Advances in Statistical Methods for the Genetic Dissection of Complex Traits in Plants

Advances in Statistical Methods for the Genetic Dissection of Complex Traits in Plants

  • Yuan-Ming Zhang
  • Zhenyu Jia
  • Shang-Qian Xie
  • Jia Wen
  • Shibo Wang
  • Ya-Wen Zhang
Publisher:Frontiers Media SAISBN 13: 9782832543696ISBN 10: 2832543693

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Advances in Statistical Methods for the Genetic Dissection of Complex Traits in Plants is written by Yuan-Ming Zhang and published by Frontiers Media SA. It's available with International Standard Book Number or ISBN identification 2832543693 (ISBN 10) and 9782832543696 (ISBN 13).

Genome-wide association studies (GWAS) have been widely used in the genetic dissection of complex traits. However, there are still limits in current GWAS statistics. For example, (1) almost all the existing methods do not estimate additive and dominance effects in quantitative trait nucleotide (QTN) detection; (2) the methods for detecting QTN-by-environment interaction (QEI) are not straightforward and do not estimate additive and dominance effects as well as additive-by-environment and dominance-by-environment interaction effects, leading to unreliable results; and (3) no or too simple polygenic background controls have been employed in QTN-by-QTN interaction (QQI) detection. As a result, few studies of QEI and QQI for complex traits have been reported based on multiple-environment experiments. Recently, new statistical tools, including 3VmrMLM, have been developed to address these needs in GWAS. In 3VmrMLM, all the trait-associated effects, including QTN, QEI and QQI related effects, are compressed into a single effect-related vector, while all the polygenic backgrounds are compressed into a single polygenic effect matrix. These compressed parameters can be accurately and efficiently estimated through a unified mixed model analysis. To further validate these new GWAS methods, particularly 3VmrMLM, they should be rigorously tested in real data of various plants and a wide range of other species.