论文标题

CT扫描中稳健有效的肺叶分割的关系建模

Relational Modeling for Robust and Efficient Pulmonary Lobe Segmentation in CT Scans

论文作者

Xie, Weiyi, Jacobs, Colin, Charbonnier, Jean-Paul, van Ginneken, Bram

论文摘要

计算机断层扫描中的肺叶分割对于肺部疾病的区域评估至关重要。基于卷积神经网络的最新作品为这项任务取得了良好的性能。但是,由于卷积的性质,它们仍然受到捕获结构化关系的限制。肺叶的形状相互影响,其边界与其他结构的外观(例如容器,气道和胸膜壁)有关。我们认为,当肺部受到COVID-19或COPD等疾病的影响时,这种结构关系在准确描绘肺叶中起着关键作用。 在本文中,我们提出了一种关系方法(RTSU-NET),该方法通过引入新型的非本地神经网络模块来利用结构关系。所提出的模块在所有卷积特征之间学习了视觉和几何关系,以产生自我发场权重。 在Covid-19受试者获得的培训数据有限的情况下,我们最初在COPDGENE研究的5000名受试者的队列中训练和验证RTSU-NET(4000次培训和1000次评估)。使用在COPDGENE进行的预训练的模型,我们将转移学习应用于重新培训并评估470 Covid-19嫌疑人的RTSU-NET(370用于再培训,评估100)。实验结果表明,RTSU-NET的表现优于三个基础,并且在COVID-19引起的严重肺部感染病例上表现出色。

Pulmonary lobe segmentation in computed tomography scans is essential for regional assessment of pulmonary diseases. Recent works based on convolution neural networks have achieved good performance for this task. However, they are still limited in capturing structured relationships due to the nature of convolution. The shape of the pulmonary lobes affect each other and their borders relate to the appearance of other structures, such as vessels, airways, and the pleural wall. We argue that such structural relationships play a critical role in the accurate delineation of pulmonary lobes when the lungs are affected by diseases such as COVID-19 or COPD. In this paper, we propose a relational approach (RTSU-Net) that leverages structured relationships by introducing a novel non-local neural network module. The proposed module learns both visual and geometric relationships among all convolution features to produce self-attention weights. With a limited amount of training data available from COVID-19 subjects, we initially train and validate RTSU-Net on a cohort of 5000 subjects from the COPDGene study (4000 for training and 1000 for evaluation). Using models pre-trained on COPDGene, we apply transfer learning to retrain and evaluate RTSU-Net on 470 COVID-19 suspects (370 for retraining and 100 for evaluation). Experimental results show that RTSU-Net outperforms three baselines and performs robustly on cases with severe lung infection due to COVID-19.

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