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Supervised recursive segmentation of volumetric CT images for 3D reconstruction of lung and vessel tree

机译:体积CT图像的有监督递归分割,用于肺和血管树的3D重建

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摘要

Three dimensional reconstruction of lung and vessel tree has great significance to 3D observation and quantitative analysis for lung diseases. This paper presents non-sheltered 3D models of lung and vessel tree based on a supervised semi-3D lung tissues segmentation method. A recursive strategy based on geometric active contour is proposed instead of the "coarse-to-fine" framework in existing literature to extract lung tissues from the volumetric CT slices. In this model, the segmentation of the current slice is supervised by the result of the previous one slice due to the slight changes between adjacent slice of lung tissues. Through this mechanism, lung tissues in all the slices are segmented fast and accurately. The serious problems of left and right lungs fusion, caused by partial volume effects, and segmentation of pleural nodules can be settled meanwhile during the semi-3D process. The proposed scheme is evaluated by fifteen scans, from eight healthy participants and seven participants suffering from early-stage lung tumors. The results validate the good performance of the proposed method compared with the "coarse-to-fine" framework. The segmented datasets are utilized to reconstruct the non-sheltered 3D models of lung and vessel tree. (C) 2015 Elsevier Ireland Ltd. All rights reserved.
机译:肺和血管树的三维重建对于肺部疾病的3D观察和定量分析具有重要意义。本文提出了一种基于监督的半3D肺组织分割方法的肺和血管树非保护性3D模型。提出了一种基于几何活动轮廓的递归策略,而不是现有文献中的“从粗到细”框架来从体积CT切片中提取肺组织。在此模型中,由于相邻肺组织切片之间的细微变化,当前切片的分割由上一个切片的结果监督。通过这种机制,所有切片中的肺组织都可以快速,准确地分割。在半3D过程中,可以解决由局部容积效应引起的左右肺融合的严重问题以及胸膜结节的分割。通过八次健康参与者和七名患有早期肺肿瘤的参与者的十五次扫描评估了所提议的方案。与“粗到精”框架相比,结果验证了所提出方法的良好性能。分割后的数据集可用于重建肺和血管树的非屏蔽3D模型。 (C)2015 Elsevier Ireland Ltd.保留所有权利。

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