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Automated Analysis of Fundamental Features of Brain Structures

机译:自动分析大脑结构的基本特征

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摘要

Automated image analysis of the brain should include measures of fundamental structural features such as size and shape. We used principal axes (P-A) measurements to measure overall size and shape of brain structures segmented from MR brain images. The rationale was that quantitative volumetric studies of brain structures would benefit from shape standardization as had been shown for whole brain studies. P-A analysis software was extended to include controls for variability in position and orientation to support individual structure spatial normalization (ISSN). The rationale was that ISSN would provide a bias-free means to remove elementary sources of a structure’s spatial variability in preparation for more detailed analyses. We studied nine brain structures (whole brain, cerebral hemispheres, cerebellum, brainstem, caudate, putamen, hippocampus, inferior frontal gyrus, and precuneus) from the 40-brain LPBA40 atlas. This paper provides the first report of anatomical positions and principal axes orientations within a standard reference frame, in addition to “shape/size related” principal axes measures, for the nine brain structures from the LPBA40 atlas. Analysis showed that overall size (mean volume) for internal brain structures was preserved using shape standardization while variance was reduced by more than 50%. Shape standardization provides increased statistical power for between-group volumetric studies of brain structures compared to volumetric studies that control only for whole brain size. To test ISSN’s ability to control for spatial variability of brain structures we evaluated the overlap of 40 regions of interest (ROIs) in a standard reference frame for the nine different brain structures before and after processing. Standardizations of orientation or shape were ineffective when not combined with position standardization. The greatest reduction in spatial variability was seen for combined standardizations of position, orientation and shape. These results show that ISSNs automated processing can be a valuable asset for measuring and controlling variability of fundamental features of brain structures.
机译:大脑的自动图像分析应包括基本结构特征(例如大小和形状)的度量。我们使用主轴(P-A)测量来测量从MR脑图像分割出的脑结构的整体大小和形状。基本原理是,如全脑研究所示,对形状进行标准化后,对大脑结构的定量体积研究将受益。 P-A分析软件已扩展为包括位置和方向可变性的控件,以支持单个结构的空间标准化(ISSN)。其理由是,ISSN将提供一种无偏差的方法来删除结构空间变异性的基本来源,从而为进行更详细的分析做准备。我们研究了来自40大脑LPBA40地图集的九种大脑结构(整个大脑,大脑半球,小脑,脑干,尾状,壳状核,海马,额额下回和足突)。本文提供了有关“ LPBA40”图集的九种大脑结构以及“与形状/大小相关的”主轴度量的标准参考框架内的解剖位置和主轴方向的第一份报告。分析表明,使用形状标准化可以保留内部大脑结构的整体大小(平均体积),而差异却可以减少50%以上。与仅控制整个大脑大小的体积研究相比,形状标准化为大脑结构的组间体积研究提供了增强的统计能力。为了测试ISSN控制大脑结构空间变异性的能力,我们评估了标准参考系中处理前后9种不同大脑结构的40个感兴趣区域(ROI)的重叠。当不与位置标准化结合使用时,方向或形状的标准化无效。对于位置,方向和形状的组合标准化,可以看到空间变异性的最大减少。这些结果表明,ISSN的自动处理对于衡量和控制大脑结构基本特征的变异性可能是宝贵的资产。

著录项

  • 来源
    《Neuroinformatics》 |2011年第4期|p.371-380|共10页
  • 作者单位

    Research Imaging Institute, Biomedical Image Analysis Division, University of Texas Health Science Center at San Antonio, 8403 Floyd Curl Drive, San Antonio, TX, 78229–3900, USA;

    Research Imaging Institute, Biomedical Image Analysis Division, University of Texas Health Science Center at San Antonio, 8403 Floyd Curl Drive, San Antonio, TX, 78229–3900, USA;

    Research Imaging Institute, Biomedical Image Analysis Division, University of Texas Health Science Center at San Antonio, 8403 Floyd Curl Drive, San Antonio, TX, 78229–3900, USA;

    Research Imaging Institute, Biomedical Image Analysis Division, University of Texas Health Science Center at San Antonio, 8403 Floyd Curl Drive, San Antonio, TX, 78229–3900, USA;

    Research Imaging Institute, Biomedical Image Analysis Division, University of Texas Health Science Center at San Antonio, 8403 Floyd Curl Drive, San Antonio, TX, 78229–3900, USA;

    Resear;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    ISSN; Spatial incidence map; Volumetric variance; Mango; Principal axis analysis; Shape standardization; LPBA40;

    机译:ISSN;空间入射图;体积方差;芒果;主轴分析;形状标准化;LPBA40;

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