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Longitudinal Mapping of Cortical Thickness Measurements: An Alzheimer's Disease Neuroimaging Initiative-Based Evaluation Study

机译:皮质厚度测量的纵向映射:Alzheimer疾病的神经影像潜力倡议的评价研究

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Longitudinal studies of development and disease in the human brain have motivated the acquisition of large neuroimaging data sets and the concomitant development of robust methodological and statistical tools for quantifying neurostructural changes. Longitudinal-specific strategies for acquisition and processing have potentially significant benefits including more consistent estimates of intra-subject measurements while retaining predictive power. Using the first phase of the Alzheimer's Disease Neuroimaging Initiative (ADNI-1) data, comprising over 600 subjects with multiple time points from baseline to 36 months, we evaluate the utility of longitudinal FreeSurfer and Advanced Normalization Tools (ANTs) surrogate thickness values in the context of a linear mixed-effects (LME) modeling strategy. Specifically, we estimate the residual variability and between-subject variability associated with each processing stream as it is known from the statistical literature that minimizing the former while simultaneously maximizing the latter leads to greater scientific interpretability in terms of tighter confidence intervals in calculated mean trends, smaller prediction intervals, and narrower confidence intervals for determining cross-sectional effects. This strategy is evaluated over the entire cortex, as defined by the Desikan-Killiany-Tourville labeling protocol, where comparisons are made with the cross-sectional and longitudinal FreeSurfer processing streams. Subsequent linear mixed effects modeling for identifying diagnostic groupings within the ADNI cohort is provided as supporting evidence for the utility of the proposed ANTs longitudinal framework which provides unbiased structural neuroimage processing and competitive to superior power for longitudinal structural change detection.
机译:人脑中发育和疾病的纵向研究有动力获取大型神经影像数据集和伴随的鲁棒方法和统计工具的伴随发展,用于量化神经结构变化。收购和处理的纵向特定策略具有潜在的显着益处,包括对对象内测量的更一致的估计,同时保留预测能力。使用阿尔茨海默氏病神经影像疾病的第一阶段(ADNI-1)数据,包括从基线到36个月的多个时间点的600个受试者,我们评估了纵向释放和先进的归一化工具(蚂蚁)代理厚度值的效用线性混合效应(LME)建模策略的背景。具体而言,我们估计与每个处理流相关的残余变异性和对象之间的可变性,因为它从统计文献中已知的,在最小化前者的同时最大化后,后者在计算的平均趋势中更严格的置信区间方面导致更大的科学解释性,较小的预测间隔,以及用于确定横截面效应的较窄置信区间。通过Desikan-Killiany-Tourville标签协议所定义的整个皮质来评估该策略,其中使用横截面和纵向释放加工流进行比较。随后的线性混合效果用于识别ADNI队列内的诊断分组的建模,作为所提出的蚂蚁纵型框架的效用的支持证据,其为纵向结构变化检测提供了非偏见的结构神经影像处理和竞争优越的功率。

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