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LINKS: Learning-based multi-source IntegratioN frameworK for Segmentation of infant brain images

机译:链接:基于学习的多源集成框架,用于分割婴儿脑图像

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Segmentation of infant brain MR images is challenging due to insufficient image quality, severe partial volume effect, and ongoing maturation and myelination processes. In the first year of life, the image contrast between white and gray matters of the infant brain undergoes dramatic changes. In particular, the image contrast is inverted around 6-8 months of age, and the white and gray matter tissues are isointense in both T1- and T2-weighted MR images and thus exhibit the extremely low tissue contrast, which poses significant challenges for automated segmentation. Most previous studies used multi-atlas label fusion strategy, which has the limitation of equally treating the different available image modalities and is often computationally expensive. To cope with these limitations, in this paper, we propose a novel learning-based multi-source integration framework for segmentation of infant brain images. Specifically, we employ the random forest technique to effectively integrate features from multi-source images together for tissue segmentation. Here, the multi-source images include initially only the multi-modality (T1, T2 and FA) images and later also the iteratively estimated and refined tissue probability maps of gray matter, white matter, and cerebrospinal fluid. Experimental results on 119 infants show that the proposed method achieves better performance than other state-of-the-art automated segmentation methods. Further validation was performed on the MICCAI grand challenge and the proposed method was ranked top among all competing methods. Moreover, to alleviate the possible anatomical errors, our method can also be combined with an anatomically-constrained multi-atlas labeling approach for further improving the segmentation accuracy. (C) 2014 Elsevier Inc. All rights reserved.
机译:由于图像质量不足,严重的部分体积效应以及持续的成熟和髓鞘形成过程,婴儿脑MR图像的分割具有挑战性。在生命的第一年,婴儿大脑的白色和灰色物质之间的图像对比度发生了巨大变化。特别是,图像对比度大约在6-8个月大时反转,并且在T1和T2加权MR图像中,白质和灰质组织都是等强度的,因此呈现出极低的组织对比度,这给自动化带来了巨大挑战分割。先前的大多数研究都使用多图谱标签融合策略,该策略具有同等对待不同可用图像模态的局限性,并且通常在计算上昂贵。为了解决这些局限性,在本文中,我们提出了一种新颖的基于学习的多源集成框架,用于婴儿脑图像的分割。具体来说,我们采用随机森林技术将来自多源图像的特征有效地整合在一起以进行组织分割。在这里,多源图像最初仅包括多模态(T1,T2和FA)图像,然后还包括灰质,白质和脑脊髓液的迭代估计和精炼组织概率图。对119名婴儿进行的实验结果表明,与其他最新的自动分割方法相比,该方法具有更好的性能。在MICCAI挑战赛上进行了进一步的验证,所提出的方法在所有竞争方法中均名列前茅。此外,为了减轻可能的解剖学错误,我们的方法还可以与解剖学上受约束的多图谱标记方法相结合,以进一步提高分割精度。 (C)2014 Elsevier Inc.保留所有权利。

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