Small RNA-based prediction of hybrid performance in maize

Abstract Background Small RNA (sRNA) sequences are known to have a broad impact on gene regulation by various mechanisms. Their performance for the prediction of hybrid traits has not yet been analyzed. Our objective was to analyze the relation of parental sRNA expression with the performance of the...

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Main Authors: Felix Seifert, Alexander Thiemann, Tobias A. Schrag, Dominika Rybka, Albrecht E. Melchinger, Matthias Frisch, Stefan Scholten
Format: Article
Language:English
Published: BMC 2018-05-01
Series:BMC Genomics
Subjects:
Online Access:http://link.springer.com/article/10.1186/s12864-018-4708-8
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spelling doaj-572b65c1898b48279368ba811a4465052020-11-25T01:07:40ZengBMCBMC Genomics1471-21642018-05-0119111410.1186/s12864-018-4708-8Small RNA-based prediction of hybrid performance in maizeFelix Seifert0Alexander Thiemann1Tobias A. Schrag2Dominika Rybka3Albrecht E. Melchinger4Matthias Frisch5Stefan Scholten6Developmental Biology, Biocenter Klein Flottbek, University of HamburgDevelopmental Biology, Biocenter Klein Flottbek, University of HamburgInstitute for Plant Breeding, Seed Science and Population Genetics, Quantitative Genetics and Genomics of Crops, University of HohenheimDevelopmental Biology, Biocenter Klein Flottbek, University of HamburgInstitute for Plant Breeding, Seed Science and Population Genetics, Quantitative Genetics and Genomics of Crops, University of HohenheimInstitute of Agronomy and Plant Breeding II, Justus Liebig UniversityDevelopmental Biology, Biocenter Klein Flottbek, University of HamburgAbstract Background Small RNA (sRNA) sequences are known to have a broad impact on gene regulation by various mechanisms. Their performance for the prediction of hybrid traits has not yet been analyzed. Our objective was to analyze the relation of parental sRNA expression with the performance of their hybrids, to develop a sRNA-based prediction approach, and to compare it to more common SNP and mRNA transcript based predictions using a factorial mating scheme of a maize hybrid breeding program. Results Correlation of genomic differences and messenger RNA (mRNA) or sRNA expression differences between parental lines with hybrid performance of their hybrids revealed that sRNAs showed an inverse relationship in contrast to the other two data types. We associated differences for SNPs, mRNA and sRNA expression between parental inbred lines with the performance of their hybrid combinations and developed two prediction approaches using distance measures based on associated markers. Cross-validations revealed parental differences in sRNA expression to be strong predictors for hybrid performance for grain yield in maize, comparable to genomic and mRNA data. The integration of both positively and negatively associated markers in the prediction approaches enhanced the prediction accurary. The associated sRNAs belong predominantly to the canonical size classes of 22- and 24-nt that show specific genomic mapping characteristics. Conclusion Expression profiles of sRNA are a promising alternative to SNPs or mRNA expression profiles for hybrid prediction, especially for plant species without reference genome or transcriptome information. The characteristics of the sRNAs we identified suggest that association studies based on breeding populations facilitate the identification of sRNAs involved in hybrid performance.http://link.springer.com/article/10.1186/s12864-018-4708-8Hybrid trait predictionSmall RNAHybrid performanceGrain yieldMaizeEpigenetics
collection DOAJ
language English
format Article
sources DOAJ
author Felix Seifert
Alexander Thiemann
Tobias A. Schrag
Dominika Rybka
Albrecht E. Melchinger
Matthias Frisch
Stefan Scholten
spellingShingle Felix Seifert
Alexander Thiemann
Tobias A. Schrag
Dominika Rybka
Albrecht E. Melchinger
Matthias Frisch
Stefan Scholten
Small RNA-based prediction of hybrid performance in maize
BMC Genomics
Hybrid trait prediction
Small RNA
Hybrid performance
Grain yield
Maize
Epigenetics
author_facet Felix Seifert
Alexander Thiemann
Tobias A. Schrag
Dominika Rybka
Albrecht E. Melchinger
Matthias Frisch
Stefan Scholten
author_sort Felix Seifert
title Small RNA-based prediction of hybrid performance in maize
title_short Small RNA-based prediction of hybrid performance in maize
title_full Small RNA-based prediction of hybrid performance in maize
title_fullStr Small RNA-based prediction of hybrid performance in maize
title_full_unstemmed Small RNA-based prediction of hybrid performance in maize
title_sort small rna-based prediction of hybrid performance in maize
publisher BMC
series BMC Genomics
issn 1471-2164
publishDate 2018-05-01
description Abstract Background Small RNA (sRNA) sequences are known to have a broad impact on gene regulation by various mechanisms. Their performance for the prediction of hybrid traits has not yet been analyzed. Our objective was to analyze the relation of parental sRNA expression with the performance of their hybrids, to develop a sRNA-based prediction approach, and to compare it to more common SNP and mRNA transcript based predictions using a factorial mating scheme of a maize hybrid breeding program. Results Correlation of genomic differences and messenger RNA (mRNA) or sRNA expression differences between parental lines with hybrid performance of their hybrids revealed that sRNAs showed an inverse relationship in contrast to the other two data types. We associated differences for SNPs, mRNA and sRNA expression between parental inbred lines with the performance of their hybrid combinations and developed two prediction approaches using distance measures based on associated markers. Cross-validations revealed parental differences in sRNA expression to be strong predictors for hybrid performance for grain yield in maize, comparable to genomic and mRNA data. The integration of both positively and negatively associated markers in the prediction approaches enhanced the prediction accurary. The associated sRNAs belong predominantly to the canonical size classes of 22- and 24-nt that show specific genomic mapping characteristics. Conclusion Expression profiles of sRNA are a promising alternative to SNPs or mRNA expression profiles for hybrid prediction, especially for plant species without reference genome or transcriptome information. The characteristics of the sRNAs we identified suggest that association studies based on breeding populations facilitate the identification of sRNAs involved in hybrid performance.
topic Hybrid trait prediction
Small RNA
Hybrid performance
Grain yield
Maize
Epigenetics
url http://link.springer.com/article/10.1186/s12864-018-4708-8
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