Computed tomography (CT) is an effective medical imaging modality, widely used in the field of clinical medicine for the diagnosis of various pathologies. Advances in Multidetector CT imaging technology have enabled additional functionalities, including generation of thin slice multiplanar cross-sectional body imaging and 3D reconstructions. However, this involves patients being exposed to a considerable dose of ionising radiation. Excessive ionising radiation can lead to deterministic and harmful effects on the body. This paper proposes a Deep Learning model that learns to reconstruct CT projections from a few or even a single-view X-ray. This is based on a novel architecture that builds from neural radiance fields, which learns a continuous representation of CT scans by disentangling the shape and volumetric depth of surface and internal anatomical structures from 2D images. Our model is trained on chest and knee datasets, and we demonstrate qualitative and quantitative high-fidelity renderings and compare our approach to other recent radiance field-based methods. Our code and link to our datasets will be available at our GitHub.
翻译:多检测器CT成像技术的进步使得增加了功能,包括生成薄片多层截面身体成像和3D重建,然而,这涉及到病人暴露在相当剂量的电离辐射之下。过度电离辐射可能导致对身体的确定和有害影响。本文件提出一个深学习模型,从少数甚至单视X射线中学习重建CT的预测。这个模型基于从神经光谱场中建立的新颖结构,它通过剥离2D图像的表层和内部解剖结构的形状和体积深度来学习CT扫描的持续表现。我们的模型在胸部和膝盖数据集方面受过培训,我们展示了质量和数量上高纤维度的特征,并比较了我们最近采用的其他光谱场方法。我们的代码和链接将在我们的GitHubb中提供。