上进行肺分割的方法的重要总结,特别强调了在异常情况下和具有典型病理发现的情况下该方法的准确性和性能。当前可用的分割方法可以分为五大类:(a)基于阈值的,(b)基于区域的,(c)基于形状的,(d)邻近解剖结构指导的和(e)基于机器学习的方法。通过在CT图像上观察到的最常见的肺部异常,可以解释和说明每个类别的可行性及其缺点。在概述中,详细介绍了将所介绍的方法结合给放射科医生的实际应用和不断发展的技术。 (C)RSNA,2015年

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