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A selective overview of feature screening methods with applications to neuroimaging data

机译:具有神经影像数据应用的功能筛选方法的选择性概述

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In neuroimaging studies, regression models are frequently used to identify the association of the imaging features and clinical outcome, where the number of imaging features (e.g., hundreds of thousands of voxel-level predictors) much outweighs the number of subjects in the studies. Classical best subset selection or penalized variable selection methods that perform well for low- or moderate-dimensional data do not scale to ultrahigh-dimensional neuroimaging data. To reduce the dimensionality, variable screening has emerged as a powerful tool for feature selection in neuroimaging studies. We present a selective review of the recent developments in ultrahigh-dimensional variable screening, with a focus on their practical performance on the analysis of neuroimaging data with complex spatial correlation structures and high-dimensionality. We conduct extensive simulation studies to compare the performance on selection accuracy and computational costs between the different methods. We present analyses of resting-state functional magnetic resonance imaging data in the Autism Brain Imaging Data Exchange study.
机译:在神经影像学研究中,回归模型经常用于识别成像特征和临床结果的关联,其中成像特征的数量(例如,数十万个Voxel级预测因子)超过了研究中的受试者的数量。古典最佳子集选择或惩罚变量选择方法,其对低压或中等程度数据执行良好的不扩展到超高维神经影像数据。为了减少维度,可变筛选作为神经影像研究中的特征选择的强大工具。我们对超高维变量筛选的最新发展提供了选择性综述,重点是在具有复杂空间相关结构和高维度的神经影像数据分析的实际性能。我们进行广泛的仿真研究,以比较不同方法之间的选择精度和计算成本的性能。我们在自闭症脑成像数据交换研究中展示了休息状态功能磁共振成像数据的分析。

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