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Statistical method for mapping QTLs for complex traits based on two backcross populations

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  • Special Topic Quantitative Genetics
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  • Published: 12 July 2012
  • Volume 57, pages 2645–2654, (2012)
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Chinese Science Bulletin
Statistical method for mapping QTLs for complex traits based on two backcross populations
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  • ZhiHong Zhu1,
  • Yousaf Hayart2,
  • Jian Yang1,
  • LiYong Cao3,
  • XiangYang Lou4 &
  • …
  • HaiMing Xu1 
  • 990 Accesses

  • 5 Citations

  • Explore all metrics

Abstract

Most important agronomic and quality traits of crops are quantitative in nature. The genetic variations in such traits are usually controlled by sets of genes called quantitative trait loci (QTLs), and the interactions between QTLs and the environment. It is crucial to understand the genetic architecture of complex traits to design efficient strategies for plant breeding. In the present study, a new experimental design and the corresponding statistical method are presented for QTL mapping. The proposed mapping population is composed of double backcross populations derived from backcrossing both homozygous parents to DH (double haploid) or RI (recombinant inbreeding) lines separately. Such an immortal mapping population allows for across-environment replications, and can be used to estimate dominance effects, epistatic effects, and QTL-environment interactions, remedying the drawbacks of a single backcross population. In this method, the mixed linear model approach is used to estimate the positions of QTLs and their various effects including the QTL additive, dominance, and epistatic effects, and QTL-environment interaction effects (QE). Monte Carlo simulations were conducted to investigate the performance of the proposed method and to assess the accuracy and efficiency of its estimations. The results showed that the proposed method could estimate the positions and the genetic effects of QTLs with high efficiency.

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Author information

Authors and Affiliations

  1. Agronomy Department, College of Agriculture and Biotechnology, Zhejiang University, Hangzhou, 310058, China

    ZhiHong Zhu, Jian Yang & HaiMing Xu

  2. Department of Mathematics, Statistics and Computer Science, NWFP Agricultural University Peshawar, Peshawar, 25130, Pakistan

    Yousaf Hayart

  3. China National Rice Research Institute, National Center for Rice Improvement, State Key Laboratory of Rice Biology, Hangzhou, 310006, China

    LiYong Cao

  4. Department of Biostatistics, School of Public Health, University of Alabama at Birmingham, Birmingham, Alabama, 35294, USA

    XiangYang Lou

Authors
  1. ZhiHong Zhu
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  2. Yousaf Hayart
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  3. Jian Yang
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  4. LiYong Cao
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  6. HaiMing Xu
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Correspondence to HaiMing Xu.

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Cite this article

Zhu, Z., Hayart, Y., Yang, J. et al. Statistical method for mapping QTLs for complex traits based on two backcross populations. Chin. Sci. Bull. 57, 2645–2654 (2012). https://doi.org/10.1007/s11434-012-5279-8

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  • Received: 25 February 2012

  • Accepted: 27 April 2012

  • Published: 12 July 2012

  • Issue Date: July 2012

  • DOI: https://doi.org/10.1007/s11434-012-5279-8

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Keywords

  • QTL mapping
  • double backcross populations
  • mixed linear model
  • epistasis
  • QTL-by-environment interaction
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