Andrew Anand Brown
University of Geneva
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Featured researches published by Andrew Anand Brown.
Nature Genetics | 2012
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).
Journal of Psychiatric Research | 2010
Lavinia Athanasiu; Morten Mattingsdal; Anna K. Kähler; Andrew Anand Brown; Omar Gustafsson; Ingrid Agartz; Ina Giegling; Pierandrea Muglia; Sven Cichon; Marcella Rietschel; Olli Pietiläinen; Leena Peltonen; Elvira Bramon; David A. Collier; David St Clair; Engilbert Sigurdsson; Hannes Petursson; Dan Rujescu; Ingrid Melle; Vidar M. Steen; Srdjan Djurovic; Ole A. Andreassen
We have performed a genome-wide association study (GWAS) of schizophrenia in a Norwegian discovery sample of 201 cases and 305 controls (TOP study) with a focused replication analysis in a larger European sample of 2663 cases and 13,780 control subjects (SGENE-plus study). Firstly, the discovery sample was genotyped with Affymetrix Genome-Wide Human SNP Array 6.0 and 572,888 markers were tested for schizophrenia association. No SNPs in the discovery sample attained genome-wide significance (P<8.7 x 10(-8)). Secondly, based on the GWAS data, we selected 1000 markers with the lowest P values in the discovery TOP sample, and tested these (or HapMap-based surrogates) for association in the replication sample. Sixteen loci were associated with schizophrenia (nominal P value<0.05 and concurring OR) in the replication sample. As a next step, we performed a combined analysis of the findings from these two studies, and the strongest evidence for association with schizophrenia was provided for markers rs7045881 on 9p21, rs433598 on 16p12 and rs10761482 on 10q21. The markers are located in PLAA, ACSM1 and ANK3, respectively. PLAA has not previously been described as a susceptibility gene, but 9p21 is implied as a schizophrenia linkage region. ACSM1 has been identified as a susceptibility gene in a previous schizophrenia GWAS study. The association of ANK3 with schizophrenia is intriguing in light of recent associations of ANK3 with bipolar disorder, thereby supporting the hypothesis of an overlap in genetic susceptibility between these psychopathological entities.
Genome Biology | 2013
Daniel Glass; Ana Viñuela; Matthew N. Davies; Adaikalavan Ramasamy; Leopold Parts; David Knowles; Andrew Anand Brown; Åsa K. Hedman; Kerrin S. Small; Alfonso Buil; Elin Grundberg; Alexandra C. Nica; Paola Di Meglio; Frank O. Nestle; Mina Ryten; Richard Durbin; Mark I. McCarthy; Panagiotis Deloukas; Emmanouil T. Dermitzakis; Michael E. Weale; Veronique Bataille; Tim D. Spector
BackgroundPrevious studies have demonstrated that gene expression levels change with age. These changes are hypothesized to influence the aging rate of an individual. We analyzed gene expression changes with age in abdominal skin, subcutaneous adipose tissue and lymphoblastoid cell lines in 856 female twins in the age range of 39-85 years. Additionally, we investigated genotypic variants involved in genotype-by-age interactions to understand how the genomic regulation of gene expression alters with age.ResultsUsing a linear mixed model, differential expression with age was identified in 1,672 genes in skin and 188 genes in adipose tissue. Only two genes expressed in lymphoblastoid cell lines showed significant changes with age. Genes significantly regulated by age were compared with expression profiles in 10 brain regions from 100 postmortem brains aged 16 to 83 years. We identified only one age-related gene common to the three tissues. There were 12 genes that showed differential expression with age in both skin and brain tissue and three common to adipose and brain tissues.ConclusionsSkin showed the most age-related gene expression changes of all the tissues investigated, with many of the genes being previously implicated in fatty acid metabolism, mitochondrial activity, cancer and splicing. A significant proportion of age-related changes in gene expression appear to be tissue-specific with only a few genes sharing an age effect in expression across tissues. More research is needed to improve our understanding of the genetic influences on aging and the relationship with age-related diseases.
Proceedings of the National Academy of Sciences of the United States of America | 2010
Lars M. Rimol; Ingrid Agartz; Srdjan Djurovic; Andrew Anand Brown; J. Cooper Roddey; Anna K. Kähler; Morten Mattingsdal; Lavinia Athanasiu; Alexander H. Joyner; Nicholas J. Schork; Eric Halgren; Kjetil Sundet; Ingrid Melle; Anders M. Dale; Ole A. Andreassen
Loss-of-function mutations in the genes associated with primary microcephaly (MCPH) reduce human brain size by about two-thirds, without producing gross abnormalities in brain organization or physiology and leaving other organs largely unaffected [Woods CG, et al. (2005) Am J Hum Genet 76:717–728]. There is also evidence suggesting that MCPH genes have evolved rapidly in primates and humans and have been subjected to selection in recent human evolution [Vallender EJ, et al. (2008) Trends Neurosci 31:637–644]. Here, we show that common variants of MCPH genes account for some of the common variation in brain structure in humans, independently of disease status. We investigated the correlations of SNPs from four MCPH genes with brain morphometry phenotypes obtained with MRI. We found significant, sex-specific associations between common, nonexonic, SNPs of the genes CDK5RAP2, MCPH1, and ASPM, with brain volume or cortical surface area in an ethnically homogenous Norwegian discovery sample (n = 287), including patients with mental illness. The most strongly associated SNP findings were replicated in an independent North American sample (n = 656), which included patients with dementia. These results are consistent with the view that common variation in brain structure is associated with genetic variants located in nonexonic, presumably regulatory, regions.
Nature Genetics | 2016
Jessica N. Cooke Bailey; Stephanie Loomis; Jae H. Kang; R. Rand Allingham; Puya Gharahkhani; Chiea Chuen Khor; Kathryn P. Burdon; Hugues Aschard; Daniel I. Chasman; Robert P. Igo; Pirro G. Hysi; Craig A. Glastonbury; Allison E. Ashley-Koch; Murray H. Brilliant; Andrew Anand Brown; Donald L. Budenz; Alfonso Buil; Ching-Yu Cheng; Hyon K. Choi; William G. Christen; Gary C. Curhan; Immaculata De Vivo; John H. Fingert; Paul J. Foster; Charles S. Fuchs; Douglas E. Gaasterland; Terry Gaasterland; Alex W. Hewitt; Frank B. Hu; David J. Hunter
Primary open-angle glaucoma (POAG) is a leading cause of blindness worldwide. To identify new susceptibility loci, we performed meta-analysis on genome-wide association study (GWAS) results from eight independent studies from the United States (3,853 cases and 33,480 controls) and investigated the most significantly associated SNPs in two Australian studies (1,252 cases and 2,592 controls), three European studies (875 cases and 4,107 controls) and a Singaporean Chinese study (1,037 cases and 2,543 controls). A meta-analysis of the top SNPs identified three new associated loci: rs35934224[T] in TXNRD2 (odds ratio (OR) = 0.78, P = 4.05 × 10−11) encoding a mitochondrial protein required for redox homeostasis; rs7137828[T] in ATXN2 (OR = 1.17, P = 8.73 × 10−10); and rs2745572[A] upstream of FOXC1 (OR = 1.17, P = 1.76 × 10−10). Using RT-PCR and immunohistochemistry, we show TXNRD2 and ATXN2 expression in retinal ganglion cells and the optic nerve head. These results identify new pathways underlying POAG susceptibility and suggest new targets for preventative therapies.
Nature Genetics | 2015
Alfonso Buil; Andrew Anand Brown; Tuuli Lappalainen; Ana Viñuela; Matthew N. Davies; Hou Feng Zheng; J. Brent Richards; Daniel Glass; Kerrin S. Small; Richard Durbin; Tim D. Spector; Emmanouil T. Dermitzakis
Understanding the genetic architecture of gene expression is an intermediate step in understanding the genetic architecture of complex diseases. RNA sequencing technologies have improved the quantification of gene expression and allow measurement of allele-specific expression (ASE). ASE is hypothesized to result from the direct effect of cis regulatory variants, but a proper estimation of the causes of ASE has not been performed thus far. In this study, we take advantage of a sample of twins to measure the relative contributions of genetic and environmental effects to ASE, and we find substantial effects from gene × gene (G×G) and gene × environment (G×E) interactions. We propose a model where ASE requires genetic variability in cis, a difference in the sequence of both alleles, but where the magnitude of the ASE effect depends on trans genetic and environmental factors that interact with the cis genetic variants.
eLife | 2014
Andrew Anand Brown; Alfonso Buil; Ana Viñuela; Tuuli Lappalainen; Hou-Feng Zheng; J. Brent Richards; Kerrin S. Small; Tim D. Spector; Emmanouil T. Dermitzakis; Richard Durbin
Non-additive interaction between genetic variants, or epistasis, is a possible explanation for the gap between heritability of complex traits and the variation explained by identified genetic loci. Interactions give rise to genotype dependent variance, and therefore the identification of variance quantitative trait loci can be an intermediate step to discover both epistasis and gene by environment effects (GxE). Using RNA-sequence data from lymphoblastoid cell lines (LCLs) from the TwinsUK cohort, we identify a candidate set of 508 variance associated SNPs. Exploiting the twin design we show that GxE plays a role in ∼70% of these associations. Further investigation of these loci reveals 57 epistatic interactions that replicated in a smaller dataset, explaining on average 4.3% of phenotypic variance. In 24 cases, more variance is explained by the interaction than their additive contributions. Using molecular phenotypes in this way may provide a route to uncovering genetic interactions underlying more complex traits. DOI: http://dx.doi.org/10.7554/eLife.01381.001
PLOS ONE | 2013
Martin Tesli; Kristina C. Skåtun; Olga Therese Ousdal; Andrew Anand Brown; Christian Thoresen; Ingrid Agartz; Ingrid Melle; Srdjan Djurovic; Jimmy Jensen; Ole A. Andreassen
Objectives Several genetic studies have implicated the CACNA1C SNP rs1006737 in bipolar disorder (BD) and schizophrenia (SZ) pathology. This polymorphism was recently found associated with increased amygdala activity in healthy controls and patients with BD. We performed a functional Magnetic Resonance Imaging (fMRI) study in a sample of BD and SZ cases and healthy controls to test for altered amygdala activity in carriers of the rs1006737 risk allele (AA/AG), and to investigate if there were differences across the diagnostic groups. Methods Rs1006737 was genotyped in 250 individuals (N = 66 BD, 61 SZ and 123 healthy controls), all of Northern European origin, who underwent an fMRI negative faces matching task. Statistical tests were performed with a model correcting for sex, age, diagnostic category and medication status in the total sample, and then in each diagnostic group. Results In the total sample, carriers of the risk allele had increased activation in the left amygdala. Group-wise analyses showed that this effect was significant in the BD group, but not in the other diagnostic groups. However, there was no significant interaction effect for the risk allele between BD and the other groups. Conclusions These results indicate that CACNA1C SNP rs1006737 affects amygdala activity during emotional processing across all diagnostic groups. The current findings add to the growing body of knowledge of the pleiotropic effect of this polymorphism, and further support that ion channel dysregulation is involved in the underlying mechanisms of BD and SZ.
Bioinformatics | 2016
Halit Ongen; Alfonso Buil; Andrew Anand Brown; Emmanouil T. Dermitzakis; Olivier Delaneau
Motivation: In order to discover quantitative trait loci, multi-dimensional genomic datasets combining DNA-seq and ChiP-/RNA-seq require methods that rapidly correlate tens of thousands of molecular phenotypes with millions of genetic variants while appropriately controlling for multiple testing. Results: We have developed FastQTL, a method that implements a popular cis-QTL mapping strategy in a user- and cluster-friendly tool. FastQTL also proposes an efficient permutation procedure to control for multiple testing. The outcome of permutations is modeled using beta distributions trained from a few permutations and from which adjusted P-values can be estimated at any level of significance with little computational cost. The Geuvadis & GTEx pilot datasets can be now easily analyzed an order of magnitude faster than previous approaches. Availability and implementation: Source code, binaries and comprehensive documentation of FastQTL are freely available to download at http://fastqtl.sourceforge.net/ Contact: [email protected] or [email protected] Supplementary information: Supplementary data are available at Bioinformatics online.
Translational Psychiatry | 2012
Katrine V. Wirgenes; Ida Elken Sønderby; Unn K. Haukvik; Morten Mattingsdal; Martin Tesli; Lavinia Athanasiu; Kjetil Sundet; Jan Ivar Røssberg; Anders M. Dale; Andrew Anand Brown; Ingrid Agartz; Ingrid Melle; Srdjan Djurovic; Ole A. Andreassen
TCF4 is involved in neurodevelopment, and intergenic and intronic variants in or close to the TCF4 gene have been associated with susceptibility to schizophrenia. However, the functional role of TCF4 at the level of gene expression and relationship to severity of core psychotic phenotypes are not known. TCF4 mRNA expression level in peripheral blood was determined in a large sample of patients with psychosis spectrum disorders (n=596) and healthy controls (n=385). The previously identified TCF4 risk variants (rs12966547 (G), rs9960767 (C), rs4309482 (A), rs2958182 (T) and rs17512836 (C)) were tested for association with characteristic psychosis phenotypes, including neurocognitive traits, psychotic symptoms and structural magnetic resonance imaging brain morphometric measures, using a linear regression model. Further, we explored the association of additional 59 single nucleotide polymorphisms (SNPs) covering the TCF4 gene to these phenotypes. The rs12966547 and rs4309482 risk variants were associated with poorer verbal fluency in the total sample. There were significant associations of other TCF4 SNPs with negative symptoms, verbal learning, executive functioning and age at onset in psychotic patients and brain abnormalities in total sample. The TCF4 mRNA expression level was significantly increased in psychosis patients compared with controls and positively correlated with positive- and negative-symptom levels. The increase in TCF4 mRNA expression level in psychosis patients and the association of TCF4 SNPs with core psychotic phenotypes across clinical, cognitive and brain morphological domains support that common TCF4 variants are involved in psychosis pathology, probably related to abnormal neurodevelopment.