Literature DB >> 22159754

A mixed model QTL analysis for sugarcane multiple-harvest-location trial data.

M M Pastina1, M Malosetti, R Gazaffi, M Mollinari, G R A Margarido, K M Oliveira, L R Pinto, A P Souza, F A van Eeuwijk, A A F Garcia.   

Abstract

Sugarcane-breeding programs take at least 12 years to develop new commercial cultivars. Molecular markers offer a possibility to study the genetic architecture of quantitative traits in sugarcane, and they may be used in marker-assisted selection to speed up artificial selection. Although the performance of sugarcane progenies in breeding programs are commonly evaluated across a range of locations and harvest years, many of the QTL detection methods ignore two- and three-way interactions between QTL, harvest, and location. In this work, a strategy for QTL detection in multi-harvest-location trial data, based on interval mapping and mixed models, is proposed and applied to map QTL effects on a segregating progeny from a biparental cross of pre-commercial Brazilian cultivars, evaluated at two locations and three consecutive harvest years for cane yield (tonnes per hectare), sugar yield (tonnes per hectare), fiber percent, and sucrose content. In the mixed model, we have included appropriate (co)variance structures for modeling heterogeneity and correlation of genetic effects and non-genetic residual effects. Forty-six QTLs were found: 13 QTLs for cane yield, 14 for sugar yield, 11 for fiber percent, and 8 for sucrose content. In addition, QTL by harvest, QTL by location, and QTL by harvest by location interaction effects were significant for all evaluated traits (30 QTLs showed some interaction, and 16 none). Our results contribute to a better understanding of the genetic architecture of complex traits related to biomass production and sucrose content in sugarcane.

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Year:  2011        PMID: 22159754      PMCID: PMC3284670          DOI: 10.1007/s00122-011-1748-8

Source DB:  PubMed          Journal:  Theor Appl Genet        ISSN: 0040-5752            Impact factor:   5.699


  41 in total

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6.  Development of an integrated genetic map of a sugarcane (Saccharum spp.) commercial cross, based on a maximum-likelihood approach for estimation of linkage and linkage phases.

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9.  Molecular dissection of complex traits in autopolyploids: mapping QTLs affecting sugar yield and related traits in sugarcane.

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10.  Differential chromosome pairing affinities at meiosis in polyploid sugarcane revealed by molecular markers.

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3.  Leveraging probability concepts for cultivar recommendation in multi-environment trials.

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5.  Identification of quantitative trait loci and a candidate locus for freezing tolerance in controlled and outdoor environments in the overwintering crucifer Boechera stricta.

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6.  Development of an Axiom Sugarcane100K SNP array for genetic map construction and QTL identification.

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8.  Multi-trait multi-environment quantitative trait loci mapping for a sugarcane commercial cross provides insights on the inheritance of important traits.

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Review 9.  Biofuel and energy crops: high-yield Saccharinae take center stage in the post-genomics era.

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