Automatic Segmentation of Hippocampus for Longitudinal Infant Brain MR Image Sequence by Spatial-Temporal Hypergraph Learning.

Yanrong Guo, Pei Dong, Shijie Hao, Li Wang, Guorong Wu, Dinggang Shen
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引用次数: 5

Abstract

Accurate segmentation of infant hippocampus from Magnetic Resonance (MR) images is one of the key steps for the investigation of early brain development and neurological disorders. Since the manual delineation of anatomical structures is time-consuming and irreproducible, a number of automatic segmentation methods have been proposed, such as multi-atlas patch-based label fusion methods. However, the hippocampus during the first year of life undergoes dynamic appearance, tissue contrast and structural changes, which pose substantial challenges to the existing label fusion methods. In addition, most of the existing label fusion methods generally segment target images at each time-point independently, which is likely to result in inconsistent hippocampus segmentation results along different time-points. In this paper, we treat a longitudinal image sequence as a whole, and propose a spatial-temporal hypergraph based model to jointly segment infant hippocampi from all time-points. Specifically, in building the spatial-temporal hypergraph, (1) the atlas-to-target relationship and (2) the spatial/temporal neighborhood information within the target image sequence are encoded as two categories of hyperedges. Then, the infant hippocampus segmentation from the whole image sequence is formulated as a semi-supervised label propagation model using the proposed hypergraph. We evaluate our method in segmenting infant hippocampi from T1-weighted brain MR images acquired at the age of 2 weeks, 3 months, 6 months, 9 months, and 12 months. Experimental results demonstrate that, by leveraging spatial-temporal information, our method achieves better performance in both segmentation accuracy and consistency over the state-of-the-art multi-atlas label fusion methods.

Abstract Image

Abstract Image

基于时空超图学习的婴儿纵向脑磁共振图像海马区自动分割。
婴儿海马的精确分割是研究早期大脑发育和神经系统疾病的关键步骤之一。由于手工描绘解剖结构耗时且不可复制,因此提出了许多自动分割方法,如基于多图谱补丁的标签融合方法。然而,一岁的海马体经历了动态外观、组织对比和结构变化,这对现有的标签融合方法提出了重大挑战。此外,现有的大多数标签融合方法一般都是在每个时间点独立分割目标图像,这很可能导致海马在不同时间点的分割结果不一致。在本文中,我们将一个纵向图像序列作为一个整体,并提出了一个基于时空超图的模型来从所有时间点联合分割婴儿海马。具体来说,在构建时空超图时,(1)地图集-目标关系和(2)目标图像序列内的时空邻域信息被编码为两类超边缘。然后,利用所提出的超图将整个图像序列中的婴儿海马分割成半监督标签传播模型。我们评估了从2周、3个月、6个月、9个月和12个月时获得的t1加权脑MR图像中分割婴儿海马的方法。实验结果表明,通过利用时空信息,我们的方法在分割精度和一致性方面都优于目前最先进的多图谱标签融合方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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