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Segmentation of Infant Hippocampus Using Common Feature Representations Learned for Multimodal Longitudinal Data

机译:使用多模式纵向数据的通用特征表示对婴儿海马体进行分割

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Aberrant development of the human brain during the first year after birth is known to cause critical implications in later stages of life. In particular, neuropsychiatric disorders, such as attention deficit hyperactivity disorder (ADHD), have been linked with abnormal early development of the hippocampus. Despite its known importance, studying the hippocampus in infant subjects is very challenging due to the significantly smaller brain size, dynamically varying image contrast, and large across-subject variation. In this paper, we present a novel method for effective hippocampus segmentation by using a multi-atlas approach that integrates the complementary multimodal information from longitudinal Tl and T2 MR images. In particular, considering the highly heterogeneous nature of the longitudinal data, we propose to learn their common feature representations by using hierarchical multi-set kernel canonical correlation analysis (CCA). Specifically, we will learn (1) within-time-point common features by projecting different modality features of each time point to its own modality-free common space, and (2) across-time-point common features by mapping all time-point-specific common features to a global common space for all time points. These final features are then employed in patch matching across different modalities and time points for hippocampus segmentation, via label propagation and fusion. Experimental results demonstrate the improved performance of our method over the state-of-the-art methods.
机译:众所周知,人脑在出生后第一年的异常发育会在生命的后期阶段产生严重的影响。特别地,诸如注意力缺陷多动障碍(ADHD)的神经精神疾病与海马体的异常早期发育有关。尽管已知其重要性,但由于大脑尺寸明显较小,图像对比度动态变化以及跨对象变化较大,因此在婴儿受试者中研究海马体是非常具有挑战性的。在本文中,我们提出了一种通过使用多图集方法对海马进行有效分割的新方法,该方法整合了来自纵向T1和T2 MR图像的互补多峰信息。特别地,考虑到纵向数据的高度异构性,我们建议通过使用分层多集内核规范相关分析(CCA)学习它们的共同特征表示。具体来说,我们将学习(1)通过将每个时间点的不同形态特征投影到其自己的无模态公共空间来了解时间点内的共同特征,以及(2)通过映射所有时间点来实现跨时间点的共同特征。到所有时间点的全局公共空间的特定于公共的特征。然后,通过标记传播和融合,将这些最终特征用于跨模式和时间点的跨海马分割的贴片匹配中。实验结果表明,我们的方法比最新方法具有更高的性能。

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