A resource for development and comparison of multi-modal brain 3T MRI harmonisation approaches
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M. Jenkinson | K. Miller | S. Sotiropoulos | F. Alfaro-Almagro | O. Mougin | S. Warrington | S. Sotiropoulos | M. Craig | J. Campbell | A. Ntata | A. Torchi | P. S. Morgan | Karla L. Miller | Mark Jenkinson | Asante Ntata | Andrea Torchi | Martin Craig | Paul S. Morgan
[1] Suheyla Cetin Karayumak,et al. Cross-site harmonization of multi-shell diffusion MRI measures based on rotational invariant spherical harmonics (RISH) , 2022, NeuroImage.
[2] C. Lebel,et al. Lifespan Volume Trajectories From Non–harmonized T1–Weighted MRI Do Not Differ After Site Correction Based on Traveling Human Phantoms , 2022, Frontiers in Neurology.
[3] P. Bosco,et al. Quantitative MRI Harmonization to Maximize Clinical Impact: The RIN–Neuroimaging Network , 2022, Frontiers in Neurology.
[4] M. Reuter,et al. FastSurferVINN: Building resolution-independence into deep learning segmentation methods—A solution for HighRes brain MRI , 2021, NeuroImage.
[5] Yong He,et al. A deep learning-based multisite neuroimage harmonization framework established with a traveling-subject dataset , 2021, NeuroImage.
[6] Osamu Abe,et al. Cross-scanner reproducibility and harmonization of a diffusion MRI structural brain network: A traveling subject study of multi-b acquisition , 2021, NeuroImage.
[7] Saori C. Tanaka,et al. A multi-site, multi-disorder resting-state magnetic resonance image database , 2021, Scientific Data.
[8] Saori C. Tanaka,et al. Comparison of traveling‐subject and ComBat harmonization methods for assessing structural brain characteristics , 2021, Human brain mapping.
[9] Hannah J. Lee,et al. Radiomics feature robustness as measured using an MRI phantom , 2021, Scientific Reports.
[10] A. Marquand,et al. Accommodating Site Variation In Neuroimaging Data Using Normative And Hierarchical Bayesian Models , 2021, NeuroImage.
[11] Christophe Lenglet,et al. Tractography dissection variability: What happens when 42 groups dissect 14 white matter bundles on the same dataset? , 2020, NeuroImage.
[12] Yaroslav O. Halchenko,et al. A new virtue of phantom MRI data: explaining variance in human participant data , 2020, F1000Research.
[13] A. Mechelli,et al. Neuroharmony: A new tool for harmonizing volumetric MRI data from unseen scanners , 2020, NeuroImage.
[14] Peipeng Liang,et al. Multicenter dataset of multi-shell diffusion MRI in healthy traveling adults with identical settings , 2020, Scientific Data.
[15] Stamatios N. Sotiropoulos,et al. XTRACT - Standardised protocols for automated tractography in the human and macaque brain , 2020, NeuroImage.
[16] Philippe Lambin,et al. Radiomics: from qualitative to quantitative imaging. , 2020, The British journal of radiology.
[17] Bradley C. Love,et al. Variability in the analysis of a single neuroimaging dataset by many teams , 2019, Nature.
[18] B. Fischl,et al. FastSurfer - A fast and accurate deep learning based neuroimaging pipeline , 2019, NeuroImage.
[19] M. Paulus,et al. fMRI as an outcome measure in clinical trials: A systematic review in clinicaltrials.gov , 2019, Brain and behavior.
[20] R. Hoge,et al. Measurement Variability Following MRI System Upgrade , 2019, Front. Neurol..
[21] Jelle Veraart,et al. Cross-scanner and cross-protocol diffusion MRI data harmonisation: A benchmark database and evaluation of algorithms , 2019, NeuroImage.
[22] Chun-Hung Yeh,et al. MRtrix3: A fast, flexible and open software framework for medical image processing and visualisation , 2019, NeuroImage.
[23] Saori C. Tanaka,et al. Harmonization of resting-state functional MRI data across multiple imaging sites via the separation of site differences into sampling bias and measurement bias , 2018, bioRxiv.
[24] Stephen M. Smith,et al. Using GPUs to accelerate computational diffusion MRI: From microstructure estimation to tractography and connectomes , 2018, NeuroImage.
[25] Yogesh Rathi,et al. Retrospective harmonization of multi-site diffusion MRI data acquired with different acquisition parameters , 2019, NeuroImage.
[26] Krzysztof J. Gorgolewski,et al. MRIQC: Advancing the automatic prediction of image quality in MRI from unseen sites , 2016, bioRxiv.
[27] Russell T. Shinohara,et al. Harmonization of cortical thickness measurements across scanners and sites , 2017, NeuroImage.
[28] Ludovica Griffanti,et al. Image processing and Quality Control for the first 10,000 brain imaging datasets from UK Biobank , 2017, NeuroImage.
[29] Janaina Mourão Miranda,et al. Predictive modelling using neuroimaging data in the presence of confounds , 2017, NeuroImage.
[30] Ragini Verma,et al. Harmonization of multi-site diffusion tensor imaging data , 2017, NeuroImage.
[31] Jelle Veraart,et al. Diffusion MRI noise mapping using random matrix theory , 2016, Magnetic resonance in medicine.
[32] I. Rezek,et al. Understanding Heterogeneity in Clinical Cohorts Using Normative Models: Beyond Case-Control Studies , 2016, Biological Psychiatry.
[33] José P. Marques,et al. An illustrated comparison of processing methods for MR phase imaging and QSM: combining array coil signals and phase unwrapping , 2016, NMR in biomedicine.
[34] P. Matthews,et al. Multimodal population brain imaging in the UK Biobank prospective epidemiological study , 2016, Nature Neuroscience.
[35] A. W. Chung,et al. NODDI reproducibility and variability with magnetic field strength: A comparison between 1.5 T and 3 T , 2016, Human Brain Mapping.
[36] Peter Savadjiev,et al. Inter-site and inter-scanner diffusion MRI data harmonization , 2016, NeuroImage.
[37] Satrajit S. Ghosh,et al. The brain imaging data structure, a format for organizing and describing outputs of neuroimaging experiments , 2016, Scientific Data.
[38] Christopher Rorden,et al. The first step for neuroimaging data analysis: DICOM to NIfTI conversion , 2016, Journal of Neuroscience Methods.
[39] Kilian M. Pohl,et al. Harmonizing DTI measurements across scanners to examine the development of white matter microstructure in 803 adolescents of the NCANDA study , 2016, NeuroImage.
[40] Mark Jenkinson,et al. Automatic segmentation of the striatum and globus pallidus using MIST: Multimodal Image Segmentation Tool , 2016, NeuroImage.
[41] Stamatios N. Sotiropoulos,et al. An integrated approach to correction for off-resonance effects and subject movement in diffusion MR imaging , 2016, NeuroImage.
[42] Ludovica Griffanti,et al. Challenges in the reproducibility of clinical studies with resting state fMRI: An example in early Parkinson's disease , 2016, NeuroImage.
[43] N. Powe,et al. Diversity in Clinical and Biomedical Research: A Promise Yet to Be Fulfilled , 2015, bioRxiv.
[44] Michael A. Bruno,et al. Understanding and Confronting Our Mistakes: The Epidemiology of Error in Radiology and Strategies for Error Reduction. , 2015, Radiographics : a review publication of the Radiological Society of North America, Inc.
[45] M. Weissman,et al. Test–retest reliability of freesurfer measurements within and between sites: Effects of visual approval process , 2015, Human brain mapping.
[46] Jean-Philippe Thiran,et al. Accelerated Microstructure Imaging via Convex Optimization (AMICO) from diffusion MRI data , 2015, NeuroImage.
[47] Jessica A. Turner,et al. Exploration of scanning effects in multi-site structural MRI studies , 2014, Journal of Neuroscience Methods.
[48] André J. W. van der Kouwe,et al. Quantitative comparison of cortical surface reconstructions from MP2RAGE and multi-echo MPRAGE data at 3 and 7T , 2014, NeuroImage.
[49] Essa Yacoub,et al. The WU-Minn Human Connectome Project: An overview , 2013, NeuroImage.
[50] R. Cameron Craddock,et al. Clinical applications of the functional connectome , 2013, NeuroImage.
[51] Daniel C. Alexander,et al. NODDI: Practical in vivo neurite orientation dispersion and density imaging of the human brain , 2012, NeuroImage.
[52] K. Ohtomo,et al. Effect of scanner in longitudinal studies of brain volume changes , 2011, Journal of magnetic resonance imaging : JMRI.
[53] Stephen M. Smith,et al. A Bayesian model of shape and appearance for subcortical brain segmentation , 2011, NeuroImage.
[54] Xing Qiu,et al. Quantification of accuracy and precision of multi-center DTI measurements: A diffusion phantom and human brain study , 2011, NeuroImage.
[55] John S. Duncan,et al. Identical, but not the same: Intra-site and inter-site reproducibility of fractional anisotropy measures on two 3.0 T scanners , 2010, NeuroImage.
[56] Wiro J. Niessen,et al. Accuracy and reproducibility study of automatic MRI brain tissue segmentation methods , 2010, NeuroImage.
[57] Anders M. Dale,et al. MRI-derived measurements of human subcortical, ventricular and intracranial brain volumes: Reliability effects of scan sessions, acquisition sequences, data analyses, scanner upgrade, scanner vendors and field strengths , 2009, NeuroImage.
[58] Jerry L Prince,et al. Effects of signal‐to‐noise ratio on the accuracy and reproducibility of diffusion tensor imaging–derived fractional anisotropy, mean diffusivity, and principal eigenvector measurements at 1.5T , 2007, Journal of magnetic resonance imaging : JMRI.
[59] Anders M. Dale,et al. Reliability of MRI-derived measurements of human cerebral cortical thickness: The effects of field strength, scanner upgrade and manufacturer , 2006, NeuroImage.
[60] Anders M. Dale,et al. Reliability in multi-site structural MRI studies: Effects of gradient non-linearity correction on phantom and human data , 2006, NeuroImage.
[61] Stefan Skare,et al. How to correct susceptibility distortions in spin-echo echo-planar images: application to diffusion tensor imaging , 2003, NeuroImage.
[62] Anders M. Dale,et al. Cortical Surface-Based Analysis I. Segmentation and Surface Reconstruction , 1999, NeuroImage.
[63] J. Mugler,et al. Three‐dimensional magnetization‐prepared rapid gradient‐echo imaging (3D MP RAGE) , 1990, Magnetic resonance in medicine.