Accuracy of haplotype frequency estimation for biallelic loci, via the expectation-maximization algorithm for unphased diploid genotype data.

Haplotype analyses have become increasingly common in genetic studies of human disease because of their ability to identify unique chromosomal segments likely to harbor disease-predisposing genes. The study of haplotypes is also used to investigate many population processes, such as migration and immigration rates, linkage-disequilibrium strength, and the relatedness of populations. Unfortunately, many haplotype-analysis methods require phase information that can be difficult to obtain from samples of nonhaploid species. There are, however, strategies for estimating haplotype frequencies from unphased diploid genotype data collected on a sample of individuals that make use of the expectation-maximization (EM) algorithm to overcome the missing phase information. The accuracy of such strategies, compared with other phase-determination methods, must be assessed before their use can be advocated. In this study, we consider and explore sources of error between EM-derived haplotype frequency estimates and their population parameters, noting that much of this error is due to sampling error, which is inherent in all studies, even when phase can be determined. In light of this, we focus on the additional error between haplotype frequencies within a sample data set and EM-derived haplotype frequency estimates incurred by the estimation procedure. We assess the accuracy of haplotype frequency estimation as a function of a number of factors, including sample size, number of loci studied, allele frequencies, and locus-specific allelic departures from Hardy-Weinberg and linkage equilibrium. We point out the relative impacts of sampling error and estimation error, calling attention to the pronounced accuracy of EM estimates once sampling error has been accounted for. We also suggest that many factors that may influence accuracy can be assessed empirically within a data set-a fact that can be used to create "diagnostics" that a user can turn to for assessing potential inaccuracies in estimation.

[1]  R. Lewontin The Interaction of Selection and Linkage. I. General Considerations; Heterotic Models. , 1964, Genetics.

[2]  A. Clark,et al.  Inference of haplotypes from PCR-amplified samples of diploid populations. , 1990, Molecular biology and evolution.

[3]  L. Excoffier,et al.  Maximum-likelihood estimation of molecular haplotype frequencies in a diploid population. , 1995, Molecular biology and evolution.

[4]  K. Kidd,et al.  HAPLO: a program using the EM algorithm to estimate the frequencies of multi-site haplotypes. , 1995, The Journal of heredity.

[5]  J. Long,et al.  An E-M algorithm and testing strategy for multiple-locus haplotypes. , 1995, American journal of human genetics.

[6]  S. Tishkoff,et al.  Molecular haplotyping of genetic markers 10 kb apart by allele-specific long-range PCR. , 1996, Nucleic acids research.

[7]  W. G. Hill,et al.  Genetic Data Analysis II . By Bruce S. Weir, Sunderland, Massachusetts. Sinauer Associates, Inc.445 pages. ISBN 0-87893-902-4. , 1996 .

[8]  B. Weir Genetic Data Analysis II. , 1997 .

[9]  M. Ehm,et al.  Detecting marker-disease association by testing for Hardy-Weinberg disequilibrium at a marker locus. , 1998, American journal of human genetics.

[10]  K K Kidd,et al.  Linkage disequilibrium at the ADH2 and ADH3 loci and risk of alcoholism. , 1999, American journal of human genetics.

[11]  N. Schork,et al.  Genetic analysis of case/control data using estimated haplotype frequencies: application to APOE locus variation and Alzheimer's disease. , 2001, Genome research.