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首页> 外文期刊>Communications in Numerical Methods in Engineering >Predicted airway obstruction distribution based on dynamical lung ventilation data: A coupled modeling‐machine learning methodology
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Predicted airway obstruction distribution based on dynamical lung ventilation data: A coupled modeling‐machine learning methodology

机译:基于动态肺通气数据的预测气道阻塞分布:一种耦合的建模-机器学习方法

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摘要

In asthma and chronic obstructive pulmonary disease, some airways of the tracheobronchial tree can be constricted, from moderate narrowing up to closure. Those pathological patterns of obstructions affect the lung ventilation distribution. While some imaging techniques enable visualization and quantification of constrictions in proximal generations, no noninvasive technique exists to provide the airway morphology and obstruction distribution in distal areas. In this work, we propose a method that exploits lung ventilation measures to access positions of airway obstructions (restrictions and closures) in the tree. This identification approach combines a lung ventilation model, in which a 0D tree is strongly coupled to a 3D parenchyma description, along with a machine learning approach. On the basis of synthetic data generated with typical temporal and spatial resolutions as well as reconstruction errors, we obtain very encouraging results of the obstruction distribution, with a detection rate higher than 85%.
机译:在哮喘和慢性阻塞性肺疾病中,气管支气管树的某些气道可能会受到限制,从适度变窄直至闭合。这些梗阻的病理形态会影响肺通气的分布。虽然一些成像技术可以使近端的狭窄部位可视化和量化,但尚无非侵入性技术可提供远端区域的气道形态和阻塞分布。在这项工作中,我们提出了一种利用肺通气措施来接近树中气道阻塞(限制和关闭)位置的方法。这种识别方法结合了肺通气模型和机器学习方法,在该模型中,0D树与3D实质描述密切相关。基于具有典型的时空分辨率以及重建误差的合成数据,我们获得了令人鼓舞的障碍物分布结果,检出率高于85%。

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  • 来源
    《Communications in Numerical Methods in Engineering》 |2018年第9期|e3108.1-e3108.29|共29页
  • 作者单位

    INRIA Paris, 2 Rue Simone IFF, F-75012 Paris, France;

    Air Liquide Sante Int, WBL Healthcare, Med R&D, 1 Chem Porte Loges, F-78350 Les Loges En Josas, France;

    Air Liquide Sante Int, WBL Healthcare, Med R&D, 1 Chem Porte Loges, F-78350 Les Loges En Josas, France;

    Air Liquide Sante Int, WBL Healthcare, Med R&D, 1 Chem Porte Loges, F-78350 Les Loges En Josas, France;

    INRIA Paris, 2 Rue Simone IFF, F-75012 Paris, France;

    INRIA Paris, 2 Rue Simone IFF, F-75012 Paris, France;

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