Assessing wheat performance using environmental information

The partial least squares (PLS) regression model was applied to wheat data set with objective to determining the most relevant environmental variables that explained biomass per plant and grain yield genotype x environment interaction (GEI) effects. The data set had 25 wheat genotypes (20 landraces...

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Main Authors: Dodig Dejan, Zorić Miroslav, Knežević Desimir, Dimitrijević Bojana, Šurlan-Momirović Gordana
Format: Article
Language:English
Published: Serbian Genetics Society 2007-01-01
Series:Genetika
Subjects:
GEI
Online Access:http://www.doiserbia.nb.rs/img/doi/0534-0012/2007/0534-00120703413D.pdf
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spelling doaj-420ccfc7cc134692b8f5dba7be2f03272020-11-25T00:41:10ZengSerbian Genetics SocietyGenetika0534-00122007-01-0139341342510.2298/GENSR0703413DAssessing wheat performance using environmental informationDodig DejanZorić MiroslavKnežević DesimirDimitrijević BojanaŠurlan-Momirović GordanaThe partial least squares (PLS) regression model was applied to wheat data set with objective to determining the most relevant environmental variables that explained biomass per plant and grain yield genotype x environment interaction (GEI) effects. The data set had 25 wheat genotypes (20 landraces + 5 cultivars) tested for 4 years in two different water regimes: rainfed and drought. Environmental variables such as maximum soil temperature at 5 cm in April and May, soil moisture in the top 75 cm in March, and sun hours per day in May accounted for a sizeable proportion of GEI for biomass per plant. Similar results were obtained for grain yield: maximum soil temperature at 5 cm in April, May and June, and sun hours per day in May were related to the factor that explained the largest portion (>38%) of the GEI. Generally, wheat landraces are able to better exploit environments with higher temperatures and lower water availability during vegetative growth (March-June) than cultivars. http://www.doiserbia.nb.rs/img/doi/0534-0012/2007/0534-00120703413D.pdfbiomassGEIgrain yieldPLS regressionwheat
collection DOAJ
language English
format Article
sources DOAJ
author Dodig Dejan
Zorić Miroslav
Knežević Desimir
Dimitrijević Bojana
Šurlan-Momirović Gordana
spellingShingle Dodig Dejan
Zorić Miroslav
Knežević Desimir
Dimitrijević Bojana
Šurlan-Momirović Gordana
Assessing wheat performance using environmental information
Genetika
biomass
GEI
grain yield
PLS regression
wheat
author_facet Dodig Dejan
Zorić Miroslav
Knežević Desimir
Dimitrijević Bojana
Šurlan-Momirović Gordana
author_sort Dodig Dejan
title Assessing wheat performance using environmental information
title_short Assessing wheat performance using environmental information
title_full Assessing wheat performance using environmental information
title_fullStr Assessing wheat performance using environmental information
title_full_unstemmed Assessing wheat performance using environmental information
title_sort assessing wheat performance using environmental information
publisher Serbian Genetics Society
series Genetika
issn 0534-0012
publishDate 2007-01-01
description The partial least squares (PLS) regression model was applied to wheat data set with objective to determining the most relevant environmental variables that explained biomass per plant and grain yield genotype x environment interaction (GEI) effects. The data set had 25 wheat genotypes (20 landraces + 5 cultivars) tested for 4 years in two different water regimes: rainfed and drought. Environmental variables such as maximum soil temperature at 5 cm in April and May, soil moisture in the top 75 cm in March, and sun hours per day in May accounted for a sizeable proportion of GEI for biomass per plant. Similar results were obtained for grain yield: maximum soil temperature at 5 cm in April, May and June, and sun hours per day in May were related to the factor that explained the largest portion (>38%) of the GEI. Generally, wheat landraces are able to better exploit environments with higher temperatures and lower water availability during vegetative growth (March-June) than cultivars.
topic biomass
GEI
grain yield
PLS regression
wheat
url http://www.doiserbia.nb.rs/img/doi/0534-0012/2007/0534-00120703413D.pdf
work_keys_str_mv AT dodigdejan assessingwheatperformanceusingenvironmentalinformation
AT zoricmiroslav assessingwheatperformanceusingenvironmentalinformation
AT knezevicdesimir assessingwheatperformanceusingenvironmentalinformation
AT dimitrijevicbojana assessingwheatperformanceusingenvironmentalinformation
AT surlanmomirovicgordana assessingwheatperformanceusingenvironmentalinformation
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