Comparison of Mixed-Model Approaches for Association Mapping

  • Benjamin Stich
    Institute for Plant Breeding, Seed Science, and Population Genetics and
  • Jens Möhring
    Institute for Crop Production and Grassland Research, University of Hohenheim, 70593 Stuttgart, Germany
  • Hans-Peter Piepho
    Institute for Crop Production and Grassland Research, University of Hohenheim, 70593 Stuttgart, Germany
  • Martin Heckenberger
    Institute for Plant Breeding, Seed Science, and Population Genetics and
  • Edward S Buckler
    Institute for Genomic Diversity and
  • Albrecht E Melchinger
    Institute for Plant Breeding, Seed Science, and Population Genetics and

Description

<jats:title>Abstract</jats:title> <jats:p>Association-mapping methods promise to overcome the limitations of linkage-mapping methods. The main objectives of this study were to (i) evaluate various methods for association mapping in the autogamous species wheat using an empirical data set, (ii) determine a marker-based kinship matrix using a restricted maximum-likelihood (REML) estimate of the probability of two alleles at the same locus being identical in state but not identical by descent, and (iii) compare the results of association-mapping approaches based on adjusted entry means (two-step approaches) with the results of approaches in which the phenotypic data analysis and the association analysis were performed in one step (one-step approaches). On the basis of the phenotypic and genotypic data of 303 soft winter wheat (Triticum aestivum L.) inbreds, various association-mapping methods were evaluated. Spearman's rank correlation between P-values calculated on the basis of one- and two-stage association-mapping methods ranged from 0.63 to 0.93. The mixed-model association-mapping approaches using a kinship matrix estimated by REML are more appropriate for association mapping than the recently proposed QK method with respect to (i) the adherence to the nominal α-level and (ii) the adjusted power for detection of quantitative trait loci. Furthermore, we showed that our data set could be analyzed by using two-step approaches of the proposed association-mapping method without substantially increasing the empirical type I error rate in comparison to the corresponding one-step approaches.</jats:p>

Journal

  • Genetics

    Genetics 178 (3), 1745-1754, 2008-03-01

    Oxford University Press (OUP)

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