The objective of this project is to develop statistical methods and markers for mapping genes that underlie ethnic differences in disease risk, based on a novel approach that exploits the autocorrelation of ancestry on chromosomes of mixed descent in a manner analogous to linkage analysis of an experimental cross. This has obvious applications to investigating the genetic basis of conditions such as hypertension, Type 2 diabetes and systemic lupus erythematosus in the USA and other countries where there has been recent admixture between ethnic groups that have different risks of disease for genetic reasons. The development of the statistical analysis program will rely on methods developed for """"""""missing data"""""""" problems, using Markov chain simulation to generate the posterior distribution of ancestry at each locus given the observed marker data at all loci. A score test for linkage will be obtained by averaging over this posterior distribution. Extensive tuning of the algorithms will be required to ensure that the the statistical methods are robust over all models and data structures that are likely to arise in practice. The development of the marker sets will extend the work already in progress in Shriver's lab, based on screening SNP libraries and using subtractive hybridization to identify population-specific alleles. As the marker set is developed, the multipoint analysis program will be used to plot the information content for ancestry extracted by the marker set and to identify areas where additional markers are required to meet the target of extracting 80 percent information about ancestry in an initial genome searches. The program and the markers will be beta-tested on data from studies in admixed populations now under way in the USA, the Caribbean, and Australia The program will be made publicly available via the web.

Agency
National Institute of Health (NIH)
Institute
National Institute of Mental Health (NIMH)
Type
Research Project (R01)
Project #
5R01MH060343-03
Application #
6538993
Study Section
Genome Study Section (GNM)
Program Officer
Moldin, Steven Owen
Project Start
2000-06-01
Project End
2004-05-31
Budget Start
2002-06-01
Budget End
2004-05-31
Support Year
3
Fiscal Year
2002
Total Cost
$100,000
Indirect Cost
Name
U of L London School/Hygiene & Tropical Med
Department
Type
DUNS #
424403046
City
London
State
Country
United Kingdom
Zip Code
McKeigue, Paul M (2005) Prospects for admixture mapping of complex traits. Am J Hum Genet 76:1-7
Parra, E J; Hoggart, C J; Bonilla, C et al. (2004) Relation of type 2 diabetes to individual admixture and candidate gene polymorphisms in the Hispanic American population of San Luis Valley, Colorado. J Med Genet 41:e116
Bonilla, C; Parra, E J; Pfaff, C L et al. (2004) Admixture in the Hispanics of the San Luis Valley, Colorado, and its implications for complex trait gene mapping. Ann Hum Genet 68:139-53
Hoggart, C J; Shriver, M D; Kittles, R A et al. (2004) Design and analysis of admixture mapping studies. Am J Hum Genet 74:965-78
Hoggart, Clive J; Parra, Eteban J; Shriver, Mark D et al. (2003) Control of confounding of genetic associations in stratified populations. Am J Hum Genet 72:1492-1504
Shriver, Mark D; Parra, Esteban J; Dios, Sonia et al. (2003) Skin pigmentation, biogeographical ancestry and admixture mapping. Hum Genet 112:387-99
Molokhia, M; Hoggart, C; Patrick, A L et al. (2003) Relation of risk of systemic lupus erythematosus to west African admixture in a Caribbean population. Hum Genet 112:310-8
Fernandez, Jose R; Shriver, Mark D; Beasley, T Mark et al. (2003) Association of African genetic admixture with resting metabolic rate and obesity among women. Obes Res 11:904-11
Clayton, D; McKeigue, P M (2001) Epidemiological methods for studying genes and environmental factors in complex diseases. Lancet 358:1356-60