Purpose: The localisation and segmentation of individual bones is an important preprocessing step in many planning and navigation applications. It is, however, a time-consuming and repetitive task if done manually. This is true not only for clinical practice but also for the acquisition of training data. We therefore not only present an end-to-end learnt algorithm that is capable of segmenting 125 distinct bones in an upper-body CT, but also provide an ensemble-based uncertainty measure that helps to single out scans to enlarge the training dataset with. Methods We create fully automated end-to-end learnt segmentations using a neural network architecture inspired by the 3D-Unet and fully supervised training. The results are improved using ensembles and inference-time augmentation. We examine the relationship of ensemble-uncertainty to an unlabelled scan's prospective usefulness as part of the training dataset. Results: Our methods are evaluated on an in-house dataset of 16 upper-body CT scans with a resolution of \SI{2}{\milli\meter} per dimension. Taking into account all 125 bones in our label set, our most successful ensemble achieves a median dice score coefficient of 0.83. We find a lack of correlation between a scan's ensemble uncertainty and its prospective influence on the accuracies achieved within an enlarged training set. At the same time, we show that the ensemble uncertainty correlates to the number of voxels that need manual correction after an initial automated segmentation, thus minimising the time required to finalise a new ground truth segmentation. Conclusion: In combination, scans with low ensemble uncertainty need less annotator time while yielding similar future DSC improvements. They are thus ideal candidates to enlarge a training set for upper-body distinct bone segmentation from CT scans. }
翻译:目的 : 个人骨骼的本地化和分割是许多规划和导航应用中一个重要的预处理步骤。 但是, 如果手工操作, 它是一个耗时和重复的任务。 这不仅对临床实践是这样, 而且对于获取培训数据来说也是这样。 因此, 我们不仅展示了一个端到端学习的算法, 能够在上体CT中将125个不同的骨骼分割开来, 而且还提供了基于共同的不确定性度量, 帮助单挑扫描来扩大培训数据集。 我们使用3D- Unet 和充分监管的培训所启发的神经网络结构, 创建完全自动化的端到端到端到端的学习的分解。 成果不仅用于临床实践, 而且也用于获取培训数据集的一部分。 结果: 我们的方法是在16个上体的组合上部扫描中评估了16个端到端的扫描, 分辨率为\ SI{ 2\\\\\ millem4} 每部的神经网络网络结构, 并且考虑到所有125个骨骼的不确定性和推移, 因此, 骨质的骨质的骨质的骨质的骨质的骨质结构, 因此, 我们的骨质的骨质的骨质变变的骨质变的骨质的骨质的骨质结构会显示, 我们的骨质的骨质的骨质 的骨质的骨质的骨质的骨质的骨质的骨质的骨质的骨质的骨质的骨质的骨质的骨质的骨质,,, 因此, 的骨质的骨质的骨质的骨质的骨质的骨质的骨质的骨质的骨质的骨质的骨质的骨质的骨质的骨质的骨质的骨质的骨质的骨质的骨质的骨质的骨质的骨质的骨质的骨质的骨, 的骨质的骨质的骨质的骨质的骨质, 因此,, 的骨质的骨质的骨质的骨质的骨质的骨质的骨质的骨质的骨质的骨质的骨质, 因此, 的骨质的骨质的骨质的骨质的骨质的骨质的骨质的骨质的骨质的骨质,, 的骨质的骨质的骨质