Development of a QTL-environment-based predictive model for node addition rate in common bean

Publication Overview
TitleDevelopment of a QTL-environment-based predictive model for node addition rate in common bean
AuthorsZhang L, Gezan SA, Eduardo Vallejos C, Jones JW, Boote KJ, Clavijo-Michelangeli JA, Bhakta M, Osorno JM, Rao I, Beebe S, Roman-Paoli E, Gonzalez A, Beaver J, Ricaurte J, Colbert R, Correll MJ
TypeJournal Article
Journal NameTAG. Theoretical and applied genetics. Theoretische und angewandte Genetik
Volume130
Issue5
Year2017
Page(s)1065-1079
CitationZhang L, Gezan SA, Eduardo Vallejos C, Jones JW, Boote KJ, Clavijo-Michelangeli JA, Bhakta M, Osorno JM, Rao I, Beebe S, Roman-Paoli E, Gonzalez A, Beaver J, Ricaurte J, Colbert R, Correll MJ. Development of a QTL-environment-based predictive model for node addition rate in common bean. TAG. Theoretical and applied genetics. Theoretische und angewandte Genetik. 2017 May; 130(5):1065-1079.

Abstract

This work reports the effects of the genetic makeup, the environment and the genotype by environment interactions for node addition rate in an RIL population of common bean. This information was used to build a predictive model for node addition rate. To select a plant genotype that will thrive in targeted environments it is critical to understand the genotype by environment interaction (GEI). In this study, multi-environment QTL analysis was used to characterize node addition rate (NAR, node day- 1) on the main stem of the common bean (Phaseolus vulgaris L). This analysis was carried out with field data of 171 recombinant inbred lines that were grown at five sites (Florida, Puerto Rico, 2 sites in Colombia, and North Dakota). Four QTLs (Nar1, Nar2, Nar3 and Nar4) were identified, one of which had significant QTL by environment interactions (QEI), that is, Nar2 with temperature. Temperature was identified as the main environmental factor affecting NAR while day length and solar radiation played a minor role. Integration of sites as covariates into a QTL mixed site-effect model, and further replacing the site component with explanatory environmental covariates (i.e., temperature, day length and solar radiation) yielded a model that explained 73% of the phenotypic variation for NAR with root mean square error of 16.25% of the mean. The QTL consistency and stability was examined through a tenfold cross validation with different sets of genotypes and these four QTLs were always detected with 50-90% probability. The final model was evaluated using leave-one-site-out method to assess the influence of site on node addition rate. These analyses provided a quantitative measure of the effects on NAR of common beans exerted by the genetic makeup, the environment and their interactions.
Features
This publication contains information about 4 features:
Feature NameUniquenameType
Node addition rateqNAR.Jamapa/Calima-LG1QTL
Node addition rateqNAR.Jamapa/Calima-LG1.2QTL
Node addition rateqNAR.Jamapa/Calima-LG1.3QTL
Node addition rateqNAR.Jamapa/Calima-LG7QTL
Projects
This publication contains information about 1 projects:
Project NameDescription
Bean-Node_addition_rate-Zhang-2017
Properties
Additional details for this publication include:
Property NameValue
LanguageEnglish
Journal CountryGermany
eISSN1432-2242
DOI10.1007/s00122-017-2871-y
Publication Date2017 May
Publication TypeJournal Article
ISSN1432-2242
Language Abbreng
Publication ModelPrint-Electronic
Journal AbbreviationTheor. Appl. Genet.
Elocation10.1007/s00122-017-2871-y