scholarly journals Comparing Quantitative Trait Loci and Gene Expression Data

2008 ◽  
Vol 2008 ◽  
pp. 1-6 ◽  
Author(s):  
Bing Han ◽  
Naomi S. Altman ◽  
Jessica A. Mong ◽  
Laura Cousino Klein ◽  
Donald W. Pfaff ◽  
...  

We develop methods to compare the positions of quantitative trait loci (QTL) with a set of genes selected by other methods, such as microarray experiments, from a sequenced genome. We apply our methods to QTL for addictive behavior in mouse, and a set of genes upregulated in a region of the brain associated with addictive behavior, the nucleus accumbens (NA). The association between the QTL and NA genes is not significantly stronger than expected by chance. However, chromosomes 2 and 16 do show strong associations suggesting that genes on these chromosomes might be associated with addictive behavior. The statistical methodology developed for this study can be applied to similar studies to assess the mutual information in microarray and QTL analyses.

Blood ◽  
2013 ◽  
Vol 122 (21) ◽  
pp. 1847-1847
Author(s):  
David C Johnson ◽  
Niels Weinhold ◽  
Tobias Meissner ◽  
Brian A Walker ◽  
Peter Broderick ◽  
...  

Abstract Genomewide association studies (GWAS) have identified seven independent regions associated with Multiple Myeloma (MM) risk with an additional locus linked to the t11;14 subtype. Inherited variation is an important determinant of gene expression, such that the majority of published GWAS risk loci across all diseases can be linked to gene regulation. To understand whether the functional mechanisms that confer MM risk are related to allelic differences within regulatory regions, we sought to identify expression quantitative trait loci (eQTLs) in MM plasma cells. Recent studies have also suggested that eQTLs can be specific to cell type. In a heterogeneous disease such as MM, we might expect there to be variation in eQTLs between cytogenetic subgroups. To address this, we performed a genomewide analysis to identify MM related eQTLs, as well as potential subgroup specific MM eQTLs. The identification of eQTLs specific to MM plasma cells provides a means to link regulatory function to the powerful hypothesis-free tool of GWAS. To generate MM related eQTLs, we combined orthogonal mRNA expression data (Affymetrix U133+2 arrays) from CD138+ selected plasma cells with genotyping data (Illumina Omni Express BeadChips) from germline DNA in the same individual. Two independent datasets comprising 183 MM patients from UK and 662 from Germany were analysed in parallel. Genotype data was filtered by standard quality control parameters. Single nucleotide polymorphisms (SNPs) showing deviation from Hardy-Weinberg equilibrium with P <1 × 10−6, having a call rate <95% or a minor allele frequency <1% were excluded. Samples were removed if closely related or if they had a non-Northern and Western European descent (CEU) ancestry. German and UK expression data were normalised independently using GC-RMA and a custom chip definition file (v17) mapping to Entrez genes. Genes showing a variance of less than 0.1 in expression between the analysed cases or a log2expression value of less than 5 in at least 95% of cases or genes located on the X or Y chromosome were excluded from the analysis. Known batch effects and hidden co-founders due to experimental and tumour-related factors were accounted for using a Bayesian Framework model. eQTLs were identified by performing a linear regression between residual expression levels and genotypes. A cis-eQTL analysis was performed that included SNPs located within 1 Mb of the transcript start site of the proximal gene. Results from the two independent studies were combined by meta-analysis. We report in a cis-eQTL analysis, that there is evidence that 6 out of the 8 MM risk alleles have an impact on regulation of a proximal gene. We also show that the eQTLs can be replicated on contrasting technologies i.e. competitive allele-specific PCR (genotyping) and real-time PCR (expression). In a global cis-eQTL analysis, we found that the expression of >600 genes was significantly influenced by proximal SNPs (P < 5 x 10-8). By comparing these results with previous described eQTLs in other tissue types, we estimate some 10% of these eQTLs to be specific to MM plasma cells. We conclude that informative regulatory regions important to myeloma biology can be identified by the combination of global gene expression and genomewide genotyping data. A number of these eQTLs can be shown to be MM specific and even specific to a cytogenetic subgroup. This can give us a greater understanding of the regulatory mechanisms underpinning genetic associations linked to MM risk and clinical outcomes following MM treatments. Disclosures: No relevant conflicts of interest to declare.


2019 ◽  
Vol 48 (D1) ◽  
pp. D856-D862 ◽  
Author(s):  
Wubin Ding ◽  
Jiwei Chen ◽  
Guoshuang Feng ◽  
Geng Chen ◽  
Jun Wu ◽  
...  

Abstract Aberrant DNA methylation plays an important role in cancer progression. However, no resource has been available that comprehensively provides DNA methylation-based diagnostic and prognostic models, expression–methylation quantitative trait loci (emQTL), pathway activity-methylation quantitative trait loci (pathway-meQTL), differentially variable and differentially methylated CpGs, and survival analysis, as well as functional epigenetic modules for different cancers. These provide valuable information for researchers to explore DNA methylation profiles from different aspects in cancer. To this end, we constructed a user-friendly database named DNA Methylation Interactive Visualization Database (DNMIVD), which comprehensively provides the following important resources: (i) diagnostic and prognostic models based on DNA methylation for multiple cancer types of The Cancer Genome Atlas (TCGA); (ii) meQTL, emQTL and pathway-meQTL for diverse cancers; (iii) Functional Epigenetic Modules (FEM) constructed from Protein-Protein Interactions (PPI) and Co-Occurrence and Mutual Exclusive (COME) network by integrating DNA methylation and gene expression data of TCGA cancers; (iv) differentially variable and differentially methylated CpGs and differentially methylated genes as well as related enhancer information; (v) correlations between methylation of gene promoter and corresponding gene expression and (vi) patient survival-associated CpGs and genes with different endpoints. DNMIVD is freely available at http://www.unimd.org/dnmivd/. We believe that DNMIVD can facilitate research of diverse cancers.


PLoS Genetics ◽  
2012 ◽  
Vol 8 (10) ◽  
pp. e1003000 ◽  
Author(s):  
Athma A. Pai ◽  
Carolyn E. Cain ◽  
Orna Mizrahi-Man ◽  
Sherryl De Leon ◽  
Noah Lewellen ◽  
...  

2015 ◽  
Author(s):  
Christine Peterson ◽  
Susan Service ◽  
Anna Jasinska ◽  
Fuying Gao ◽  
Ivette Zelaya ◽  
...  

The observation that variants regulating gene expression (expression quantitative trait loci, eQTL) are at a high frequency among SNPs associated with complex traits has made the genome-wide characterization of gene expression an important tool in genetic mapping studies of such traits. As part of a study to identify genetic loci contributing to bipolar disorder and a wide range of BP-related quantitative traits in members of 26 pedigrees from Costa Rica and Colombia, we measured gene expression in lymphoblastoid cell lines derived from 786 pedigree members. The study design enabled us to comprehensively reconstruct the genetic regulatory network in these families, provide estimates of heritability, identify eQTL, evaluate missing heritability for the eQTL, and quantify the number of different alleles contributing to any given locus.


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