Work has progressed in family-based statistical methods for studying genetic effects. Case-control studies aimed at elucidating genetic contributors to the etiology of diseases are problematic because of the 'admixture' problem: If a particular variant allele is to be studied, there may be subpopulations that simultaneously have elevated prevalence of the variant allele and increased risk of the defect, for unrelated reasons. Such an admixture can produce biased estimation in a traditional population-based case-control study. A family-based design avoids this problem by effectively conditioning on the parental genotypes. One can study affected individuals and their parents, who together form a 'triad' of genotypes. Using the triads from such a study, under assumed Mendelian inheritance, one can estimate relative risks for an allelic variant and can differentiate effects that depend on the prenatal effects of the maternal genotype from effects mediated by the (correlated) offspring's inherited genotype. Triads that are incomplete because one or both parents are not available for genotyping can be fully used by applying the Expectation-Maximization algorithm. Further work allows for detection of effects that differ according to the parent of origin of the variant allele, a phenomenon known as 'imprinting.' We are now developing SAS software to implement these methods, which we intend to make available on the web. Further work has applied within-cluster paired resampling to sibship data, which can be a powerful design for studying a disease with onset in later life, when parents would not necessarily be available. Standard methods, such as conditional logistic regression, are not valid for sibships because of the complex correlation structures that are induced among siblings by genetic linkage. Repeated paired resampling solves the problem by letting each sibship repeatedly contribute just one case-control (affected-unaffected) pair. One carries out a logistic analysis of the pairs, and then pools the results across many such analyses, to derive an interpretable estimator for the odds ratio together with a valid estimate of its standard error. We showed that this method outperforms existing methods for genetic sibship analysis.

Agency
National Institute of Health (NIH)
Institute
National Institute of Environmental Health Sciences (NIEHS)
Type
Intramural Research (Z01)
Project #
1Z01ES040007-05
Application #
6501226
Study Section
(BB)
Project Start
Project End
Budget Start
Budget End
Support Year
5
Fiscal Year
2001
Total Cost
Indirect Cost
Name
U.S. National Inst of Environ Hlth Scis
Department
Type
DUNS #
City
State
Country
United States
Zip Code
Shi, M; Umbach, D M; Wise, A S et al. (2018) Simulating autosomal genotypes with realistic linkage disequilibrium and a spiked-in genetic effect. BMC Bioinformatics 19:2
Chen, Lu; Weinberg, Clarice R; Chen, Jinbo (2016) Using family members to augment genetic case-control studies of a life-threatening disease. Stat Med 35:2815-30
Wise, Alison S; Shi, Min; Weinberg, Clarice R (2016) Family-Based Multi-SNP X Chromosome Analysis Using Parent Information. Front Genet 7:20
Wise, Alison S; Shi, Min; Weinberg, Clarice R (2015) Learning about the X from our parents. Front Genet 6:15
Shi, Min; Umbach, David M; Weinberg, Clarice R (2015) Using parental phenotypes in case-parent studies. Front Genet 6:221
Shi, Min; Umbach, David M; Weinberg, Clarice R (2014) Disentangling pooled triad genotypes for association studies. Ann Hum Genet 78:345-56
Weinberg, Clarice R; Shi, Min; DeRoo, Lisa A et al. (2014) Asymmetry in family history implicates nonstandard genetic mechanisms: application to the genetics of breast cancer. PLoS Genet 10:e1004174
Kim, Jinsil; Stirling, Kara J; Cooper, Margaret E et al. (2013) Sequence variants in oxytocin pathway genes and preterm birth: a candidate gene association study. BMC Med Genet 14:77
Shi, Min; Umbach, David M; Weinberg, Clarice R (2013) Case-sibling studies that acknowledge unstudied parents and permit the inclusion of unmatched individuals. Int J Epidemiol 42:298-307
Weinberg, Clarice R (2012) Interaction and exposure modification: are we asking the right questions? Am J Epidemiol 175:602-5

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