Transcriptomics

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Common and rare variant prediction and penetrance of IBD in a large, multi-ethnic, health system-based biobank cohort


ABSTRACT: Background and aims: As genome sequencing technologies rapidly expand in capacity and availability, understanding how genetic background in different populations modifies IBD risk will be an important factor in disease prediction, prevention, and treatment. However, most of the datasets that are used to generate polygenic risk scores (PRS) contain predominantly European ancestry patients. To address this, we tested different models for prediction of IBD cases using PRS built using association data from multiple races and also assessed the penetrance of rare very early onset IBD (VEOIBD) SNPs. Methods: PRS were calculated using association data from European, African American, and Ashkenazi Jewish (AJ) studies, as well as a meta-GWAS run using all three association datasets. PRS were then combined using regression modelling to assess which combination of scores was best able to predict IBD status in European, AJ, Hispanic, and African American BioMe Biobank populations. Additionally, rare variants were assessed in genes associated with very early onset IBD, taking into account genetic penetrance in each BioMe population, deleteriousness, and evolutionary conservation. Results: Combining risk scores based on IBD association results from multiple racial populations resulted in improved IBD prediction for every population in BioMe. We also identified highly penetrant rare variants in previously established VEOIBD genes which were predicted to be deleterious, including SNPs in established risk genes such as NOD2 as well as novel variants, including some in LRBA which appear to be particularly relevant for risk of IBD in African Americans.

ORGANISM(S): Homo sapiens

PROVIDER: GSE150516 | GEO | 2021/04/07

REPOSITORIES: GEO

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