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Methods for statistical fine-mapping and their applications to auto-immune diseases

Qingbo S. Wang, Hailiang Huang

2022Seminars in Immunopathology31 citationsDOIOpen Access PDF

Abstract

Although genome-wide association studies (GWAS) have identified thousands of loci in the human genome that are associated with different traits, understanding the biological mechanisms underlying the association signals identified in GWAS remains challenging. Statistical fine-mapping is a method aiming to refine GWAS signals by evaluating which variant(s) are truly causal to the phenotype. Here, we review the types of statistical fine-mapping methods that have been widely used to date, with a focus on recently developed functionally informed fine-mapping (FIFM) methods that utilize functional annotations. We then systematically review the applications of statistical fine-mapping in autoimmune disease studies to highlight the value of statistical fine-mapping in biological contexts.

Topics & Concepts

Genome-wide association studyComputational biologyGenetic associationComputer scienceStatistical modelData scienceBiologyGeneticsArtificial intelligenceSingle-nucleotide polymorphismGeneGenotypeGenetic Associations and EpidemiologyRNA Research and SplicingCancer-related molecular mechanisms research
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