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Robust lung identification in MSCT via controlled flooding and shape constraints: dealing with anatomical and pathological specificity

机译:MSCT通过受控的洪水和形状约束在MSCT中的鲁棒肺识别:处理解剖学和病理特异性

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Correct segmentation and labeling of lungs in thorax MSCT is a requirement in pulmonary/respiratory disease analysis as a basis for further processing or direct quantitative measures: lung texture classification, respiratory functional simulations, intrapulmonary vascular remodeling evaluation, detection of pleural effusion or subpleural opacities, are only few clinical applications related to this requirement. Whereas lung segmentation appears trivial for normal anatomo-pathological conditions, the presence of disease may complicate this task for fully-automated algorithms. The challenges come either from regional changes of lung texture opacity or from complex anatomic configurations (e.g., thin septum between lungs making difficult proper lung separation). They make difficult or even impossible the use of classic algorithms based on adaptive thresholding, 3-D connected component analysis and shape regularization. The objective of this work is to provide a robust segmentation approach of the pulmonary field, with individualized labeling of the lungs, able to overcome the mentioned limitations. The proposed approach relies on 3-D mathematical morphology and exploits the concept of controlled relief flooding (to identify contrasted lung areas) together with patient-specific shape properties for peripheral dense tissue detection. Tested on a database of 40 MSCT of pathological lungs, the proposed approach showed correct identification of lung areas with high sensitivity and specificity in locating peripheral dense opacities.
机译:在胸部MSCT中肺部的正确分割和标记是肺部/呼吸道疾病分析的要求作为进一步加工或直接定量措施的基础:肺纹理分类,呼吸功能模拟,血管内血管重塑评估,胸腔积液的检测或副透明度,只是与此要求相关的临床应用。虽然肺分割对于正常的解剖病理病理条件看起来微不足道,但疾病的存在可能使这项任务复杂化全自动算法。挑战来自肺部纹理不透明或复杂的解剖结构的区域变化(例如,肺部之间的薄隔膜使难以适当的肺分离)。它们难以根据自适应阈值,3-D连接分量分析和形状正则化的经典算法使用经典算法困难甚至不可能。这项工作的目的是提供一种肺场的稳健分割方法,具有肺的个体化标记,能够克服提到的局限性。所提出的方法依赖于3-D数学形态,并利用受控救济洪水(以鉴定对比的肺区)与患者特异性形状特性进行外周致密组织检测。在40 MSCT病理肺部的数据库中测试,该方法显示出在定位外周致密不透明度的高灵敏度和特异性具有高灵敏度和特异性的肺区的正确识别。

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