Abstract

The genetic study of disease-associated phenotypes has become common because such phenotypes are often easier to measure and in many cases are under greater genetic control than the complex disease itself. Some disease-associated phenotypes are rare, however, making it difficult to evaluate their effects due to small informative sample sizes. In addition, analyzing numerous phenotypes introduces the issue of multiple comparisons. To address these issues, we have developed a hierarchical model (HM) for multiple phenotypes that provides more accurate effect estimates with a lower false-positive rate. We evaluated the validity and power of HM in association studies of multiple phenotypes using randomly selected cases and controls from the simulated data set in the Genetic Analysis Workshop 14. In particular, we first analyzed the association between each of the 12 subclinical phenotypes and single-nucleotide polymorphisms within the known causal loci using a conventional logistic regression model (LRM). Then we added a second-stage model by regressing all of the logistic coefficients of the phenotypes obtained from LRM on a Z matrix that incorporates the clinical correlation of the phenotypes. Specially, the 12 phenotypes were grouped into 3 clusters: 1) communally shared emotions; 2) behavioral related; and 3) anxiety related. A semi-Bayes HM effect estimate for each phenotype was calculated and compared with those from LRM. We observed that using HM to evaluate the association between SNPs and multiple related phenotypes slightly increased power for detecting the true associations and also led to fewer false-positive results.

Highlights

  • Complex diseases are most commonly evaluated in association studies as a single phenotype

  • Analyzing the effect of genes on numerous phenotypes introduces issues of multiple comparisons, and can lead to imprecise estimates of association if the number of individuals exhibiting a diseaseassociated phenotype is limited. These issues can be addressed by using a hierarchical model (HM) that compromises between analyses of a single phenotype and numerous disease-associated phenotypes

  • We found that HM has slightly higher power than logistic regression model (LRM) with mean of 58.8% vs. 56.5% (Figure 1)

Read more

Summary

Introduction

Complex diseases are most commonly evaluated in association studies as a single phenotype. In the study of alcoholism, brain electrophysiological measures (e.g., electroencephalograms and event-related potenials) can be evaluated as biological markers for developing alcoholism Focusing on such disease-associated phenotypes can help improve a study if they are under greater genetic control or easier to measure than the ultimate disease endpoint (e.g., alcoholism). Analyzing the effect of genes on numerous phenotypes introduces issues of multiple comparisons, and can lead to imprecise estimates of association if the number of individuals exhibiting a diseaseassociated phenotype is limited. These issues can be addressed by using a hierarchical model (HM) that compromises between analyses of a single phenotype and numerous disease-associated phenotypes. Previous work has shown that HM can improve conventional estimation of the association between disease(s) and exposures [1,2,3,4], fine-mapping by linkage disequilibrium (page number not for citation purposes)

Methods
Results
Discussion
Conclusion

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call

Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.