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Automated Segmentation of the Lungs from High Resolution CT Images for Quantitative Study of Chronic Obstructive Pulmonary Diseases

机译:从高分辨率CT图像自动分割肺部慢性阻塞性肺疾病的定量研究

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Chronic obstructive pulmonary diseases (COPD) are debilitating conditions of the lung and are the fourth leading cause of death in the United States. Early diagnosis is critical for timely intervention and effective treatment. The ability to quantify particular imaging features of specific pathology and accurately assess progression or response to treatment with current imaging tools is relatively poor. The goal of this project was to develop automated segmentation techniques that would be clinically useful as computer assisted diagnostic tools for COPD. The lungs were segmented using an optimized segmentation threshold and the trachea was segmented using a fixed threshold characteristic of air. The segmented images were smoothed by a morphological close operation using spherical elements of different sizes. The results were compared to other segmentation approaches using an optimized threshold to segment the trachea. Comparison of the segmentation results from 10 datasets showed that the method of trachea segmentation using a fixed air threshold followed by morphological closing with spherical element of size 23x23x5 yielded the best results. Inclusion of greater number of pulmonary vessels in the lung volume is important for the development of computer assisted diagnostic tools because the physiological changes of COPD can result in quantifiable anatomic changes in pulmonary vessels. Using a fixed threshold to segment the trachea removed airways from the lungs to a better extent as compared to using an optimized threshold. Preliminary measurements gathered from patient's CT scans suggest that segmented images can be used for accurate analysis of total lung volume and volumes of regional lung parenchyma. Additionally, reproducible segmentation allows for quantification of specific pathologic features, such as lower intensity pixels, which are characteristic of abnormal air spaces in diseases like emphysema.
机译:慢性阻塞性肺部疾病(COPD)是肺部的衰弱条件,是美国死亡的第四个主要原因。早期诊断对于及时干预和有效治疗至关重要。能够量化特定病理学的特定成像特征,并准确地评估与当前成像工具治疗的进展或反应的能力相对较差。该项目的目标是开发自动分割技术,这些技术将被视为COPD的计算机辅助诊断工具。使用优化的分割阈值分段肺部分割,并且使用空气的固定阈值特性分段气管。通过使用不同尺寸的球形元素的形态密闭操作来平滑分段图像。将结果与使用优化的阈值进行分割的其他分段方法进行比较,以分割气管。来自10个数据集的分割结果的比较显示,使用固定空气阈值的气管分割方法,其与23x23x5的球形元素的形态闭合,得到了最佳结果。包含更多数量的肺部肺血管对于计算机辅助诊断工具的发展是重要的,因为COPD的生理变化可能导致肺血管中可量化的解剖学变化。与使用优化的阈值相比,使用固定阈值将气管从肺部移除到更好的程度上。从患者的CT扫描中收集的初步测量表明,分段图像可用于准确分析肺部全肺疗法的总肺部体积和体积。另外,可重复的分割允许定量特定病理特征,例如较低强度像素,其是肺气肿等疾病中异常空间的特征。

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