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      Changing the face of neuroimaging research: Comparing a new MRI de-facing technique with popular alternatives

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          Abstract

          Recent advances in automated face recognition algorithms have increased the risk that de-identified research MRI scans may be re-identifiable by matching them to identified photographs using face recognition. A variety of software exist to de-face (remove faces from) MRI, but their ability to prevent face recognition has never been measured and their image modifications can alter automated brain measurements. In this study, we compared three popular de-facing techniques and introduce our mri_reface technique designed to minimize effects on brain measurements by replacing the face with a population average, rather than removing it. For each technique, we measured 1) how well it prevented automated face recognition (i.e. effects on exceptionally-motivated individuals) and 2) how it altered brain measurements from SPM12, FreeSurfer, and FSL (i.e. effects on the average user of de-identified data). Before de-facing, 97% of scans from a sample of 157 volunteers were correctly matched to photographs using automated face recognition. After de-facing with popular software, 28–38% of scans still retained enough data for successful automated face matching. Our proposed mri_reface had similar performance with the best existing method ( fsl_deface) at preventing face recognition (28–30%) and it had the smallest effects on brain measurements in more pipelines than any other, but these differences were modest.

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          Most cited references38

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          "Mini-mental state". A practical method for grading the cognitive state of patients for the clinician.

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            pROC: an open-source package for R and S+ to analyze and compare ROC curves

            Background Receiver operating characteristic (ROC) curves are useful tools to evaluate classifiers in biomedical and bioinformatics applications. However, conclusions are often reached through inconsistent use or insufficient statistical analysis. To support researchers in their ROC curves analysis we developed pROC, a package for R and S+ that contains a set of tools displaying, analyzing, smoothing and comparing ROC curves in a user-friendly, object-oriented and flexible interface. Results With data previously imported into the R or S+ environment, the pROC package builds ROC curves and includes functions for computing confidence intervals, statistical tests for comparing total or partial area under the curve or the operating points of different classifiers, and methods for smoothing ROC curves. Intermediary and final results are visualised in user-friendly interfaces. A case study based on published clinical and biomarker data shows how to perform a typical ROC analysis with pROC. Conclusions pROC is a package for R and S+ specifically dedicated to ROC analysis. It proposes multiple statistical tests to compare ROC curves, and in particular partial areas under the curve, allowing proper ROC interpretation. pROC is available in two versions: in the R programming language or with a graphical user interface in the S+ statistical software. It is accessible at http://expasy.org/tools/pROC/ under the GNU General Public License. It is also distributed through the CRAN and CSAN public repositories, facilitating its installation.
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              An automated labeling system for subdividing the human cerebral cortex on MRI scans into gyral based regions of interest.

              In this study, we have assessed the validity and reliability of an automated labeling system that we have developed for subdividing the human cerebral cortex on magnetic resonance images into gyral based regions of interest (ROIs). Using a dataset of 40 MRI scans we manually identified 34 cortical ROIs in each of the individual hemispheres. This information was then encoded in the form of an atlas that was utilized to automatically label ROIs. To examine the validity, as well as the intra- and inter-rater reliability of the automated system, we used both intraclass correlation coefficients (ICC), and a new method known as mean distance maps, to assess the degree of mismatch between the manual and the automated sets of ROIs. When compared with the manual ROIs, the automated ROIs were highly accurate, with an average ICC of 0.835 across all of the ROIs, and a mean distance error of less than 1 mm. Intra- and inter-rater comparisons yielded little to no difference between the sets of ROIs. These findings suggest that the automated method we have developed for subdividing the human cerebral cortex into standard gyral-based neuroanatomical regions is both anatomically valid and reliable. This method may be useful for both morphometric and functional studies of the cerebral cortex as well as for clinical investigations aimed at tracking the evolution of disease-induced changes over time, including clinical trials in which MRI-based measures are used to examine response to treatment.
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                Author and article information

                Journal
                9215515
                20498
                Neuroimage
                Neuroimage
                NeuroImage
                1053-8119
                1095-9572
                26 April 2021
                01 May 2021
                11 February 2021
                27 May 2021
                : 231
                : 117845
                Affiliations
                [a ]Department of Radiology, Mayo Clinic, Rochester, MN, United States
                [b ]Department of Health Sciences Research, Mayo Clinic, Rochester, MN, United States
                [c ]Department of Information Technology, Mayo Clinic, Rochester, MN, United States
                [d ]Department of Neurology, Massachusetts General Hospital, Harvard Medical School, Boston, MA, United States
                [e ]Department of Neurology, Mayo Clinic, Rochester, MN, United States
                Author notes
                [* ]Correspondence to: Mayo Clinic, Diagnostic Radiology, 200 First Street SW, Rochester, Minnesota 55905, United States. schwarz.christopher@ 123456mayo.edu (C.G. Schwarz).
                Article
                NIHMS1677480
                10.1016/j.neuroimage.2021.117845
                8154695
                33582276
                91f90438-295f-41ba-bc9c-3cfd685259f7

                This is an open access article under the CC BY-NC-ND license ( http://creativecommons.org/licenses/by-nc-nd/4.0/)

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                Categories
                Article

                Neurosciences
                face recognition,de-facing,de-identification,anonymization,reliability
                Neurosciences
                face recognition, de-facing, de-identification, anonymization, reliability

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