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Empirical Comparisons of Different Statistical Models To Identify and Validate Kernel Row Number-Associated Variants from Structured Multi-parent Mapping Populations of Maize
G3: Genes, Genomes, Genetics
  • Jinliang Yang, Iowa State University
  • Cheng-Ting “Eddy” Yeh, Iowa State University
  • Raghuprakash Kastoori Ramamurthy, University of Nebraska - Lincoln
  • Xinshuai Qi, University of Arizona
  • Rohan L Fernando, Iowa State University
  • Jack C. M. Dekkers, Iowa State University
  • Dorian J. Garrick, Iowa State University
  • Dan Nettleton, Iowa State University
  • Patrick S. Schnable, Iowa State University
Document Type
Article
Publication Version
Published Version
Publication Date
11-1-2018
DOI
10.1534/g3.118.200636
Abstract

Advances in next generation sequencing technologies and statistical approaches enable genome-wide dissection of phenotypic traits via genome-wide association studies (GWAS). Although multiple statistical approaches for conducting GWAS are available, the power and cross-validation rates of many approaches have been mostly tested using simulated data. Empirical comparisons of single variant (SV) and multi-variant (MV) GWAS approaches have not been conducted to test if a single approach or a combination of SV and MV is effective, through identification and cross-validation of trait-associated loci. In this study, kernel row number (KRN) data were collected from a set of 6,230 entries derived from the Nested Association Mapping (NAM) population and related populations. Three different types of GWAS analyses were performed: 1) single-variant (SV), 2) stepwise regression (STR) and 3) a Bayesian-based multi-variant (BMV) model. Using SV, STR, and BMV models, 257, 300, and 442 KRN-associated variants (KAVs) were identified in the initial GWAS analyses. Of these, 231 KAVs were subjected to genetic validation using three unrelated populations that were not included in the initial GWAS. Genetic validation results suggest that the three GWAS approaches are complementary. Interestingly, KAVs in low recombination regions were more likely to exhibit associations in independent populations than KAVs in recombinationally active regions, probably as a consequence of linkage disequilibrium. The KAVs identified in this study have the potential to enhance our understanding of the genetic basis of ear development.

Comments

This article is publsihed as Yang, Jinliang, Raghuprakash Kastoori Ramamurthy, Xinshuai Qi, Rohan L. Fernando, Jack CM Dekkers, Dorian J. Garrick, Dan Nettleton, and Patrick S. Schnable. "Empirical Comparisons of Different Statistical Models To Identify and Validate Kernel Row Number-Associated Variants from Structured Multi-parent Mapping Populations of Maize." G3: Genes, Genomes, Genetics 8, no. 11 (2018): 3567-3575. doi: 10.1534/g3.118.200636.

Creative Commons License
Creative Commons Attribution 4.0 International
Copyright Owner
Yang et al.
Language
en
File Format
application/pdf
Citation Information
Jinliang Yang, Cheng-Ting “Eddy” Yeh, Raghuprakash Kastoori Ramamurthy, Xinshuai Qi, et al.. "Empirical Comparisons of Different Statistical Models To Identify and Validate Kernel Row Number-Associated Variants from Structured Multi-parent Mapping Populations of Maize" G3: Genes, Genomes, Genetics Vol. 8 Iss. 11 (2018) p. 3567 - 3575
Available at: http://works.bepress.com/dan-nettleton/53/