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解剖学全域空间标准化。

Anatomical global spatial normalization.

机构信息

Research Imaging Center, University of Texas Health Science Center at San Antonio, 8403 Floyd Curl Drive, San Antonio, TX 78229-3900, USA.

出版信息

Neuroinformatics. 2010 Oct;8(3):171-82. doi: 10.1007/s12021-010-9074-x.

Abstract

Anatomical global spatial normalization (aGSN) is presented as a method to scale high-resolution brain images to control for variability in brain size without altering the mean size of other brain structures. Two types of mean preserving scaling methods were investigated, "shape preserving" and "shape standardizing". aGSN was tested by examining 56 brain structures from an adult brain atlas of 40 individuals (LPBA40) before and after normalization, with detailed analyses of cerebral hemispheres, all gyri collectively, cerebellum, brainstem, and left and right caudate, putamen, and hippocampus. Mean sizes of brain structures as measured by volume, distance, and area were preserved and variance reduced for both types of scale factors. An interesting finding was that scale factors derived from each of the ten brain structures were also mean preserving. However, variance was best reduced using whole brain hemispheres as the reference structure, and this reduction was related to its high average correlation with other brain structures. The fractional reduction in variance of structure volumes was directly related to ρ (2), the square of the reference-to-structure correlation coefficient. The average reduction in variance in volumes by aGSN with whole brain hemispheres as the reference structure was approximately 32%. An analytical method was provided to directly convert between conventional and aGSN scale factors to support adaptation of aGSN to popular spatial normalization software packages.

摘要

解剖全局空间标准化(aGSN)被提出作为一种方法,可将高分辨率脑图像缩放为控制大脑大小的可变性,而不改变其他脑结构的平均大小。研究了两种类型的均值保留缩放方法,“形状保留”和“形状标准化”。通过在归一化前后检查来自 40 个人的成人脑图谱(LPBA40)的 56 个脑结构来测试 aGSN,并对大脑半球、所有脑回集体、小脑、脑干以及左右尾状核、壳核和海马体进行详细分析。两种类型的缩放因子均保留了脑结构的平均大小,并降低了方差。有趣的发现是,从每个十个脑结构得出的缩放因子也是均值保留的。但是,使用整个大脑半球作为参考结构可以最佳地降低方差,并且这种降低与它与其他脑结构的高平均相关性有关。结构体积方差的分数降低与 ρ(2),参考结构相关系数的平方直接相关。使用整个大脑半球作为参考结构的 aGSN 可将体积的方差平均降低约 32%。提供了一种分析方法,可在常规和 aGSN 缩放因子之间直接转换,以支持将 aGSN 适配于流行的空间标准化软件包。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/cdf0/2945458/51367f834236/12021_2010_9074_Fig1_HTML.jpg

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