Center for MR Research, University Children's Hospital Zurich, University of Zurich, Zurich, Switzerland; Neuroscience Center Zurich, University of Zurich, Zurich, Switzerland.
Department of Quantitative Biomedicine, University of Zurich, Zurich, Switzerland; Department of Informatics, Technical University of Munich, Munich, Germany.
Med Image Anal. 2023 Aug;88:102833. doi: 10.1016/j.media.2023.102833. Epub 2023 Apr 22.
In-utero fetal MRI is emerging as an important tool in the diagnosis and analysis of the developing human brain. Automatic segmentation of the developing fetal brain is a vital step in the quantitative analysis of prenatal neurodevelopment both in the research and clinical context. However, manual segmentation of cerebral structures is time-consuming and prone to error and inter-observer variability. Therefore, we organized the Fetal Tissue Annotation (FeTA) Challenge in 2021 in order to encourage the development of automatic segmentation algorithms on an international level. The challenge utilized FeTA Dataset, an open dataset of fetal brain MRI reconstructions segmented into seven different tissues (external cerebrospinal fluid, gray matter, white matter, ventricles, cerebellum, brainstem, deep gray matter). 20 international teams participated in this challenge, submitting a total of 21 algorithms for evaluation. In this paper, we provide a detailed analysis of the results from both a technical and clinical perspective. All participants relied on deep learning methods, mainly U-Nets, with some variability present in the network architecture, optimization, and image pre- and post-processing. The majority of teams used existing medical imaging deep learning frameworks. The main differences between the submissions were the fine tuning done during training, and the specific pre- and post-processing steps performed. The challenge results showed that almost all submissions performed similarly. Four of the top five teams used ensemble learning methods. However, one team's algorithm performed significantly superior to the other submissions, and consisted of an asymmetrical U-Net network architecture. This paper provides a first of its kind benchmark for future automatic multi-tissue segmentation algorithms for the developing human brain in utero.
胎儿磁共振成像是诊断和分析发育中人类大脑的重要工具。自动分割发育中的胎儿大脑是研究和临床环境中对产前神经发育进行定量分析的重要步骤。然而,手动分割脑结构既费时又容易出错且存在观察者间的差异。因此,我们于 2021 年组织了胎儿组织标注(FeTA)挑战赛,以鼓励在国际范围内开发自动分割算法。该挑战赛利用了 FeTA 数据集,这是一个公开的胎儿脑 MRI 重建数据集,被分割为七种不同的组织(外部脑脊液、灰质、白质、脑室、小脑、脑干、深部灰质)。20 个国际团队参与了这项挑战,共提交了 21 种算法进行评估。在本文中,我们从技术和临床两个角度对结果进行了详细分析。所有参与者都依赖于深度学习方法,主要是 U-Net,网络架构、优化和图像预处理和后处理方面存在一些差异。大多数团队都使用了现有的医学影像深度学习框架。提交结果的主要区别在于训练过程中的微调以及执行的特定预处理和后处理步骤。挑战赛结果表明,几乎所有提交的结果都非常相似。排名前五的团队中有四个团队使用了集成学习方法。然而,一个团队的算法明显优于其他提交的算法,该算法由一个非对称的 U-Net 网络架构组成。本文为未来在子宫内对发育中的人类大脑进行多组织自动分割算法提供了首例基准。