42 research outputs found
Conditional genotype analysis: detecting secondary disease loci in linkage disequilibrium with a primary disease locus
A number of autoimmune and other diseases have well established HLA associations; in many cases there is strong evidence for the direct involvement of the HLA class II peptide-presenting antigens, e.g., HLA DR-DQ for type 1 diabetes (T1D) and HLA-DR for rheumatoid arthritis (RA). The involvement of additional HLA region genes in the disease process is implicated in these diseases. We have developed a model-free approach to detect these additional disease genes using genotype data; the conditional genotype method (CGM) and overall conditional genotype method (OCGM) use all patient and control data and do not require haplotype estimation. Genotypes at marker genes in the HLA region are stratified and their expected values are determined in a way that removes the effects of linkage disequilibrium (LD) with the peptide-presenting HLA genes directly involved in the disease. A statistic has been developed under the null hypothesis of no additional disease genes in the HLA region for the OCGM method and was applied to the Genetic Analysis Workshop 15 simulated data set of Problem 3, which mimics RA (answers were known). In addition to the primary effect of the HLA DR locus, the effects of the other two HLA region simulated genes involved in disease were detected (gene C, 0 cM from DR, increases RA risk only in women; and gene D, 5.12 cM from DR, rare allele increases RA risk five-fold). No false negatives were found. Power calculations were performed
Evidence for More than One Parkinson's Disease-Associated Variant within the HLA Region
Parkinson's disease (PD) was recently found to be associated with HLA in a genome-wide association study (GWAS). Follow-up GWAS's replicated the PD-HLA association but their top hits differ. Do the different hits tag the same locus or is there more than one PD-associated variant within HLA? We show that the top GWAS hits are not correlated with each other (0.00β€r2β€0.15). Using our GWAS (2000 cases, 1986 controls) we conducted step-wise conditional analysis on 107 SNPs with P<10β3 for PD-association; 103 dropped-out, four remained significant. Each SNP, when conditioned on the other three, yielded PSNP1β=β5Γ10β4, PSNP2β=β5Γ10β4, PSNP3β=β4Γ10β3 and PSNP4β=β0.025. The four SNPs were not correlated (0.01β€r2β€0.20). Haplotype analysis (excluding rare SNP2) revealed increasing PD risk with increasing risk alleles from ORβ=β1.27, Pβ=β5Γ10β3 for one risk allele to ORβ=β1.65, Pβ=β4Γ10β8 for three. Using additional 843 cases and 856 controls we replicated the independent effects of SNP1 (Pconditioned-on-SNP4β=β0.04) and SNP4 (Pconditioned-on-SNP1β=β0.04); SNP2 and SNP3 could not be replicated. In pooled GWAS and replication, SNP1 had ORconditioned-on-SNP4β=β1.23, Pconditioned-on-SNP4β=β6Γ10β7; SNP4 had ORconditioned-on-SNP1β=β1.18, Pconditioned-on-SNP1β=β3Γ10β3; and the haplotype with both risk alleles had ORβ=β1.48, Pβ=β2Γ10β12. Genotypic OR increased with the number of risk alleles an individual possessed up to ORβ=β1.94, Pβ=β2Γ10β11 for individuals who were homozygous for the risk allele at both SNP1 and SNP4. SNP1 is a variant in HLA-DRA and is associated with HLA-DRA, DRB5 and DQA2 gene expression. SNP4 is correlated (r2β=β0.95) with variants that are associated with HLA-DQA2 expression, and with the top HLA SNP from the IPDGC GWAS (r2β=β0.60). Our findings suggest more than one PD-HLA association; either different alleles of the same gene, or separate loci
High-Density SNP Screening of the Major Histocompatibility Complex in Systemic Lupus Erythematosus Demonstrates Strong Evidence for Independent Susceptibility Regions
A substantial genetic contribution to systemic lupus erythematosus (SLE) risk is conferred by major histocompatibility complex (MHC) gene(s) on chromosome 6p21. Previous studies in SLE have lacked statistical power and genetic resolution to fully define MHC influences. We characterized 1,610 Caucasian SLE cases and 1,470 parents for 1,974 MHC SNPs, the highly polymorphic HLA-DRB1 locus, and a panel of ancestry informative markers. Single-marker analyses revealed strong signals for SNPs within several MHC regions, as well as with HLA-DRB1 (global pβ=β9.99Γ10β16). The most strongly associated DRB1 alleles were: *0301 (odds ratio, ORβ=β2.21, pβ=β2.53Γ10β12), *1401 (ORβ=β0.50, pβ=β0.0002), and *1501 (ORβ=β1.39, pβ=β0.0032). The MHC region SNP demonstrating the strongest evidence of association with SLE was rs3117103, with ORβ=β2.44 and pβ=β2.80Γ10β13. Conditional haplotype and stepwise logistic regression analyses identified strong evidence for association between SLE and the extended class I, class I, class III, class II, and the extended class II MHC regions. Sequential removal of SLEβassociated DRB1 haplotypes revealed independent effects due to variation within OR2H2 (extended class I, rs362521, pβ=β0.006), CREBL1 (class III, rs8283, pβ=β0.01), and DQB2 (class II, rs7769979, pβ=β0.003, and rs10947345, pβ=β0.0004). Further, conditional haplotype analyses demonstrated that variation within MICB (class I, rs3828903, pβ=β0.006) also contributes to SLE risk independent of HLA-DRB1*0301. Our results for the first time delineate with high resolution several MHC regions with independent contributions to SLE risk. We provide a list of candidate variants based on biologic and functional considerations that may be causally related to SLE risk and warrant further investigation
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Conditional genotype analysis: detecting secondary disease loci in linkage disequilibrium with a primary disease locus.
A number of autoimmune and other diseases have well established HLA associations; in many cases there is strong evidence for the direct involvement of the HLA class II peptide-presenting antigens, e.g., HLA DR-DQ for type 1 diabetes (T1D) and HLA-DR for rheumatoid arthritis (RA). The involvement of additional HLA region genes in the disease process is implicated in these diseases. We have developed a model-free approach to detect these additional disease genes using genotype data; the conditional genotype method (CGM) and overall conditional genotype method (OCGM) use all patient and control data and do not require haplotype estimation. Genotypes at marker genes in the HLA region are stratified and their expected values are determined in a way that removes the effects of linkage disequilibrium (LD) with the peptide-presenting HLA genes directly involved in the disease. A statistic has been developed under the null hypothesis of no additional disease genes in the HLA region for the OCGM method and was applied to the Genetic Analysis Workshop 15 simulated data set of Problem 3, which mimics RA (answers were known). In addition to the primary effect of the HLA DR locus, the effects of the other two HLA region simulated genes involved in disease were detected (gene C, 0 cM from DR, increases RA risk only in women; and gene D, 5.12 cM from DR, rare allele increases RA risk five-fold). No false negatives were found. Power calculations were performed