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Integrated lung field segmentation of injured region with anatomical structure analysis by failure-recovery algorithm from chest CT images

机译:通过胸部CT图像的故障恢复算法通过解剖结构分析对受伤区域进行综合肺野分割

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This work proposes a functionality for computerized tomography (CT) based investigation of diffuse lung diseases diagnosis that enables the evaluation of the disease from lung anatomical structures. Automated methods for segmenting several anatomy structures in chest CT are proposed: namely the lobe lungs, airway tree and pulmonary vessel tree. The airway and pulmonary vessel trees are segmented using a failure tracking and recovery algorithm. The algorithm checks intermediary results consistence, backtrack to a history position if a failure is detected. The quality of the result is improved while reducing the processing time even for subjects with lung diseases. The pulmonary vessels are segmented through the same algorithm with different seed points. The seed for the airway tree segmentation is within the tracheal tube, and the seed for the pulmonary vessels segmentation is within the heart. The algorithm is tested with CT images acquired from four distinct types of subjects: healthy, idiopathic interstitial pneumonias (IIPs), usual interstitial pneumonia (UIP) and chronic obstructive pulmonary disease (COPD). The main bronchi are found in the segmented airway and the associated lung lobes are determined. Combining the segmented lung lobes and the diffuse lung diseases classification, it is possible to quantify how much and where each lobe is injured. The results were compared with a conventional 3D region growing algorithm and commercial systems. Several results were compared to medical doctor evaluations: inter-lobe fissure, percentage of lung lobe that is injured and lung and lobe volumes. The algorithm proposed was evaluated to be robust enough to segment the cases studied.
机译:这项工作提出了一种功能,用于基于计算机断层扫描(CT)的弥漫性肺部疾病诊断研究,该功能可从肺部解剖结构评估疾病。提出了自动分割胸部CT的几种解剖结构的方法:肺叶,气道树和肺血管树。使用故障跟踪和恢复算法对气道和肺血管树进行分割。该算法检查中间结果的一致性,如果检测到故障,则回溯到历史位置。即使在患有肺部疾病的患者中,结果质量也得到了改善,同时减少了处理时间。通过相同的算法以不同的种子点对肺血管进行分割。用于气道树分割的种子在气管内,而用于肺血管分割的种子在心脏内。使用从四种不同类型的受试者获取的CT图像对算法进行测试:健康,特发性间质性肺炎(IIP),常见间质性肺炎(UIP)和慢性阻塞性肺疾病(COPD)。在分段气道中发现主支气管,并确定相关的肺叶。结合分段的肺叶和弥漫性肺部疾病分类,可以量化每个肺叶受伤的程度和位置。将结果与常规3D区域增长算法和商业系统进行了比较。将几个结果与医生评估结果进行了比较:肺叶间裂,受伤的肺叶百分比以及肺和肺叶体积。所提出的算法经过评估,具有足够的鲁棒性,可以分割研究的案例。

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