» Articles » PMID: 23903631

Multi-trait and Multi-environment QTL Analyses of Yield and a Set of Physiological Traits in Pepper

Overview
Publisher Springer
Specialty Genetics
Date 2013 Aug 2
PMID 23903631
Citations 22
Authors
Affiliations
Soon will be listed here.
Abstract

A mixed model framework was defined for QTL analysis of multiple traits across multiple environments for a RIL population in pepper. Detection power for QTLs increased considerably and detailed study of QTL by environment interactions and pleiotropy was facilitated. For many agronomic crops, yield is measured simultaneously with other traits across multiple environments. The study of yield can benefit from joint analysis with other traits and relations between yield and other traits can be exploited to develop indirect selection strategies. We compare the performance of three multi-response QTL approaches based on mixed models: a multi-trait approach (MT), a multi-environment approach (ME), and a multi-trait multi-environment approach (MTME). The data come from a multi-environment experiment in pepper, for which 15 traits were measured in four environments. The approaches were compared in terms of number of QTLs detected for each trait, the explained variance, and the accuracy of prediction for the final QTL model. For the four environments together, the superior MTME approach delivered a total of 47 regions containing putative QTLs. Many of these QTLs were pleiotropic and showed quantitative QTL by environment interaction. MTME was superior to ME and MT in the number of QTLs, the explained variance and accuracy of predictions. The large number of model parameters in the MTME approach was challenging and we propose several guidelines to help obtain a stable final QTL model. The results confirmed the feasibility and strengths of novel mixed model QTL methodology to study the architecture of complex traits.

Citing Articles

Improvement of crop production in controlled environment agriculture through breeding.

Bhattarai K, Ogden A, Pandey S, Sandoya G, Shi A, Nankar A Front Plant Sci. 2025; 15:1524601.

PMID: 39931334 PMC: 11808156. DOI: 10.3389/fpls.2024.1524601.


Construction of a genetic linkage map and QTL mapping of fruit quality traits in guava ( L.).

Maan S, Brar J, Mittal A, Gill M, Arora N, Sohi H Front Plant Sci. 2023; 14:1123274.

PMID: 37426984 PMC: 10324979. DOI: 10.3389/fpls.2023.1123274.


The Global Assessment of Oilseed Brassica Crop Species Yield, Yield Stability and the Underlying Genetics.

Zandberg J, Fernandez C, Danilevicz M, Thomas W, Edwards D, Batley J Plants (Basel). 2022; 11(20.

PMID: 36297764 PMC: 9610009. DOI: 10.3390/plants11202740.


The APETALA2 homolog CaFFN regulates flowering time in pepper.

Yuan X, Fang R, Zhou K, Huang Y, Lei G, Wang X Hortic Res. 2021; 8(1):208.

PMID: 34719686 PMC: 8558333. DOI: 10.1038/s41438-021-00643-7.


The 55K SNP-Based Exploration of QTLs for Spikelet Number Per Spike in a Tetraploid Wheat ( L.) Population: Chinese Landrace "Ailanmai" × Wild Emmer.

Mo Z, Zhu J, Wei J, Zhou J, Xu Q, Tang H Front Plant Sci. 2021; 12:732837.

PMID: 34531890 PMC: 8439258. DOI: 10.3389/fpls.2021.732837.


References
1.
Malosetti M, Visser R, Celis-Gamboa C, Van Eeuwijk F . QTL methodology for response curves on the basis of non-linear mixed models, with an illustration to senescence in potato. Theor Appl Genet. 2006; 113(2):288-300. DOI: 10.1007/s00122-006-0294-2. View

2.
Hackett C, Meyer R, Thomas W . Multi-trait QTL mapping in barley using multivariate regression. Genet Res. 2001; 77(1):95-106. DOI: 10.1017/s0016672300004869. View

3.
Lander E, Botstein D . Mapping mendelian factors underlying quantitative traits using RFLP linkage maps. Genetics. 1989; 121(1):185-99. PMC: 1203601. DOI: 10.1093/genetics/121.1.185. View

4.
Weller J, Soller M . An analytical formula to estimate confidence interval of QTL location with a saturated genetic map as a function of experimental design. Theor Appl Genet. 2004; 109(6):1224-9. DOI: 10.1007/s00122-004-1664-2. View

5.
Macmillan K, Emrich K, Piepho H, Mullins C, PRICE A . Assessing the importance of genotype x environment interaction for root traits in rice using a mapping population II: conventional QTL analysis. Theor Appl Genet. 2006; 113(5):953-64. DOI: 10.1007/s00122-006-0357-4. View