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An automated tissue classification pipeline for magnetic resonance images of infant brains using age-specific atlases and level set segmentation

机译:使用年龄特定的地图集和级别分割的婴儿大脑磁共振图像的自动组织分类管道

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摘要

Quantifying tissue volumes in pediatric brains from magnetic resonance (MR) images can provide insight into etiology and onset of neurological disease. Unbiased volumetric analysis can be applied to large population studies when automated image processing is possible. Standard segmentation strategies using adult atlases fail to account for varying tissue contrasts and types associated with the rapid growth and maturational changes seen in early neurodevelopment. The goal of this project was to develop an automated pipeline and two age-specific atlases capable of providing accurate tissue classification despite these challenges.The automated pipeline consisted of a stepwise initial atlas-to-subject registration, expectation maximization (EM) atlas based segmentation, and a post-processing level set segmentation for improved white/gray matter separation. This level set segmentation is a 3D and multiphase adaptation of a 2D method intended for use on images with the types of intensity Inhomogeneities found in MR images.The initial tissue maps required to determine spatial priors for the one-year-old atlas were created by manually cleaning the results of an adult atlas and the automated pipeline. Additional tissue maps were incrementally added until the spatial priors were sufficiently representative. The neonate atlas was similarly created, starting with the one-year-old atlas.
机译:定量组织体积中从磁共振儿科脑(MR)图像可以提供深入了解病因和发病的神经疾病。无偏体积分析可以适用于人口众多研究时,自动图像处理是可能的。使用成人图谱标准细分战略没有考虑到不同组织的对比度和与快速增长和早期神经发育看到的成熟的变化相关类型。该项目的目标是开发一种自动化流水线和年龄两种特定地图集能够尽管这些challenges.The自动化流水线提供准确的组织分类中包括逐步初始图谱与主体的登记,期望最大化基于(EM)图谱的分割和后处理水平集分割为改进的白色/灰色物质分离。这个水平集分割是3D和2D方法的多相适应旨在用于在图像上的同类型的强度的不均匀性在MR images.The初始组织中发现的映射需要确定由被创建的一个岁图谱空间先验手动清洁成人图谱和自动管道的结果。逐渐加入额外的组织映射,直到空间先验是足够的代表性。新生儿地图集同样创造,从一岁的地图集。

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  • 作者

    Andrew Metzger;

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  • 年度 -1
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  • 原文格式 PDF
  • 正文语种 eng
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