Institute of Biomedical Engineering, Department of Engineering Science, University of Oxford, United Kingdom.
Department of Obstetrics and Fetal Medicine, Leiden University Medical Center, The Netherlands.
Neuroimage. 2022 Jul 1;254:119117. doi: 10.1016/j.neuroimage.2022.119117. Epub 2022 Mar 21.
The quantification of subcortical volume development from 3D fetal ultrasound can provide important diagnostic information during pregnancy monitoring. However, manual segmentation of subcortical structures in ultrasound volumes is time-consuming and challenging due to low soft tissue contrast, speckle and shadowing artifacts. For this reason, we developed a convolutional neural network (CNN) for the automated segmentation of the choroid plexus (CP), lateral posterior ventricle horns (LPVH), cavum septum pellucidum et vergae (CSPV), and cerebellum (CB) from 3D ultrasound. As ground-truth labels are scarce and expensive to obtain, we applied few-shot learning, in which only a small number of manual annotations (n = 9) are used to train a CNN. We compared training a CNN with only a few individually annotated volumes versus many weakly labelled volumes obtained from atlas-based segmentations. This showed that segmentation performance close to intra-observer variability can be obtained with only a handful of manual annotations. Finally, the trained models were applied to a large number (n = 278) of ultrasound image volumes of a diverse, healthy population, obtaining novel US-specific growth curves of the respective structures during the second trimester of gestation.
从 3D 胎儿超声中定量分析皮质下体积的发育可以在妊娠监测期间提供重要的诊断信息。然而,由于软组织对比度低、斑点和阴影伪影,手动分割超声体积中的皮质下结构既耗时又具有挑战性。出于这个原因,我们开发了一种卷积神经网络 (CNN),用于从 3D 超声自动分割脉络丛 (CP)、侧后角脑室 (LPVH)、透明隔腔和正中矢状面 (CSPV) 和小脑 (CB)。由于地面真实标签稀缺且获取成本高昂,我们应用了少样本学习,其中仅使用少量手动注释 (n = 9) 来训练 CNN。我们比较了仅使用少数单独注释的体积进行训练的 CNN 与从基于图谱的分割中获得的许多弱标记体积。这表明,仅使用少数手动注释就可以获得接近观察者内变异性的分割性能。最后,将训练好的模型应用于大量(n = 278)来自不同健康人群的超声图像体积,获得了在妊娠中期各结构的新的特定于 US 的生长曲线。