Convergent functional genomics of anxiety disorders: translational identification of genes, biomarkers, pathways and mechanisms

被引:0
作者
H Le-Niculescu
Y Balaraman
S D Patel
M Ayalew
J Gupta
R Kuczenski
A Shekhar
N Schork
M A Geyer
A B Niculescu
机构
[1] Indiana University School of Medicine,Department of Psychiatry
[2] Indianapolis VA Medical Center,Department of Psychiatry
[3] University of California at San Diego,undefined
[4] Indiana Clinical Translational Science Institute,undefined
[5] Scripps Translational Science Institute,undefined
来源
Translational Psychiatry | 2011年 / 1卷
关键词
anxiety; biomarkers; blood; brain; genes; microarray;
D O I
暂无
中图分类号
学科分类号
摘要
Anxiety disorders are prevalent and disabling yet understudied from a genetic standpoint, compared with other major psychiatric disorders such as bipolar disorder and schizophrenia. The fact that they are more common, diverse and perceived as embedded in normal life may explain this relative oversight. In addition, as for other psychiatric disorders, there are technical challenges related to the identification and validation of candidate genes and peripheral biomarkers. Human studies, particularly genetic ones, are susceptible to the issue of being underpowered, because of genetic heterogeneity, the effect of variable environmental exposure on gene expression, and difficulty of accrual of large, well phenotyped cohorts. Animal model gene expression studies, in a genetically homogeneous and experimentally tractable setting, can avoid artifacts and provide sensitivity of detection. Subsequent translational integration of the animal model datasets with human genetic and gene expression datasets can ensure cross-validatory power and specificity for illness. We have used a pharmacogenomic mouse model (involving treatments with an anxiogenic drug—yohimbine, and an anti-anxiety drug—diazepam) as a discovery engine for identification of anxiety candidate genes as well as potential blood biomarkers. Gene expression changes in key brain regions for anxiety (prefrontal cortex, amygdala and hippocampus) and blood were analyzed using a convergent functional genomics (CFG) approach, which integrates our new data with published human and animal model data, as a translational strategy of cross-matching and prioritizing findings. Our work identifies top candidate genes (such as FOS, GABBR1, NR4A2, DRD1, ADORA2A, QKI, RGS2, PTGDS, HSPA1B, DYNLL2, CCKBR and DBP), brain–blood biomarkers (such as FOS, QKI and HSPA1B), pathways (such as cAMP signaling) and mechanisms for anxiety disorders—notably signal transduction and reactivity to environment, with a prominent role for the hippocampus. Overall, this work complements our previous similar work (on bipolar mood disorders and schizophrenia) conducted over the last decade. It concludes our programmatic first pass mapping of the genomic landscape of the triad of major psychiatric disorder domains using CFG, and permitted us to uncover the significant genetic overlap between anxiety and these other major psychiatric disorders, notably the under-appreciated overlap with schizophrenia. PDE10A, TAC1 and other genes uncovered by our work provide a molecular basis for the frequently observed clinical co-morbidity and interdependence between anxiety and other major psychiatric disorders, and suggest schizo-anxiety as a possible new nosological domain.
引用
收藏
页码:e9 / e9
相关论文
共 681 条
  • [51] Arnold PD(2005)Deficits in amygdaloid cAMP-responsive element-binding protein signaling play a role in genetic predisposition to anxiety and alcoholism J Clin Invest 115 2762-2773
  • [52] Sicard T(2010)Eplerenone, a selective mineralocorticoid receptor blocker, exerts anxiolytic effects accompanied by changes in stress hormone release J Psychopharmacol 24 779-786
  • [53] Burroughs E(2010)CRF receptor 1 regulates anxiety behavior via sensitization of 5-HT2 receptor signaling Nat Neurosci 13 622-629
  • [54] Richter MA(2010)The CRF system, stress, depression and anxiety-insights from human genetic studies Mol Psychiatry 15 574-588
  • [55] Kennedy JL(2000)Identifying a series of candidate genes for mania and psychosis: a convergent functional genomics approach Physiol Genomics 4 83-91
  • [56] Hohoff C(2010)Biological validation of increased schizophrenia risk with NRG1, ERBB4, and AKT1 epistasis via functional neuroimaging in healthy controls Arch Gen Psychiatry 67 991-1001
  • [57] Mullings EL(2003)Genomics. Microarrays—guilt by association Science 302 240-241
  • [58] Heatherley SV(2010)Cross-disorder genome-wide analysis of schizophrenia, bipolar disorder, and depression Am J Psychiatry 167 1254-1263
  • [59] Freitag CM(2008)Genetics of anxiety: would the genome recognize the DSM? Depress Anxiety 25 368-377
  • [60] Neumann LC(2010)Interplay of palmitoylation and phosphorylation in the trafficking and localization of phosphodiesterase 10A: implications for the treatment of schizophrenia J Neurosci 30 9027-9037