Abstract
AbstractEstimating the individual inbreeding coefficient and pairwise kinship is an important problem in human genetics (e.g., in disease mapping) and in animal and plant genetics (e.g., inbreeding design). Existing methods such as sample correlation-based genetic relationship matrix, KING, and UKin are either biased, or not able to estimate inbreeding coefficients, or produce a large proportion of negative estimates that are difficult to interpret. This limitation of existing methods is partly due to failure to explicitly model inbreeding. Since all humans are inbred to various degrees by virtue of shared ancestries, it is prudent to account for inbreeding when inferring kinship between individuals. We present “Kindred”, an approach that estimates inbreeding and kinship by modeling latent identity-by-descent states that accounts for all possible allele sharing – including inbreeding – between two individuals. Through simulation, we demonstrate the high accuracy and, more importantly, non-negativity of kinship estimates by Kindred. By selecting a subset of SNPs that are similar in allele frequencies across different populations, Kindred can accurately estimate kinship between admixed samples. Finally, we demonstrate that the realized kinship matrix estimated by Kindred is effective in reducing genomic control values via linear mixed model in genome-wide association studies, and it also produces sensible heritability estimates. Kindred is freely available athttp://www.haplotype.org.
Publisher
Cold Spring Harbor Laboratory