7 research outputs found

    Identifying and Accommodating Context Dependent Effects in Studies of Genetic Variation and Human Disease

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    Genetic variants, or changes in DNA sequence, are known to contribute to both complex and Mendelian diseases. The identification of individual and collections of variants, both common and rare, associated with diseases can help elucidate pathogenic mechanisms contributing to those diseases since it is known that genetic variants can impact gene function and drive pathophysiology. Unfortunately, there is no consensus on the best strategies for identifying genetic associations and effects. In fact, many methods simply involve testing each variant in the genome for association with a trait directly and ignore the fact that most molecular and physiological systems are quite complex and involve a number of interacting parts. In this light, the effect of any one variant may be masked by, or interact with, other variants and phenomena (such as environmental factors). This is a likely reason why many attempts to identify genetic variants associated with most diseases have not been able to explain the majority of the heritable component of those diseases. It is, therefore, important to consider genetic association analysis methods that are sensitive to the fact that genetic variants may exhibit effects that are ``context dependent'' in that their effects depend on the existence of other variants or environmental factors.Quantifying the extent to which genetic variants interact with other factors remains a challenge in genetic studies. This is the case despite the fact that there have been numerous historical studies exposing the existence of context dependent genetic effects in very broad settings that should motivate greater concern for context dependency in modern genetic association studies. For example, many model organism studies, highly contrived in vitro studies, studies of tumor responsiveness to targeted therapies, and general clinical studies of monogenic diseases have all suggested that the phenotypic impact of certain genetic factors is dependent on other factors. We believe that ignoring the genetic and overall context within which a genetic variant is operating can negatively impact understanding disease pathogenesis and human biology.In the following, we explore two broad settings in which genetic background and context can have an effect on the interpretation of the impact of genetic variation on a clinically meaningful phenotype. The first setting involves associating genetic variation exhibited by the pathogen Methicillin-Resistant Staphylococcus Aureus (MRSA) and the clinical outcomes of patients harboring an infection induced by that pathogen. Essentially, the current manner in which MRSA genetic variants are identified requires the choice of a reference strain genome whose genetic background relative to the strains of interest could influence the characterization, association and interpretation of the impact of those variants. The second setting considers the identification of genetic factors that either collectively influence Alzheimer's Disease (AD) in a manner that is dependent on the genetic background of the individuals studied or that work through mechanisms that can lead to their association with AD only if that mechanism is explicitly modeled. We ultimately believe that the approaches and findings in our work should motivate further research and a sensitivity to the numerous contexts in which genetic variants may impact a phenotype

    Epigenomic Diversity in a Global Collection of Arabidopsis thaliana Accessions

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    The epigenome orchestrates genome accessibility, functionality, and three-dimensional structure. Because epigenetic variation can impact transcription and thus phenotypes, it may contribute to adaptation. Here, we report 1,107 high-quality single-base resolution methylomes and 1,203 transcriptomes from the 1001 Genomes collection of Arabidopsis thaliana. Although the genetic basis of methylation variation is highly complex, geographic origin is a major predictor of genome-wide DNA methylation levels and of altered gene expression caused by epialleles. Comparison to cistrome and epicistrome datasets identifies associations between transcription factor binding sites, methylation, nucleotide variation, and co-expression modules. Physical maps for nine of the most diverse genomes reveal how transposons and other structural variants shape the epigenome, with dramatic effects on immunity genes. The 1001 Epigenomes Project provides a comprehensive resource for understanding how variation in DNA methylation contributes to molecular and non-molecular phenotypes in natural populations of the most studied model plant

    Epigenomic Diversity in a Global Collection of Arabidopsis thaliana Accessions

    No full text
    The epigenome orchestrates genome accessibility, functionality, and three-dimensional structure. Because epigenetic variation can impact transcription and thus phenotypes, it may contribute to adaptation. Here, we report 1,107 high-quality single-base resolution methylomes and 1,203 transcriptomes from the 1001 Genomes collection of Arabidopsis thaliana. Although the genetic basis of methylation variation is highly complex, geographic origin is a major predictor of genome-wide DNA methylation levels and of altered gene expression caused by epialleles. Comparison to cistrome and epicistrome datasets identifies associations between transcription factor binding sites, methylation, nucleotide variation, and co-expression modules. Physical maps for nine of the most diverse genomes reveal how transposons and other structural variants shape the epigenome, with dramatic effects on immunity genes. The 1001 Epigenomes Project provides a comprehensive resource for understanding how variation in DNA methylation contributes to molecular and non-molecular phenotypes in natural populations of the most studied model plant

    Large eQTL meta-analysis reveals differing patterns between cerebral cortical and cerebellar brain regions

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    © 2020, The Author(s). The availability of high-quality RNA-sequencing and genotyping data of post-mortem brain collections from consortia such as CommonMind Consortium (CMC) and the Accelerating Medicines Partnership for Alzheimer’s Disease (AMP-AD) Consortium enable the generation of a large-scale brain cis-eQTL meta-analysis. Here we generate cerebral cortical eQTL from 1433 samples available from four cohorts (identifying >4.1 million significant eQTL for >18,000 genes), as well as cerebellar eQTL from 261 samples (identifying 874,836 significant eQTL for >10,000 genes). We find substantially improved power in the meta-analysis over individual cohort analyses, particularly in comparison to the Genotype-Tissue Expression (GTEx) Project eQTL. Additionally, we observed differences in eQTL patterns between cerebral and cerebellar brain regions. We provide these brain eQTL as a resource for use by the research community. As a proof of principle for their utility, we apply a colocalization analysis to identify genes underlying the GWAS association peaks for schizophrenia and identify a potentially novel gene colocalization with lncRNA RP11-677M14.2 (posterior probability of colocalization 0.975)

    Genetic architecture of human plasma lipidome and its link to cardiovascular disease

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    Abstract Understanding genetic architecture of plasma lipidome could provide better insights into lipid metabolism and its link to cardiovascular diseases (CVDs). Here, we perform genome-wide association analyses of 141 lipid species (n = 2,181 individuals), followed by phenome-wide scans with 25 CVD related phenotypes (n = 511,700 individuals). We identify 35 lipid-species-associated loci (P <5 ×10−8), 10 of which associate with CVD risk including five new loci-COL5A1, GLTPD2, SPTLC3, MBOAT7 and GALNT16 (false discovery rate<0.05). We identify loci for lipid species that are shown to predict CVD e.g., SPTLC3 for CER(d18:1/24:1). We show that lipoprotein lipase (LPL) may more efficiently hydrolyze medium length triacylglycerides (TAGs) than others. Polyunsaturated lipids have highest heritability and genetic correlations, suggesting considerable genetic regulation at fatty acids levels. We find low genetic correlations between traditional lipids and lipid species. Our results show that lipidomic profiles capture information beyond traditional lipids and identify genetic variants modifying lipid levels and risk of CVD

    Chromosome Xq23 is associated with lower atherogenic lipid concentrations and favorable cardiometabolic indices

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    Abstract Autosomal genetic analyses of blood lipids have yielded key insights for coronary heart disease (CHD). However, X chromosome genetic variation is understudied for blood lipids in large sample sizes. We now analyze genetic and blood lipid data in a high-coverage whole X chromosome sequencing study of 65,322 multi-ancestry participants and perform replication among 456,893 European participants. Common alleles on chromosome Xq23 are strongly associated with reduced total cholesterol, LDL cholesterol, and triglycerides (min P = 8.5 × 10−72), with similar effects for males and females. Chromosome Xq23 lipid-lowering alleles are associated with reduced odds for CHD among 42,545 cases and 591,247 controls (P = 1.7 × 10−4), and reduced odds for diabetes mellitus type 2 among 54,095 cases and 573,885 controls (P = 1.4 × 10−5). Although we observe an association with increased BMI, waist-to-hip ratio adjusted for BMI is reduced, bioimpedance analyses indicate increased gluteofemoral fat, and abdominal MRI analyses indicate reduced visceral adiposity. Co-localization analyses strongly correlate increased CHRDL1 gene expression, particularly in adipose tissue, with reduced concentrations of blood lipids

    New insights into the genetic etiology of Alzheimer’s disease and related dementias

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    Characterization of the genetic landscape of Alzheimer’s disease (AD) and related dementias (ADD) provides a unique opportunity for a better understanding of the associated pathophysiological processes. We performed a two-stage genome-wide association study totaling 111,326 clinically diagnosed/‘proxy’ AD cases and 677,663 controls. We found 75 risk loci, of which 42 were new at the time of analysis. Pathway enrichment analyses confirmed the involvement of amyloid/tau pathways and highlighted microglia implication. Gene prioritization in the new loci identified 31 genes that were suggestive of new genetically associated processes, including the tumor necrosis factor alpha pathway through the linear ubiquitin chain assembly complex. We also built a new genetic risk score associated with the risk of future AD/dementia or progression from mild cognitive impairment to AD/dementia. The improvement in prediction led to a 1.6- to 1.9-fold increase in AD risk from the lowest to the highest decile, in addition to effects of age and the APOE ε4 allele
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