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Mapping quantitative trait loci using molecular marker linkage maps
Authors:S J Knapp  W C Bridges Jr  D Birkes
Institution:(1) Department of Crop Science, Oregon State University, 97331 Corvallis, OR, USA;(2) Department of Statistics, Oregon State University, 97331 Corvallis, OR, USA;(3) Department of Experimental Statistics, Clemson University, 29643 Clemson, SC, USA
Abstract:Summary High-density restriction fragment length polymorphism (RFLP) and allozyme linkage maps have been developed in several plant species. These maps make it technically feasible to map quantitative trait loci (QTL) using methods based on flanking marker genetic models. In this paper, we describe flanking marker models for doubled haploid (DH), recombinant inbred (RI), backcross (BC), F1 testcross (F1TC), DH testcross (DHTC), recombinant inbred testcross (RITC), F2, and F3 progeny. These models are functions of the means of quantitative trait locus genotypes and recombination frequencies between marker and quantitative trait loci. In addition to the genetic models, we describe maximum likelihood methods for estimating these parameters using linear, nonlinear, and univariate or multivariate normal distribution mixture models. We defined recombination frequency estimators for backcross and F2 progeny group genetic models using the parameters of linear models. In addition, we found a genetically unbiased estimator of the QTL heterozygote mean using a linear function of marker means. In nonlinear models, recombination frequencies are estimated less efficiently than the means of quantitative trait locus genotypes. Recombination frequency estimation efficiency decreases as the distance between markers decreases, because the number of progeny in recombinant marker classes decreases. Mean estimation efficiency is nearly equal for these methods.
Keywords:Restriction fragment length polymorphisms  Allozymes  Maximum lilkelihood estimators  Normal distribution mixture models
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