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Lung field segmentation in chest radiographs: a historical review, current status, and expectations from deep learning

机译:胸部X光片中的肺野分割:历史回顾,当前状态和深度学习的期望

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摘要

Lung field defines a region-of-interest in which specific radiologic signs such as septal lines, pulmonary opacities, cavities, consolidations, and lung nodules are searched by a chest radiographic computer-aided diagnostic system. Thus, its precise segmentation is extremely important. To precisely segment it, numerous methods have been developed during the last four decades. However, no exclusive survey consolidating the advancements in these methods has been presented till date, thus indicating a void and the need. This study fills the void by presenting a comprehensive survey of these methods with a focus on their underlying principle, the dataset used, reported performance, and relative merits and demerits. It refrains from doing a hard comparative evaluation by bringing all of them on a common platform, since the datasets used in their development and testing are of varied quality, complexity, and are not publicly available. It also provides a glimpse of deep learning, the present state of deep-learning-based lung field segmentation methods, expectations from it, and the challenges ahead of it.
机译:肺野定义了一个感兴趣的区域,在该区域中,可以通过胸部X射线计算机辅助诊断系统搜索特定的放射学征象,例如中隔线,肺部混浊,腔,结实和肺结节。因此,其精确的分割非常重要。为了精确细分,在过去的四十年中开发了许多方法。但是,到目前为止,还没有专门的调查来巩固这些方法的进步,因此表明存在空白和必要性。本研究通过对这些方法进行全面的调查来填补空白,重点是它们的基本原理,所使用的数据集,报告的性能以及相对优缺点。它避免了将所有这些都放到一个通用平台上进行艰难的比较评估,因为在其开发和测试中使用的数据集具有不同的质量,复杂性,并且无法公开获得。它还简要介绍了深度学习,基于深度学习的肺野分割方法的现状,对其的期望以及其面临的挑战。

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