Center for Industrial Mathematics, University of Bremen, Bibliothekstr. 5, 28359, Bremen, Germany.
Sci Data. 2021 Apr 16;8(1):109. doi: 10.1038/s41597-021-00893-z.
Deep learning approaches for tomographic image reconstruction have become very effective and have been demonstrated to be competitive in the field. Comparing these approaches is a challenging task as they rely to a great extent on the data and setup used for training. With the Low-Dose Parallel Beam (LoDoPaB)-CT dataset, we provide a comprehensive, open-access database of computed tomography images and simulated low photon count measurements. It is suitable for training and comparing deep learning methods as well as classical reconstruction approaches. The dataset contains over 40000 scan slices from around 800 patients selected from the LIDC/IDRI database. The data selection and simulation setup are described in detail, and the generating script is publicly accessible. In addition, we provide a Python library for simplified access to the dataset and an online reconstruction challenge. Furthermore, the dataset can also be used for transfer learning as well as sparse and limited-angle reconstruction scenarios.
用于断层成像重建的深度学习方法已经非常有效,并在该领域证明具有竞争力。比较这些方法是一项具有挑战性的任务,因为它们在很大程度上依赖于用于训练的数据和设置。我们提供了一个全面的、开放获取的低剂量平行束(LoDoPaB)-CT 数据集,其中包含来自 LIDC/IDRI 数据库的约 800 名患者的 40000 多个扫描切片。该数据集适合用于训练和比较深度学习方法以及经典重建方法。数据选择和模拟设置有详细描述,生成脚本也可公开访问。此外,我们还提供了一个 Python 库,用于简化对数据集的访问,并提供在线重建挑战。此外,该数据集还可用于迁移学习以及稀疏和有限角度重建场景。