Accurate segmentation of multiple organs of the head, neck, chest, and abdomen from medical images is an essential step in computer-aided diagnosis, surgical navigation, and radiation therapy. In the past few years, with a data-driven feature extraction approach and end-to-end training, automatic deep learning-based multi-organ segmentation method has far outperformed traditional methods and become a new research topic. This review systematically summarizes the latest research in this field. For the first time, from the perspective of full and imperfect annotation, we comprehensively compile 161 studies on deep learning-based multi-organ segmentation in multiple regions such as the head and neck, chest, and abdomen, containing a total of 214 related references. The method based on full annotation summarizes the existing methods from four aspects: network architecture, network dimension, network dedicated modules, and network loss function. The method based on imperfect annotation summarizes the existing methods from two aspects: weak annotation-based methods and semi annotation-based methods. We also summarize frequently used datasets for multi-organ segmentation and discuss new challenges and new research trends in this field.
翻译:在过去几年中,采用数据驱动特征提取方法和端对端培训,自动深入学习的多机分解方法大大优于传统方法,并成为新的研究专题。本审查系统地总结了该领域的最新研究。第一次,从完整和不完善的注解角度,我们全面汇编了161份关于诸如头部和颈部、胸部和腹部等多个区域基于深学习的多机分解的研究,共包含214份相关参考资料。基于全面注解的方法从四个方面概括了现有方法:网络结构、网络维度、网络专用模块和网络损失功能。基于不完善注解的方法概括了两个方面的现有方法:微弱的注解方法和半注解方法。我们还总结了用于多机分解的经常使用的数据集,并讨论了该领域的新挑战和新研究趋势。</s>