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Spatiotemporal linear mixed effects modeling for the mass-univariate analysis of longitudinal neuroimage data

机译:时空线性混合效应建模用于纵向神经图像数据的质量单变量分析

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We present an extension of the Linear Mixed Effects (LME) modeling approach to be applied to the mass-univariate analysis of longitudinal neuroimaging (LNI) data. The proposed method, called spatiotemporal LME or ST-LME, builds on the flexible LME framework and exploits the spatial structure in image data. We instantiated ST-LME for the analysis of cortical surface measurements (e.g. thickness) computed by FreeSurfer, a widely-used brain Magnetic Resonance Image (MRI) analysis software package. We validate the proposed ST-LME method and provide a quantitative and objective empirical comparison with two popular alternative methods, using two brain MRI datasets obtained from the Alzheimer's disease neuroimaging initiative (ADNI) and Open Access Series of Imaging Studies (OASIS). Our experiments revealed that ST-LME offers a dramatic gain in statistical power and repeatability of findings, while providing good control of the false positive rate.
机译:我们提出了线性混合效应(LME)建模方法的扩展,该方法可应用于纵向神经影像(LNI)数据的质量单变量分析。所提出的方法称为时空LME或ST-LME,它建立在灵活的LME框架上,并利用图像数据中的空间结构。我们实例化了ST-LME,用于分析FreeSurfer(一种广泛使用的大脑磁共振图像(MRI)分析软件包)计算出的皮质表面测量值(例如厚度)。我们使用从阿尔茨海默氏病神经影像学倡议(ADNI)和影像学研究的开放获取系列(OASIS)获得的两个脑部MRI数据集,验证了提出的ST-LME方法并与两种流行的替代方法进行了定量和客观的经验比较。我们的实验表明,ST-LME可以显着提高统计能力和发现的可重复性,同时可以很好地控制假阳性率。

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