Methods for the Genetic Epidemiology of Complex Traits (GM-46255-17) Techniques will be developed for genetic analysis of complex diseases segregating in extended pedigrees of arbitrary structure. Cardiovascular, neurological and behavioral traits are among those having both environmental and genetic components. However, identification of genes contributing to increased risk of related disorders has been limited by both computational and statistical constraints. The development of Markov chain Monte Carlo (MCMC) methods has helped to overcome these limitations, providing information for gene localization, trait model estimation, haplotype analysis, and genetic map analyses, using data on extended pedigrees. The research now proposed is concerned with the extension of MCMC methods in several areas. Improved methods will be developed for the MCMC analysis of gene descent in extended pedigrees, given data at a dense genome screen of markers, together with the use of these gene descent patterns in joint multilocus linkage and segregation analysis of complex traits. Models for discrete and quantitative trait phenotypes in these analyses will be extended to include epistasis and pleiotropy. MCMC-based likelihood-ratio methods for assessment of trait-model robustness will be incorporated into our toolkit. Further, methods will be developed for assessment of the statistical significance of linkage findings, including correction for multiple testing at linked genome locations. Conditional on marker data, trait-data resimulation and permutation will be used to develop measures of significance. Also, the conditional distributions of gene descent at marker locations will be used to provide both measures of significance and confidence sets for trait-locus locations. Methods will also be developed for the use of patterns of gene descent realized conditional on marker data in the analysis of genetic maps and marker models, including multi-SNP haplotypes and copy-number variants in these analyses. The impact of marker map and model uncertainty on linkage findings will be investigated. In using multiple dense SNPs as markers, methods for incorporating linkage disequilibrium (LD) into the analysis of family data will be developed. The impact of LD on MCMC-based methods of haplotype inference, estimation of identity by descent (ibd) over regions, and lod score analyses will be investigated. Methods will be evaluated by analyses on several simulated and real data sets, including pedigrees segregating cardiovascular disease or behavioral disorders. These real data sets include several on which are available genome-wide marker screens or more localized multigene haplotypes. Finally, software will be developed that implements these methods, and will be documented and released for use by practitioners.

National Institute of Health (NIH)
National Institute of General Medical Sciences (NIGMS)
Method to Extend Research in Time (MERIT) Award (R37)
Project #
Application #
Study Section
Biostatistical Methods and Research Design Study Section (BMRD)
Program Officer
Krasnewich, Donna M
Project Start
Project End
Budget Start
Budget End
Support Year
Fiscal Year
Total Cost
Indirect Cost
University of Washington
Biostatistics & Other Math Sci
Schools of Arts and Sciences
United States
Zip Code
Sverdlov, Serge; Thompson, Elizabeth (2016) Combinatorial Methods for Epistasis and Dominance. J Comput Biol :
Wijsman, Ellen M (2016) Family-based approaches: design, imputation, analysis, and beyond. BMC Genet 17 Suppl 2:9
Saad, Mohamad; Nato Jr, Alejandro Q; Grimson, Fiona L et al. (2016) Identity-by-descent estimation with population- and pedigree-based imputation in admixed family data. BMC Proc 10:295-301
Raffa, Jesse D; Thompson, Elizabeth A (2016) Power and Effective Study Size in Heritability Studies. Stat Biosci 8:264-283
Blue, Elizabeth M; Brown, Lisa A; Conomos, Matthew P et al. (2016) Estimating relationships between phenotypes and subjects drawn from admixed families. BMC Proc 10:357-362
Glazner, Chris; Thompson, Elizabeth (2015) Pedigree-Free Descent-Based Gene Mapping from Population Samples. Hum Hered 80:21-35
Nato Jr, Alejandro Q; Chapman, Nicola H; Sohi, Harkirat K et al. (2015) PBAP: a pipeline for file processing and quality control of pedigree data with dense genetic markers. Bioinformatics 31:3790-8
Blue, Elizabeth M; Sun, Lei; Tintle, Nathan L et al. (2014) Value of Mendelian laws of segregation in families: data quality control, imputation, and beyond. Genet Epidemiol 38 Suppl 1:S21-8
Cheung, Charles Y K; Thompson, Elizabeth A; Wijsman, Ellen M (2014) Detection of Mendelian consistent genotyping errors in pedigrees. Genet Epidemiol 38:291-9
Zheng, Chaozhi; Kuhner, Mary K; Thompson, Elizabeth A (2014) Joint inference of identity by descent along multiple chromosomes from population samples. J Comput Biol 21:185-200

Showing the most recent 10 out of 43 publications