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Statistical Inference Models for Image Datasets with Systematic Variations

机译:具有系统变化的图像数据集的统计推断模型

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摘要

Statistical analysis of longitudinal or cross sectional brain imaging data to identify effects of neurodegenerative diseases is a fundamental task in various studies in neuroscience. However, when there are systematic variations in the images due to parameter changes such as changes in the scanner protocol, hardware changes, or when combining data from multi-site studies, the statistical analysis becomes problematic. Motivated by this scenario, the goal of this paper is to develop a unified statistical solution to the problem of systematic variations in statistical image analysis. Based in part on recent literature in harmonic analysis on diffusion maps, we propose an algorithm which compares operators that are resilient to the systematic variations. These operators are derived from the empirical measurements of the image data and provide an efficient surrogate to capturing the actual changes across images. We also establish a connection between our method to the design of wavelets in non-Euclidean space. To evaluate the proposed ideas, we present various experimental results on detecting changes in simulations as well as show how the method offers improved statistical power in the analysis of real longitudinal PIB-PET imaging data acquired from participants at risk for Alzheimer’s disease (AD).
机译:纵向或横断面大脑成像数据的统计分析以识别神经退行性疾病的影响是神经科学领域各种研究的基本任务。但是,当由于参数变化(例如扫描仪协议的变化,硬件的变化)而导致图像出现系统性变化时,或者在组合来自多站点研究的数据时,统计分析就会出现问题。在这种情况下,本文的目标是针对统计图像分析中的系统变化问题开发统一的统计解决方案。部分基于最近在扩散图上进行谐波分析的文献,我们提出了一种算法,该算法比较了对系统变化有弹性的算子。这些算子是从图像数据的经验测量得出的,并提供了一种有效的替代方法来捕获图像之间的实际变化。我们还在非欧氏空间中的小波设计方法之间建立了联系。为了评估提出的想法,我们在检测模拟变化方面提供了各种实验结果,并展示了该方法如何在分析从患阿尔茨海默氏病(AD)风险的参与者那里获取的真实纵向PIB-PET成像数据时提供改进的统计能力。

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