Universitat Pompeu Fabra, Dept. of Information and Communication Technologies, Tànger 122-140, 08018 Barcelona, Spain.
Universitat Pompeu Fabra, Dept. of Information and Communication Technologies, Tànger 122-140, 08018 Barcelona, Spain.
Comput Med Imaging Graph. 2018 Nov;69:52-59. doi: 10.1016/j.compmedimag.2018.08.007. Epub 2018 Aug 28.
Segmentation of brain structures during the pre-natal and early post-natal periods is the first step for subsequent analysis of brain development. Segmentation techniques can be roughly divided into two families. The first, which we denote as registration-based techniques, rely on initial estimates derived by registration to one (or several) templates. The second family, denoted as learning-based techniques, relate imaging (and spatial) features to their corresponding anatomical labels. Each approach has its own qualities and both are complementary to each other. In this paper, we explore two ensembling strategies, namely, stacking and cascading to combine the strengths of both families. We present experiments on segmentation of 6-month infant brains and a cohort of fetuses with isolated non-severe ventriculomegaly (INSVM). INSVM is diagnosed when ventricles are mildly enlarged and no other anomalies are apparent. Prognosis is difficult based solely on the degree of ventricular enlargement. In order to find markers for a more reliable prognosis, we use the resulting segmentations to find abnormalities in the cortical folding of INSVM fetuses. Segmentation results show that either combination strategy outperform all of the individual methods, thus demonstrating the capability of learning systematic combinations that lead to an overall improvement. In particular, the cascading strategy outperforms the ensembling one, the former one obtaining top 5, 7 and 13 results (out of 21 teams) in the segmentation of white matter, gray matter and cerebro-spinal fluid in the iSeg2017 MICCAI Segmentation Challenge. The resulting segmentations reveal that INSVM fetuses have a less convoluted cortex. This points to cortical folding abnormalities as potential markers of later neurodevelopmental outcomes.
在产前和产后早期阶段对脑结构进行分割是分析大脑发育的第一步。分割技术大致可分为两类。第一类,我们称为基于配准的技术,依赖于通过配准到一个(或多个)模板得出的初始估计。第二类,称为基于学习的技术,将成像(和空间)特征与其对应的解剖标签相关联。每种方法都有其自身的特点,两者相互补充。在本文中,我们探索了两种集成策略,即堆叠和级联,以结合这两种方法的优势。我们在 6 个月大婴儿大脑的分割和一组孤立性非严重脑室扩大(INSVM)胎儿的分割实验中进行了探索。当脑室轻度扩大且没有其他异常时,诊断为 INSVM。仅根据脑室扩大的程度进行预测是困难的。为了找到更可靠的预后标志物,我们使用分割结果来寻找 INSVM 胎儿皮质折叠异常。分割结果表明,任何一种组合策略都优于所有的单一方法,从而证明了学习系统组合的能力,这些组合可以带来整体改善。特别是,级联策略优于集成策略,前者在 iSeg2017 MICCAI 分割挑战赛的白质、灰质和脑脊液分割中获得了前 5、7 和 13 名(共 21 支队伍)的结果。分割结果表明,INSVM 胎儿的大脑皮层褶皱较少。这表明皮质折叠异常可能是神经发育不良的潜在标志物。