论文标题
脑动脉网络的统计形状分析(禁令)
Statistical Shape Analysis of Brain Arterial Networks (BAN)
论文作者
论文摘要
脑动脉网络(BAN)的结构 - 是单个动脉的复杂排列,其分支模式和连通性的 - 在表征和理解脑生理学方面起着重要作用。人们想要统计分析禁令形状的工具,即量化形状差异,比较受试者的人群,并研究协变量对这些形状的影响。本文在数学上表示并统计地将禁令形状分为弹性形状图。每个弹性形状图由由许多3D曲线连接的节点组成,并具有任意形状的边缘。我们开发了一种数学表示,一种Riemannian度量和其他几何工具,例如测量学,均值和协方差的计算以及用于分析弹性图和禁令的PCA。该分析将其分为四个组件后,将其应用于禁令 - 顶部,底部,左和右。然后,该框架用于生成来自92名受试者的禁令的形状摘要,并研究年龄和性别对禁令组件形状的影响。我们得出的结论是,尽管性别效应需要进一步调查,但该年龄对禁令形状具有明确,可量化的影响。具体而言,随着年龄的增加,我们发现禁令形状的差异增加。
Structures of brain arterial networks (BANs) - that are complex arrangements of individual arteries, their branching patterns, and inter-connectivities - play an important role in characterizing and understanding brain physiology. One would like tools for statistically analyzing the shapes of BANs, i.e. quantify shape differences, compare population of subjects, and study the effects of covariates on these shapes. This paper mathematically represents and statistically analyzes BAN shapes as elastic shape graphs. Each elastic shape graph is made up of nodes that are connected by a number of 3D curves, and edges, with arbitrary shapes. We develop a mathematical representation, a Riemannian metric and other geometrical tools, such as computations of geodesics, means and covariances, and PCA for analyzing elastic graphs and BANs. This analysis is applied to BANs after separating them into four components -- top, bottom, left, and right. This framework is then used to generate shape summaries of BANs from 92 subjects, and to study the effects of age and gender on shapes of BAN components. We conclude that while gender effects require further investigation, the age has a clear, quantifiable effect on BAN shapes. Specifically, we find an increased variance in BAN shapes as age increases.