Rekik Islem, Li Gang, Yap Pew-Thian, Chen Geng, Lin Weili, Shen Dinggang
Department of Radiology and BRIC, University of North Carolina at Chapel Hill, Chapel Hill, NC, USA.
Med Image Comput Comput Assist Interv. 2016 Oct;9900:210-218. doi: 10.1007/978-3-319-46720-7_25. Epub 2016 Oct 2.
Dramatic changes of the human brain during the first year of postnatal development are poorly understood due to their multifold complexity. In this paper, we present the first attempt to jointly predict, using neonatal data, the dynamic growth pattern of brain cortical surfaces (collection of 3D triangular faces) and fiber tracts (collection of 3D lines). These two entities are modeled jointly as a (a set of interlinked shapes). We propose a learning-based multishape prediction framework that captures both the evolution of the cortical surfaces and the growth of fiber tracts. In particular, we learn a set of geometric and dynamic cortical features and fiber connectivity features that characterize the relationships between cortical surfaces and fibers at different timepoints (0, 3, 6, and 9 months of age). Given a new neonatal multishape at 0 month of age, we hierarchically predict, at 3, 6 and 9 months, the postnatal cortical surfaces vertex-by-vertex along with fibers connected to adjacent faces to these vertices. This is achieved using a new fiber-to-face metric that quantifies the similarity between multishapes. For validation, we propose several evaluation metrics to thoroughly assess the performance of our framework. The results confirm that our framework yields good prediction accuracy of complex neonatal multishape development within a few seconds.
由于出生后第一年人类大脑的变化具有多重复杂性,人们对其了解甚少。在本文中,我们首次尝试利用新生儿数据联合预测大脑皮质表面(三维三角形面的集合)和纤维束(三维线条的集合)的动态生长模式。这两个实体被联合建模为一个多形状(一组相互关联的形状)。我们提出了一个基于深度学习的多形状预测框架,该框架既能捕捉皮质表面的形态演变,又能捕捉纤维束的生长情况。具体来说,我们学习了一组几何和动态皮质特征以及纤维连接特征,这些特征表征了不同时间点(0、3、6和9个月龄)皮质表面与纤维之间的关系。给定一个0月龄的新新生儿多形状,我们在3、6和9个月时进行分层预测,逐个顶点地预测出生后的皮质表面以及连接到这些顶点相邻面的纤维。这是通过一种新的纤维到面度量来实现的,该度量量化了多形状之间的相似性。为了进行验证,我们提出了几个评估指标来全面评估我们框架的性能。结果证实,我们的框架在几秒钟内就能对复杂的新生儿多形状发育产生良好的预测准确性。