Several chronic lung diseases, like idiopathic pulmonary fibrosis (IPF) are characterised by abnormal dilatation of the airways. Quantification of airway features on computed tomography (CT) can help characterise disease progression. Physics based airway measurement algorithms have been developed, but have met with limited success in part due to the sheer diversity of airway morphology seen in clinical practice. Supervised learning methods are also not feasible due to the high cost of obtaining precise airway annotations. We propose synthesising airways by style transfer using perceptual losses to train our model, Airway Transfer Network (ATN). We compare our ATN model with a state-of-the-art GAN-based network (simGAN) using a) qualitative assessment; b) assessment of the ability of ATN and simGAN based CT airway metrics to predict mortality in a population of 113 patients with IPF. ATN was shown to be quicker and easier to train than simGAN. ATN-based airway measurements were also found to be consistently stronger predictors of mortality than simGAN-derived airway metrics on IPF CTs. Airway synthesis by a transformation network that refines synthetic data using perceptual losses is a realistic alternative to GAN-based methods for clinical CT analyses of idiopathic pulmonary fibrosis. Our source code can be found at https://github.com/ashkanpakzad/ATN that is compatible with the existing open-source airway analysis framework, AirQuant.
翻译:若干慢性肺病,如病态肺纤维化病(IPF)等慢性肺病,其特点是气道异常变形。计算断层成形术(CT)对气道特征进行量化有助于疾病发展。基于物理的气道测量算法已经开发出来,但由于临床实践所见空气道形态学的多样性,取得了有限的成功。由于获取精确空气路说明的费用很高,监督的学习方法也不可行。我们提议利用感知性损失对气道进行感官传输,从而对气道进行兼容合成。我们把ATN的气道特征与基于GAN的状态-状态网络(simGAN)进行比较,使用质量评估;b)评估ATN和SimGAN的气道特征指数,以预测113名患者的死亡率。 ATN被认为比SIMGAN的源代码化空气路径框架更快和更容易培训。基于TNTN的替代空气路测量也发现在不断加强对死亡率的预测,而使用GAN-SIMAR的空气流流流流分析方法,通过SIMAR的空气流流流流流流流学数据分析,使G-空气流流流流流流流流流数据损失成为不断改善。