Constructing genetic and physical maps for all the human chromosomes are fundamental aims of the Human Genome Project, and the promise to map and identify genes for human diseases is a principal reason why the Genome Project has widespread support. Efficient statistical methods help to insure that these goals are met in a timely, cost-effective manner. In this proposal, I address a set of statistical design and analysis issues that arise in radiation hybrid map construction, genetic map construction, and the mapping of human disease genes. For radiation hybrid mapping, I will consider (1) questions of study design, including sample size requirements and accuracy of locus ordering; (2) methods of framework map construction; (3) extensions to standard models to allow for (a) combining data from two or more hybrid panels, (b) permit exclusion of hybrids that appear not to contain human material, and (c) allow for direct marker selection in hybrid construction; and (4) methods to identify typing errors and to assess the magnitude of their effect on distance estimates and accuracy of ordering. For genetic map construction and the mapping of disease genes, I will consider (1) methods for error detection in gene mapping studies; (2) decision rules for changing from two-point to multipoint linkage analysis when mapping a disease gene; (3) Bayesian methods for determining the posterior probabilities of autosomal and X-linkage; and (4) two-locus methods for,mapping complex genetic diseases. In addition, I will continue to develop, support, and distribute my computer program SIMLINK, the standard tool for evaluating the power of a proposed linkage study. Finally, I will continue to be opportunistic in identifying and addressing important statistical modeling and analysis problems that arise that are related to the general goals of this project.

Agency
National Institute of Health (NIH)
Institute
National Human Genome Research Institute (NHGRI)
Type
Research Project (R01)
Project #
5R01HG000376-08
Application #
2208790
Study Section
Genome Study Section (GNM)
Project Start
1988-09-28
Project End
1998-08-31
Budget Start
1995-09-01
Budget End
1996-08-31
Support Year
8
Fiscal Year
1995
Total Cost
Indirect Cost
Name
University of Michigan Ann Arbor
Department
Biostatistics & Other Math Sci
Type
Schools of Public Health
DUNS #
791277940
City
Ann Arbor
State
MI
Country
United States
Zip Code
48109
Wojcik, Genevieve L; Fuchsberger, Christian; Taliun, Daniel et al. (2018) Imputation-Aware Tag SNP Selection To Improve Power for Large-Scale, Multi-ethnic Association Studies. G3 (Bethesda) 8:3255-3267
Reppell, M; Zöllner, S (2018) An efficient algorithm for generating the internal branches of a Kingman coalescent. Theor Popul Biol 122:57-66
Jiang, Yu; Chen, Sai; McGuire, Daniel et al. (2018) Proper conditional analysis in the presence of missing data: Application to large scale meta-analysis of tobacco use phenotypes. PLoS Genet 14:e1007452
Dutta, Diptavo; Scott, Laura; Boehnke, Michael et al. (2018) Multi-SKAT: General framework to test for rare-variant association with multiple phenotypes. Genet Epidemiol :
Ray, Debashree; Boehnke, Michael (2018) Methods for meta-analysis of multiple traits using GWAS summary statistics. Genet Epidemiol 42:134-145
Scott, Robert A; Scott, Laura J; Mägi, Reedik et al. (2017) An Expanded Genome-Wide Association Study of Type 2 Diabetes in Europeans. Diabetes 66:2888-2902
Chiu, Chi-Yang; Jung, Jeesun; Chen, Wei et al. (2017) Meta-analysis of quantitative pleiotropic traits for next-generation sequencing with multivariate functional linear models. Eur J Hum Genet 25:350-359
Chiu, Chi-Yang; Jung, Jeesun; Wang, Yifan et al. (2017) A comparison study of multivariate fixed models and Gene Association with Multiple Traits (GAMuT) for next-generation sequencing. Genet Epidemiol 41:18-34
Taliun, Daniel; Chothani, Sonia P; Schönherr, Sebastian et al. (2017) LASER server: ancestry tracing with genotypes or sequence reads. Bioinformatics 33:2056-2058
McCarthy, Shane; Das, Sayantan; Kretzschmar, Warren et al. (2016) A reference panel of 64,976 haplotypes for genotype imputation. Nat Genet 48:1279-83

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