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Spatio-Temporal Patch-Based Learning for Premature Neonatal Brain MRI Analysis

机译:基于时空补丁的早产儿脑MRI分析学习

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摘要

Quantitative analysis of premature neonatal brain MRI is essential for studying early human brain development, quantication of brain injury and its impact on early postnatal neurodevelopment. An accurate automatic delineation of the brain structures in the MRI scan remains the first step of any morphological analysis. In such studies, scans are usually acquired at any arbitrary gestational age during a rapid anatomical growth period, and with a limited imaging time. Due to the inter-subject anatomical variations and limited image quality, it is particularly challenging to accurately and automatically segment the tissue structures in such data. The objective of this work was to develop algorithmic tools that enable accurate automatic tissue segmentation and quantitative analysis of premature neonatal brain MRI scans. Multiple methods such as combining atlas-based and patchbased method in two ways for normal brain tissue segmentation, as well as combining spatial and non-spatial dictionary learning for automatic focal lesion labeling were developed and validated to show improved segmentation accuracy. The methodology developed in this work has been used for quantitative image analysis in multiple multi-site clinical studies on brain development after preterm births.
机译:新生儿早产儿MRI的定量分析对于研究人类早期大脑发育,大脑损伤及其对早期产后神经发育的影响至关重要。在MRI扫描中准确自动描绘大脑结构仍然是任何形态分析的第一步。在这样的研​​究中,通常在快速的解剖生长期中,并且在有限的成像时间内,在任何胎龄获得扫描。由于受试者之间的解剖学变化和有限的图像质量,在这样的数据中准确且自动地分割组织结构特别具有挑战性。这项工作的目的是开发算法工具,以实现准确的自动组织分割和定量分析早产儿新生儿MRI扫描。开发并验证了多种方法,例如将基于图集的方法和基于补丁的方法以两种方式进行正常的脑组织分割,以及将空间和非空间词典学习相结合以进行自动病灶标记,这些方法已得到验证,可以显示出更高的分割精度。这项工作中开发的方法已用于早产后大脑发育的多个多站点临床研究中的定量图像分析。

著录项

  • 作者

    Liu, Mengyuan.;

  • 作者单位

    University of Washington.;

  • 授予单位 University of Washington.;
  • 学科 Bioengineering.
  • 学位 Ph.D.
  • 年度 2017
  • 页码 168 p.
  • 总页数 168
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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