Precise delineation of multiple organs or abnormal regions in the human body from medical images plays an essential role in computer-aided diagnosis, surgical simulation, image-guided interventions, and especially in radiotherapy treatment planning. Thus, it is of great significance to explore automatic segmentation approaches, among which deep learning-based approaches have evolved rapidly and witnessed remarkable progress in multi-organ segmentation. However, obtaining an appropriately sized and fine-grained annotated dataset of multiple organs is extremely hard and expensive. Such scarce annotation limits the development of high-performance multi-organ segmentation models but promotes many annotation-efficient learning paradigms. Among these, studies on transfer learning leveraging external datasets, semi-supervised learning using unannotated datasets and partially-supervised learning integrating partially-labeled datasets have led the dominant way to break such dilemma in multi-organ segmentation. We first review the traditional fully supervised method, then present a comprehensive and systematic elaboration of the 3 abovementioned learning paradigms in the context of multi-organ segmentation from both technical and methodological perspectives, and finally summarize their challenges and future trends.
翻译:将人体中多种器官或异常区域从医学图像中精确地划分为多种器官或异常区域,在计算机辅助诊断、外科模拟、图像引导干预,特别是放射治疗规划方面起着重要作用,因此,探讨自动分解方法非常重要,其中深层学习方法迅速发展,在多机体分解方面取得了显著进展。然而,从多机体分解中获得适当规模和细微的附加说明的多机体数据集极为困难和昂贵。这种稀缺的说明限制了高性能多机体分解模型的开发,但促进了许多注意效率学习模式。其中,关于利用外部数据集进行转移学习的研究、利用未附加说明的数据集进行半监督的学习以及将部分标有标签的数据集整合成半监督的学习方法,已导致在多机体分解中打破这种两难境地的主导方法。我们首先从技术和方法的角度,先审查经过全面监督的传统方法,然后从多机分解的角度全面、系统地阐述上述三种学习模式,最后总结其挑战和未来趋势。