Whole abdominal organ segmentation is important in diagnosing abdomen lesions, radiotherapy, and follow-up. However, oncologists' delineating all abdominal organs from 3D volumes is time-consuming and very expensive. Deep learning-based medical image segmentation has shown the potential to reduce manual delineation efforts, but it still requires a large-scale fine annotated dataset for training, and there is a lack of large-scale datasets covering the whole abdomen region with accurate and detailed annotations for the whole abdominal organ segmentation. In this work, we establish a new large-scale \textit{W}hole abdominal \textit{OR}gan \textit{D}ataset (\textit{WORD}) for algorithm research and clinical application development. This dataset contains 150 abdominal CT volumes (30495 slices). Each volume has 16 organs with fine pixel-level annotations and scribble-based sparse annotations, which may be the largest dataset with whole abdominal organ annotation. Several state-of-the-art segmentation methods are evaluated on this dataset. And we also invited three experienced oncologists to revise the model predictions to measure the gap between the deep learning method and oncologists. Afterwards, we investigate the inference-efficient learning on the WORD, as the high-resolution image requires large GPU memory and a long inference time in the test stage. We further evaluate the scribble-based annotation-efficient learning on this dataset, as the pixel-wise manual annotation is time-consuming and expensive. The work provided a new benchmark for the abdominal multi-organ segmentation task, and these experiments can serve as the baseline for future research and clinical application development.
翻译:全身器官分割在诊断腹部损伤、放射疗法和后续分析中很重要。 但是, 肿瘤学家将所有腹部器官从 3D 体积中划出是耗时和非常昂贵的。 深学习的医学图像分割显示有减少人工划界努力的潜力, 但是它仍然需要一个大尺度的附加说明的数据集, 并且缺乏覆盖整个腹部区域的大型数据集, 并配有准确和详细的整个腹部器官分割说明。 但是, 在这项工作中, 我们建立了一个新的大型的 直径切腹器官切腹部器官切分解系统。 深度的直径切腹部切腹部切分解系统( textit{ Organ}\ textitle{Dataset (\ textitle{WORD}) 用于算法研究和临床应用开发。 该数据集包含150 腹部CT 量( 30495 秒) 。 每卷有16个器官, 有精细的平级水平的笔记, 以及基于进一步缩的笔记, 这可能成为最大型的直径的内径的内径 。 高级的内径的内径实验- 计算中, 也需要对这个深度的深度的测测测测数据进行一个大的测测测算。