Nardelli Pietro, Washko George R, San José Estépar Raúl
Applied Chest Imaging Laboratory, Brigham and Women's Hospital, Harvard Medical School, Boston, MA, USA.
Med Image Comput Comput Assist Interv. 2019 Oct;11769:357-365. doi: 10.1007/978-3-030-32226-7_40. Epub 2019 Oct 10.
In the last two decades, several methods for airway segmentation from chest CT images have been proposed. The following natural step is the development of a tool to accurately assess the morphology of the bronchial system in all its aspects to help physicians better diagnosis and prognosis complex pulmonary diseases such as COPD, chronic bronchitis and bronchiectasis. Traditional methods for the assessment of airway morphology usually focus on lumen and wall thickness and are often limited due to resolution and artifacts of the CT image. Airway wall cartilage is an important characteristic related to airway integrity that has shown to be deteriorated during the airway disease process. In this paper, we propose the development of a Model-Based GAN Regressor (MBGR) that, thanks to a model-based GAN generator, generate synthetic airway samples with the morphological components necessary to resemble the appearance of real airways on CT at will and that simultaneously measures lumen, wall thickness, and amount of cartilage on pulmonary CT images. The method is evaluated by first computing the relative error on generated images to show that simulating the cartilage helps improve the morphological quantification of the airway structure. We then propose a cartilage index that summarizes the degree of cartilage of bronchial trees structures and perform an indirect validation with subjects with COPD. As shown by the results, the proposed approach paves the way for the use of CNNs to precisely and accurately measure small lung airways morphology, with the final goal to improve the diagnosis and prognosis of pulmonary diseases.
在过去二十年中,已经提出了几种从胸部CT图像中进行气道分割的方法。接下来自然的步骤是开发一种工具,以全面准确地评估支气管系统的形态,帮助医生更好地诊断和预测慢性阻塞性肺疾病(COPD)、慢性支气管炎和支气管扩张等复杂肺部疾病的预后。传统的气道形态评估方法通常侧重于管腔和管壁厚度,并且由于CT图像的分辨率和伪影,往往受到限制。气道壁软骨是与气道完整性相关的一个重要特征,在气道疾病过程中已显示出其会恶化。在本文中,我们提出开发一种基于模型的生成对抗网络回归器(MBGR),借助基于模型的生成对抗网络生成器,它可以随意生成具有类似真实气道在CT上外观所需形态成分的合成气道样本,同时测量肺部CT图像上的管腔、管壁厚度和软骨量。首先通过计算生成图像上的相对误差来评估该方法,以表明模拟软骨有助于改善气道结构的形态量化。然后,我们提出了一个软骨指数,用于总结支气管树结构的软骨程度,并对COPD患者进行间接验证。结果表明,所提出的方法为使用卷积神经网络精确准确地测量小肺气道形态铺平了道路,最终目标是改善肺部疾病的诊断和预后。