| Literature DB >> 18466453 |
Fredrick R Schumacher1, Peter Kraft.
Abstract
Although rheumatoid arthritis, a chronic and inflammatory disease affecting numerous adults, has a complex genetic component involving the human leukocyte antigen region, additional genomic regions most likely affects susceptibility. Whole-genome scans may assist in identifying these additional candidate regions, but a large number of false-positives are likely to occur using traditional statistical methods. Therefore, novel statistical approaches are needed. Here, we used a single replicate from the Genetic Analysis Workshop 15 simulated data to assess for marker-disease associations in 1500 rheumatoid arthritis cases and 2000 controls on chromosome 6. The statistical methods included a maximum-likelihood estimation approach and a novel Bayesian latent class analysis. The Bayesian analysis "borrows strength" from multiple loci to estimate association parameters and can incorporate differences across loci in the prior probability of association. Because of this, we hypothesized that the Bayesian analysis might be better able to detect true associations while minimizing false positives. The Bayesian posterior means for the log alleleic odds ratios were less variable than the maximum likelihood estimates, but the posterior probabilities were not as good as the simple p-values in distinguishing a signal from a non-signal. Overall, Bayesian latent class analyses provided no obvious improvement over maximum-likelihood estimation. However, our results may not be able to be generalized due to the large effect simulated in the human leukocyte antigen-DR locus.Entities:
Year: 2007 PMID: 18466453 PMCID: PMC2367528 DOI: 10.1186/1753-6561-1-s1-s112
Source DB: PubMed Journal: BMC Proc ISSN: 1753-6561
Figure 1The beta estimates from the MLE and Bayes models. The Bayes (black) and MLE (red) beta estimates for model J = 1 and J = 2. The Bayesian estimates are the mean of the posterior. The x-axis is the marker position and the y-axis is the log OR. Panel A, model 1; Panel B, model 2; Panel C, model 1, non-associated/associated weights; Panel D, model 2, non-associated/associated weights.
Figure 2The probabilities for a true-positive result using the MLE and Bayes models. The posterior probabilities of true-positive results for priors plotted against the marker position. The posterior probabilities are transformed frequent p-values, 0.0001/(p + 0.0001). The red plots are from the MLE estimates and the black plots are from the Bayesian estimates. Panel A, MLE estimates; Panel B, model 1, Bayesian estimates; Panel C, model 2, Bayesian estimates; Panel D, MLE estimates; Panel E, model 1, Bayesian estimates, non-associated/associated weights; Panel F, model 2, Bayesian estimates, non-associated/associated weights.
Average beta estimates from the MLE and Bayes models across candidate and non-candidate regions
| Model | Non-candidate | HLA | Region 1 | Region 2 | HLA + Region 1 + Region 2 |
| MLEa | -0.005 | -0.575 | 0.014 | 0.01 | -0.331 |
| Without priorsb | -0.004 | -0.329 | 0 | 0.005 | -0.191 |
| With priorsb | -0.004 | -0.305 | 0.001 | 0.007 | -0.177 |
aMaximum likelihood estimates
bBayesian estimates. With priors is weighted and without priors is unweighted.