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Automatic hippocampus segmentation of 7.0 Tesla MR images by combining multiple atlases and auto-context models

机译:通过结合多个地图集和自动上下文模型对7.0 Tesla MR图像进行海马自动分割

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摘要

In many neuroscience and clinical studies, accurate measurement of hippocampus is very important to reveal the inter-subject anatomical differences or the subtle intra-subject longitudinal changes due to aging or dementia. Although many automatic segmentation methods have been developed, their performances are still challenged by the poor image contrast of hippocampus in the MR images acquired especially from 1.5 or 3.0 Tesla (T) scanners. With the recent advance of imaging technology, 7.0 T scanner provides much higher image contrast and resolution for hippocampus study. However, the previous methods developed for segmentation of hippocampus from 1.5 T or 3.0 T images do not work for the 7.0 T images, due to different levels of imaging contrast and texture information. In this paper, we present a learning-based algorithm for automatic segmentation of hippocampi from 7.0 T images, by taking advantages of the state-of-the-art multi-atlas framework and also the auto-context model (ACM). Specifically, ACM is performed in each atlas domain to iteratively construct sequences of location-adaptive classifiers by integrating both image appearance and local context features. Due to the plenty texture information in 7.0 T images, more advanced texture features are also extracted and incorporated into the ACM during the training stage. Then, under the multi-atlas segmentation framework, multiple sequences of ACM-based classifiers are trained for all atlases to incorporate the anatomical variability. In the application stage, for a new image, its hippocampus segmentation can be achieved by fusing the labeling results from all atlases, each of which is obtained by applying the atlas-specific ACM-based classifiers. Experimental results on twenty 7.0 T images with the voxel size of 0.35 × 0.35 × 0.35 mm3 show very promising hippocampus segmentations (in terms of Dice overlap ratio 89.1 ± 0.020), indicating high applicability for the future clinical and neuroscience studies.
机译:在许多神经科学和临床研究中,海马的准确测量对于揭示受试者之间的解剖学差异或受试者因衰老或痴呆引起的细微内部纵向变化非常重要。尽管已经开发了许多自动分割方法,但是它们的性能仍然受到海马中特别是从1.5或3.0特斯拉(T)扫描仪获取的MR图像中较差的图像对比度的挑战。随着成像技术的最新发展,7.0 T扫描仪为海马研究提供了更高的图像对比度和分辨率。但是,由于成像对比度和纹理信息的级别不同,从1.5 T或3.0 T图像分割海马的先前开发方法不适用于7.0 T图像。在本文中,我们利用最先进的多图集框架和自动上下文模型(ACM),提出了一种基于学习的算法,可从7.0 T图像中自动分割海马。具体而言,在每个图集域中执行ACM,以通过集成图像外观和局部上下文特征来迭代构建位置自适应分类器的序列。由于7.0 T图像中的纹理信息丰富,因此在训练阶段还将提取更高级的纹理特征并将其合并到ACM中。然后,在多图集分割框架下,针对所有图集训练多个基于ACM的分类器序列,以纳入解剖变异性。在应用阶段,对于新图像,可以通过融合所有地图集的标记结果来实现其海马分割,每个地图集的标记结果都可以通过应用基于地图集的基于ACM的分类器获得。在20个7.0 T图像上的体素大小为0.35×0.35×0.35 mm 3 的实验结果显示,海马分割非常有前途(根据Dice重叠率89.1±0.020),表明其在未来临床中的高度适用性和神经科学研究。

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