Multimodal population brain imaging in the UK Biobank prospective epidemiological study.
- Authors
- Miller, Karla L; Alfaro-Almagro, Fidel; Bangerter, Neal K; Thomas, David L; Yacoub, Essa; Xu, Junqian; Bartsch, Andreas J; Jbabdi, Saad; Sotiropoulos, Stamatios N; Andersson, Jesper L R; Griffanti, Ludovica; Douaud, Gwenaëlle; Okell, Thomas W; Weale, Peter; Dragonu, Iulius; Garratt, Steve; Hudson, Sarah; Collins, Rory; Jenkinson, Mark; Matthews, Paul M; Smith, Stephen M
- Year
- 2016
- Journal
- Nature neuroscience
- PMID
- 27643430
- DOI
- 10.1038/nn.4393
- PMCID
- PMC5086094
Medical imaging has enormous potential for early disease prediction, but is impeded by the difficulty and expense of acquiring data sets before symptom onset. UK Biobank aims to address this problem directly by acquiring high-quality, consistently acquired imaging data from 100,000 predominantly healthy participants, with health outcomes being tracked over the coming decades. The brain imaging includes structural, diffusion and functional modalities. Along with body and cardiac imaging, genetics, lifestyle measures, biological phenotyping and health records, this imaging is expected to enable discovery of imaging markers of a broad range of diseases at their earliest stages, as well as provide unique insight into disease mechanisms. We describe UK Biobank brain imaging and present results derived from the first 5,000 participants' data release. Although this covers just 5% of the ultimate cohort, it has already yielded a rich range of associations between brain imaging and other measures collected by UK Biobank.
Data from the three structural imaging modalities in UK Biobank brain imaging.(a) Single-subject T1-weighted structural image with minimal pre-processing: removal of intensity inhomogeneity, lower neck areas cropped and the face blanked to protect anonymity. Color overlays show automated modeling of several subcortical structures (above) and segmentation of gray matter (below). (b) Single-subject T2-weighted FLAIR image with the same minimal pre-processing, showing hyperintense lesions in the white matter indicated (arrows). (c) Group-average (n≈4500) T1 atlas; all subjects’ data were aligned together (see Online Methods for processing details) and averaged, achieving higher quality alignment, with clear delineation of deep grey structures and good agreement of major sulcal folding patterns despite wide variation in these features across subjects. (d) Group-average T2 FLAIR atlas. (e) Group-average atlas derived from SWI processing of swMRI phase and magnitude images. (f) Group-average T2* atlas, also derived from the swMRI data. (g) “Manhattan” plot (a layout common in genetic studies) relating all 25 IDPs from the T1 data to 1100 non-brain-imaging variables extracted from the UK Biobank database, with the latter arranged into major variable groups along the x axis (with these groups separated by vertical dotted lines). For each of these 1100 variables, the significance of the cross-subject univariate correlation with each of the IDPs is plotted vertically, in units of –log10(Puncorrected). The dotted horizontal lines indicate thresholds corresponding to multiple comparison correction using false discovery rate (FDR, lower line, corresponding to puncorrected=3.8×10-5) and Bonferroni correction (upper line, puncorrected=1.8×10-8) across the 2.8 million tests involving correlations of all modalities’ IDPs against all 1100 non-imaging measures. Effects such as age, sex and head size are regressed out of all data before computing the correlations. As an indication of the corresponding range of effect sizes, the maximum r2 (fractional variance of either variable explained by the other) is calculated, as well as the minimum r2 across all tests passing the Bonferroni correction. Here the maximum r2 = 0.045 and the minimum r2 = 0.0058. See Online Methods for more details of these analyses. (h) Plot relating all 14 T2* IDPs to 1100 non-imaging variables. Maximum r2 = 0.034, minimum r2 = 0.0063. Marked Bonferroni and FDR multiple comparison threshold levels are the same as in (g).
The diffusion MRI data in UK Biobank.(a) Group-average (n≈4500) atlases from six distinct dMRI modeling outputs, each sensitive to different aspects of the white matter microarchitecture. See Online Methods for processing details. The atlases shown are: FA (fractional anisotropy), MD (mean diffusivity) and MO (tensor mode); ICVF (intra-cellular volume fraction), ISOVF (isotropic or free water volume fraction) and OD (orientation dispersion index), from the NODDI microstructural modeling. Also shown are several group-average white matter masks used to generate IDPs (e.g., pink (r) are retrolenticular tracts in the internal capsules; upper-green (s) are the superior longitudinal fasciculi). (b) Tensor ellipsoids depicting the group-averaged tensor fit at each voxel for the region shown inset in (c). The shapes of the ellipsoids indicate the strength of water diffusion along three principal directions; long thin tensors indicate single dominant fiber bundles, whereas more spherical tensors (within white matter) generally imply regions of crossing fibers (seen more explicitly modeled in corresponding parts of (c)). (c) Group-averaged multiple fiber orientation atlases, showing up to 3 fiber bundles per voxel. Red shows the strongest fiber direction, green the second, and blue the third. Each fiber bundle is only shown where the modeling estimates that population to have greater than 5% voxel occupancy. Inset shows the thresholded mean FA image (copper) overlaid on the T1, with the region shown in detail in (b) and c) highlighted. (d) Four example group-average white matter tract atlases estimated by probabilistic tractography fed from the within-voxel fiber modeling: corpus callosum (genu), superior longitudinal fasciculus, corticospinal tract and inferior fronto-occipital fasciculus. (e) Plot relating all 675 dMRI IDPs (nine distinct dMRI modeling outputs from tensor and NODDI models × 75 tract masks) to 1100 non-imaging variables (see Fig 1g for details). Maximum r2 = 0.057, minimum r2 (passing Bonferroni) = 0.0065. Dotted horizontal lines (multiple comparison thresholds) are the same as in Fig 1g.
The task fMRI data in UK Biobank.(a) The task paradigm temporal model (time running vertically) depicting the periods of the two task types (shapes and faces); for more information on this paradigm view, see http://fsl.fmrib.ox.ac.uk/fsl/fslwiki/FEAT/UserGuide. (b) Example fitted activation regression model vs. timeseries data (time running horizontally), for the voxel most strongly responding to the “faces > shapes” contrast in a single subject (Z=12.3). (c) Percentage of subjects passing simple voxel-wise activation thresholding (Z>1.96) for the same contrast. Note reliable focal activation in left and right amygdala. The underlying image is the group-averaged raw fMRI image. (d) Group-averaged activation for the 3 contrasts of most interest, overlaid on the group-average T1 atlas (fixed-effects group average, Z>100, voxelwise Pcorrected<10-30). (e) Plot relating the 16 tfMRI IDPs to 1100 non-imaging variables (see Fig 1g for details). Maximum r2 = 0.018, minimum r2 (passing Bonferroni) = 0.0062. Dotted horizontal lines (multiple comparison thresholds) are the same as in Fig 1g.
The resting-state fMRI data in UK Biobank.(a) Example group-average resting-state network (RSN) atlases from the low-dimensional group-average decomposition, showing four out of 21 estimated functional brain networks, including the default mode network (red-yellow), dorsal attention network (green), primary visual (copper), and higher level visual (dorsal and ventral streams, blue). The three slices shown are (top to bottom) sagittal, coronal and axial. (b) The 55 non-artefact components from a higher-dimensional parcelation of the brain (axial views). These are shown as displayed by the connectome browser (www.fmrib.ox.ac.uk/analysis/techrep/ukb/netjs_d100), which allows interactive investigation of individual connections in the group-averaged functional network modeling. The 55 brain regions (network nodes) are clustered into groups according to their average population connectivity, and the strongest individual connections are shown (positive in red, anticorrelations in blue). (c) Plot relating the 76 rfMRI “node amplitude” IDPs to 1100 non-imaging variables (see Fig 1g for details). Maximum r2 = 0.065, minimum r2 (passing Bonferroni) = 0.0059. (d) Plot relating the 1695 rfMRI “functional connectivity” IDPs to 1100 non-imaging variables. Maximum r2 = 0.032, minimum r2 = 0.0059. Dotted horizontal lines (multiple comparison thresholds) in (c) and (d) are the same as in Fig 1g.
Voxel-wise correlations of participants’ age against several white matter measures from the dMRI and T2 FLAIR data.(a) Voxel-wise (cross-subject) correlation of FA (fractional anisotropy) vs. age. Group-average FA in white matter is shown in green, overlaid onto the group-average T1. (b) Correlation of MO (tensor mode) vs. age, using the same color scheme. Nearby areas of MO increase are shown in greater detail in (f), which also shows the distinct primary fiber directions. (c) Correlation of OD (orientation dispersion) vs. age, including a reduction in dispersion in posterior corpus callosum. (d) Correlation of ISOVF (isotropic or free water volume fraction) vs. age, showing increases in “free water” with age in a broad range of tracts. (e) Voxel-wise correlation of T2 FLAIR intensity, showing increased intensity with aging in white matter. For (a-e), blue and red-yellow show negative and positive Pearson correlation with age, respectively (Pcorrected<0.05, with Bonferroni correction across voxels resulting in significance at r=0.1 (dMRI n=3722; T2 FLAIR n=3781). (g) Histograms (across voxels) of the voxel-wise age correlation of the correlation maps shown above, with correlation value on the x axis. FA and MO largely decrease with age, while OD and ISOVF largely increase.
Visualisation of 2.8 million univariate cross-subject association tests between 2501 IDPs and 1100 other variables in the UK Biobank database.(a) Manhattan plot showing, for each of the 1100 non-brain-imaging variables, the statistically strongest association of that variable with each distinct imaging sub-modality’s IDPs. (i.e., 6 results plotted for each x axis position, each with a color indicating a brain imaging modality; this plot differs from the other Manhattan plots, which show correlations with all IDPs). Whereas the Manhattan plots in Figs 1-4 indicated associations for each brain imaging modality separately, here we depict all associations in a single plot. (b) List of all IDP-cognitive score associations passing Bonferroni correction for multiple comparisons (Pcorrected<0.05; Puncorrected<1.8x10-8). The first column lists the age-adjusted correlation coefficient, and the second shows the unadjusted correlation, both being correlations between a specific brain IDP (fifth column) and a cognitive test score (seventh column). UK Biobank cognitive tests carried out include Fluid Intelligence, Prospective Memory, Reaction Time (Shape Pairs Matching), Memorised Pairs Matching, Trail Making (Symbol Ordering), Symbol Digit Substitution, and Numeric Memory. (c) IDP associations with the cognitive phenotype variables (the full set of 174 cognitive variables, repeated for each brain imaging modality). Shown behind, in gray, are the same associations without adjustment for age, with a large number of stronger associations. Dotted horizontal lines (multiple comparison thresholds) in (a) and (c) are the same as in Fig 1g. (d) Scatterplot showing the relationship between adjusted correlations and those obtained without first regressing out the confound variables (each point is a pairing of one IDP with one non-brain-imaging variable, 2.8 million points). The grid lines indicate Bonferroni-corrected significance level (as described in Fig 1). (e) Example association between unadjusted white matter volume and fat-free body mass is high (r=0.56) when pooling across the sexes. After adjusting for several variables (including sex), the correlation falls almost to zero.
Details of three modes from the doubly-multivariate CCA-ICA analyses across all IDPs and non-brain-imaging variables.IDPs are listed in orange and non-brain-imaging variables in black. The text lists show the variables most strongly associated with each mode; where multiple very similar (and highly correlated) non-imaging variables are found, only the most significant is listed here for brevity. The first column shows the weight (strength and sign) of a given variable in the ICA mode, the second shows the (cross-subject) percentage variance of the data explained by this mode, and the third column shows the percentage variance explained in the data without the confounds first regressed out. Mode 7 links measures of bone density, brain structure/tissue volumes and cognitive tests. Mode 8 links measures of blood pressure and alcohol intake to IDPs from the diffusion and functional connectivity data; two functional network connections strongly involved are displayed, with the population mean connection indicated by the bar connecting the two nodes forming the connection (red indicates positive mean correlation, blue negative, and the width of the bar indicates the connection strength). The group-ICA maps are thresholded at Z>5, and the colored text is the ICA weight shown in the table list. Mode 9 includes a wide range of imaging and non-imaging variables (see main text for details); as well as showing 3 strong functional network connections, we also show two functional nodes whose resting fluctuation amplitude is associated with this mode.
Hypothesis-driven study of age, BMI and smoking associations with subcortical T2*.(a) UK Biobank population-average map of T2*, overlaid with the main subcortical structures being investigated. The T2* IDPs reflect individuals’ median T2* values within these regions. The relatively low T2* in putamen and pallidum likely reflects greater iron content. (b) BMI regression betas from multiple regressions of R2* (from the ASPS study) and T2* (from UK Biobank) against relevant covariates (see (c)). All variables are standardized so that beta values can be interpreted as (partial) correlation coefficients. R2* significance is reported as FDR-corrected P. T2* significance is reported as –log10Puncorrected with the more conservative Bonferroni correction (for Pcorrected=0.05) resulting in a threshold here of 3.6. (c) Full set of univariate and multiple regression betas and significance values for all brain regions tested and all model covariates. The regression results are much sparser, reflecting the higher associational specificity obtained by reporting unique variance explained.
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| Determining the atlas correspondence of Desikan-Killiany-Tourville and Glasser MMP1 atlases across magnetic field strengths. | Lewis M et al. | — | 2025 | → |
| Development and Validation of a Brain Aging Biomarker in Middle-Aged and Older Adults: Deep Learning Approach. | Li Z et al. | — | 2025 | → |
| Diff5T: Benchmarking human brain diffusion MRI with an extensive 5.0 Tesla k-space and spatial dataset. | Wang S et al. | — | 2025 | → |
| Differentiating BOLD and non-BOLD signals in fMRI time series using cross-cortical depth delay patterns. | Chen JE et al. | — | 2025 | → |
| Dimensionality reduction in 3D causal deep learning for neuroimage generation: an evaluation study. | Ohara EY et al. | — | 2025 | → |
| Dissecting human cortical similarity networks across the lifespan. | Liang X et al. | — | 2025 | → |
| Distinct effects of early-stage and late-stage socioeconomic factors on brain and behavioral traits. | Xu Q et al. | — | 2025 | → |
| Distinct spatiotemporal patterns of white matter hyperintensity progression. | Chung J et al. | — | 2025 | → |
| Drug repurposing for Alzheimer's disease integrating transcriptome-wide association study and biological network analysis. | Wang X et al. | — | 2025 | → |
| Easy-to-use and easy-to-interpret quality control of 3D gradient echo T1-weighted MR acquisition sequences for improved test-retest stability of MRI-based hippocampus volumetry. | Buchert R et al. | — | 2025 | → |
| EEG Data Quality in Large-Scale Field Studies in India and Tanzania. | Vianney JM et al. | — | 2025 | → |
| Effects of obesity on aging brain and cognitive decline: A cohort study from the UK Biobank. | Li P et al. | — | 2025 | → |
| Encoding 3D information in 2D feature maps for brain CT-Angiography. | Lal-Trehan Estrada UM et al. | — | 2025 | → |
| Enhanced structural brain connectivity analyses using high diffusion-weighting strengths. | Yu L et al. | — | 2025 | → |
| ENIGMA-Meditation: Worldwide Consortium for Neuroscientific Investigations of Meditation Practices. | Ganesan S et al. | — | 2025 | → |
| Epigenetic and Structural Brain Aging and Their Associations With Major Depressive Disorder. | Xu EY et al. | — | 2025 | → |
| Evaluating the effects of archaic protein-altering variants in living human adults. | Molz B et al. | — | 2025 | → |
| Evaluating the effects of high-throughput structural neuroimaging predictors on whole-brain functional connectome outcomes via network-based matrix-on-vector regression. | Lu T et al. | — | 2025 | → |
| Evaluating Traditional, Deep Learning and Subfield Methods for Automatically Segmenting the Hippocampus From MRI. | Sghirripa S et al. | — | 2025 | → |
| Evaluating Unimodal and Multimodal Tracking Strategies for the Reconstruction of Language-related White Matter Tracts. | Schilling LM et al. | — | 2025 | → |
| Exploring the Shared Genetic Architectures Between Primary Open-Angle Glaucoma and Visual Pathway Regions in the Brain. | Aman AM et al. | — | 2025 | → |
| From Big Data to the Clinic: Methodological and Statistical Enhancements to Implement the UK Biobank Imaging Framework in a Memory Clinic. | Gillis G et al. | — | 2025 | → |
| Generating synthetic task-based brain fingerprints for population neuroscience using deep learning. | Serin E et al. | — | 2025 | → |
| Genetics impact risk of Alzheimer's disease through mechanisms modulating structural brain morphology in late life. | Korologou-Linden R et al. | — | 2025 | → |
| Glycemic status, early-onset and late-onset dementia, dementia-free lifespan, and brain structure: A population-based cohort study. | Li C et al. | — | 2025 | → |
| Grey-Matter Structure Markers of Alzheimer's Disease, Alzheimer's Conversion, Functioning and Cognition: A Meta-Analysis Across 11 Cohorts. | Couvy-Duchesne B et al. | — | 2025 | → |
| HCP Multi-Pipeline: a derived dataset to investigate analytical variability in fMRI. | Germani E et al. | — | 2025 | → |
| Hierarchical modelling of crossing fibres in the white matter. | Rafipoor H et al. | — | 2025 | → |
| HiFi-Syn: Hierarchical granularity discrimination for high-fidelity synthesis of MR images with structure preservation. | Yu Z et al. | — | 2025 | → |
| High-Order Graphical Topology Analysis of Brain Functional Connectivity Networks Using fMRI. | Ling Q et al. | — | 2025 | → |
| Hypothalamic volume is associated with age, sex and cognitive function across lifespan: a comparative analysis of two large population-based cohort studies. | Xu P et al. | — | 2025 | → |
| Identifying sources of bias when testing three available algorithms for quantifying white matter lesions: BIANCA, LPA and LGA. | Miller T et al. | — | 2025 | → |
| Inferring multi-organ genetic connections using imaging and clinical data through Mendelian randomization. | Shu J et al. | — | 2025 | → |
| Influence of lung function on macro- and micro-structural brain changes in mid- and late-life. | Wang J et al. | — | 2025 | → |
| Information-Theoretic Analysis of Multimodal Image Translation. | Liu R et al. | — | 2025 | → |
| Integrated genetic analysis and single cell-RNA sequencing for brain image-derived phenotypes and Parkinson's disease. | Pan L et al. | — | 2025 | → |
| Integrating plasticity into precision psychiatry. | Branchi I | — | 2025 | → |
| Interpreting fMRI Studies in Populations with Cerebrovascular Risk: The Use of a Subject-Specific Hemodynamic Response Function. | McDonough IM et al. | — | 2025 | → |
| Investigating biological sex as a moderator of the association of nature exposure with brain health: a cross-sectional UK biobank analysis. | Noseworthy M et al. | — | 2025 | → |
| Investigating the impact of sex and reproductive aging on latent signatures of modifiable dementia risk factors. | Mukora A et al. | — | 2025 | → |
| Large-scale brainstem neuroimaging and genetic analyses provide new insights into the neuronal mechanisms of hypertension. | Gurholt TP et al. | — | 2025 | → |
| Large-scale georeferenced neuroimaging and psychometry data link the urban environmental exposome with brain health. | Ruas MV et al. | — | 2025 | → |
| Large-scale proteomic analyses of incident Alzheimer's disease reveal new pathophysiological insights and potential therapeutic targets. | Zhang Y et al. | — | 2025 | → |
| Latent brain subtypes of chronotype reveal unique behavioral and health profiles across population cohorts. | Zhou L et al. | — | 2025 | → |
| Lifespan reference curves for harmonizing multi-site regional brain white matter metrics from diffusion MRI. | Zhu AH et al. | — | 2025 | → |
| Lifetime Cannabis Use Is Associated with Brain Volume and Cognitive Function in Middle-Aged and Older Adults. | Guha A et al. | — | 2025 | → |
| Longitudinal associations between air pollution and incident dementia as mediated by MRI-measured brain volumes in the UK Biobank. | Thompson R et al. | — | 2025 | → |
| Longitudinal changes in brain asymmetry track lifestyle and disease. | Saltoun K et al. | — | 2025 | → |
| Long-term exposure to low-level nitrogen dioxide and risks of neurodegenerative diseases among middle-aged and older adults in the UK. | Bao Y et al. | — | 2025 | → |
| Long-Term Impact of Using Mobile Phones and Playing Computer Games on the Brain Structure and the Risk of Neurodegenerative Diseases: Large Population-Based Study. | Xiao Y et al. | — | 2025 | → |
| <i>TORTOISEV4</i>: Reimagining the NIH diffusion MRI processing pipeline. | Irfanoglu MO et al. | — | 2025 | → |
| Machine learning-assisted optimization of dietary intervention against dementia risk. | Chen SJ et al. | — | 2025 | → |
| Machine learning-based estimation of respiratory fluctuations in a healthy adult population using resting state BOLD fMRI and head motion parameters. | Addeh A et al. | — | 2025 | → |
| Machine learning to discover factors predicting volume of white matter hyperintensities: Insights from the UK Biobank. | Yeshaw Y et al. | — | 2025 | → |
| Magnetic resonance imaging signatures of neuroinflammation in major depressive disorder with religious and spiritual problems. | Kaszás A et al. | — | 2025 | → |
| Maintaining Brain Health: The Impact of Physical Activity and Fitness on the Aging Brain-A UK Biobank Study. | Hoogen H et al. | — | 2025 | → |
| Mapping the plasma metabolome to human health and disease in 274,241 adults. | You J et al. | — | 2025 | → |
| Meaningful Associations Redux: Quantifying and interpreting effect size in the context of the Adolescent Brain and Cognitive Development study. | Dick AS et al. | — | 2025 | → |
| Measurement characteristics and genome-wide correlates of lifetime brain atrophy estimated from a single MRI. | Fürtjes AE et al. | — | 2025 | → |
| Mediation Analyses Link Cardiometabolic Factors and Liver Fat With White Matter Hyperintensities and Cognitive Performance: A UK Biobank Study. | Askeland-Gjerde DE et al. | — | 2025 | → |
| Mendelian randomization analyses support causal relationship between brain imaging-derived phenotypes and risk of low back pain. | Xie XY et al. | — | 2025 | → |
| Menopausal hormone therapy and the female brain: Leveraging neuroimaging and prescription registry data from the UK Biobank cohort. | Barth C et al. | — | 2025 | → |
| Metabolic Dysfunction-Associated Steatotic Liver Disease Is Associated With Accelerated Brain Ageing: A Population-Based Study. | Wang J et al. | — | 2025 | → |
| MGMAP-Net: A Multi-Graph Modality-Aware Network for Enhanced Fluid Intelligence Prediction Using Multimodal Brain Connectivity. | Cheng C et al. | — | 2025 | → |
| Modifiable lifestyle factors influencing neurological and psychiatric disorders mediated by structural brain reserve: An observational and Mendelian randomization study. | Dong Y et al. | — | 2025 | → |
| MRI markers of cerebrospinal fluid dynamics predict dementia and mediate the impact of cardiovascular risk. | Hong H et al. | — | 2025 | → |
| Multi-connectomics underpin emotional dysfunction in mouse exposed to simulated space composite environment. | Liang R et al. | — | 2025 | → |
| Multi-dimensional evidence from the UK Biobank shows the impact of diet and macronutrient intake on aging. | Zhu C et al. | — | 2025 | → |
| Multimodal contrastive learning on rs-fMRI to quantify whole-brain network recovery after hypothalamic hamartoma surgery. | Jeyabose A et al. | — | 2025 | → |
| Multimodal population study reveals the neurobiological underpinnings of chronotype. | Zhou L et al. | — | 2025 | → |
| Multiple Demographic, Lifestyle, and Biological Factors Associated With Brain Iron Deposition in the Basal Ganglia: A Comprehensive Analysis of 25,980 UK Biobank Participants. | Liang P et al. | — | 2025 | → |
| MUTATE: a human genetic atlas of multiorgan artificial intelligence endophenotypes using genome-wide association summary statistics. | Boquet-Pujadas A et al. | — | 2025 | → |
| Neural circuit basis of pathological anxiety. | Akiki TJ et al. | — | 2025 | → |
| NeuroAgeFusionNet an ensemble deep learning framework integrating CNN, transformers, and GNN for robust brain age estimation using MRI scans. | Sowmya M et al. | — | 2025 | → |
| Neuroanatomical dimensions in major depression linked to cognition, adverse life events, self-harm, metabolomics and genetics. | Xiao W et al. | — | 2025 | → |
| Neurobiological correlates of schizophrenia-specific and highly pleiotropic genetic risk scores for neuropsychiatric disorders. | Federmann LM et al. | — | 2025 | → |
| Neurocognitive and brain structure correlates of reading and television habits in early adolescence. | Rauschecker AM et al. | — | 2025 | → |
| Neurofind: using deep learning to make individualised inferences in brain-based disorders. | Vieira S et al. | — | 2025 | → |
| No causal links between estradiol and female's brain and mental health using Mendelian randomization. | Oppenheimer H et al. | — | 2025 | → |
| Normative trajectories of R <sub>1</sub> , R <sub>2</sub> *, and magnetic susceptibility in basal ganglia on healthy ageing. | Chan KS et al. | — | 2025 | → |
| Obesity-related brain atrophy is independent of Alzheimer's disease protein pathways. | Morys F et al. | — | 2025 | → |
| Opaque ontology: neuroimaging classification of ICD-10 diagnostic groups in the UK Biobank. | Easley T et al. | — | 2025 | → |
| Optimizing ultra-rapid compressed-sensing MPRAGE acquisitions for brain morphometry. | Hanford LC et al. | — | 2025 | → |
| Parsing Clinical and Neurobiological Sources of Heterogeneity in Depression. | Hannon K et al. | — | 2025 | → |
| Plasma Metabolites Link Non-Communicable Diseases to Increased White Matter Hyperintensities. | Wang N et al. | — | 2025 | → |
| Plasma metabolomic signature of healthy lifestyle, structural brain reserve and risk of dementia. | Tian F et al. | — | 2025 | → |
| Plasma proteomic biomarkers as mediators or moderators for the association between poor cardiovascular health and white matter microstructural integrity: The UK Biobank study. | Beydoun MA et al. | — | 2025 | → |
| Plasma proteomic evidence for increased β-amyloid pathology after SARS-CoV-2 infection. | Duff EP et al. | — | 2025 | → |
| Plasma proteomics-based brain aging signature and incident dementia risk. | Kou M et al. | — | 2025 | → |
| Plasma proteomics identifies proteins and pathways associated with incident epilepsy. | Zhang D et al. | — | 2025 | → |
| Plasma proteomics identify biomarkers and undulating changes of brain aging. | Liu WS et al. | — | 2025 | → |
| Plasma proteomic signatures of social isolation and loneliness associated with morbidity and mortality. | Shen C et al. | — | 2025 | → |
| Polygenic risk for schizophrenia is associated with white matter microstructure, cognitive and mental health. | Qian Q et al. | — | 2025 | → |
| Poor sleep health is associated with older brain age: the role of systemic inflammation. | Miao Y et al. | — | 2025 | → |
| Predicting task-related brain activity from resting-state brain dynamics with fMRI Transformer. | Kwon J et al. | — | 2025 | → |
| Prevalence of infratentorial superficial siderosis in a large general population sample from the UK Biobank. | Kharytaniuk N et al. | — | 2025 | → |
| Probing Autism and ADHD subtypes using cortical signatures of the T1w/T2w-ratio and morphometry. | Norbom LB et al. | — | 2025 | → |
| Protective role of parenthood on age-related brain function in mid- to late-life. | Orchard ER et al. | — | 2025 | → |
| Real-world datasets for the International Registry for Alzheimer's Disease and Other Dementias (InRAD) and other registries: An international consensus. | Perneczky R et al. | — | 2025 | → |
| Real-world walking patterns are associated with regional brain atrophy and white matter lesions in middle-aged and older people: a Watch Walk-UK Biobank study. | Tajimi T et al. | — | 2025 | → |
| Reduced neurovascular coupling is associated with increased cardiovascular risk without established cerebrovascular disease: A cross-sectional analysis in UK Biobank. | Yang S et al. | — | 2025 | → |
| Reevaluating the role of education on cognitive decline and brain aging in longitudinal cohorts across 33 Western countries. | Fjell AM et al. | — | 2025 | → |
| Regional Brain Volume Changes Across Adulthood: A Multi-Cohort Study Using MRI Data. | Shim JH et al. | — | 2025 | → |
| Regular use of opioids and dementia, cognitive measures, and neuroimaging outcomes among UK Biobank participants with chronic non-cancer pain. | Lin T et al. | — | 2025 | → |
| Relative Strength Variability Measures for Brain Structural Connectomes and Their Relationship With Cognitive Functioning. | Yeung HW et al. | — | 2025 | → |
| Reliability of structural brain change in cognitively healthy adult samples. | Vidal-Piñeiro D et al. | — | 2025 | → |
| Revealing potential drug targets in schizophrenia through proteome-wide Mendelian randomization genetic insights. | Xie W et al. | — | 2025 | → |
| SamRobNODDI:<i>q</i>-space sampling-augmented continuous representation learning for robust and generalized NODDI. | Xiao T et al. | — | 2025 | → |
| Simultaneous multislice diffusion imaging using navigator-free multishot spiral acquisitions. | Jiang Y et al. | — | 2025 | → |
| Situating the salience and parietal memory networks in the context of multiple parallel distributed networks using precision functional mapping. | Kwon YH et al. | — | 2025 | → |
| Socio-environmental and health-related factors and their association with longitudinal change in brain neuroimaging markers through the plasma metabolome among UK adults: An additive Bayesian network analysis. | Beydoun MA et al. | — | 2025 | → |
| Structural similarity networks reveal brain vulnerability in dementia. | Montagnese M et al. | — | 2025 | → |
| Ten Suggestions for Better Inference in Population Neuroscience Studies. | Thompson WK et al. | — | 2025 | → |
| The Brain's Aging Resting State Functional Connectivity. | Khan AF et al. | — | 2025 | → |
| The Chongqing Adolescent Twin Study: An Integrative Multimodal Brain Imaging and Non-imaging Dataset. | Zhu Y et al. | — | 2025 | → |
| The genetic architecture of brainstem structures. | Xue H et al. | — | 2025 | → |
| The Genetic Architecture of the Human Corpus Callosum and its Subregions. | Bhatt RR et al. | — | 2025 | → |
| The human brainstem's red nucleus was upgraded to support goal-directed action. | Krimmel SR et al. | — | 2025 | → |
| The Impact of Multiband and In-Plane Acceleration on White Matter Microstructure Analysis. | Zhang Z et al. | — | 2025 | → |
| The impact of self-report inaccuracy in the UK Biobank and its interplay with selective participation. | Schoeler T et al. | — | 2025 | → |
| The Trait Coding Rule in Phenotype Space. | Wang J et al. | — | 2025 | → |
| Tobacco Smoking Functional Networks: A Whole-Brain Connectome Analysis in 24 539 Individuals. | Pan Y et al. | — | 2025 | → |
| TransUNET-DDPM: A transformer-enhanced diffusion model for subject-specific brain network generation and classification. | Ajith M et al. | — | 2025 | → |
| Ultrafine brain intrinsic connectivity networks template via very-high-order independent component analysis of large-scale resting-state functional magnetic resonance imaging data. | Mirzaeian S et al. | — | 2025 | → |
| Ultra-processed food consumption affects structural integrity of feeding-related brain regions independent of and via adiposity. | Morys F et al. | — | 2025 | → |
| Uncertainty mapping and probabilistic tractography using Simulation-based Inference in diffusion MRI: A comparison with classical Bayes. | Manzano-Patrón JP et al. | — | 2025 | → |
| Using an ordinary differential equation model to separate rest and task signals in fMRI. | Kashyap A et al. | — | 2025 | → |
| Using Extreme Value Statistics to Reconceptualize Psychopathology as Extreme Deviations From a Normative Reference Model. | Fraza C et al. | — | 2025 | → |
| Using precision approaches to improve brain-behavior prediction. | Lee HJ et al. | — | 2025 | → |
| VAE deep learning model with domain adaptation, transfer learning and harmonization for diagnostic classification from multi-site neuroimaging data. | Deshpande G et al. | — | 2025 | → |
| Versatile MRI acquisition and processing protocol for population-based neuroimaging. | Koch A et al. | — | 2025 | → |
| Vision and convolutional transformers for Alzheimer's disease diagnosis: a systematic review of architectures, multimodal fusion and critical gaps. | Afifi I et al. | — | 2025 | → |
| Volumetric Changes in Cerebellar Transverse Zones: Age and Sex Effects in Health and Neurological Disorders. | Ghiyamihoor F et al. | — | 2025 | → |
| Vulnerability to memory decline in aging revealed by a mega-analysis of structural brain change. | Vidal-Piñeiro D et al. | — | 2025 | → |
| White matter connections within the central sulcus subserving the somato-cognitive action network. | Skandalakis GP et al. | — | 2025 | → |
| White Matter Microstructural Alterations in Type 2 Diabetes: A Combined UK Biobank Study of Diffusion Tensor Imaging and Neurite Orientation Dispersion and Density Imaging. | Alotaibi A et al. | — | 2025 | → |
| White matter microstructure links with brain, bodily and genetic attributes in adolescence, mid- and late life. | Korbmacher M et al. | — | 2025 | → |
| Whole-genome sequencing of 490,640 UK Biobank participants. | UK Biobank Whole-Genome Sequencing Consortium | — | 2025 | → |
| Within-individual precision mapping of brain networks exclusively using task data. | Du J et al. | — | 2025 | → |
| A bimodal taxonomy of adult human brain sulcal morphology related to timing of fetal sulcation and trans-sulcal gene expression gradients. | Snyder WE et al. | — | 2024 | → |
| A comprehensive analysis of APOE genotype effects on human brain structure in the UK Biobank. | Heise V et al. | — | 2024 | → |
| A deep learning approach for mental health quality prediction using functional network connectivity and assessment data. | Ajith M et al. | — | 2024 | → |
| Adolescent substance use initiation and long-term neurobiological outcomes: insights, challenges and opportunities. | Boer OD et al. | — | 2024 | → |
| A federated learning architecture for secure and private neuroimaging analysis. | Stripelis D et al. | — | 2024 | → |
| A history of traumatic brain injury is associated with poorer cognition and imaging evidence of altered white matter tract integrity in UK Biobank (<i>n</i> = 50 376). | Lyall DM et al. | — | 2024 | → |
| A latent clinical-anatomical dimension relating metabolic syndrome to brain structure and cognition. | Petersen M et al. | — | 2024 | → |
| Algorithm-Based Modular Psychotherapy Alleviates Brain Inflammation in Generalized Anxiety Disorder. | Kéri S et al. | — | 2024 | → |
| A machine learning approach for potential Super-Agers identification using neuronal functional connectivity networks. | Fili M et al. | — | 2024 | → |
| A Method for Multimodal IVA Fusion Within a MISA Unified Model Reveals Markers of Age, Sex, Cognition, and Schizophrenia in Large Neuroimaging Studies. | Silva RF et al. | — | 2024 | → |
| Amygdala connectivity is associated with withdrawn/depressed behavior in a large sample of children from the Adolescent Brain Cognitive Development (ABCD) Study®. | Thomas E et al. | — | 2024 | → |
| Analysis of Brain Age Gap across Subject Cohorts and Prediction Model Architectures. | Dular L et al. | — | 2024 | → |
| Anatomy-aware and acquisition-agnostic joint registration with SynthMorph. | Hoffmann M et al. | — | 2024 | → |
| Anemia, blood cell indices, genetic correlations, and brain structures: A comprehensive analysis of roles in Parkinson's disease risk. | Zuo CY et al. | — | 2024 | → |
| An epidemiological study of season of birth, mental health, and neuroimaging in the UK Biobank. | Viejo-Romero M et al. | — | 2024 | → |
| An Honest Reckoning With the Amygdala and Mental Illness. | Fox AS et al. | — | 2024 | → |
| Anti-Inflammatory Diet and Dementia in Older Adults With Cardiometabolic Diseases. | Dove A et al. | — | 2024 | → |
| ANTsX neuroimaging-derived structural phenotypes of UK Biobank. | Tustison NJ et al. | — | 2024 | → |
| Approximation of bone mineral density and subcutaneous adiposity using T1-weighted images of the human head. | Kalc P et al. | — | 2024 | → |
| A precision neuroscience approach to estimating reliability of neural responses during emotion processing: Implications for task-fMRI. | Flournoy JC et al. | — | 2024 | → |
| Arterial Spin Labeling Perfusion Imaging. | Taso M et al. | — | 2024 | → |
| Artificial intelligence for neuro MRI acquisition: a review. | Yang H et al. | — | 2024 | → |
| Artificial Intelligence's Transformative Role in Illuminating Brain Function in Long COVID Patients Using PET/FDG. | Rudroff T | — | 2024 | → |
| Assessment of precision and accuracy of brain white matter microstructure using combined diffusion MRI and relaxometry. | Coelho S et al. | — | 2024 | → |
| Association and prediction of Life's Essential 8 score, genetic susceptibility with MCI, dementia, and MRI indices: A prospective cohort study. | Wang Q et al. | — | 2024 | → |
| Association Between Body Composition Patterns, Cardiovascular Disease, and Risk of Neurodegenerative Disease in the UK Biobank. | Xu S et al. | — | 2024 | → |
| Association between cannabis use and brain structure and function: an observational and Mendelian randomisation study. | Ishrat S et al. | — | 2024 | → |
| Association between dietary magnesium intake, inflammation, and neurodegeneration. | Alateeq K et al. | — | 2024 | → |
| Association between household size and risk of incident dementia in the UK Biobank study. | Cong CH et al. | — | 2024 | → |
| Association between Resting Heart Rate and Machine Learning-Based Brain Age in Middle- and Older-Age. | Wang J et al. | — | 2024 | → |
| "Association of blood cell indices and anemia with risk of incident dementia": Missing important covariates in MRI analysis may be misleading. | Zhang X et al. | — | 2024 | → |
| Association of Cardiovascular Health With Brain Age Estimated Using Machine Learning Methods in Middle-Aged and Older Adults. | Huang H et al. | — | 2024 | → |
| Association of Cognitive Reserve Indicator with Cognitive Decline and Structural Brain Differences in Middle and Older Age: Findings from the UK Biobank. | Yang W et al. | — | 2024 | → |
| Association of Kidney Function With Dementia and Structural Brain Differences: A Large Population-Based Cohort Study. | Wang S et al. | — | 2024 | → |
| Association of polygenic scores for autism with volumetric MRI phenotypes in cerebellum and brainstem in adults. | Mohammad S et al. | — | 2024 | → |
| Association of Poor Oral Health With Neuroimaging Markers of White Matter Injury in Middle-Aged Participants in the UK Biobank. | Rivier CA et al. | — | 2024 | → |
| Associations between accelerometer-derived sedentary behavior and physical activity with white matter hyperintensities in middle-aged to older adults. | Raichlen DA et al. | — | 2024 | → |
| Associations between adiposity and white matter hyperintensities: Cross-sectional and longitudinal analyses of 34,653 participants. | Wang RZ et al. | — | 2024 | → |
| Associations between COVID-19 and putative markers of neuroinflammation: A diffusion basis spectrum imaging study. | Zhang W et al. | — | 2024 | → |
| Associations of blood cell indices and anemia with risk of incident dementia. | Qiang YX et al. | — | 2024 | → |
| Associations of Coffee and Tea Consumption on Neural Network Connectivity: Unveiling the Role of Genetic Factors in Alzheimer's Disease Risk. | Li T et al. | — | 2024 | → |
| Associations of the Mediterranean-DASH Intervention for Neurodegenerative Delay diet with brain structural markers and their changes. | Chen H et al. | — | 2024 | → |
| A statistical method for image-mediated association studies discovers genes and pathways associated with four brain disorders. | He J et al. | — | 2024 | → |
| A structural heart-brain axis mediates the association between cardiovascular risk and cognitive function. | Jaggi A et al. | — | 2024 | → |
| A systematic review of structural neuroimaging markers of psychotherapeutic and pharmacological treatment for obsessive-compulsive disorder. | Moreau AL et al. | — | 2024 | → |
| A transcriptomic atlas of the human brain reveals genetically determined aspects of neuropsychiatric health. | Bledsoe X et al. | — | 2024 | → |
| Bayesian Lesion Estimation with a Structured Spike-and-Slab Prior. | Menacher A et al. | — | 2024 | → |
| Bidirectional two-sample Mendelian randomization analyses support causal relationships between structural and diffusion imaging-derived phenotypes and the risk of major neurodegenerative diseases. | Wang Z et al. | — | 2024 | → |
| Blurred streamlines: A novel representation to reduce redundancy in tractography. | Gabusi I et al. | — | 2024 | → |
| Brain age prediction across the human lifespan using multimodal MRI data. | Guan S et al. | — | 2024 | → |
| Brain aging patterns in a large and diverse cohort of 49,482 individuals. | Yang Z et al. | — | 2024 | → |
| Brain asymmetries from mid- to late life and hemispheric brain age. | Korbmacher M et al. | — | 2024 | → |
| Brain Care Score and Neuroimaging Markers of Brain Health in Asymptomatic Middle-Age Persons. | Rivier CA et al. | — | 2024 | → |
| Brain elastography in aging relates to fluid/solid trendlines. | Parker KJ et al. | — | 2024 | → |
| Brain fingerprinting and cognitive behavior predicting using functional connectome of high inter-subject variability. | Lu J et al. | — | 2024 | → |
| Brain Imaging and Phenotyping for the China Phenobank Project. | Bai W | — | 2024 | → |
| Brain-wide functional connectome analysis of 40,000 individuals reveals brain networks that show aging effects in older adults. | Pan Y et al. | — | 2024 | → |
| Cardiometabolic disease, cognitive decline, and brain structure in middle and older age. | Dove A et al. | — | 2024 | → |
| Causal Relationship between Aging and Anorexia Nervosa: A White-Matter-Microstructure-Mediated Mendelian Randomization Analysis. | Qiu H et al. | — | 2024 | → |
| Characterization and Mitigation of a Simultaneous Multi-Slice fMRI Artifact: Multiband Artifact Regression in Simultaneous Slices. | Tubiolo PN et al. | — | 2024 | → |
| Chronic Low-Grade Inflammation and Brain Structure in the Middle-Aged and Elderly Adults. | Bao Y et al. | — | 2024 | → |
| CiftiStorm pipeline: facilitating reproducible EEG/MEG source connectomics. | Areces-Gonzalez A et al. | — | 2024 | → |
| Classification accuracy of structural and functional connectomes across different depressive phenotypes. | Yeung HW et al. | — | 2024 | → |
| Cognitive, Behavioral, and Circadian Rhythm Interventions for Insomnia Alter Emotional Brain Responses. | Leerssen J et al. | — | 2024 | → |
| Common and unique brain aging patterns between females and males quantified by large-scale deep learning. | Du Y et al. | — | 2024 | → |
| Comparison of volumetric brain analysis in subjects with rheumatoid arthritis and ulcerative colitis. | Cox JG et al. | — | 2024 | → |
| Convolutional neural network-based classification of glaucoma using optic radiation tissue properties. | Kruper J et al. | — | 2024 | → |
| Co-representation of Functional Brain Networks Is Shaped by Cortical Myeloarchitecture and Reveals Individual Behavioral Ability. | Chu C et al. | — | 2024 | → |
| Counterfactual MRI Generation with Denoising Diffusion Models for Interpretable Alzheimer's Disease Effect Detection. | Dhinagar NJ et al. | — | 2024 | → |
| Cumulative Effects of Resting-State Connectivity Across All Brain Networks Significantly Correlate with Attention-Deficit Hyperactivity Disorder Symptoms. | Mooney MA et al. | — | 2024 | → |
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| Dietary N-6 Polyunsaturated Fatty Acid Intake and Brain Health in Middle-Aged and Elderly Adults. | Gu J et al. | — | 2024 | → |
| Different cortical connectivities in human females and males relate to differences in strength and body composition, reward and emotional systems, and memory. | Zhang R et al. | — | 2024 | → |
| Diffusion imaging genomics provides novel insight into early mechanisms of cerebral small vessel disease. | Le Grand Q et al. | — | 2024 | → |
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| DIMOND: DIffusion Model OptimizatioN with Deep Learning. | Li Z et al. | — | 2024 | → |
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| Dissecting unique and common variance across body and brain health indicators using age prediction. | Beck D et al. | — | 2024 | → |
| Distinct impact modes of polygenic disposition to dyslexia in the adult brain. | Soheili-Nezhad S et al. | — | 2024 | → |
| Distinct Longitudinal Brain White Matter Microstructure Changes and Associated Polygenic Risk of Common Psychiatric Disorders and Alzheimer's Disease in the UK Biobank. | Korbmacher M et al. | — | 2024 | → |
| Does the brain behave like a (complex) network? I. Dynamics. | Papo D et al. | — | 2024 | → |
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| Elucidating Multimodal Imaging Patterns in Accelerated Brain Aging: Heterogeneity through a Discriminant Analysis Approach Using the UK Biobank Dataset. | Liu L et al. | — | 2024 | → |
| Enduring maternal brain changes and their role in mediating motherhood's impact on well-being. | Rotondi V et al. | — | 2024 | → |
| Exploring the Causal Relationship Between Inflammatory Cytokines and MRI-Derived Brain Iron: A Mendelian Randomization Study. | Wu Z et al. | — | 2024 | → |
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| fMRI-based spatio-temporal parcellations of the human brain. | Ling Q et al. | — | 2024 | → |
| FPLS-DC: functional partial least squares through distance covariance for imaging genetics. | Pan W et al. | — | 2024 | → |
| General and specific patterns of cortical gene expression as spatial correlates of complex cognitive functioning. | Moodie JE et al. | — | 2024 | → |
| Generalizable and replicable brain-based predictions of cognitive functioning across common psychiatric illness. | Chopra S et al. | — | 2024 | → |
| Gene-SGAN: discovering disease subtypes with imaging and genetic signatures via multi-view weakly-supervised deep clustering. | Yang Z et al. | — | 2024 | → |
| Genetic analyses identify brain imaging-derived phenotypes associated with the risk of amyotrophic lateral sclerosis. | Wang Y et al. | — | 2024 | → |
| Genetic architectures of cerebral ventricles and their overlap with neuropsychiatric traits. | Ge YJ et al. | — | 2024 | → |
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| Genetics-driven risk predictions leveraging the Mendelian randomization framework. | Sens D et al. | — | 2024 | → |
| Genome-wide association reveals a locus in neuregulin 3 associated with gabapentin efficacy in women with chronic pelvic pain. | Mackenzie SC et al. | — | 2024 | → |
| Gradients of Brain Organization: Smooth Sailing from Methods Development to User Community. | Royer J et al. | — | 2024 | → |
| Head motion in the UK Biobank imaging subsample: longitudinal stability, associations with psychological and physical health, and risk of incomplete data. | Ward J et al. | — | 2024 | → |
| Heterogeneous associations of multiplexed environmental factors and multidimensional aging metrics. | Pu F et al. | — | 2024 | → |
| High cognitive reserve attenuates the risk of dementia associated with cardiometabolic diseases. | Dove A et al. | — | 2024 | → |
| Hippocampal and limbic microstructure changes associated with stress across the lifespan: a UK biobank study. | McManus E et al. | — | 2024 | → |
| Hippocampal volumes in UK Biobank are associated with <i>APOE</i> only in older adults. | Chaloemtoem A et al. | — | 2024 | → |
| How measurement noise limits the accuracy of brain-behaviour predictions. | Gell M et al. | — | 2024 | → |
| Imaging genetics of language network functional connectivity reveals links with language-related abilities, dyslexia and handedness. | Amelink JS et al. | — | 2024 | → |
| Impaired mobility and MRI markers of vascular brain injury: Atherosclerosis Risk in Communities and UK Biobank studies. | Sharma R et al. | — | 2024 | → |
| Implementing ABCD study<sup>Ⓡ</sup> MRI sequences for multi-site cohort studies: Practical guide to necessary steps, preprocessing methods, and challenges. | Bano W et al. | — | 2024 | → |
| Improved Dementia Prediction in Cerebral Small Vessel Disease Using Deep Learning-Derived Diffusion Scalar Maps From T1. | Chen Y et al. | — | 2024 | → |
| Individual characteristics outperform resting-state fMRI for the prediction of behavioral phenotypes. | Omidvarnia A et al. | — | 2024 | → |
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| Individualized functional magnetic resonance imaging neuromodulation enhances visuospatial perception: a proof-of-concept study. | Allam A et al. | — | 2024 | → |
| Integrating Multi-Organ Imaging-Derived Phenotypes and Genomic Information for Predicting the Occurrence of Common Diseases. | Liu M et al. | — | 2024 | → |
| Integration of estimated regional gene expression with neuroimaging and clinical phenotypes at biobank scale. | Hoang N et al. | — | 2024 | → |
| Interactive effects of participant and stimulus race on cognitive performance in youth: Insights from the ABCD study. | Rubien-Thomas E et al. | — | 2024 | → |
| Internally consistent and fully unbiased multimodal MRI brain template construction from UK Biobank: Oxford-MM. | Arthofer C et al. | — | 2024 | → |
| Intrauterine growth and the tangential expansion of the human cerebral cortex in times of food scarcity and abundance. | Vosberg DE et al. | — | 2024 | → |
| Investigating the Relationship Between Smoking Behavior and Global Brain Volume. | Chang Y et al. | — | 2024 | → |
| Investigating the synergistic effects of hormone replacement therapy, apolipoprotein E and age on brain health in the UK Biobank. | Ambikairajah A et al. | — | 2024 | → |
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| Is the Relationship Between Cardiovascular Disease and Alzheimer's Disease Genetic? A Scoping Review. | Moore A et al. | — | 2024 | → |
| Lifetime Exposure to Depression and Neuroimaging Measures of Brain Structure and Function. | Wang X et al. | — | 2024 | → |
| Linking menopause-related factors, history of depression, APOE ε4, and proxies of biological aging in the UK biobank cohort. | Crestol A et al. | — | 2024 | → |
| Linking sarcopenia, brain structure and cognitive performance: a large-scale UK Biobank study. | Gurholt TP et al. | — | 2024 | → |
| Longitudinal microstructural changes in 18 amygdala nuclei resonate with cortical circuits and phenomics. | Ghanem K et al. | — | 2024 | → |
| LUKB: preparing local UK Biobank data for analysis. | Li X et al. | — | 2024 | → |
| Machine Learning of Functional Connectivity to Biotype Alcohol and Nicotine Use Disorders. | Zhu T et al. | — | 2024 | → |
| Macro- and micro-structural insights into primary dystonia: a UK Biobank study. | MacIver CL et al. | — | 2024 | → |
| Mapping Brain Structure Variability in Chronic Pain: The Role of Widespreadness and Pain Type and Its Mediating Relationship With Suicide Attempt. | Bhatt RR et al. | — | 2024 | → |
| Mapping the interplay of atrial fibrillation, brain structure, and cognitive dysfunction. | Petersen M et al. | — | 2024 | → |
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| Microstructural Properties of the Cerebellar Peduncles in Children With Developmental Language Disorder. | Asaridou SS et al. | — | 2024 | → |
| MMORF-FSL's MultiMOdal Registration Framework. | Lange FJ et al. | — | 2024 | → |
| Multilayer meta-matching: Translating phenotypic prediction models from multiple datasets to small data. | Chen P et al. | — | 2024 | → |
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| Multi-scale brain attributes contribute to the distribution of diffuse glioma subtypes. | Ren P et al. | — | 2024 | → |
| Multivariate brain-behaviour associations in psychiatric disorders. | Vieira S et al. | — | 2024 | → |
| Multivariate mediation analysis with voxel-based morphometry revealed the neurodegeneration pathways from genetic variants to Alzheimer's Disease. | Mu S et al. | — | 2024 | → |
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| Nonlinear latent representations of high-dimensional task-fMRI data: Unveiling cognitive and behavioral insights in heterogeneous spatial maps. | Zabihi M et al. | — | 2024 | → |
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| Organization of the human cerebral cortex estimated within individuals: networks, global topography, and function. | Du J et al. | — | 2024 | → |
| Oxytocin pathway gene variation and corticostriatal resting-state functional connectivity. | Xiao S et al. | — | 2024 | → |
| Pain can't be carved at the joints: defining function-based pain profiles and their relevance to chronic disease management in healthcare delivery design. | Barron DS et al. | — | 2024 | → |
| Parental education and income are linked to offspring cortical brain structure and psychopathology at 9-11 years. | Norbom LB et al. | — | 2024 | → |
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| Performance reserves in brain-imaging-based phenotype prediction. | Schulz MA et al. | — | 2024 | → |
| Plasma proteomic profiles of UK Biobank participants with multiple sclerosis. | Jacobs BM et al. | — | 2024 | → |
| Predicting high-level visual areas in the absence of task fMRI. | Molloy MF et al. | — | 2024 | → |
| Previous pregnancies might mitigate cortical brain differences associated with surgical menopause. | Fernández-Pena A et al. | — | 2024 | → |
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| Quantifying brain development in the HEALthy Brain and Child Development (HBCD) Study: The magnetic resonance imaging and spectroscopy protocol. | Dean DC et al. | — | 2024 | → |
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| The Association between Dietary Protein Intake and Sources and the Rate of Longitudinal Changes in Brain Structure. | Cui F et al. | — | 2024 | → |
| The brain's "dark energy" puzzle: How strongly is glucose metabolism linked to resting-state brain activity? | Volpi T et al. | — | 2024 | → |
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| A functional connectome signature of blood pressure in >30 000 participants from the UK biobank. | Jiang R et al. | — | 2023 | → |
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| Alzheimer's Disease Genetic Influences Impact the Associations between Diet and Resting-State Functional Connectivity: A Study from the UK Biobank. | Li T et al. | — | 2023 | → |
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| A Phenome-wide Association and Mendelian Randomization Study for Alzheimer's Disease: A Prospective Cohort Study of 502,493 Participants From the UK Biobank. | Chen SD et al. | — | 2023 | → |
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| A somato-cognitive action network alternates with effector regions in motor cortex. | Gordon EM et al. | — | 2023 | → |
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| Association of Cumulative Lifetime Exposure to Female Hormones With Cerebral Small Vessel Disease in Postmenopausal Women in the UK Biobank. | Cote S et al. | — | 2023 | → |
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| Association of liver fibrosis with cognitive test performance and brain imaging parameters in the UK Biobank study. | Parikh NS et al. | — | 2023 | → |
| Association of sleep behaviors with white matter hyperintensities and microstructural injury: a cross-sectional and longitudinal analysis of 26 354 participants. | Ning J et al. | — | 2023 | → |
| Associations between insomnia symptoms and functional connectivity in the UK Biobank cohort (n = 29,423). | Holub F et al. | — | 2023 | → |
| Associations Between Insulin-Like Growth Factor-1 and Resting-State Functional Connectivity in Cognitively Unimpaired Midlife Adults. | Li T et al. | — | 2023 | → |
| Associations between mental health, blood pressure and the development of hypertension. | Schaare HL et al. | — | 2023 | → |
| Associations between sleep health and grey matter volume in the UK Biobank cohort (<i>n</i> = 33 356). | Schiel JE et al. | — | 2023 | → |
| Associations of circulating metabolites with cerebral white matter hyperintensities. | Sun Y et al. | — | 2023 | → |
| Associations of Midlife Dietary Patterns with Incident Dementia and Brain Structure: Findings from the UK Biobank Study. | Zhang J et al. | — | 2023 | → |
| Associations of screen-based sedentary activities with all cause dementia, Alzheimer's disease, vascular dementia: a longitudinal study based on 462,524 participants from the UK Biobank. | Yuan S et al. | — | 2023 | → |
| Beyond the language network: Associations between reading, receptive vocabulary, and grey matter volume in 10-year-olds. | Langensee L et al. | — | 2023 | → |
| Bio-psycho-social factors' associations with brain age: a large-scale UK Biobank diffusion study of 35,749 participants. | Korbmacher M et al. | — | 2023 | → |
| Blood pressure-related white matter microstructural disintegrity and associated cognitive function impairment in asymptomatic adults. | Acosta JN et al. | — | 2023 | → |
| Brain Age Prediction Using 2D Projections Based on Higher-Order Statistical Moments and Eigenslices from 3D Magnetic Resonance Imaging Volumes. | Jönemo J et al. | — | 2023 | → |
| Brain disorders: Impact of mild SARS-CoV-2 may shrink several parts of the brain. | Kumar PR et al. | — | 2023 | → |
| Brain morphometry in older adults with and without dementia using extremely rapid structural scans. | Elliott ML et al. | — | 2023 | → |
| Brain Network Analysis: A Review on Multivariate Analytical Methods. | Bahrami M et al. | — | 2023 | → |
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| Brain network mapping and glioma pathophysiology. | Mandal AS et al. | — | 2023 | → |
| BrainStat: A toolbox for brain-wide statistics and multimodal feature associations. | Larivière S et al. | — | 2023 | → |
| Brain volumes, thicknesses, and surface areas as mediators of genetic factors and childhood adversity on intelligence. | Williams CM et al. | — | 2023 | → |
| Brain-wide associations between white matter and age highlight the role of fornix microstructure in brain ageing. | Korbmacher M et al. | — | 2023 | → |
| Brain-wide genome-wide colocalization study for integrating genetics, transcriptomics and brain morphometry in Alzheimer's disease. | Bao J et al. | — | 2023 | → |
| Cardiometabolic health across menopausal years is linked to white matter hyperintensities up to a decade later. | Schindler LS et al. | — | 2023 | → |
| Cardiovascular Disease and Alzheimer's Disease: The Heart-Brain Axis. | Saeed A et al. | — | 2023 | → |
| Causal associations of brain structure with bone mineral density: a large-scale genetic correlation study. | Guo B et al. | — | 2023 | → |
| Characterization of diffusion magnetic resonance imaging revealing relationships between white matter disconnection and behavioral disturbances in mild cognitive impairment: a systematic review. | Zhou Y et al. | — | 2023 | → |
| Chromosomal inversion polymorphisms shape human brain morphology. | Wang H et al. | — | 2023 | → |
| Circulating insulin-like growth factor-1 and brain health: Evidence from 369,711 participants in the UK Biobank. | Cao Z et al. | — | 2023 | → |
| Clinical Promise of Brain-Phenotype Modeling: A Review. | Greene AS et al. | — | 2023 | → |
| Comparison of Machine Learning Models for Brain Age Prediction Using Six Imaging Modalities on Middle-Aged and Older Adults. | Xiong M et al. | — | 2023 | → |
| Confronting racially exclusionary practices in the acquisition and analyses of neuroimaging data. | Ricard JA et al. | — | 2023 | → |
| Connectomes for 40,000 UK Biobank participants: A multi-modal, multi-scale brain network resource. | Mansour L S et al. | — | 2023 | → |
| Connectomes: from a sparsity of networks to large-scale databases. | Kaiser M | — | 2023 | → |
| Consistent effects of the genetics of happiness across the lifespan and ancestries in multiple cohorts. | Ward J et al. | — | 2023 | → |
| Covariation of preadult environmental exposures, adult brain imaging phenotypes, and adult personality traits. | Xue K et al. | — | 2023 | → |
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| Cross-trait prediction accuracy of summary statistics in genome-wide association studies. | Zhao B et al. | — | 2023 | → |
| Decoupling Sleep and Brain Size in Childhood: An Investigation of Genetic Covariation in the Adolescent Brain Cognitive Development Study. | Hernandez LM et al. | — | 2023 | → |
| Deep learning enabled fast 3D brain MRI at 0.055 tesla. | Man C et al. | — | 2023 | → |
| Dependence of resting-state-based cerebrovascular reactivity (CVR) mapping on spatial resolution. | Liu P et al. | — | 2023 | → |
| Developmental and aging resting functional magnetic resonance imaging brain state adaptations in adolescents and adults: A large N (>47K) study. | Abrol A et al. | — | 2023 | → |
| Dietary magnesium intake is related to larger brain volumes and lower white matter lesions with notable sex differences. | Alateeq K et al. | — | 2023 | → |
| Differentiable Graph Module (DGM) for Graph Convolutional Networks. | Kazi A et al. | — | 2023 | → |
| Diffusion MRI data analysis assisted by deep learning synthesized anatomical images (DeepAnat). | Li Z et al. | — | 2023 | → |
| Dissociable brain structural asymmetry patterns reveal unique phenome-wide profiles. | Saltoun K et al. | — | 2023 | → |
| Dissociating distinct cortical networks associated with subregions of the human medial temporal lobe using precision neuroimaging. | Reznik D et al. | — | 2023 | → |
| Effect of subject-specific head morphometry on specific absorption rate estimates in parallel-transmit MRI at 7 T. | Jeong H et al. | — | 2023 | → |
| Effects of television viewing on brain structures and risk of dementia in the elderly: Longitudinal analyses. | Takeuchi H et al. | — | 2023 | → |
| Elevated dementia risk, cognitive decline, and hippocampal atrophy in multisite chronic pain. | Zhao W et al. | — | 2023 | → |
| Equitable modelling of brain imaging by counterfactual augmentation with morphologically constrained 3D deep generative models. | Pombo G et al. | — | 2023 | → |
| Exploring structural connectomes in children with unilateral cerebral palsy using graph theory. | Radwan A et al. | — | 2023 | → |
| Exploring Successful Cognitive Aging: Insights Regarding Brain Structure, Function, and Demographics. | Xu X et al. | — | 2023 | → |
| FastSurfer-HypVINN: Automated sub-segmentation of the hypothalamus and adjacent structures on high-resolutional brain MRI. | Estrada S et al. | — | 2023 | → |
| Functional connectivity between interoceptive brain regions is associated with distinct health-related domains: A population-based neuroimaging study. | Luettich A et al. | — | 2023 | → |
| Genetic analyses identify brain structures related to cognitive impairment associated with elevated blood pressure. | Siedlinski M et al. | — | 2023 | → |
| Genetic architecture of the white matter connectome of the human brain. | Sha Z et al. | — | 2023 | → |
| Graph-matching distance between individuals' functional connectomes varies with relatedness, age, and cognitive score. | Bukhari H et al. | — | 2023 | → |
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| Preoperative evaluation of geriatric patients undergoing liver transplantation. | Akhtar S | — | 2022 | → |
| Quantification of brain age using high-resolution 7 tesla MR imaging and implications for patients with epilepsy. | Verma G et al. | — | 2022 | → |
| Quantifying bias in psychological and physical health in the UK Biobank imaging sub-sample. | Lyall DM et al. | — | 2022 | → |
| Rapid processing and quantitative evaluation of structural brain scans for adaptive multimodal imaging. | Váša F et al. | — | 2022 | → |
| Recent Advances and Future Directions in Brain MR Imaging Studies in Schizophrenia: Toward Elucidating Brain Pathology and Developing Clinical Tools. | Koike S et al. | — | 2022 | → |
| Recent advances in psychoradiology. | Luo L et al. | — | 2022 | → |
| Reliability of multi-site UK Biobank MRI brain phenotypes for the assessment of neuropsychiatric complications of SARS-CoV-2 infection: The COVID-CNS travelling heads study. | Duff E et al. | — | 2022 | → |
| Reproducible brain-wide association studies require thousands of individuals. | Marek S et al. | — | 2022 | → |
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| Restoring statistical validity in group analyses of motion-corrupted MRI data. | Lutti A et al. | — | 2022 | → |
| Risk-taking in humans and the medial orbitofrontal cortex reward system. | Rolls ET et al. | — | 2022 | → |
| SARS-CoV-2 is associated with changes in brain structure in UK Biobank. | Douaud G et al. | — | 2022 | → |
| Schizophrenia Imaging Signatures and Their Associations With Cognition, Psychopathology, and Genetics in the General Population. | Chand GB et al. | — | 2022 | → |
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| Structural neuroimaging measures and lifetime depression across levels of phenotyping in UK biobank. | Harris MA et al. | — | 2022 | → |
| Tackling the Complexity of Lesion-Symptoms Mapping: How to Bridge the Gap Between Data Scientists and Clinicians? | Mandonnet E et al. | — | 2022 | → |
| The additive impact of cardio-metabolic disorders and psychiatric illnesses on accelerated brain aging. | Ryan MC et al. | — | 2022 | → |
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| The BS variant of C4 protects against age-related loss of white matter microstructural integrity. | Traylor M et al. | — | 2022 | → |
| The Digital Brain Bank, an open access platform for post-mortem imaging datasets. | Tendler BC et al. | — | 2022 | → |
| The effects of stress across the lifespan on the brain, cognition and mental health: A UK biobank study. | McManus E et al. | — | 2022 | → |
| The genetic architecture of language functional connectivity. | Mekki Y et al. | — | 2022 | → |
| The link between liver fat and cardiometabolic diseases is highlighted by genome-wide association study of MRI-derived measures of body composition. | van der Meer D et al. | — | 2022 | → |
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| Using neuroimaging genomics to investigate the evolution of human brain structure. | Alagöz G et al. | — | 2022 | → |
| Wellbeing and brain structure: A comprehensive phenotypic and genetic study of image-derived phenotypes in the UK Biobank. | Jamshidi J et al. | — | 2022 | → |
| Adapting the UK Biobank Brain Imaging Protocol and Analysis Pipeline for the C-MORE Multi-Organ Study of COVID-19 Survivors. | Griffanti L et al. | — | 2021 | → |
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| Age- and Sex-Related Topological Organization of Human Brain Functional Networks and Their Relationship to Cognition. | Foo H et al. | — | 2021 | → |
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| A role for zinc transporter gene SLC39A12 in the nervous system and beyond. | Davis DN et al. | — | 2021 | → |
| Association Between Midlife Obesity and Its Metabolic Consequences, Cerebrovascular Disease, and Cognitive Decline. | Morys F et al. | — | 2021 | → |
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| Leisure Activities and Their Relationship With MRI Measures of Brain Structure, Functional Connectivity, and Cognition in the UK Biobank Cohort. | Anatürk M et al. | — | 2021 | → |
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| Non-parametric MRI Brain Atlas for the Polish Population. | Borys D et al. | — | 2021 | → |
| Not all voxels are created equal: Reducing estimation bias in regional NODDI metrics using tissue-weighted means. | Parker CS et al. | — | 2021 | → |
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| Whole-exome sequencing reveals a role of HTRA1 and EGFL8 in brain white matter hyperintensities. | Malik R et al. | — | 2021 | → |