Chest computed tomography (CT) imaging adds valuable insight in the diagnosis and management of pulmonary infectious diseases, like tuberculosis (TB). However, due to the cost and resource limitations, only X-ray images may be available for initial diagnosis or follow up comparison imaging during treatment. Due to their projective nature, X-rays images may be more difficult to interpret by clinicians. The lack of publicly available paired X-ray and CT image datasets makes it challenging to train a 3D reconstruction model. In addition, Chest X-ray radiology may rely on different device modalities with varying image quality and there may be variation in underlying population disease spectrum that creates diversity in inputs. We propose shape induction, that is, learning the shape of 3D CT from X-ray without CT supervision, as a novel technique to incorporate realistic X-ray distributions during training of a reconstruction model. Our experiments demonstrate that this process improves both the perceptual quality of generated CT and the accuracy of down-stream classification of pulmonary infectious diseases.
翻译:切斯特计算透视成像(CT)在诊断和管理肺病(如肺结核)方面增加了宝贵的洞察力,然而,由于成本和资源限制,在治疗期间,只有X光图像可用于初步诊断或后续比较成像。由于其投影性质,X光图像可能更难由临床医生解释。由于缺乏公开提供的对齐X光和CT图像数据集,培训3D重建模型具有挑战性。此外,切斯特X射线放射可能依赖不同设备模式,其图像质量不同,而且潜在的人口疾病频谱可能存在差异,从而造成投入的多样性。我们建议进行形状感应,即在没有CT监督的情况下,从X光中学习3DCT的形状,作为在重建模型的培训中采用现实的X光分布的新技术。我们的实验表明,这一过程提高了生成的CT的感知质量和肺部传染病下流分类的准确性。