Publications by authors named "Harm Jan Westra"

Microbiome influences multiple human systems, but its effects on gene methylation is unknown. We investigated the relations between gene methylation in blood and the abundance of common gut bacteria profiled by 16s rRNA gene sequencing in two population-based Dutch cohorts: LifeLines-Deep (LLD, n = 616, discovery) and the Netherlands Twin Register (NTR, n = 296, replication). In LLD, we also explored microbial pathways using data generated by shotgun metagenomic sequencing (n = 683).

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Article Synopsis
  • Genetic variants found in GWAS are mostly non-coding and have subtle effects on genes, while Mendelian disease variants are coding and directly influence diseases.
  • The study connects common and rare genetic diseases by analyzing how common variants affect gene co-expression across various tissues, using a tool called Downstreamer on 88 GWAS traits.
  • Key findings show that important downstream genes related to common traits, like height, are often linked to Mendelian disease genes, with many being located outside GWAS loci, indicating complex regulatory interactions.
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Background: The plasma metabolome reflects the physiological state of various biological processes and can serve as a proxy for disease risk. Plasma metabolite variation, influenced by genetic and epigenetic mechanisms, can also affect the cellular microenvironment and blood cell epigenetics. The interplay between the plasma metabolome and the blood cell epigenome remains elusive.

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  • The study explores the complex genetic background of cancer, focusing on the connection between somatic mutations and germline risk factors from genome-wide association studies (GWAS).
  • Researchers analyzed co-expression patterns of genes identified in GWAS for various cancers, finding that many of these genes are significant in their relationship with known cancer driver genes.
  • The findings suggest that tissue-specific co-expression networks can explain how different sets of genes—those with germline risk factors and those with somatic mutations—can lead to the same type of cancer, thus bridging the gap between these two genetic influences.
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Fine-mapping and functional studies implicate rs117701653, a non-coding single nucleotide polymorphism in the CD28/CTLA4/ICOS locus, as a risk variant for rheumatoid arthritis and type 1 diabetes. Here, using DNA pulldown, mass spectrometry, genome editing and eQTL analysis, we establish that the disease-associated risk allele is functional, reducing affinity for the inhibitory chromosomal regulator SMCHD1 to enhance expression of inducible T-cell costimulator (ICOS) in memory CD4 T cells from healthy donors. Higher ICOS expression is paralleled by an increase in circulating T peripheral helper (Tph) cells and, in rheumatoid arthritis patients, of blood and joint fluid Tph cells as well as circulating plasmablasts.

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Expression quantitative trait loci (eQTL) offer insights into the regulatory mechanisms of trait-associated variants, but their effects often rely on contexts that are unknown or unmeasured. We introduce PICALO, a method for hidden variable inference of eQTL contexts. PICALO identifies and disentangles technical from biological context in heterogeneous blood and brain bulk eQTL datasets.

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Background: Expression quantitative trait loci (eQTL) studies show how genetic variants affect downstream gene expression. Single-cell data allows reconstruction of personalized co-expression networks and therefore the identification of SNPs altering co-expression patterns (co-expression QTLs, co-eQTLs) and the affected upstream regulatory processes using a limited number of individuals.

Results: We conduct a co-eQTL meta-analysis across four scRNA-seq peripheral blood mononuclear cell datasets using a novel filtering strategy followed by a permutation-based multiple testing approach.

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Identification of therapeutic targets from genome-wide association studies (GWAS) requires insights into downstream functional consequences. We harmonized 8,613 RNA-sequencing samples from 14 brain datasets to create the MetaBrain resource and performed cis- and trans-expression quantitative trait locus (eQTL) meta-analyses in multiple brain region- and ancestry-specific datasets (n ≤ 2,759). Many of the 16,169 cortex cis-eQTLs were tissue-dependent when compared with blood cis-eQTLs.

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Genetic testing in patients with suspected hereditary kidney disease may not reveal the genetic cause for the disorder as potentially pathogenic variants can reside in genes that are not yet known to be involved in kidney disease. We have developed KidneyNetwork, that utilizes tissue-specific expression to inform candidate gene prioritization specifically for kidney diseases. KidneyNetwork is a novel method constructed by integrating a kidney RNA-sequencing co-expression network of 878 samples with a multi-tissue network of 31,499 samples.

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The host's gene expression and gene regulatory response to pathogen exposure can be influenced by a combination of the host's genetic background, the type of and exposure time to pathogens. Here we provide a detailed dissection of this using single-cell RNA-sequencing of 1.3M peripheral blood mononuclear cells from 120 individuals, longitudinally exposed to three different pathogens.

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Amyotrophic lateral sclerosis (ALS) is a fatal neurodegenerative disease with a lifetime risk of one in 350 people and an unmet need for disease-modifying therapies. We conducted a cross-ancestry genome-wide association study (GWAS) including 29,612 patients with ALS and 122,656 controls, which identified 15 risk loci. When combined with 8,953 individuals with whole-genome sequencing (6,538 patients, 2,415 controls) and a large cortex-derived expression quantitative trait locus (eQTL) dataset (MetaBrain), analyses revealed locus-specific genetic architectures in which we prioritized genes either through rare variants, short tandem repeats or regulatory effects.

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Trait-associated genetic variants affect complex phenotypes primarily via regulatory mechanisms on the transcriptome. To investigate the genetics of gene expression, we performed cis- and trans-expression quantitative trait locus (eQTL) analyses using blood-derived expression from 31,684 individuals through the eQTLGen Consortium. We detected cis-eQTL for 88% of genes, and these were replicable in numerous tissues.

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Article Synopsis
  • - Aging impacts various tissues and is linked to changes in blood gene expression, but previous studies may have incorrectly associated gene expression with aging due to variations in blood cell types with age.
  • - A new study improved upon earlier models by accounting for 33 additional white blood cell subtypes, resulting in a more accurate identification of just 625 genes related to aging, compared to 2808 in the previous model.
  • - The findings emphasize the importance of incorporating both common and rare blood cell type data in gene expression studies, suggesting that blood-cell counts should be standard practice in such research.
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More than 240 genetic risk loci have been associated with inflammatory bowel disease (IBD), but little is known about how they contribute to disease development in involved tissue. Here, we hypothesized that host genetic variation affects gene expression in an inflammation-dependent way, and investigated 299 snap-frozen intestinal biopsies from inflamed and non-inflamed mucosa from 171 IBD patients. RNA-sequencing was performed, and genotypes were determined using whole exome sequencing and genome wide genotyping.

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To study the effect of host genetics on gut microbiome composition, the MiBioGen consortium curated and analyzed genome-wide genotypes and 16S fecal microbiome data from 18,340 individuals (24 cohorts). Microbial composition showed high variability across cohorts: only 9 of 410 genera were detected in more than 95% of samples. A genome-wide association study of host genetic variation regarding microbial taxa identified 31 loci affecting the microbiome at a genome-wide significant (P < 5 × 10) threshold.

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  • Circulating proteins play a key role in human health and are used as biomarkers for disease and drug targets; this study maps protein quantitative trait loci (pQTLs) for 90 cardiovascular proteins in over 30,000 people, discovering 451 pQTLs for 85 proteins.
  • The researchers verified their findings with mouse studies and clinical trials, establishing the regulatory roles of certain genes on these proteins.
  • They also identified 11 proteins with potential causal links to diseases, suggesting new drug targets and opportunities for repositioning existing drugs, thus enhancing the understanding of the genetics of proteins in relation to health.
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Inference of causality between gene expression and complex traits using Mendelian randomization (MR) is confounded by pleiotropy and linkage disequilibrium (LD) of gene-expression quantitative trait loci (eQTL). Here, we propose an MR method, MR-link, that accounts for unobserved pleiotropy and LD by leveraging information from individual-level data, even when only one eQTL variant is present. In simulations, MR-link shows false-positive rates close to expectation (median 0.

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  • Environmental endocrine disrupting chemicals (EDCs) may be linked to the rise of metabolic diseases through epigenetic changes that affect gene expression and metabolic traits.
  • A study involving 622 participants analyzed the relationship between EDC exposure (from parabens, bisphenols, and phthalate metabolites) and DNA methylation patterns, finding that certain EDCs were significantly associated with metabolic factors like blood glucose and lipid levels.
  • The research identified 20 key DNA methylation markers related to EDC exposure, suggesting a potential mechanism by which these chemicals contribute to metabolic health issues, and emphasizes the need for further studies to establish causality.
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Candida bloodstream infection, i.e. candidemia, is the most frequently encountered life-threatening fungal infection worldwide, with mortality rates up to almost 50%.

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Background: Previous studies of radiological damage in rheumatoid arthritis (RA) have used candidate-gene approaches, or evaluated single genome-wide association studies (GWAS). We undertook the first meta-analysis of GWAS of RA radiological damage to: (1) identify novel genetic loci for this trait; and (2) test previously validated variants.

Methods: Seven GWAS (2,775 RA cases, of a range of ancestries) were combined in a meta-analysis.

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Despite significant progress in annotating the genome with experimental methods, much of the regulatory noncoding genome remains poorly defined. Here we assert that regulatory elements may be characterized by leveraging local epigenomic signatures where specific transcription factors (TFs) are bound. To link these two features, we introduce IMPACT, a genome annotation strategy that identifies regulatory elements defined by cell-state-specific TF binding profiles, learned from 515 chromatin and sequence annotations.

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Article Synopsis
  • Many patients don't respond well to prescribed medications, leading to exposure to side effects from ineffective treatments.
  • Variations in drug response are primarily influenced by genetic differences, environmental factors, and the types of cells involved in the disease.
  • The proposed approach combines single-cell data and bulk data to create personalized gene regulatory networks, potentially identifying key genes for specific diseases and enhancing personalized healthcare.
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