In this proposal we develop and implement new methods for detecting genetic factors that influence the expression of quantitative traits such as hypertension and body mass index. We further develop methods of analysis for identifying genetic factors by genetic linkage analysis and through association studies.
Our first aim i s to implement multivariate, multipoint variance components procedures for complex traits on multiple platforms, including PCs, workstations and mainframe computers.
This aim builds upon the resources that we have developed to provide more general access for researchers to our Analysis of Complex Traits (ACT) package. ACT is available through the World Wide Web to the statistical genetic community for use on workstations using UNIX operating systems. The package performs multipoint, multivariate linkage analysis of traits. We propose to modify the programs so that they can be run in a personal computing environment, and to assist the user by implementing graphical user interfaces. For this aim, our graphical interfaces are primarily directed at improving access to online help for the documentation and the interfaces would assist the user choosing analyses to be run. We also propose some more minor modifications to our programs that would permit broader classes of genetic models to be fitted.
Our second aim i s to develop new statistical methods and statistical software that incorporate linkage disequilibrium in the analysis of quantitative traits. Our group of investigators have developed methods for performing family-based association tests for quantitative traits. We propose to develop software to help investigators to use these family-based tests.
Our third aim i s to develop new multivariate methods for genetic analysis that incorporate linkage disequilibrium. We also propose methods to assist researchers in designing studies of complex traits.
Our fourth aim i s to develop software for automated sample size and cost estimation. We routinely assess the power of all new tests that we develop. In this grant we will devote resources to developing a user-friendly set of programs that will include a graphical user interface to assist people in the design of studies of complex traits. Our last aim is to develop new methods for meta-analysis using linkage disequilibrium methods for quantitative traits. Power of any separate study to identify genetic factors influencing a trait may be so low, so we propose to develop methods to efficiently pool results from multiple studies, allowing for the potential genetic and methodologic heterogeneity among studies.

Agency
National Institute of Health (NIH)
Institute
National Institute of Environmental Health Sciences (NIEHS)
Type
Research Project (R01)
Project #
3R01ES009912-01S1
Application #
6135756
Study Section
Special Emphasis Panel (ZRG2 (02))
Project Start
1999-01-01
Project End
2001-12-31
Budget Start
1999-01-01
Budget End
1999-12-31
Support Year
1
Fiscal Year
1999
Total Cost
Indirect Cost
Name
University of Texas MD Anderson Cancer Center
Department
Type
Organized Research Units
DUNS #
001910777
City
Houston
State
TX
Country
United States
Zip Code
77030
Williams, K Y; Yoo, Yun Joo; Patki, Amit et al. (2011) Real data examples in statistical methods papers: Tremendously valuable, and also tremendously misvalued. Stat Interface 4:267-272
Peng, Gang; Luo, Li; Siu, Hoicheong et al. (2010) Gene and pathway-based second-wave analysis of genome-wide association studies. Eur J Hum Genet 18:111-7
Dong, Hua; Siu, Hoicheong; Luo, Li et al. (2010) Investigation gene and microRNA expression in glioblastoma. BMC Genomics 11 Suppl 3:S16
Luo, Li; Peng, Gang; Zhu, Yun et al. (2010) Genome-wide gene and pathway analysis. Eur J Hum Genet 18:1045-53
Remmers, Elaine F; Cosan, Fulya; Kirino, Yohei et al. (2010) Genome-wide association study identifies variants in the MHC class I, IL10, and IL23R-IL12RB2 regions associated with Behçet's disease. Nat Genet 42:698-702
Tiwari, Hemant K; Patki, Amit; Allison, David B (2010) Within-Cluster Resampling for Analysis of Family Data: Ready for Prime-Time? Stat Interface 3:169-176
Ma, Jianzhong; Amos, Christopher I (2010) Theoretical formulation of principal components analysis to detect and correct for population stratification. PLoS One 5:
Ma, Jianzhong; Daw, E Warwick; Amos, Christopher I (2010) Power of competing strategies of linkage analysis for complex traits. Hum Hered 70:55-62
Padilla, Miguel A; Divers, Jasmin; Vaughan, Laura K et al. (2009) Multiple imputation to correct for measurement error in admixture estimates in genetic structured association testing. Hum Hered 68:65-72
Vaughan, Laura K; Divers, Jasmin; Padilla, Miguel et al. (2009) The use of plasmodes as a supplement to simulations: A simple example evaluating individual admixture estimation methodologies. Comput Stat Data Anal 53:1755-1766

Showing the most recent 10 out of 99 publications