A post-GWAS analysis of predicted regulatory variants and tuberculosis susceptibility.
Caitlin UrenBrenna M HennAndre FrankeMichael WittigPaul D van HeldenEileen G HoalMarlo MöllerPublished in: PloS one (2017)
Utilizing data from published tuberculosis (TB) genome-wide association studies (GWAS), we use a bioinformatics pipeline to detect all polymorphisms in linkage disequilibrium (LD) with variants previously implicated in TB disease susceptibility. The probability that these variants had a predicted regulatory function was estimated using RegulomeDB and Ensembl's Variant Effect Predictor. Subsequent genotyping of these 133 predicted regulatory polymorphisms was performed in 400 admixed South African TB cases and 366 healthy controls in a population-based case-control association study to fine-map the causal variant. We detected associations between tuberculosis susceptibility and six intronic polymorphisms located in MARCO, IFNGR2, ASHAS2, ACACA, NISCH and TLR10. Our post-GWAS approach demonstrates the feasibility of combining multiple TB GWAS datasets with linkage information to identify regulatory variants associated with this infectious disease.
Keyphrases
- mycobacterium tuberculosis
- copy number
- case control
- transcription factor
- pulmonary tuberculosis
- genome wide
- infectious diseases
- genome wide association
- immune response
- hiv aids
- inflammatory response
- toll like receptor
- high throughput
- healthcare
- big data
- hepatitis c virus
- health information
- machine learning
- adverse drug
- high density
- rna seq
- hiv infected
- artificial intelligence
- genetic diversity