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Dive into the research topics where Derrek P. Hibar is active.

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Featured researches published by Derrek P. Hibar.


Nature Genetics | 2012

Identification of common variants associated with human hippocampal and intracranial volumes

Jason L. Stein; Sarah E. Medland; A A Vasquez; Derrek P. Hibar; R. E. Senstad; Anderson M. Winkler; Roberto Toro; K Appel; R. Bartecek; Ørjan Bergmann; Manon Bernard; Andrew Anand Brown; Dara M. Cannon; M. Mallar Chakravarty; Andrea Christoforou; M. Domin; Oliver Grimm; Marisa Hollinshead; Avram J. Holmes; Georg Homuth; J.J. Hottenga; Camilla Langan; Lorna M. Lopez; Narelle K. Hansell; Kristy Hwang; Sungeun Kim; Gonzalo Laje; Phil H. Lee; Xinmin Liu; Eva Loth

Identifying genetic variants influencing human brain structures may reveal new biological mechanisms underlying cognition and neuropsychiatric illness. The volume of the hippocampus is a biomarker of incipient Alzheimers disease and is reduced in schizophrenia, major depression and mesial temporal lobe epilepsy. Whereas many brain imaging phenotypes are highly heritable, identifying and replicating genetic influences has been difficult, as small effects and the high costs of magnetic resonance imaging (MRI) have led to underpowered studies. Here we report genome-wide association meta-analyses and replication for mean bilateral hippocampal, total brain and intracranial volumes from a large multinational consortium. The intergenic variant rs7294919 was associated with hippocampal volume (12q24.22; N = 21,151; P = 6.70 × 10−16) and the expression levels of the positional candidate gene TESC in brain tissue. Additionally, rs10784502, located within HMGA2, was associated with intracranial volume (12q14.3; N = 15,782; P = 1.12 × 10−12). We also identified a suggestive association with total brain volume at rs10494373 within DDR2 (1q23.3; N = 6,500; P = 5.81 × 10−7).


Molecular Psychiatry | 2016

Subcortical brain volume abnormalities in 2028 individuals with schizophrenia and 2540 healthy controls via the ENIGMA consortium

T G M van Erp; Derrek P. Hibar; Jerod Rasmussen; David C. Glahn; Godfrey D. Pearlson; Ole A. Andreassen; Ingrid Agartz; Lars T. Westlye; Unn K. Haukvik; Anders M. Dale; Ingrid Melle; Cecilie B. Hartberg; Oliver Gruber; Bernd Kraemer; David Zilles; Gary Donohoe; Sinead Kelly; Colm McDonald; Derek W. Morris; Dara M. Cannon; Aiden Corvin; Marise W J Machielsen; Laura Koenders; L. de Haan; Dick J. Veltman; Theodore D. Satterthwaite; Daniel H. Wolf; R.C. Gur; Raquel E. Gur; Steve Potkin

The profile of brain structural abnormalities in schizophrenia is still not fully understood, despite decades of research using brain scans. To validate a prospective meta-analysis approach to analyzing multicenter neuroimaging data, we analyzed brain MRI scans from 2028 schizophrenia patients and 2540 healthy controls, assessed with standardized methods at 15 centers worldwide. We identified subcortical brain volumes that differentiated patients from controls, and ranked them according to their effect sizes. Compared with healthy controls, patients with schizophrenia had smaller hippocampus (Cohen’s d=−0.46), amygdala (d=−0.31), thalamus (d=−0.31), accumbens (d=−0.25) and intracranial volumes (d=−0.12), as well as larger pallidum (d=0.21) and lateral ventricle volumes (d=0.37). Putamen and pallidum volume augmentations were positively associated with duration of illness and hippocampal deficits scaled with the proportion of unmedicated patients. Worldwide cooperative analyses of brain imaging data support a profile of subcortical abnormalities in schizophrenia, which is consistent with that based on traditional meta-analytic approaches. This first ENIGMA Schizophrenia Working Group study validates that collaborative data analyses can readily be used across brain phenotypes and disorders and encourages analysis and data sharing efforts to further our understanding of severe mental illness.


Molecular Psychiatry | 2016

Subcortical brain alterations in major depressive disorder: findings from the ENIGMA Major Depressive Disorder working group.

Lianne Schmaal; Dick J. Veltman; T G M van Erp; Philipp G. Sämann; Thomas Frodl; Neda Jahanshad; Elizabeth Loehrer; Henning Tiemeier; A. Hofman; Wiro J. Niessen; Meike W. Vernooij; M. A. Ikram; K. Wittfeld; H. J. Grabe; A Block; K. Hegenscheid; Henry Völzke; D. Hoehn; Michael Czisch; Jim Lagopoulos; Sean N. Hatton; Ian B. Hickie; Roberto Goya-Maldonado; Bernd Krämer; Oliver Gruber; Baptiste Couvy-Duchesne; Miguel E. Rentería; Lachlan T. Strike; N T Mills; G. I. de Zubicaray

The pattern of structural brain alterations associated with major depressive disorder (MDD) remains unresolved. This is in part due to small sample sizes of neuroimaging studies resulting in limited statistical power, disease heterogeneity and the complex interactions between clinical characteristics and brain morphology. To address this, we meta-analyzed three-dimensional brain magnetic resonance imaging data from 1728 MDD patients and 7199 controls from 15 research samples worldwide, to identify subcortical brain volumes that robustly discriminate MDD patients from healthy controls. Relative to controls, patients had significantly lower hippocampal volumes (Cohen’s d=−0.14, % difference=−1.24). This effect was driven by patients with recurrent MDD (Cohen’s d=−0.17, % difference=−1.44), and we detected no differences between first episode patients and controls. Age of onset ⩽21 was associated with a smaller hippocampus (Cohen’s d=−0.20, % difference=−1.85) and a trend toward smaller amygdala (Cohen’s d=−0.11, % difference=−1.23) and larger lateral ventricles (Cohen’s d=0.12, % difference=5.11). Symptom severity at study inclusion was not associated with any regional brain volumes. Sample characteristics such as mean age, proportion of antidepressant users and proportion of remitted patients, and methodological characteristics did not significantly moderate alterations in brain volumes in MDD. Samples with a higher proportion of antipsychotic medication users showed larger caudate volumes in MDD patients compared with controls. This currently largest worldwide effort to identify subcortical brain alterations showed robust smaller hippocampal volumes in MDD patients, moderated by age of onset and first episode versus recurrent episode status.


Proceedings of the National Academy of Sciences of the United States of America | 2010

A commonly carried allele of the obesity-related FTO gene is associated with reduced brain volume in the healthy elderly

April J. Ho; Jason L. Stein; Xue Hua; Suh Lee; Derrek P. Hibar; Alex D. Leow; Ivo D. Dinov; Arthur W. Toga; Andrew J. Saykin; Li Shen; Tatiana Foroud; Nathan Pankratz; Matthew J. Huentelman; David Craig; Jill D. Gerber; April N. Allen; Jason J. Corneveaux; Dietrich A. Stephan; Charles DeCarli; Bryan M. DeChairo; Steven G. Potkin; Clifford R. Jack; Michael W. Weiner; Cyrus A. Raji; Oscar L. Lopez; James T. Becker; Owen T. Carmichael; Paul M. Thompson

A recently identified variant within the fat mass and obesity-associated (FTO) gene is carried by 46% of Western Europeans and is associated with an ~1.2 kg higher weight, on average, in adults and an ~1 cm greater waist circumference. With >1 billion overweight and 300 million obese persons worldwide, it is crucial to understand the implications of carrying this very common allele for the health of our aging population. FTO is highly expressed in the brain and elevated body mass index (BMI) is associated with brain atrophy, but it is unknown how the obesity-associated risk allele affects human brain structure. We therefore generated 3D maps of regional brain volume differences in 206 healthy elderly subjects scanned with MRI and genotyped as part of the Alzheimers Disease Neuroimaging Initiative. We found a pattern of systematic brain volume deficits in carriers of the obesity-associated risk allele versus noncarriers. Relative to structure volumes in the mean template, FTO risk allele carriers versus noncarriers had an average brain volume difference of ~8% in the frontal lobes and 12% in the occipital lobes—these regions also showed significant volume deficits in subjects with higher BMI. These brain differences were not attributable to differences in cholesterol levels, hypertension, or the volume of white matter hyperintensities; which were not detectably higher in FTO risk allele carriers versus noncarriers. These brain maps reveal that a commonly carried susceptibility allele for obesity is associated with structural brain atrophy, with implications for the health of the elderly.


Nature Genetics | 2012

Common variants at 12q14 and 12q24 are associated with hippocampal volume

Joshua C. Bis; Charles DeCarli; Albert V. Smith; Fedde van der Lijn; Fabrice Crivello; Myriam Fornage; Stéphanie Debette; Joshua M. Shulman; Helena Schmidt; Velandai Srikanth; Maaike Schuur; Lei Yu; Seung Hoan Choi; Sigurdur Sigurdsson; Benjamin F.J. Verhaaren; Anita L. DeStefano; Jean Charles Lambert; Clifford R. Jack; Maksim Struchalin; Jim Stankovich; Carla A. Ibrahim-Verbaas; Debra A. Fleischman; Alex Zijdenbos; Tom den Heijer; Bernard Mazoyer; Laura H. Coker; Christian Enzinger; Patrick Danoy; Najaf Amin; Konstantinos Arfanakis

Aging is associated with reductions in hippocampal volume that are accelerated by Alzheimers disease and vascular risk factors. Our genome-wide association study (GWAS) of dementia-free persons (n = 9,232) identified 46 SNPs at four loci with P values of <4.0 × 10−7. In two additional samples (n = 2,318), associations were replicated at 12q14 within MSRB3-WIF1 (discovery and replication; rs17178006; P = 5.3 × 10−11) and at 12q24 near HRK-FBXW8 (rs7294919; P = 2.9 × 10−11). Remaining associations included one SNP at 2q24 within DPP4 (rs6741949; P = 2.9 × 10−7) and nine SNPs at 9p33 within ASTN2 (rs7852872; P = 1.0 × 10−7); along with the chromosome 12 associations, these loci were also associated with hippocampal volume (P < 0.05) in a third younger, more heterogeneous sample (n = 7,794). The SNP in ASTN2 also showed suggestive association with decline in cognition in a largely independent sample (n = 1,563). These associations implicate genes related to apoptosis (HRK), development (WIF1), oxidative stress (MSR3B), ubiquitination (FBXW8) and neuronal migration (ASTN2), as well as enzymes targeted by new diabetes medications (DPP4), indicating new genetic influences on hippocampal size and possibly the risk of cognitive decline and dementia.


The Lancet Psychiatry | 2017

Subcortical brain volume differences in participants with attention deficit hyperactivity disorder in children and adults: a cross-sectional mega-analysis

Martine Hoogman; Janita Bralten; Derrek P. Hibar; Maarten Mennes; Marcel P. Zwiers; Lizanne S.J. Schweren; Kimm J. E. van Hulzen; Sarah E. Medland; Elena Shumskaya; Neda Jahanshad; Patrick de Zeeuw; Eszter Szekely; Gustavo Sudre; Thomas Wolfers; Alberdingk M.H. Onnink; Janneke Dammers; Jeanette C. Mostert; Yolanda Vives-Gilabert; Gregor Kohls; Eileen Oberwelland; Jochen Seitz; Martin Schulte-Rüther; Sara Ambrosino; Alysa E. Doyle; Marie Farstad Høvik; Margaretha Dramsdahl; Leanne Tamm; Theo G.M. van Erp; Anders M. Dale; Andrew J. Schork

BACKGROUND Neuroimaging studies have shown structural alterations in several brain regions in children and adults with attention deficit hyperactivity disorder (ADHD). Through the formation of the international ENIGMA ADHD Working Group, we aimed to address weaknesses of previous imaging studies and meta-analyses, namely inadequate sample size and methodological heterogeneity. We aimed to investigate whether there are structural differences in children and adults with ADHD compared with those without this diagnosis. METHODS In this cross-sectional mega-analysis, we used the data from the international ENIGMA Working Group collaboration, which in the present analysis was frozen at Feb 8, 2015. Individual sites analysed structural T1-weighted MRI brain scans with harmonised protocols of individuals with ADHD compared with those who do not have this diagnosis. Our primary outcome was to assess case-control differences in subcortical structures and intracranial volume through pooling of all individual data from all cohorts in this collaboration. For this analysis, p values were significant at the false discovery rate corrected threshold of p=0·0156. FINDINGS Our sample comprised 1713 participants with ADHD and 1529 controls from 23 sites with a median age of 14 years (range 4-63 years). The volumes of the accumbens (Cohens d=-0·15), amygdala (d=-0·19), caudate (d=-0·11), hippocampus (d=-0·11), putamen (d=-0·14), and intracranial volume (d=-0·10) were smaller in individuals with ADHD compared with controls in the mega-analysis. There was no difference in volume size in the pallidum (p=0·95) and thalamus (p=0·39) between people with ADHD and controls. Exploratory lifespan modelling suggested a delay of maturation and a delay of degeneration, as effect sizes were highest in most subgroups of children (<15 years) versus adults (>21 years): in the accumbens (Cohens d=-0·19 vs -0·10), amygdala (d=-0·18 vs -0·14), caudate (d=-0·13 vs -0·07), hippocampus (d=-0·12 vs -0·06), putamen (d=-0·18 vs -0·08), and intracranial volume (d=-0·14 vs 0·01). There was no difference between children and adults for the pallidum (p=0·79) or thalamus (p=0·89). Case-control differences in adults were non-significant (all p>0·03). Psychostimulant medication use (all p>0·15) or symptom scores (all p>0·02) did not influence results, nor did the presence of comorbid psychiatric disorders (all p>0·5). INTERPRETATION With the largest dataset to date, we add new knowledge about bilateral amygdala, accumbens, and hippocampus reductions in ADHD. We extend the brain maturation delay theory for ADHD to include subcortical structures and refute medication effects on brain volume suggested by earlier meta-analyses. Lifespan analyses suggest that, in the absence of well powered longitudinal studies, the ENIGMA cross-sectional sample across six decades of ages provides a means to generate hypotheses about lifespan trajectories in brain phenotypes. FUNDING National Institutes of Health.


Neurobiology of Aging | 2010

Boosting power for clinical trials using classifiers based on multiple biomarkers

Omid Kohannim; Xue Hua; Derrek P. Hibar; Suh Lee; Yi-Yu Chou; Arthur W. Toga; Clifford R. Jack; Michael W. Weiner; Paul M. Thompson

Machine learning methods pool diverse information to perform computer-assisted diagnosis and predict future clinical decline. We introduce a machine learning method to boost power in clinical trials. We created a Support Vector Machine algorithm that combines brain imaging and other biomarkers to classify 737 Alzheimers disease Neuroimaging initiative (ADNI) subjects as having Alzheimers disease (AD), mild cognitive impairment (MCI), or normal controls. We trained our classifiers based on example data including: MRI measures of hippocampal, ventricular, and temporal lobe volumes, a PET-FDG numerical summary, CSF biomarkers (t-tau, p-tau, and Abeta(42)), ApoE genotype, age, sex, and body mass index. MRI measures contributed most to Alzheimers disease (AD) classification; PET-FDG and CSF biomarkers, particularly Abeta(42), contributed more to MCI classification. Using all biomarkers jointly, we used our classifier to select the one-third of the subjects most likely to decline. In this subsample, fewer than 40 AD and MCI subjects would be needed to detect a 25% slowing in temporal lobe atrophy rates with 80% power--a substantial boosting of power relative to standard imaging measures.


Neurobiology of Aging | 2010

Obesity is linked with lower brain volume in 700 AD and MCI patients

April J. Ho; Cyrus A. Raji; James T. Becker; Oscar L. Lopez; Lewis H. Kuller; Xue Hua; Suh Lee; Derrek P. Hibar; Ivo D. Dinov; Jason L. Stein; Clifford R. Jack; Michael W. Weiner; Arthur W. Toga; Paul M. Thompson

Obesity is associated with lower brain volumes in cognitively normal elderly subjects, but no study has yet investigated the effects of obesity on brain structure in patients with mild cognitive impairment (MCI) or Alzheimers disease (AD). To determine if higher body mass index (BMI) is associated with brain volume deficits in cognitively impaired elderly subjects, we analyzed brain magnetic resonance imaging (MRI) scans of 700 MCI or AD patients from 2 different cohorts: the Alzheimers Disease Neuroimaging Initiative (ADNI) and the Cardiovascular Health Study-Cognition Study (CHS-CS). Tensor-based morphometry (TBM) was used to create 3-dimensional maps of regional tissue excess or deficits in subjects with MCI (ADNI, n = 399; CHS-CS, n = 77) and AD (ADNI, n = 188; CHS, n = 36). In both AD and MCI groups, higher body mass index was associated with brain volume deficits in frontal, temporal, parietal, and occipital lobes; the atrophic pattern was consistent in both ADNI and CHS populations. Cardiovascular risk factors, especially obesity, should be considered as influencing brain structure in those already afflicted by cognitive impairment and dementia.


NeuroImage | 2010

Genome-Wide Analysis Reveals Novel Genes Influencing Temporal Lobe Structure with Relevance to Neurodegeneration in Alzheimer’s Disease

Jason L. Stein; Xue Hua; Jonathan H. Morra; Suh Lee; Derrek P. Hibar; April J. Ho; Alex D. Leow; Arthur W. Toga; Jae Hoon Sul; Hyun Min Kang; Eleazar Eskin; Andrew J. Saykin; Li Shen; Tatiana Foroud; Nathan Pankratz; Matthew J. Huentelman; David Craig; Jill D. Gerber; April N. Allen; Jason J. Corneveaux; Dietrich A. Stephan; Jennifer A. Webster; Bryan M. DeChairo; Steven G. Potkin; Clifford R. Jack; Michael W. Weiner; Paul M. Thompson

In a genome-wide association study of structural brain degeneration, we mapped the 3D profile of temporal lobe volume differences in 742 brain MRI scans of Alzheimers disease patients, mildly impaired, and healthy elderly subjects. After searching 546,314 genomic markers, 2 single nucleotide polymorphisms (SNPs) were associated with bilateral temporal lobe volume (P<5 x 10(-7)). One SNP, rs10845840, is located in the GRIN2B gene which encodes the N-methyl-d-aspartate (NMDA) glutamate receptor NR2B subunit. This protein - involved in learning and memory, and excitotoxic cell death - has age-dependent prevalence in the synapse and is already a therapeutic target in Alzheimers disease. Risk alleles for lower temporal lobe volume at this SNP were significantly over-represented in AD and MCI subjects vs. controls (odds ratio=1.273; P=0.039) and were associated with mini-mental state exam scores (MMSE; t=-2.114; P=0.035) demonstrating a negative effect on global cognitive function. Voxelwise maps of genetic association of this SNP with regional brain volumes, revealed intense temporal lobe effects (FDR correction at q=0.05; critical P=0.0257). This study uses large-scale brain mapping for gene discovery with implications for Alzheimers disease.


NeuroImage | 2011

Voxelwise gene-wide association study (vGeneWAS): Multivariate gene-based association testing in 731 elderly subjects

Derrek P. Hibar; Jason L. Stein; Omid Kohannim; Neda Jahanshad; Andrew J. Saykin; Li Shen; Sungeun Kim; Nathan Pankratz; Tatiana Foroud; Matthew J. Huentelman; Steven G. Potkin; Clifford R. Jack; Michael W. Weiner; Arthur W. Toga; Paul M. Thompson

Imaging traits provide a powerful and biologically relevant substrate to examine the influence of genetics on the brain. Interest in genome-wide, brain-wide search for influential genetic variants is growing, but has mainly focused on univariate, SNP-based association tests. Moving to gene-based multivariate statistics, we can test the combined effect of multiple genetic variants in a single test statistic. Multivariate models can reduce the number of statistical tests in gene-wide or genome-wide scans and may discover gene effects undetectable with SNP-based methods. Here we present a gene-based method for associating the joint effect of single nucleotide polymorphisms (SNPs) in 18,044 genes across 31,662 voxels of the whole brain in 731 elderly subjects (mean age: 75.56±6.82SD years; 430 males) from the Alzheimers Disease Neuroimaging Initiative (ADNI). Structural MRI scans were analyzed using tensor-based morphometry (TBM) to compute 3D maps of regional brain volume differences compared to an average template image based on healthy elderly subjects. Using the voxel-level volume difference values as the phenotype, we selected the most significantly associated gene (out of 18,044) at each voxel across the brain. No genes identified were significant after correction for multiple comparisons, but several known candidates were re-identified, as were other genes highly relevant to brain function. GAB2, which has been previously associated with late-onset AD, was identified as the top gene in this study, suggesting the validity of the approach. This multivariate, gene-based voxelwise association study offers a novel framework to detect genetic influences on the brain.

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Paul M. Thompson

University of Southern California

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Neda Jahanshad

University of Southern California

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Arthur W. Toga

University of Southern California

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Jason L. Stein

University of California

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Nicholas G. Martin

QIMR Berghofer Medical Research Institute

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Xue Hua

University of Southern California

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