| Literature DB >> 18466509 |
Glenys Thomson1, Ana Maria Valdes.
Abstract
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.Entities:
Year: 2007 PMID: 18466509 PMCID: PMC2367484 DOI: 10.1186/1753-6561-1-s1-s163
Source DB: PubMed Journal: BMC Proc ISSN: 1753-6561
Figure 1Genetic association, linkage disequilibrium and application of conditional genotype analysis to chromosome 6 simulated data. A, Genotype associations of HLA region (chromosome 6) SNPs; B, linkage disequilibrium of SNPs 100 to 200 with the HLA DR4 allele; C, physical distribution of significant LD with chromosome 6 SNPs; D, application of the overall conditional genotype method (OCGM) to the HLA region data. Results refer to the average of 50 simulation replicates.
Statistical power to detect Locus C and D effects using the overall conditional genotype method (OCGM) based on 50 simulation replicates
| Markera | Disease locus | ||
| 100–139 | none | 6.0% | 2.1% |
| 152 | C | 24.0% | 4.0% |
| 153 | DR | 0.0% | 0.0% |
| 154 | C | 98.0% | 72.0% |
| 160 | D | 72.0% | 50.0% |
| 162 | D | 96.0% | 94.0% |
| 170–200 | none | 5.3% | 1.2% |
aThe average for markers number 100–139 and 170–200 is also shown.