scholarly journals Limited Association between Schizophrenia Genetic Risk Factors and Transcriptomic Features

Genes ◽  
2021 ◽  
Vol 12 (7) ◽  
pp. 1062
Author(s):  
Alice W. Yu ◽  
J. David Peery ◽  
Hyejung Won

Schizophrenia is a polygenic disorder with many genomic regions contributing to schizophrenia risk. The majority of genetic variants associated with schizophrenia lie in the non-coding genome and are thought to contribute to transcriptional regulation. Extensive transcriptomic dysregulation has been detected from postmortem brain samples of schizophrenia-affected individuals. However, the relationship between schizophrenia genetic risk factors and transcriptomic features has yet to be explored. Herein, we examined whether varying gene expression features, including differentially expressed genes (DEGs), co-expression networks, and central hubness of genes, contribute to the heritability of schizophrenia. We leveraged quantitative trait loci and chromatin interaction profiles to identify schizophrenia risk variants assigned to the genes that represent different transcriptomic features. We then performed stratified linkage disequilibrium score regression analysis on these variants to estimate schizophrenia heritability enrichment for different gene expression features. Notably, DEGs and co-expression networks showed nominal heritability enrichment. This nominal association can be partly explained by cellular heterogeneity, as DEGs were associated with the genetic risk of schizophrenia in a cell type-specific manner. Moreover, DEGs were enriched for target genes of schizophrenia-associated transcription factors, suggesting that the transcriptomic signatures of schizophrenia are the result of transcriptional regulatory cascades elicited by genetic risk factors.

2021 ◽  
Author(s):  
Nancy Y.A Sey ◽  
Benxia Hu ◽  
Marina Iskhakova ◽  
Huaigu Sun ◽  
Neda Shokrian ◽  
...  

Cigarette smoking and alcohol use are among the most prevalent substances used worldwide and account for a substantial proportion of preventable morbidity and mortality, underscoring the public health significance of understanding their etiology. Genome-wide association studies (GWAS) have successfully identified genetic variants associated with cigarette smoking and alcohol use traits. However, the vast majority of risk variants reside in non-coding regions of the genome, and their target genes and neurobiological mechanisms are unknown. Chromosomal conformation mappings can address this knowledge gap by charting the interaction profiles of risk-associated regulatory variants with target genes. To investigate the functional impact of common variants associated with cigarette smoking and alcohol use traits, we applied Hi-C coupled MAGMA (H-MAGMA) built upon cortical and midbrain dopaminergic neuronal Hi-C datasets to GWAS summary statistics of nicotine dependence, cigarettes per day, problematic alcohol use, and drinks per week. The identified risk genes mapped to key pathways associated with cigarette smoking and alcohol use traits, including drug metabolic processes and neuronal apoptosis. Risk genes were highly expressed in cortical glutamatergic, midbrain dopaminergic, GABAergic, and serotonergic neurons, suggesting them as relevant cell types in understanding the mechanisms by which genetic risk factors influence cigarette smoking and alcohol use. Lastly, we identified pleiotropic genes between cigarette smoking and alcohol use traits under the assumption that they may reveal substance-agnostic, shared neurobiological mechanisms of addiction. The number of pleiotropic genes was ~26-fold higher in dopaminergic neurons than in cortical neurons, emphasizing the critical role of ascending dopaminergic pathways in mediating general addiction phenotypes. Collectively, brain region- and neuronal subtype-specific 3D genome architecture refines neurobiological hypotheses for smoking, alcohol, and general addiction phenotypes by linking genetic risk factors to their target genes.


2019 ◽  
Author(s):  
Samar S. M. Elsheikh ◽  
Emile R. Chimusa ◽  
Nicola J. Mulder ◽  
Alessandro Crimi ◽  

ABSTRACTNetworks are present in many aspects of our lives, and networks in neuroscience have recently gained much attention leading to novel representations of brain connectivity. The integration of neuroimaging and genetics allows a better understanding of the effects of the genetic variations on brain structural and functional connections. The current work uses whole-brain tractography in a longitudinal setting, and by measuring the brain structural connectivity changes studies the neurodegeneration of Alzheimer’s disease. This is accomplished by examining the effect of targeted genetic risk factors on the most common local and global brain connectivity measures. Furthermore, we examined the extent to which Clinical Dementia Rating relates to brain connections longitudinally, as well as to gene expression. Here, we show that the expression of PLAU and HFE genes increases the change over time respectively in betweenness centrality related to the fusiform gyrus and clustering coefficient of the cingulum bundle. We also show that the betweenness centrality metric highlights impact dementia-related changes in distinct brain regions. Ourfindings provide insights into the complex longitudinal interplay between genetics and brain characteristics and highlight the role of Alzheimer’s genetic risk factors in the estimation of regional brain connection alterations.


Author(s):  
Kate Langley ◽  
Anita Thapar

Studies have demonstrated that attention-deficit/hyperactivity disorder (ADHD) is a highly heritable disorder. The evidence for this and the investigation into specific genetic risk factors associated with the disorder are discussed in this chapter. Both common and rare genetic risk variants have been identified for the disorder, although sample sizes have limited the discovery of such risk factors to date. Identification of additional risk factors, as well as further investigation to understand the role of these factors in the pathophysiology of ADHD, are now under way. As with other multifactorial disorders, there are both genetic and environmental risks associated with ADHD, and the interplay of these different risk types, as well as how they have been studied, is discussed. ADHD is a phenotypically heterogenous disorder, and the influences of comorbid conditions and developmental age on the genetic risk factors for the disorder are considered, as well as the genetic overlap between ADHD and other psychiatric conditions.


Blood ◽  
2016 ◽  
Vol 127 (15) ◽  
pp. 1923-1929 ◽  
Author(s):  
Wenndy Hernandez ◽  
Eric R. Gamazon ◽  
Erin Smithberger ◽  
Travis J. O’Brien ◽  
Arthur F. Harralson ◽  
...  

Key Points Our study has identified common genetic risk factors for VTE among AAs. These risk factors are associated with decreased thrombomodulin gene expression, suggesting a mechanistic link.


Blood ◽  
2004 ◽  
Vol 104 (11) ◽  
pp. 397-397
Author(s):  
Alessia Bogni ◽  
Cheng Cheng ◽  
Wei Liu ◽  
Wenjian Yang ◽  
Deborah French ◽  
...  

Abstract In children with acute lymphoblastic leukemia (ALL), failure due to therapy-related myeloid leukemia (t-ML) is a devastating complication. Using a target gene approach, only a few host genetic risk factors for t-ML have been defined. Microarray analysis of gene expression allows for a more genome-wide approach to identify possible genetic risk factors for t-ML. We assessed gene expression profiles (12625 gene probe sets) using oligonucleotide-based arrays in diagnostic ALL blasts from 228 children treated on St. Jude ALL protocols (Total XIII) that included etoposide; 13 of these children developed t-ML. A group of 83 probe sets were significantly related to the time-dependent risk of t-ML, with principal component analysis plot (right panel) separating patients who developed t-ML from the others. Hierarchical clustering of the 83 probe sets grouped patients into 3 clusters (n=163, n=52, n=13), with the cumulative incidence of t-ML being significantly higher in the last cluster (p < 0.0001, left panel) compared to those of the other gene-expression-defined clusters. Figure Figure A permutation test indicated that probe sets selected by chance are unlikely to obtain the observed distinct clusters (p=0.045). Distinguishing genes included transcription-related oncogenes (v-Myb, Pax-5), cyclins (CCNG1, CCNG2 and CCND1) and Histone H4. Common transcription factor recognition elements among similarly up- or down-regulated genes included several involved in hematopoietic differentiation or leukemogenesis (Maz, PU.1, FOXO4). This approach has identified several genes whose expression differentiates patients at risk of t-ML, and provides targets for assessing the germline predisposition to leukemogenesis.


Blood ◽  
2008 ◽  
Vol 112 (11) ◽  
pp. 638-638
Author(s):  
Bartlomiej P Przychodzen ◽  
Anna Malgorzata Jankowska ◽  
Sandra P Smieszek ◽  
Sanjay Ram Mohan ◽  
Ramon V. Tiu ◽  
...  

Abstract Genetic predisposition to MDS and AML is likely polygenic and may involve several low penetrance alleles which in concert with exogenous factors result in highly variable presentation, not easily amenable to genetic studies. With the advent of whole genome scanning (WGS) technologies utilizing various SNP array (SNP-A) platforms, large scale investigations in various disorders have been conducted. In hematological malignancies to date no systematic disease-association studies using SNP-A have been reported, likely due to lower prevalence of these conditions and a highly variable phenotype. We have applied SNP-A to conduct the first GWS in MDS and MDS-derived AML with the goal to identify possible low prevalence genetic variants that contribute to the pathogenesis of these conditions and explain individual disease risk. We have studied 189 patients with MDS and secondary AML as well 119 internal controls using SNP-A. Affymetrix GeneChip 6.0 (924644 SNP probes covering most of the known LD blocks) is designed to capture 67%-89% of SNP variation among Caucasians. Following exclusion of SNP’s with a call rate of &lt;95%, and those with serious violation of Hardy Weinberg equilibrium, single allele X2 statistics for all autosomal markers was performed. For the purpose of this study, SNP’s with minor allele frequency (MAF) &lt;10% and p&lt;0.001 after false discovery rate correction, were selected. Top 11 polymorphisms were chosen pointing directly to 4 genes or indirectly to informative loci through LD, informative genes include e.g., LAMC2, SGCE, FRAP1 and PTPRT. Remarkably, several informative LD blocks were also identified represented by multiple markers pointing to the presence of an informative polymorphisms in the corresponding regions. For example, 5/30 markers (all p&lt;8×10−4) including, rs2477436, rs503243, rs3768593, rs4651151 and rs549191 are part of an LD block spanning NMAT2 and LAMC2 loci. The corresponding minor variant frequencies were 6.6% and 37.6% in homozygous and heterozygous constellation, respectively (controls: 0% and 21.6%). Second potential locus identified in our study consisted of 4 markers, all of them located on SGCE gene (rs1357318, rs2037496, rs4330611, rs13225971; p&lt;1.9×10−4) with frequencies of homozygous variant in patients at 0.8% and 28.9% with heterozygous variant (controls 0% and 15.2%), respectively. FRAP1 (MTOR) gene was represented by singular rs3730380 marker (p=2.7×10−6), occurring at the heterozygous frequency of 17.8% vs. allelic frequency of 0% in controls. FRAP1 is a critical downstream effector of Akt involved in cell cycle regulation and angiogenesis being central regulator in PI3K/Akt/mTOR pathway. Genetic alterations of the pathway are frequent events in preneoplastic lesions and advanced cancers. Similarly, increased frequency of minor alleles of rs6030469 in PTPRT locus was found in homozygous and heterozygous constellation at 1.4% vs. 0% and 27.3% vs. 8.5% (p=4.80 × 10-5) in patients and controls, respectively. PTPRT gene was also found to be frequently mutated in cancer and is involved in growth regulation. For example, overexpression of PTPRT may lead to reduced expression of STAT3 target genes. In sum, our study constituting the first systematic approach of WGS to identify genetic risk factors in AMS and AML, suggests that several informative loci can be selected for delineation of the causative polymorphisms.


2010 ◽  
Vol 68 (4) ◽  
pp. 292-297 ◽  
Author(s):  
Nahid Waleh ◽  
Ryan Hodnick ◽  
Nami Jhaveri ◽  
Suzanne McConaghy ◽  
John Dagle ◽  
...  

2022 ◽  
Vol 3 ◽  
Author(s):  
Sally Mortlock ◽  
Brett McKinnon ◽  
Grant W. Montgomery

The endometrium is a complex and dynamic tissue essential for fertility and implicated in many reproductive disorders. The tissue consists of glandular epithelium and vascularised stroma and is unique because it is constantly shed and regrown with each menstrual cycle, generating up to 10 mm of new mucosa. Consequently, there are marked changes in cell composition and gene expression across the menstrual cycle. Recent evidence shows expression of many genes is influenced by genetic variation between individuals. We and others have reported evidence for genetic effects on hundreds of genes in endometrium. The genetic factors influencing endometrial gene expression are highly correlated with the genetic effects on expression in other reproductive (e.g., in uterus and ovary) and digestive tissues (e.g., salivary gland and stomach), supporting a shared genetic regulation of gene expression in biologically similar tissues. There is also increasing evidence for cell specific genetic effects for some genes. Sample size for studies in endometrium are modest and results from the larger studies of gene expression in blood report genetic effects for a much higher proportion of genes than currently reported for endometrium. There is also emerging evidence for the importance of genetic variation on RNA splicing. Gene mapping studies for common disease, including diseases associated with endometrium, show most variation maps to intergenic regulatory regions. It is likely that genetic risk factors for disease function through modifying the program of cell specific gene expression. The emerging evidence from our gene mapping studies coupled with tissue specific studies, and the GTEx, eQTLGen and EpiMap projects, show we need to expand our understanding of the complex regulation of gene expression. These data also help to link disease genetic risk factors to specific target genes. Combining our data on genetic regulation of gene expression in endometrium, and cell types within the endometrium with gene mapping data for endometriosis and related diseases is beginning to uncover the specific genes and pathways responsible for increased risk of these diseases.


2021 ◽  
Vol 5 (Supplement_1) ◽  
pp. 653-653
Author(s):  
Svetlana Ukraintseva ◽  
Vladimir Popov ◽  
Konstantin Arbeev ◽  
Hongzhe Duan ◽  
Olivia Bagley ◽  
...  

Abstract Genetic risk factors for Alzheimer’s disease (AD) may facilitate AD-related changes in the brain long before AD clinical manifestation. While APOE4 was linked to a reduced hippocampal volume (HV) in a number of studies, the impact of rs2075650, another polymorphism strongly associated with AD, on HV is less clear. The rs2075650 (in TOMM40) is only in moderate to low LD with APOE4, and may have independent effects on HV or interact with APOE4. We studied associations of rs2075650 (G allele, risk factor for AD), rs429358 (C allele, proxy for APOE4), and their combinations, with right HV measured by MRI, among 10,738 women and 9,775 men aged 60-75, from UK Biobank. We found that right HV was significantly (p&lt;0.02) smaller in women who carry both AD risk variants (rs2075650(G) and rs429358(C)), than in non-carriers of both of these variants, while having only one risk variant (G or C) didn’t clearly affect HV. The studied associations didn’t reach statistical significance in men. Our results suggest that rs2075650(G) and rs429358(C) may contribute synergistically to a reduction in hippocampus volume, in females only, and support the role of interactions between genetic risk factors for AD in sex differences in preclinical biomarkers of AD pathology.


2017 ◽  
Vol 9 (2) ◽  
pp. 69-76 ◽  
Author(s):  
Jenny N. Fung ◽  
Yadav Sapkota ◽  
Dale R. Nyholt ◽  
Grant W. Montgomery

Advances in genetics and genomics are driving progress in understanding genetic risk factors for endometriosis. Genome-wide association scans (GWAS) in endometriosis have identified 11 genomic regions associated with increased risk of disease. Many of the regions contain interesting candidate genes, but the risk alleles may not always act through the obvious candidates. Functional evidence to identify the causal gene(s) will require multiple steps including better mapping precision, genetic studies on gene expression and epigenetic marks, chromatin looping and functional studies. Evidence from gene expression studies in endometrium and chromatin looping experiments implicate CDC42 on chromosome 1, CDKN2B-AS1 on chromosome 9 and VEZT on chromosome 12 as likely causal genes in these regions. Confirming the causal gene(s) in these and other regions will identify the important pathways increasing risk for endometriosis and identify novel targets for interventions to improve diagnosis and treatment.


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