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Accurate Measurement of Airway Morphology on Chest CT Images

机译:在胸部CT图像上准确测量气道形态

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摘要

In recent years, the ability to accurately measuring and analyzing the morphology of small pulmonary structures on chest CT images, such as airways, is becoming of great interest in the scientific community. As an example, in COPD the smaller conducting airways are the primary site of increased resistance in COPD, while small changes in airway segments can identify early stages of bronchiectasis. To date, different methods have been proposed to measure airway wall thickness and airway lumen, but traditional algorithms are often limited due to resolution and artifacts in the CT image. In this work, we propose a Convolutional Neural Regressor (CNR) to perform cross-sectional measurements of airways, considering wall thickness and airway lumen at once. To train the networks, we developed a generative synthetic model of airways that we refined using a Simulated and Unsupervised Generative Adversarial Network (SimGAN). We evaluated the proposed method by first computing the relative error on a dataset of synthetic images refined with SimGAN, in comparison with other methods. Then, due to the high complexity to create an in-vivo ground-truth, we performed a validation on an airway phantom constructed to have airways of different sizes. Finally, we carried out an indirect validation analyzing the correlation between the percentage of the predicted forced expiratory volume in one second (FEV1%) and the value of the Pi10 parameter. As shown by the results, the proposed approach paves the way for the use of CNNs to precisely and accurately measure small lung airways with high accuracy.
机译:近年来,在胸部CT图像(例如气道)上准确测量和分析小肺结构形态的能力在科学界引起了极大的兴趣。例如,在COPD中,较小的传导气道是COPD阻力增加的主要部位,而气道节段的微小变化可以识别支气管扩张的早期阶段。迄今为止,已经提出了不同的方法来测量气道壁厚度和气道内腔,但是传统的算法通常由于CT图像的分辨率和伪影而受到限制。在这项工作中,我们提出了卷积神经回归器(CNR)来进行气道的横截面测量,同时考虑壁厚和气道内腔。为了训练网络,我们开发了一种气道的生成综合模型,并使用模拟和无监督的生成对抗网络(SimGAN)对其进行了改进。通过与其他方法相比,我们首先通过使用SimGAN精炼的合成图像数据集计算相对误差,从而评估了所提出的方法。然后,由于创建体内地面真相的复杂性,我们对构造为具有不同尺寸气道的气道体模进行了验证。最后,我们进行了间接验证,分析了在一秒钟内预测的强制呼气量百分比(FEV1%)与Pi10参数值之间的相关性。结果表明,所提出的方法为使用CNN精确,准确地测量小型肺气道铺平了道路。

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  • 会议地点 Granada(ES)
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    Applied Chest Imaging Laboratory, Department of Radiology, Brigham and Women's Hospital, Harvard Medical School, Boston, MA, USA;

    School of Medicine and Health, Aalborg University, Fredrik Bajers Vej 7, 9220 Aalborg Ost, Denmark;

    School of Medicine and Health, Aalborg University, Fredrik Bajers Vej 7, 9220 Aalborg Ost, Denmark;

    School of Medicine and Health, Aalborg University, Fredrik Bajers Vej 7, 9220 Aalborg Ost, Denmark;

    School of Medicine and Health, Aalborg University, Fredrik Bajers Vej 7, 9220 Aalborg Ost, Denmark;

    School of Medicine and Health, Aalborg University, Fredrik Bajers Vej 7, 9220 Aalborg Ost, Denmark;

    Applied Chest Imaging Laboratory, Department of Radiology, Brigham and Women's Hospital, Harvard Medical School, Boston, MA, USA;

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