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Robust Group-Level Inference in Neuroimaging Genetic Studies

机译:神经影像遗传学研究中的稳健群体水平推断

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Gene-neuroimaging studies involve high-dimensional data that have a complex statistical structure and that are likely to be contaminated with outliers. Robust, outlier-resistant methods are an alternative to prior outliers removal, which is a difficult task under high-dimensional unsupervised settings. In this work, we consider robust regression and its application to neuroimaging through an example gene-neuroimaging study on a large cohort of 300 subjects. We use randomized brain parcellation to sample a set of adapted low-dimensional spatial models to analyse the data. Combining this approach with robust regression in an analysis method that we show is outperforming state-of-the-art neuroimaging analysis methods.
机译:基因神经影像研究涉及具有复杂统计结构并且可能被异常值污染的高维数据。鲁棒的,耐离群值的方法是替代先前离群值的方法,这在高维无人监督的环境下是一项艰巨的任务。在这项工作中,我们通过对300名大型受试者进行的示例基因神经影像学研究,考虑了稳健的回归及其在神经影像学中的应用。我们使用随机脑分割来采样一组适应性低维空间模型来分析数据。在我们展示的一种分析方法中,将此方法与鲁棒回归相结合,其性能优于最新的神经影像分析方法。

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