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Airway-Tree Segmentation in Subjects with Acute Respiratory Distress Syndrome

机译:急性呼吸窘迫综合征的呼吸道树细分

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Acute respiratory distress syndrome (ARDS) is associated with a high mortality rate in intensive care units. To lower the number of fatal cases, it is necessary to customize the mechanical ventilator parameters according to the patient's clinical condition. For this, lung segmentation is required to assess aeration and alveolar recruitment. Airway segmentation may be used to reach a more accurate lung segmentation. In this paper, we seek to improve lung segmentation results by proposing a novel automatic airway-tree segmentation that is able to address the heterogeneity of ARDS pathology by handling various lung intensities differently. The method detects a simplified airway skeleton, thereby obtains a set of seed points together with an approximate radius and intensity range related to each of the points. These seeds are the input for an onion-kernel region-growing segmentation algorithm where knowledge about radius and intensity range restricts the possible leakage in the parenchyma. The method was evaluated qualitatively on 70 thoracic Computed Tomography volumes of subjects with ARDS, acquired at significantly different mechanical ventilation conditions. It found a large proportion of airway branches including tiny poorly-aerated bronchi. Quantitative evaluation was performed indirectly and showed that the resulting airway segmentation provides important anatomic landmarks. Their correspondences are needed to help a registration-based segmentation of the lungs in difficult ARDS cases where the lung boundary contrast is completely missing. The proposed method takes an average time of 43 s to process a thoracic volume which is valuable for the clinical use.
机译:急性呼吸窘迫综合征(ARDS)与重症监护单位的高死亡率有关。为了降低致命情况的数量,有必要根据患者的临床状况定制机械呼吸机参数。为此,需要肺部分割来评估曝气和肺泡招募。气道分割可用于达到更准确的肺部分割。在本文中,我们通过提出一种新的自动气道树分段来提高肺部分割结果,可以通过不同地处理各种肺强度来解决ARDS病理学的异质性。该方法检测到简化的气道骨架,从而获得一组种子点以及与每个点相关的近似半径和强度范围。这些种子是洋葱核区域生长分割算法的输入,其中关于半径和强度范围的知识限制了实质中可能的泄漏。在70个胸廓计算断层扫描体积上进行定性评价该方法,其具有ARDS的受试者,在显着不同的机械通气条件下获得。它发现了大部分的气道分支,包括微小的充气性的支气管。间接进行定量评估,并显示所得到的气道分割提供重要的解剖标志。需要他们的对应关系来帮助在困难的ARDS病例中肺部的基于注册的分割,其中肺部边界对比度完全缺失。所提出的方法需要平均时间43秒,以处理对临床使用有价值的胸体积。

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