Ancestral Recombination Graphs under Non-Random Ascertainment, with Applications to Gene Mapping
Abstract
Consider a sample of apparently unrelated individuals, for which marker genotype and phenotype data is available. When individuals are sampled on phenotypes, we propose an ascertained ancestral recombination graph (ARG) that models shared ancestry of the sample chromosomes given phenotype data along a region that possibly harbors a disease susceptibility gene. The ascertained ARG is used to define a gene mapping algorithm by means of a lod score and associated p-values based on permutation testing. Under certain modeling simplifications, the lod score and p-values can be computed exactly, without any Monte Carlo approximations, even for unphased chromosome genotype data. Our method handles incomplete penetrance, varying marker allele frequencies and neutral mutations, and is based on a Hidden Markov algorithm for subsets of disease mutated chromosomes. The performance of the method is investigated in a simulation study and for a real data set from a case-control study of breast cancer.
Submitted: April 24, 2008 · Accepted: June 12, 2009 · Published: September 9, 2009
Recommended Citation
Hössjer, Ola; Hartman, Linda; and Humphreys, Keith
(2009)
"Ancestral Recombination Graphs under Non-Random Ascertainment, with Applications to Gene Mapping,"
Statistical Applications in Genetics and Molecular Biology:
Vol. 8
:
Iss.
1, Article 35.
DOI: 10.2202/1544-6115.1380
Available at: http://www.bepress.com/sagmb/vol8/iss1/art35
