LATEST: Local AdapTivE and Sequential Training for Tissue Segmentation of Isointense Infant Brain MR Images.

Li Wang, Yaozong Gao, Gang Li, Feng Shi, Weili Lin, Dinggang Shen
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Abstract

Accurate segmentation of isointense infant (~6 months of age) brain MRIs is of great importance, however, a very challenging task, due to extremely low tissue contrast caused by ongoing myelination processes. In this work, we propose a novel learning method based on Local AdapTivE and Sequential Training (LATEST) for segmentation. Specifically, random forest technique is employed to train a local classifier (a single decision tree) for each voxel in the common space based on the neighboring training samples from atlases. Then, for each given voxel, all trained nearby individual classifiers (decision trees) are grouped together to form a forest. Moreover, the estimated probabilities are further used as additional source images to train the next set of local classifiers for refining tissue classification. By iteratively training the subsequent classifiers based on the updated tissue probability maps, a sequence of local classifiers can be built for accurate tissue segmentation.

Abstract Image

Abstract Image

LATEST:局部 AdapTivE 和序列训练用于等密度婴儿脑磁共振图像的组织分割。
对等密度婴儿(约 6 个月大)脑部核磁共振成像进行精确分割非常重要,但由于正在进行的髓鞘化过程导致组织对比度极低,因此这是一项极具挑战性的任务。在这项工作中,我们提出了一种基于局部自适应和序列训练(LATEST)的新型分割学习方法。具体来说,我们采用随机森林技术,根据图谱中相邻的训练样本,为共同空间中的每个体素训练一个局部分类器(单个决策树)。然后,对于每个给定的象素,将附近所有训练好的单个分类器(决策树)组合在一起,形成一个森林。此外,估算出的概率还可作为额外的源图像,用于训练下一组局部分类器,以完善组织分类。根据更新后的组织概率图迭代训练后续分类器,就能建立一系列局部分类器,实现精确的组织分割。
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