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      PCA leverage: outlier detection for high-dimensional functional magnetic resonance imaging data

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          Abstract

          Outlier detection for high-dimensional (HD) data is a popular topic in modern statistical research. However, one source of HD data that has received relatively little attention is functional magnetic resonance images (fMRI), which consists of hundreds of thousands of measurements sampled at hundreds of time points. At a time when the availability of fMRI data is rapidly growing---primarily through large, publicly available grassroots datasets---automated quality control and outlier detection methods are greatly needed. We propose PCA leverage and demonstrate how it can be used to identify outlying time points in an fMRI run. Furthermore, PCA leverage is a measure of the influence of each observation on the estimation of principal components, which are often of interest in fMRI data. We also propose an alternative measure, PCA robust distance, which is less sensitive to outliers and has controllable statistical properties. The proposed methods are validated through simulation studies and are shown to be highly accurate. We also conduct a reliability study using resting-state fMRI data from the Autism Brain Imaging Data Exchange and find that removal of outliers using the proposed methods results in more reliable estimation of subject-level resting-state networks using ICA.

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          ROBPCA: A New Approach to Robust Principal Component Analysis

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            The Distribution of Robust Distances

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              Outlier detection for high-dimensional data

                Author and article information

                Journal
                2015-09-02
                2016-10-21
                Article
                1509.00882
                254b58a7-b02d-4b73-a4d1-85a6e116d037

                http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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                stat.ME

                Methodology
                Methodology

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