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Automatic segmentation of lung parenchyma based on curvature of ribs using HRCT images in scleroderma studies

机译:基于肋骨图像在硬皮病研究中的肋骨曲率自动分割

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Segmentation of lungs in the setting of scleroderma is a major challenge in medical image analysis. Threshold based techniques tend to leave out lung regions that have increased attenuation, for example in the presence of interstitial lung disease or in noisy low dose CT scans. The purpose of this work is to perform segmentation of the lungs using a technique that selects an optimal threshold for a given scleroderma patient by comparing the curvature of the lung boundary to that of the ribs. Our approach is based on adaptive thresholding and it tries to exploit the fact that the curvature of the ribs and the curvature of the lung boundary are closely matched. At first, the ribs are segmented and a polynomial is used to represent the ribs' curvature. A threshold value to segment the lungs is selected iteratively such that the deviation of the lung boundary from the polynomial is minimized. A Naive Bayes classifier is used to build the model for selection of the best fitting lung boundary. The performance of the new technique was compared against a standard approach using a simple fixed threshold of -400HU followed by region-growing. The two techniques were evaluated against manual reference segmentations using a volumetric overlap fraction (VOF) and the adaptive threshold technique was found to be significantly better than the fixed threshold technique.
机译:硬皮病肺部的分割是医学图像分析中的主要挑战。基于阈值的技术倾向于遗漏肺部区域,该肺区具有增加的衰减,例如在间质肺病或嘈杂的低剂量CT扫描。本作作品的目的是使用通过将肺部边界的曲率与肋的曲率与肋的曲率进行比较来执行肺的肺部分割。我们的方法是基于自适应阈值化,并且它试图利用肋骨曲率和肺部边界的曲率的事实紧密匹配。首先,肋条被分段,多项式用于表示肋曲率。迭代地选择要分割肺部的阈值,使得肺部边界从多项式的偏差被最小化。朴素的贝叶斯分类器用于构建模型,以选择最佳的肺部边界。使用-400hu的简单固定阈值随后生长的简单固定阈值比较新技术的性能。使用体积重叠级分(VOF)对手动参考分割评估这两种技术,并且发现自适应阈值技术明显优于固定阈值技术。

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