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Genome-wide association analyses identify 44 risk variants and refine the genetic architecture of major depression
by Wray, Naomi R
Nature genetics, May 2018, Vol.50(5), pp.668-681

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Automatic ROI selection in structural brain MRI using SOM 3D projection.
by Ortiz, Andrés
PloS one, 2014, Vol.9(4), p.e93851

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aBEAT: a toolbox for consistent analysis of longitudinal adult brain MRI.
by Dai, Yakang
PloS one, 2013, Vol.8(4), p.e60344

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Mapping the genetic variation of regional brain volumes as explained by all common SNPs from the ADNI study.
by Bryant, Christopher
PloS one, 2013, Vol.8(8), p.e71723

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A FDG-PET Study of Metabolic Networks in Apolipoprotein E ε4 Allele Carriers.
by Yao, Zhijun
PloS one, 2015, Vol.10(7), p.e0132300

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Effects of baseline CSF α-synuclein on regional brain atrophy rates in healthy elders, mild cognitive impairment and Alzheimer's disease.
by Mattsson, Niklas
PloS one, 2013, Vol.8(12), p.e85443

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Pregnancy Outcomes After Maternal Zika Virus Infection During Pregnancy - U.S. Territories, January 1, 2016-April 25, 2017.
by Shapiro-Mendoza, Carrie K
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Estimating anatomical trajectories with Bayesian mixed-effects modeling.
by Ziegler, G
NeuroImage, November 1, 2015, Vol.121, pp.51-68

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Regional flux analysis for discovering and quantifying anatomical changes: An application to the brain morphometry in Alzheimer's disease.
by Lorenzi, M
NeuroImage, July 15, 2015, Vol.115, pp.224-234

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Segmentation of MR images via discriminative dictionary learning and sparse coding: application to hippocampus labeling.
by Tong, Tong
NeuroImage, August 1, 2013, Vol.76, pp.11-23

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Associations between Verbal Learning Slope and Neuroimaging Markers across the Cognitive Aging Spectrum.
by Gifford, Katherine A
Journal of the International Neuropsychological Society : JINS, July 2015, Vol.21(6), pp.455-467

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Machine learning framework for early MRI-based Alzheimer's conversion prediction in MCI subjects.
by Moradi, Elaheh
NeuroImage, January 1, 2015, Vol.104, pp.398-412

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The mediational effects of FDG hypometabolism on the association between cerebrospinal fluid biomarkers and neurocognitive function.
by Dowling, N Maritza
NeuroImage, January 15, 2015, Vol.105, pp.357-368

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CD33 Alzheimer's disease locus: altered monocyte function and amyloid biology.
by Bradshaw, Elizabeth M
Nature neuroscience, July 2013, Vol.16(7), pp.848-850

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Testing for association with multiple traits in generalized estimation equations, with application to neuroimaging data.
by Zhang, Yiwei
NeuroImage, August 1, 2014, Vol.96, pp.309-325

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Early role of vascular dysregulation on late-onset Alzheimer's disease based on multifactorial data-driven analysis
by Iturria-Medina, Y.
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Ferritin levels in the cerebrospinal fluid predict Alzheimer's disease outcomes and are regulated by APOE
by Ayton, Scott
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Epidemic spreading model to characterize misfolded proteins propagation in aging and associated neurodegenerative disorders.
by Iturria-Medina, Yasser
PLoS computational biology, November 2014, Vol.10(11), p.e1003956

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Out-of-hospital hypertonic resuscitation following severe traumatic brain injury: a randomized controlled trial.
by Bulger, Eileen M
JAMA, October 6, 2010, Vol.304(13), pp.1455-1464
