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LESA:脑皮层下结构的纵向弹性形状分析

LESA: Longitudinal Elastic Shape Analysis of Brain Subcortical Structures

Journal of the American Statistical Association · 2022
被引 12
ABS 4

中文导读

提出LESA框架,整合静态表面弹性形状分析与稀疏纵向数据统计建模,从结构MRI数据中量化脑皮层下结构的纵向形状变化,并应用于阿尔茨海默病研究。

Abstract

Over the past 30 years, magnetic resonance imaging has become a ubiquitous tool for accurately visualizing the change and development of the brain's subcortical structures (e.g., hippocampus). Although subcortical structures act as information hubs of the nervous system, their quantification is still in its infancy due to many challenges in shape extraction, representation, and modeling. Here, we develop a simple and efficient framework of longitudinal elastic shape analysis (LESA) for subcortical structures. Integrating ideas from elastic shape analysis of static surfaces and statistical modeling of sparse longitudinal data, LESA provides a set of tools for systematically quantifying changes of longitudinal subcortical surface shapes from raw structure MRI data. The key novelties of LESA include: (i) it can efficiently represent complex subcortical structures using a small number of basis functions and (ii) it can accurately delineate the spatiotemporal shape changes of the human subcortical structures. We applied LESA to analyze three longitudinal neuroimaging data sets and showcase its wide applications in estimating continuous shape trajectories, building life-span growth patterns, and comparing shape differences among different groups. In particular, with the Alzheimer's Disease Neuroimaging Initiative (ADNI) data, we found that the Alzheimer's Disease (AD) can significantly speed the shape change of ventricle and hippocampus from 60 to 75 years old compared with normal aging.

神经影像学脑形态测量学形状分析纵向数据分析阿尔茨海默病