6 results match your criteria: "USA. finucane@broadinstitute.org.[Affiliation]"

Improving fine-mapping by modeling infinitesimal effects.

Nat Genet

January 2024

Analytic and Translational Genetics Unit, Massachusetts General Hospital, Boston, MA, USA.

Fine-mapping aims to identify causal genetic variants for phenotypes. Bayesian fine-mapping algorithms (for example, SuSiE, FINEMAP, ABF and COJO-ABF) are widely used, but assessing posterior probability calibration remains challenging in real data, where model misspecification probably exists, and true causal variants are unknown. We introduce replication failure rate (RFR), a metric to assess fine-mapping consistency by downsampling.

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Genome-wide association studies (GWASs) are a valuable tool for understanding the biology of complex human traits and diseases, but associated variants rarely point directly to causal genes. In the present study, we introduce a new method, polygenic priority score (PoPS), that learns trait-relevant gene features, such as cell-type-specific expression, to prioritize genes at GWAS loci. Using a large evaluation set of genes with fine-mapped coding variants, we show that PoPS and the closest gene individually outperform other gene prioritization methods, but observe the best overall performance by combining PoPS with orthogonal methods.

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Article Synopsis
  • Most variants found through Genome-Wide Association Studies (GWAS) are non-coding, prompting the need to study their regulatory functions more closely.
  • Traditional experimental methods to explore the impact of these variants on gene expression are limited in scale, lacking comprehensive high-throughput approaches.
  • The study introduces the expression modifier score (EMS) that utilizes a large dataset of causal variants to enhance predictions of how variants affect gene expression, leading to the identification of thousands of additional candidate regulatory variants and genes.
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We introduce an approach to identify disease-relevant tissues and cell types by analyzing gene expression data together with genome-wide association study (GWAS) summary statistics. Our approach uses stratified linkage disequilibrium (LD) score regression to test whether disease heritability is enriched in regions surrounding genes with the highest specific expression in a given tissue. We applied our approach to gene expression data from several sources together with GWAS summary statistics for 48 diseases and traits (average N = 169,331) and found significant tissue-specific enrichments (false discovery rate (FDR) < 5%) for 34 traits.

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